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A Study of Teachers’ Digital Literacy Enhancement Strategies in the Context of Information Technology in Higher Education

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21 mar 2025

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Introduction

With the rapid development of information technology, digital literacy has become a basic quality necessary for teachers in modern society, and it is especially urgent for college teachers to enhance digital literacy as the leader of cultural literacy for students entering the last barrier of society.

First of all, the improvement of digital literacy helps college teachers to expand teaching resources [1-3]. In the context of Internet + education, a huge amount of digital resources for teaching provides a wealth of materials, a college teacher with digital literacy, can skillfully use the network to retrieve, filter, integrate all kinds of high-quality teaching resources, so that the classroom is more lively and interesting. For example, in language teaching, teachers can use digital technology to present students with the beautiful scenery depicted in the language, so that students can enhance their interest in learning [4-5]. Secondly, the enhancement of digital literacy helps college teachers to innovate teaching methods [6-8]. The traditional teaching mode has been unable to meet the learning needs of modern students, with the help of digital technology, teachers can try to flip the classroom, online and offline combination of diversified teaching methods to stimulate students’ learning initiative. For example, when teaching, teachers can utilize the network platform, so that students can complete homework mutual evaluation and modification in the cloud to improve the teaching effect [9-11]. Again, the improvement of digital literacy helps college teachers to improve the quality of education and teaching [12-13]. Through big data analysis, teachers can accurately grasp the learning situation of students and carry out personalized teaching. At the same time, digital technology can also help teachers understand the development trend of education, learn from advanced education concepts and methods, and improve their own education and teaching level [14]. In addition, the enhancement of digital literacy also helps college teachers to strengthen communication with students [15-16]. In the era of digitalization, students have access to increasingly rich channels of information, teachers who are skilled in the use of digital technology, they can better understand the dynamics of students’ thinking, into their inner world. On this basis, teachers can use digital means, such as WeChat, QQ, e-mail, etc., to interact with students in real time, answer their questions, and guide them to grow up healthily [17-18].

Literature [19] analyzed the self-assessment and digital literacy of university teachers from 2000-2021, and the digital literacy skills of most of the teachers were moderately low. In today’s informatized and digitized society, it is necessary to develop and improve the digital literacy of university teachers. Literature [20] then suggests that teachers should be trained in digital literacy to be more conducive to teaching and innovative educational methods. In this regard, the literature [21] designed a set of training programs for pre-service teachers on the ability of digital literacy, first indicating the need for such training should be carried out, and then proposed for teachers to carry out a combination of digital literacy, enough to use the cooperation, digital creativity and other training content, to better improve their own theoretical information to serve students.

Since the epidemic, online learning has spread to almost all schools, and literature [22] mentions a significant correlation between teachers’ digital literacy, career satisfaction and professional role in online teaching. Literature [23] used Ajzen’s Theory of Planned Behavior to analyze teacher digital literacy in relation to their attitudes towards behavioral consequences. It is evident that teacher literacy can also be improved in terms of career satisfaction, professional role, and behavioral beliefs. Literature [24] investigated the assessment of digital literacy of English majors by the Teacher Digital Literacy Scale and the degree of preparation for teaching with digital technology by means of questionnaire interviews, and suggested that the needs of teachers’ digital literacy could be met by integrating digital technology. Literature [25] utilized structural equation studies to find that teachers’ conceptions of teaching and learning can enhance digital literacy. In this regard, information technology can be integrated to restructure the teaching and learning concepts of higher education teachers to more accurately pinpoint the concepts and competencies that digital literacy should possess. Similarly, literature [26] constructed a partial least squares structured equation to analyze students’ self-regulated learning strategy digital literacy, and the results showed that cognitive knowledge, resource management, and motivational beliefs were significantly and positively related to digital literacy. Then the improvement of teachers’ digital literacy can also draw on this analysis, through the learning strategies of self-knowledge, resource management and motivational beliefs so as to improve their own digital literacy. Literature [27] mentions that academic programs develop digital literacy skills, and the improvement of teachers’ digital literacy is indeed similar to a course of study. Therefore, designing a professional academic curriculum is a systematic and effective approach to the improvement of teachers’ digital literacy.

In this study, a questionnaire was designed with reference to the industry standard of Digital Literacy for Teachers, and a sample of 352 college teachers in China was surveyed, and the reliability test and descriptive and variance analyses of the survey data were carried out using SPSS27 software, respectively. After that, multiple regression algorithms and data mining techniques were utilized to explore the correlation between multiple variables. At the end of the article, from the construction of the digital teaching platform with the mechanism of “measurement, evaluation and training”, we create conditions to make full use of digital resources and take the initiative to improve digital literacy.

Methods of improving teachers’ digital literacy under information technology in higher education
Design of the research questionnaire
Purpose of the survey

Teachers’ digital literacy [28] plays a crucial role in promoting the digital transformation of education and developing students’ digital literacy. In this study, the Ministry of Education issued the “Teacher Digital Literacy” industry standard based on the preparation of relevant questions, designed the questionnaire survey to grasp the first-hand information that can reflect the level of teachers’ digital literacy, and the questionnaire data were statistically analyzed in order to comprehensively understand the current situation of the level of teachers’ digital literacy. At the same time, through the summary of the relevant literature, the establishment of the influence factor model of college teachers’ digital literacy, to provide a certain theoretical basis for the subsequent study of the relevant influencing factors, and at the same time can provide a certain reference to put forward the enhancement strategy of teachers’ digital literacy.

Survey respondents

The survey focused on selecting 352 teachers from seven well-known universities in China. In determining the survey respondents, the special situation of each university was taken into account as much as possible, and the impact of various factors on the sample of this study was fully considered to ensure that the survey data obtained in the study were typical and representative.

