Research on Optimizing the Development of Sports and Leisure Industry Using Genetic Algorithm to Promote the Growth of Local Sports Economy
Data publikacji: 21 mar 2025
Otrzymano: 07 paź 2024
Przyjęty: 01 lut 2025
DOI: https://doi.org/10.2478/amns-2025-0564
Słowa kluczowe
© 2025 Yanhua Jiao et al., published by Sciendo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Since the emergence of leisure, sports have become the first choice for people’s leisure with its incomparable participation value. The combination of sports and leisure has attracted more and more people to participate in it with its unique charm and positive and healthy recreation, reflecting people’s pursuit of happiness and free spirit after a certain stage of economic development, and reflecting the real charm of sports as a culture [1–3]. Leisure sports can be summarized as a positive lifestyle based on sports activities in leisure time to achieve the goal of healthy physical and mental development. Leisure sports industry belongs to the field of sports industry, is to meet the increasing demand for people’s management of their own corresponding to the provision of fitness, entertainment, tourism, leisure in one of the sports products, which is mainly a service industry [4–6]. The development of sports and leisure requires the input of production materials such as people, money and materials, and can provide health products for the public, and such products have been partially or completely into the market, in line with the requirements of industrial economics and market economics, is the application of sports means to realize their own value and significance of the development, production and provision of leisure commodities industry [7–10]. The continuous development of sports and leisure industry has an important role in promoting the local sports economy, which can be summarized in four aspects: it can continuously improve the sports infrastructure and provide good conditions for people. It can provide people with more employment opportunities, alleviate the employment pressure in the region and improve people’s living standard. It can enrich people’s cultural life, improve the comprehensive quality of the population, and promote the continuous growth of local sports economy [11–14].
At the present stage, China’s sports and leisure market, with the sports sector as the mainstay, joint investment by a variety of economic constituents, and broad participation by all sectors of society, has taken initial shape to basically satisfy the needs of consumers of different grades, and is relying on the rapid development of the national economy and the vigorous emergence of the national fitness movement. The sports and leisure industry has become one of