Questionnaire development

In the industry standard of Teachers’ Digital Literacy issued by China’s Ministry of Education, teachers’ digital literacy is categorized into five dimensions, namely digital awareness, digital technology knowledge and skills, digital application, digital social responsibility and professional development, each of which includes two to four secondary dimensions, and each of which is subdivided into multiple tertiary dimensions, which provides important theoretical support for measuring and evaluating teachers’ digital literacy.

In order to ensure the applicability of the questionnaire, a team of experts was consulted to validate it. The experts carefully and meticulously validated the questions of the questionnaire against the connotation of teachers’ digital literacy, and made comments on whether some questions matched the dimensions and whether the questions were properly formulated. After repeated revisions of the number of questions, statements and dimensional correspondences of the questionnaire, the questionnaire was finally finalized with the unanimous endorsement of the experts, which consisted of 44 questions of “Teacher Digital Literacy Survey” questionnaire. This questionnaire is divided into three parts. The first part is a survey on the basic information of individuals, including 11 questions about the gender, age, type of school district, title, professional background and other basic personal information of the respondents, which is mainly based on the range of questions available to design options for the respondents to choose from; the second part of the survey is a survey on the current status of digital literacy, which is divided into five dimensions based on the criteria: Six questions were designed in the digital awareness dimension, including questions 12 to 17; Four questions were designed in the digital technology knowledge and skills dimension, including questions 18 to 21, and 13 questions were designed in the digital applications dimension, including questions 22 to 34; Five questions were designed in the digital social responsibility dimension, including questions 35 to 39; Five questions were designed in the professional development dimension, including questions 40 to 44, and this part mainly used a Likert scale to set out response options of varying degrees for the respondents to choose from, including strongly agree, agree, unsure, disagree, and strongly disagree, and assigning a value of 5, 4, 3, 2, and 1 points to the above mentioned options, respectively. The 33 questions in the second part were numbered from Q12 to Q44.

Questionnaire distribution and retrieval

To ensure the validity and reliability of this questionnaire, a small-scale pre-survey will be conducted by distributing the questionnaire to 100 college teachers from famous universities in China using questionnaire star. The questionnaire was distributed to 100 teachers, 100 questionnaires were recovered, and the valid number of questionnaires was 100, of which the recovery rate of the questionnaire was 100% and the validity rate of the questionnaire was 100%, which satisfied the data requirements. The questionnaires obtained from the pre-survey are now subjected to data processing to verify the validity and reliability of the questionnaires. In this study, the reliability analysis of the questionnaire recovered in the pre-survey was carried out to obtain the Cronbach’s alpha coefficient value of digital literacy overall, and the Cronbach’s alpha coefficient value of each dimension and the combined reliability CR value, and the results of the reliability analysis of the questionnaire are shown in Table 1. It can be found that the Cronbach’s alpha coefficients of digital literacy overall and at each dimension level are above 0.9, indicating that the questionnaire has very good reliability. The CR value of each dimension is also greater than 0.9, reflecting that all the questions in the questionnaire explain the dimension with very good consistency, so the questionnaire of the Survey on the Current Status of Teachers’ Digital Literacy designed in this study has a high reliability. Second, the validity analysis of the questionnaire. Validity analysis is a statistical method that evaluates the validity and accuracy of a measurement instrument, with a focus on whether it is effective in determining the concept or attribute to be measured. The extracted mean variance and factor loading values for the observed variables are compared. The standardized loading coefficients for each of the observed variables are greater than 0.55, and the AVE values of the mean variance extracted for each of the latent variables are greater than 0.6, which indicates that the questionnaire has strong explanatory power, and good internal consistency reliability and convergent validity. The questionnaire survey was scheduled from February 2024 to June 2024 Finally, 352 questionnaires were distributed and collected, 348 valid questionnaires were collected, and the validity rate of the questionnaire was 98.86%. The questionnaire’s validity rate is in compliance with the requirements, and the data from the official questionnaire can be utilized to initiate the analysis.

Questionnaire reliability analysis results

Dimension Observed variable Cronbach’sα coefficient CR value Standardized load factor The average variance is the AVE value
Digital consciousness Q12 0.913 0.903 0.955 0.601
Q13 0.882
Q14 0.657
Q15 0.860
Q16 0.651
Q17 0.701
Digital technical knowledge and skills Q18 0.922 0.920 0.796 0.726
Q19 0.803
Q20 0.889
Q21 0.936
Digital application Q22 0.990 0.989 0.785 0.789
Q23 0.848
Q24 0.901
Q25 0.881
Q26 0.890
Q27 0.938
Q28 0.955
Q29 0.892
Q30 0.934
Q31 0.959
Q32 0.886
Q33 0.888
Q34 0.858
Digital social responsibility Q35 0.904 0.916 0.567 0.686
Q36 0.609
Q37 0.871
Q38 0.916
Q39 0.938
Professional development Q40 0.958 0.955 0.875 0.788
Q41 0.760
Q42 0.931
Q43 0.872
Q44 0.981
Digital literacy Whole 0.995
One-way ANOVA for quantitative information with one-way multilevel design
Basic Ideas and Formulas for Analysis of Variance (ANOVA)

The basic idea of one-way analysis of variance (ANOVA) for quantitative data with a single-factor multilevel design is the decomposition of the sum of squares of the total deviations, i.e., the sum of squares of the deviations of all the data with respect to the total mean is decomposed into the sum of squares of the deviations between the groups and the sum of squares of the deviations within the groups (or errors), with a similar decomposition for the degrees of freedom. Dividing the sum of squares of the separate means of each component by their respective degrees of freedom is the variance (or mean square) of each component. Using the within-group (or error) mean square as the denominator and the between-group mean square as the numerator, a test statistic F can be constructed.

For a one-factor, multilevel design with one-dimensional quantitative information, the total sum of squared deviations from the mean SSTotal can be decomposed by the following equation: SSTotal=SSIntergroup+SSError$$S{S_{{\text{Total}}}} = S{S_{{\text{Intergroup}}}} + S{S_{{\text{Error}}}}$$

The expression for the three terms of the sum of squared deviations from the mean in Eq. (1) is given below: SSTotal=j=1ki=1nj(Yij¯Y¯..)2$$S{S_{{\text{Total}}}} = \sum\limits_{j = 1}^k {\sum\limits_{i = 1}^{{n_j}} {{{\left( {{Y_{\overline {ij} }} - {{\bar Y}_{..}}} \right)}^2}} }$$ SSIntergroup=j=1knj(Y¯jY¯..)2$$S{S_{{\text{Intergroup}}}} = \sum\limits_{j = 1}^k {{n_j}} {\left( {{{\bar Y}_j} - {{\bar Y}_{..}}} \right)^2}$$ SSError=j=1ki=1n(YijY¯..)2$$S{S_{{\text{Error}}}} = \sum\limits_{j = 1}^k {\sum\limits_{i = 1}^n {{{\left( {{Y_{ij}} - {{\bar Y}_{..}}} \right)}^2}} }$$ dfIntergroup=Number of groups1,dfError=N1dfIntergroup$$d{f_{{\text{Intergroup}}}} = {\text{Number of groups}} - 1,d{f_{{\text{Error}}}} = N - 1 - d{f_{{\text{Intergroup}}}}$$

Construct mean square MS based on the sum of squared off-mean deviations and degrees of freedom, see Eqs. (6) to (7): MSIntergroup=SSIntergroupdfIntergroup$$M{S_{{\text{Intergroup}}}} = \frac{{S{S_{{\text{Intergroup}}}}}}{{d{f_{{\text{Intergroup}}}}}}$$ MSError=SSErrordfError$$M{S_{{\text{Error}}}} = \frac{{S{S_{{\text{Error}}}}}}{{d{f_{{\text{Error}}}}}}$$

Based on the mean square construct test statistic F, see equation (8): F=MSIntergroupMSError$$F = \frac{{M{S_{{\text{Intergroup}}}}}}{{M{S_{{\text{Error}}}}}}$$

In equation (8), F obeys a F distribution with dfIntergroup degrees of freedom in the numerator and dfError degrees of freedom in the denominator.

If manual calculation is used, it is necessary to check the table of F bounded values (one-sided test) to obtain F(1α)(dfIntergroup,dfError)$${F_{\left( {1 - \alpha } \right)\left( {d{f_{{\text{Intergroup}}}},d{f_{{\text{Error}}}}} \right)}}$$, if FF(1α)(dfIntergroup,dfError)$$F \geq {F_{\left( {1 - \alpha } \right)\left( {d{f_{{\text{Intergroup}}}},d{f_{{\text{Error}}}}} \right)}}$$, then Pα, and vice versa, then P > α. Finally, the P value is determined and statistical inferences are made, and then professional conclusions are given in conjunction with specialized knowledge.

Least Significant Difference (LSD) method

Provided that the F test between treatments is significant, the least significant difference LSDa at a significant level of α is first calculated, and then the difference (y¯iy¯j)$$\left( {{{\bar y}_i} - {{\bar y}_j}} \right)$$ between any 2 means is calculated such that if its absolute value ≥ LSDα is significant, the difference is significant at the α level; conversely, the difference is not significant at the α level. LSDa The calculation formula is as follows: LSDα=ta2MSen$$LSD\alpha = {t_a}\sqrt {\frac{{2M{S_e}}}{n}}$$

where MSe is the mean square of the “within group”, “within” or “error” term in the ANOVA table; n is the number of replicates in the group; tα is a two-tailed t value at the level of the degree of freedom α of “within group”, “within” or “error”.

Data Mining and Multiple Regression Algorithms
Data mining algorithms

The data available were analyzed by using analytical methods such as Pearson’s correlation coefficient [29-30] and mean value. Assuming X=(x1,x2,,xN)$$X = \left( {{x_1},{x_2}, \cdots ,{x_N}} \right)$$, Y=(y1,y2,,yN)$$Y = \left( {{y_1},{y_2}, \cdots ,{y_N}} \right)$$, the mean value is defined as: x¯=i=1NxiN,y¯=i=1NyiN$$\bar x = \frac{{\sum\limits_{i = 1}^N {{x_i}} }}{N},\bar y = \frac{{\sum\limits_{i = 1}^N {{y_i}} }}{N}$$

The Pearson correlation coefficient is defined as: ρXY=Ni=1Nxiyii=1Nxii=1NyiNi=1Nxi2(i=1Nxi)2Ni=1Nyi2(i=1Nyi)2$${\rho _{XY}} = \frac{{N\sum\limits_{i = 1}^N {{x_i}} {y_i} - \sum\limits_{i = 1}^N {{x_i}} \sum\limits_{i = 1}^N {{y_i}} }}{{\sqrt {N\sum\limits_{i = 1}^N {x_i^2} - {{\left( {\sum\limits_{i = 1}^N {{x_i}} } \right)}^2}} \sqrt {N\sum\limits_{i = 1}^N {y_i^2} - {{\left( {\sum\limits_{i = 1}^N {{y_i}} } \right)}^2}} }}$$

Clearly −1 ≤ ρXY ≤ 1. When ρXY = 0, X and Y are not linearly correlated; when ρXY > 0, X and Y are positively correlated; when ρXY < 0, X and Y are negatively correlated; and when ρXY is closer to ±1, the correlation is higher.

Matrix equations for multiple linear regression models

In order to find an approximate mathematical expression to describe the correlation between multiple variables, the mathematical expression derived using mathematical statistics is called a regression equation model. The matrix equation of the multiple linear regression model is given below. Let random variable Y be affected by p − 1 non-random factors and random factor ε such that: Y=[ Y1 Y2 Yn],X=[ 1 X11 X12 X1,p1 1 X21 X22 X2,p1 1 Xn,1 Xn,2 Xn,p1] β=[ β0 β1 βp1],ε=[ ε1 ε2 εn]$$\begin{array}{*{20}{l}} {Y = \left[ {\begin{array}{*{20}{c}} {{Y_1}} \\ {{Y_2}} \\ \vdots \\ {{Y_n}} \end{array}} \right],X = \left[ {\begin{array}{*{20}{c}} 1&{{X_{11}}}&{{X_{12}}}& \cdots &{{X_{1,p - 1}}} \\ 1&{{X_{21}}}&{{X_{22}}}& \cdots &{{X_{2,p - 1}}} \\ \vdots & \vdots & \vdots &{}& \vdots \\ 1&{{X_{n,1}}}&{{X_{n,2}}}& \cdots &{{X_{n,p - 1}}} \end{array}} \right]} \\ {\beta = \left[ {\begin{array}{*{20}{c}} {{\beta _0}} \\ {{\beta _1}} \\ \vdots \\ {{\beta _{p - 1}}} \end{array}} \right],\varepsilon = \left[ {\begin{array}{*{20}{c}} {{\varepsilon _1}} \\ {{\varepsilon _2}} \\ \vdots \\ {{\varepsilon _n}} \end{array}} \right]} \end{array}$$

The matrix form of the out multiple linear regression model is as follows: Y=Xβ+ε$$Y = X\beta + \varepsilon$$

In Eq. (13) Y, X are obtained from the observed data and X is assumed to be column full rank, β is the vector of unknown parameters to be estimated, and ε is the vector of unobservable random errors.

Estimation of regression parameter β

The least squares estimation of regression parameter β yields the following equation as Eq: XTXβ=XTY$${X^T}X\beta = {X^T}Y$$

Since X is column full rank, (XTX)1$${\left( {{X^T}X} \right)^{ - 1}}$$ exists and solving equation (14) yields the least squares estimate of parameter β and is an unbiased estimate as equation (15): β^=(XTX)1XTY$$\hat \beta = {\left( {{X^T}X} \right)^{ - 1}}{X^T}Y$$

ANOVA table and significance test of linear regression relationship

Create an ANOVA table:

Based on the residual sum of squares SSE and regression sum of squares SSR of the data, the total deviation sum of squares of the data can be found SST: SST=SSE+SSR$$SST = SSE + SSR$$

An ANOVA table was created as shown in Table 2. The J in the table represents a nnd order matrix with all elements 1, and MSE is an unbiased estimate of the error variance.

Variance analysis table

Variance source Sum of squares(SS) Freedom(F) Mean square(MS)
Regression SSR=β^TXTYYTJY×1n$$SSR = {\hat \beta ^T}{X^T}Y - {Y^T}JY \times \frac{1}{n}$$ p − 1 MSR=SSR×1p1$$MSR = SSR \times \frac{1}{{p - 1}}$$
Error SSE=YTYβ^TXTY$$SSE = {Y^T}Y - {\hat \beta ^T}{X^T}Y$$ np MSE=SSE×1np$$MSE = SSE \times \frac{1}{{n - p}}$$
Summation SST=YTYYTJY×1n$$SST = {Y^T}Y - {Y^T}JY \times \frac{1}{n}$$ n − 1

Significance of the regression equation tested by statistic F:

The test of significance of the regression equation can be done using Table 1 and the test hypothesis is given in the following equation: { H0:β1=β2==βp1=0, H1:At least some βi0,1ip1$$\left\{ {\begin{array}{*{20}{l}} {{H_0}:{\beta _1} = {\beta _2} = \cdots = {\beta _{p - 1}} = 0,} \\ {{H_1}:{\text{At least some }}{\beta _i} \ne 0,1 \leq i \leq p - 1} \end{array}} \right.$$

The test statistic constructed as in Eq. (18) is: F=MSRMSE$$F = \frac{{MSR}}{{MSE}}$$

When H0 is true, F~F(p1,np)$$F\sim F\left( {p - 1,n - p} \right)$$ is established; when H0 is false, there is a tendency for the value of F to be skewed and analyzed at a set level of significance α.

The results of the study on the level of digital literacy of college teachers and its influencing factors
Descriptive statistical analysis of variables

The questionnaire implemented in this study utilized 3 components of gender, age, and education as demographic variables of the teachers. SPSS 26 was used to test the difference in means of the data in order to analyze the variability of the different groups of teachers as follows.

Overall descriptive statistical analysis

Minimum, maximum, mean, and standard deviation of each dimension and overall level of teachers’ digital literacy. The results of the descriptive statistics of digital literacy are shown in Table 3. The table shows that among the five dimensions of digital literacy, the digital social responsibility dimension has the highest mean value of 4.25, which indicates that teachers are more capable of assuming digital social responsibility. The digital awareness dimension had the second highest mean value of 4.05. The professional development dimension had a mean value of 3.76, the digital technology knowledge and skills dimension had a mean value of 3.70, and the minimum value of this dimension was 1.03, indicating that some individual teachers perceived their digital technology knowledge and skills to be poor; the digital application dimension had the lowest mean value of 3.55, indicating that teachers’ self-perceived digital application competence has the most room for improvement among the five dimensions. The overall digital literacy level was 3.862, which indicates that teachers’ digital literacy level was moderately high and required further improvement.

Descriptive statistics of teachers’ digital literacy

Survey variable Minimum value Maximum value Mean value Standard deviation
Digital consciousness 2.29 5 4.05 0.61
Digital technical knowledge and skills 1.03 5 3.70 0.48
Digital application 1.12 5 3.55 0.49
Digital social responsibility 2.05 5 4.25 0.04
Professional development 1.61 5 3.76 0.48
Level of digital literacy 2.83 5 3.862 0.35
Normality test of questionnaire data

Before performing t-test, ANOVA, Pearson correlation analysis, regression analysis, and structural equation modeling tests on the data, it is necessary to test the data for normality. This is because data conforming to a normal distribution is a prerequisite for performing the statistical analysis above. The skewness and kurtosis values of the samples were obtained through SPSS 26, and the results of the normality test of the questionnaire data are shown in Table 4. When the absolute value of skewness is less than 2 and the absolute value of kurtosis is less than 6, it can be assumed that the sample data follows a normal distribution. From the table, it can be seen that the absolute value of skewness of all question item data is less than 1, and the absolute value of kurtosis is less than 1, which is in line with the standard of normal distribution, so the sample data can be analyzed in the next test.

Data normal test results of questionnaire data

Item Degree of bias kurtosis
Statistics Standard deviation Statistics Standard deviation
Q12 -0.703 0.081 0.492 0.216
Q13 -0.637 0.121 0.542 0.19
Q14 -0.397 0.077 0.475 0.158
Q15 -0.332 0.092 0.524 0.199
Q16 -0.177 0.107 0.447 0.189
Q17 -0.017 0.086 0.517 0.17
Q18 -0.112 0.074 0.513 0.211
Q19 -0.009 0.099 0.482 0.171
Q20 -0.111 0.089 0.516 0.189
Q21 -0.228 0.09 0.476 0.173
Q22 -0.099 0.084 0.448 0.186
Q23 -0.274 0.093 0.482 0.186
Q24 -0.085 0.103 0.494 0.146
Q25 -0.313 0.078 0.509 0.178
Q26 -0.294 0.091 0.495 0.2
Q27 -0.328 0.096 0.507 0.168
Q28 -0.272 0.103 0.512 0.153
Q29 -0.324 0.1 0.491 0.194
Q30 -0.291 0.095 0.496 0.181
Q31 -0.292 0.097 0.506 0.166
Q32 -0.296 0.096 0.487 0.146
Q33 -0.295 0.118 0.514 0.199
Q34 -0.3 0.114 0.477 0.17
Q35 -0.322 0.106 0.489 0.183
Q36 -0.321 0.083 0.503 0.19
Q37 -0.322 0.103 0.523 0.194
Q38 -0.32 0.069 0.476 0.183
Q39 -0.336 0.099 0.496 0.172
Q40 -0.32 0.069 0.509 0.167
Q41 -0.275 0.084 0.507 0.171
Q42 -0.313 0.081 0.479 0.151
Q43 -0.319 0.079 0.498 0.177
Q44 -0.297 0.079 0.513 0.168
Differential Analysis of Teachers’ Digital Literacy
Differential analysis of digital literacy among teachers of different genders

Teachers’ gender, which includes both male and female, is a dichotomous variable, so an independent samples t-test was used to analyze the differences in digital literacy among teachers of different genders. The results of the comparison of differences in digital literacy among teachers of different genders are shown in Table 5. It can be seen that the mean values of the digital awareness dimension of teachers of different genders are equal (M=4.063), and the mean values of the other dimensions of digital literacy and the overall level of digital literacy are slightly higher for males than for females, but whether or not the difference between males and females is significant will depend on the test of the t-statistic. The t-statistics tested for the teacher’s gender variable on the five dimensions of digital literacy and the overall level of digital literacy did not reach a significant level, and the p-values were all greater than 0.05, indicating that there is no significant difference between teachers of different genders on the five dimensions of digital literacy and the overall level of digital literacy. Overall, the digital literacy level of male teachers was 3.9974 and that of female teachers was 3.8908, which was slightly higher for males than for females, but there was no significant difference in digital literacy among teachers of different genders.

The difference between different gender teachers’ digital literacy

Test variable Gender Mean value Standard deviation t p
Digital consciousness Male 4.063 0.639 0.002 0.998
Female 4.063 0.601
Digital technical knowledge and skills Male 3.788 0.599 1.806 0.071
Female 3.617 0.587
Digital application Male 4.014 0.607 0.995 0.371
Female 4.006 0.605
Digital social responsibility Male 4.237 0.587 0.164 0.870
Female 4.230 0.603
Professional development Male 3.885 0.61 0.735 0.465
Female 3.538 0.627
Level of digital literacy Male 3.9974 0.6084 0.811 0.418
Female 3.8908 0.6046
Differential analysis of digital literacy among teachers of different ages

In the questionnaire of this study, age was a five-categorical variable, so one-way ANOVA was used. The results of the comparison of differences in digital literacy among teachers of different ages are shown in Table 6. It can be seen that there is no significant difference between teachers of different ages in the dimensions of digital awareness and digital technology knowledge and skills, and the F-values of the overall test are 1.873 and 2.897 (p=>0.05), respectively. There were significant differences in the three dimensions of digital application, digital social responsibility, and professional development, and the F-values of the overall test were 4.401, 4.728, and 4.330 (p < 0.05), respectively. There was a significant difference in the overall level of digital literacy among teachers of different ages, with an F-value of 3.945 for the overall test (p=0.004<0.05). Overall, teachers aged 30 and below had the highest level of digital literacy (M=4.257), teachers aged 30-40 had the second highest level of digital literacy (M=3.888), and teachers aged 40-45 and 45-50 had the lowest level of digital literacy, (M=3.605). It can be seen that there is a significant difference in the digital literacy of teachers of different ages.

Comparison results of different age teachers’ digital literacy

Test variable Gender Mean value Standard deviation t p
Digital consciousness <30 3.757 0.489 1.873 0.124
30-40 3.947 0.488
40-45 3.868 0.494
45-55 4.064 0.478
>55 3.842 0.508
Digital technical knowledge and skills <30 3.723 0.508 2.897 0.052
30-40 3.747 0.497
40-45 3.546 0.504
45-55 3.583 0.503
>55 3.784 0.511
Digital application <30 3.487 0.504 4.401 0.000
30-40 3.878 0.493
40-45 3.683 0.51
45-55 3.583 0.492
>55 3.802 0.488
Digital social responsibility <30 4.027 0.506 4.728 0.000
30-40 4.739 0.512
40-45 4.605 0.526
45-55 4.052 0.509
>55 4.497 0.493
Professional development <30 4.001 0.504 4.330 0.000
30-40 3.466 0.49
40-45 3.938 0.51
45-55 3.764 0.487
>55 3.714 0.506
Level of digital literacy <30 4.257 0.497 3.945 0.002
30-40 3.888 0.507
40-45 3.605 0.521
45-55 3.605 0.477
>55 3.726 0.47
Differential Analysis of Digital Literacy of Teachers with Different Academic Qualifications

In the questionnaire of this study, educational qualification was a five-categorical variable, so one-way ANOVA was used. The results of comparing the differences in digital literacy among teachers with different academic qualifications are shown in Table 7. Looking at the p-value of the F-test, p<0.05 indicates a significant difference and p>0.05 indicates no significant difference. From the table, it can be seen that the p-values of teachers with different degrees in the dimensions of digital literacy and the overall level of digital literacy are greater than 0.05, which indicates that there is no significant difference between teachers with different degrees in the five dimensions of digital literacy and the overall level of digital literacy. Overall, teachers with a doctoral degree had the highest level of digital literacy (M=4.507) and teachers with a master’s degree had the second highest level of digital literacy (M=4.417). Teachers with a high school degree or less had the lowest level of digital literacy (M=3.364). It can be seen that there is no significant difference in the digital literacy of teachers with different degrees.

The difference between different degree teachers’ digital literacy

Test variable Gender Mean value Standard deviation t p
Digital consciousness Below high school 3.481 0.508 2.025 0.103
Junior college 3.775 0.5
undergraduate 3.214 0.51
Master graduate 3.742 0.494
Doctoral student 3.621 0.492
Digital technical knowledge and skills Below high school 3.595 0.499 1.542 0.220
Junior college 3.551 0.526
undergraduate 4.014 0.501
Master graduate 3.918 0.503
Doctoral student 3.814 0.511
Digital application Below high school 3.69 0.53 1.348 0.292
Junior college 3.784 0.514
undergraduate 3.936 0.486
Master graduate 3.751 0.513
Doctoral student 4.379 0.597
Digital social responsibility Below high school 4.026 0.591 1.834 0.141
Junior college 3.448 0.646
undergraduate 3.814 0.608
Master graduate 4.041 0.581
Doctoral student 4.125 0.597
Professional development Below high school 4.122 0.596 1.497 0.235
Junior college 4.177 0.584
undergraduate 4.526 0.623
Master graduate 4.293 0.628
Doctoral student 4.122 0.65
Level of digital literacy Below high school 3.364 0.625 1.757 0.159
Junior college 3.463 0.581
undergraduate 4.285 0.571
Master graduate 4.417 0.639
Doctoral student 4.507 0.171
Findings and Analysis of Digital Literacy among Dimensions
Impact analysis between dimensions

Correlation analysis was used to study the correlation between digital awareness, digital technology knowledge and skills, digital application, digital social responsibility, professional development, and digital literacy, and the strength of the correlation was expressed by the Pearson correlation coefficient. The correlations between the dimensions are shown in Table 8. As can be seen from the table, there is a significant positive correlation between all dimensions (P < 0.01).

The correlation between each dimension

Test variable Digital consciousness Digital technical knowledge and skills Digital application Digital social responsibility Professional development Level of digital literacy
Digital consciousness 1 0.95** 0.928** 0.834** 0.891** 0.689**
Digital technical knowledge and skills 0.95** 1 1.029** 0.804** 0.927** 0.741**
Digital application 0.928** 1.029** 1 0.821** 0.967** 0.777**
Digital social responsibility 0.834** 0.804** 0.821** 1 0.954** 0.657**
Professional development 0.891** 0.927** 0.967** 0.954** 1 0.768**
Level of digital literacy 0.689** 0.741** 0.777** 0.657** 0.768** 1

Notes: *p<0.05, **p<0.01

Regression analysis with digital awareness as dependent variable

In this paper, a linear regression was conducted with digital technology knowledge and skills, digital application, digital social responsibility, professional development, and digital literacy as independent variables and digital awareness as dependent variable. The results of the linear regression analysis with digital awareness as the dependent variable are shown in Table 9. The results show that the regression coefficients of the five independent variables of “digital technology knowledge and skills, digital application, digital social responsibility, professional development and digital literacy” are 0.462, 0.173, 0.219, 0.068 and 0.002 respectively, and the t-values are 30.045, 10.077, 19.807, 4.64 and 0.078 respectively, 19.807, 4.64 and 0.078 respectively; the p-value of all dependent variables except digital literacy is 0.000. Summary: Digital technology knowledge and skills, digital application, digital social responsibility, and professional development will positively affect digital awareness, while digital literacy will not have a significant effect on digital awareness.

Linear regression analysis based on digital consciousness

Test variable Standardized coefficient beta t p VIF R2 Sig.
Constant 16.026 0.000 0.842 F=3457.126P=0.000
Digital technical knowledge and skills 0.462 30.045 0.000 5.006
Digital application 0.173 10.077 0.000 6.006
Digital social responsibility 0.219 19.807 0.000 3.013
Professional development 0.068 4.64 0.000 5.001
Level of digital literacy 0.002 0.078 0.937 1.983
Regression Analysis with Digital Technology Knowledge and Skills as the Dependent Variable

The results of linear regression analysis with digital technology knowledge and skills as the dependent variable are shown in Table 10. From the specific analysis, it can be seen that the regression coefficients of the five independent variables of “digital awareness, digital application, digital social responsibility, professional development and digital literacy” are 0.639, 0.012, 0.065, 0.027 and 0.278, and the t-values are 61.323, 1.171, 5.079, 3.814 and 30.604, respectively; except for digital application, the other four independent variables and digital technology knowledge and skills are linear regression, 5.079, 3.814 and 30.604; except for digital applications, the differences between the other four independent variables and digital technology knowledge and skills were significant (F=7015.538, p=0.000). It can be seen that digital awareness, digital social responsibility, professional development and digital literacy will have a significant relationship with digital technology knowledge and skills, but digital application will not have an influential relationship with digital technology knowledge and skills (P=0.135 > 0.05).

Linear regression analysis of digital technical knowledge and skills

Test variable Standardized coefficient beta t p VIF R2 Sig.
Constant 3.604 0.003 0.951 F=7015.538P=0.000
Digital consciousness 0.639 61.323 0.000 4.016
Digital application 0.012 1.171 0.135 3.002
Digital social responsibility 0.065 5.079 0.000 5.002
Professional development 0.027 3.814 0.000 1.041
Digital literacy 0.278 30.604 0.000 3.008
Regression analysis with digital applications as the dependent variable

The results of the regression analysis with digital application as the dependent variable are shown in Table 11. From the specific analysis, it can be seen that the regression coefficients of the five independent variables of “digital awareness, digital knowledge and skills, digital social responsibility, professional development and digital literacy” are 0.051, 0.303, 0.085, 0.086 and 0.563, and the t-values are 5.173, 29.814, 13.827, 10.394 and 60.099, and the differences between the five independent variables and digital technology knowledge and skills are significant (P=0.000), 13.827, 10.394 and 60.099, and the difference between the five independent variables and digital technology knowledge and skills is significant (p=0.000). It can be seen that digital awareness, digital technology knowledge and skills, digital social responsibility, professional development, and digital literacy will have a significant positive impact on digital adoption.

Regression analysis of digital application

Test variable Standardized coefficient beta t p VIF R2 Sig.
Constant 5.179 0.845 0.967 F=7981.432P=0.000
Digital consciousness 0.051 5.173 0.000 3.002
Digital knowledge and skills 0.303 29.814 0.000 5.041
Digital social responsibility 0.085 13.827 0.000 1.798
Professional development 0.086 10.394 0.000 3.527
Digital literacy 0.563 60.099 0.000 4.198
Regression analysis with digital social responsibility as dependent variable

The results of the regression analysis with digital social responsibility as the dependent variable are shown in Table 12. From the specific analysis, it can be seen that the regression coefficients of the five independent variables of “digital awareness, digital technology knowledge and skills, digital application, professional development and digital literacy” are 0.766, 0.007, 0.247, 0.037 and 0.214, and the t-values are 57.393, 0.517, 19.007, 1.528 and 5.478, and the differences between the five independent variables and the digital technology knowledge and skills are significant (P < 0.007, 1.528 and 5.478, respectively), 19.007, 1.528 and 5.478, and the differences between the five independent variables and digital technology knowledge and skills were significant (p < 0.05). Apparently, there is a highly significant positive effect between digital awareness, digital application, and digital literacy on digital social responsibility (P < 0.01), and there is also a significant effect between digital technology knowledge and skills, professional development, and digital social responsibility (P < 0.05).

Regression analysis of digital social responsibility

Test variable Standardized coefficient beta t p VIF R2 Sig.
Constant 28.959 0.000 0.807 F=3028.159P=0.000
Digital consciousness 0.766 57.393 0.000 3.004
Digital technical knowledge and skills 0.007 0.517 0.573 1.802
Digital application 0.247 19.007 0.000 3.989
Professional development 0.037 1.528 0.112 6.006
Digital literacy 0.214 5.478 0.000 6.912
Regression analysis with professional development as the dependent variable

The results of the regression analysis with digital social responsibility as the dependent variable are shown in Table 13. From the specific analysis, it can be seen that the regression coefficients of the five independent variables of “digital awareness, digital technology knowledge and skills, digital application, digital social responsibility and digital literacy” were 0.096, 0.045, 0.075, 0.373 and 0.447, respectively, and the t values were 14.393, 4.217, 5.007, 29.528 and 57.478, respectively, and there were significant differences between the five independent variables and digital technology knowledge and skills (P<0.01). It can be seen that digital awareness, digital technology knowledge and skills, digital applications, digital social responsibility, and familiarity with information technology hardware and software will have a significant positive resonance relationship on professional development.

Regression analysis of digital social responsibility

Test variable Standardized coefficient beta t p VIF R2 Sig.
Constant 2.959 0.035 0.936 F=6321.150P=0.000
Digital consciousness 0.096 14.393 0.000 1.996
Digital technical knowledge and skills 0.045 4.217 0.000 3.571
Digital application 0.075 5.007 0.000 6.289
Digital social responsibility 0.373 29.528 0.000 6.102
Digital literacy 0.447 57.478 0.000 2.002
Regression analysis with digital literacy as the dependent variable

The results of regression analysis with digital social responsibility as the dependent variable are shown in Table 14. From the specific analysis, it can be seen that the regression coefficients of the five independent variables of “digital awareness, digital technology knowledge and skills, digital application, professional development, and digital social responsibility” are 0.002, 0.091, 0.339, 0.011, and 0.317, and the t-values are 0.155, 3.046, 13.656, 0.772, and 14.492, respectively, 13.656, 0.772, and 14.492.The above results indicate that digital technology knowledge and skills, digital applications, and digital social responsibility will have a positive impact relationship on digital literacy (P=0.000), while digital awareness and professional development do not have a significant effect on digital literacy (P>0.05).

Regression analysis of digital social responsibility

Test variable Standardized coefficient beta t p VIF R2 Sig.
Constant 19.197 0.000 0.565 F=1157.094P=0.000
Digital consciousness 0.002 0.155 0.937 3.003
Digital technical knowledge and skills 0.091 3.046 0.000 6.018
Digital application 0.339 13.656 0.000 6.014
Professional development 0.011 0.772 0.573 3.018
Digital social responsibility 0.317 14.492 0.000 5.978
Paths for improving digital literacy of higher education teachers

The digital literacy of college teachers is closely related to their cognition, attitude, and practice, and is the result of multiple factors. Relying on the diagnostic analysis of the digital literacy ability of college teachers, this study identifies the key factors affecting the improvement of digital literacy, and on this basis proposes an improvement path.

Build a digital teaching platform to improve teaching efficiency and quality. The digital teaching platform is not only an important place for teachers to obtain resources, exchange experiences and conduct teaching activities, but also the key to exploring the integration and innovation of information technology and English education and teaching. When building a digital teaching platform, it should first contain rich teaching resources, such as electronic teaching materials and online courses, to support teachers’ teaching needs. Secondly, a communication community among teachers should be established to enhance collaboration and mutual support among teachers. Finally, necessary technical support services should be provided, including helping teachers solve problems they may encounter when using digital tools and resources, to ensure that they can smoothly use these tools to improve teaching quality.

Implementing targeted training and building a “measurement-evaluation-training” mechanism. Colleges and universities should promote learning through evaluation, promote use through evaluation, promote excellence through evaluation, and carry out targeted testing, evaluation and training of teachers’ digital literacy, so as to produce test content, evaluation content and training content in turn. Among them, the training content should comprehensively cover the digital awareness, digital knowledge and skills, digital application, digital social responsibility, professional development and other aspects of college teachers to realize the enhancement of their digital literacy and digital teaching ability.

Create conditions to promote mutual empowerment of teaching and research. Colleges and universities should fully utilize digital resources to empower teaching and research to complement each other, in order to promote teachers’ digital literacy and stimulate their output in teaching and research.

Do a good job of guiding and enhancing the initiative of digital literacy. Colleges and universities should create conditions to provide more learning opportunities and rich online learning resources, such as MOOCs and educational technology blogs, etc., to guide teachers to enhance their digital application capabilities in a targeted manner according to their individual needs and to meet their professional development needs. At the same time, incentives and recognition mechanisms can be set up to motivate teachers to take the initiative to learn, thereby promoting self-development and forming a sense of lifelong learning.

Conclusion

This paper analyzes the results of the questionnaire survey on teachers’ digital literacy using one-way ANOVA, data mining, and multiple regression algorithms, and proposes a method to improve the digital literacy of college teachers. The following conclusions were obtained:

The digital literacy level of male teachers (3.9974) is slightly higher than that of females (3.8908), but there is no significant difference. Teachers of different ages had significant differences in the three dimensions of digital application, digital social responsibility, and professional development (p < 0.05), and the F values of the overall test were 4.401, 4.728, and 4.330 (p < 0.05), respectively. There was no significant difference in the dimensions of digital literacy and the overall level of digital literacy among teachers with different academic qualifications.

There is a significant positive correlation between all 5 dimensions (p < 0.01). When digital awareness is the dependent variable, it has a positive effect on the remaining 5 dimensions except digital literacy. When digital technology knowledge and skills are the dependent variable, they can produce significant correlations (P < 0.01) on all dimensions except digital application. When the dimensions of digital application and professional development were the dependent variables, respectively, they were able to produce significant correlations with all other indicators. When digital social responsibility is the dependent variable, there is a highly significant positive effect (P < 0.01) only between digital awareness, digital application and digital literacy. When digital literacy is the dependent variable, it can have a positive impact on digital technology knowledge and skills, digital application, and digital social responsibility (P = 0.000).

Acknowledgements

Educational and Teaching Research Project at Northeast Forestry University, “Double-Driven, Three-Stage, Four - Reconstruction” Teaching Research and Practice Based on STEAM Education Concept (DGY2024-19);

Educational and Teaching Research Project at Northeast Forestry University, “Study on the Development Path of Art Practice Teaching in Universities under the Background of ‘Three All - Round Education’” (DGY2024-49).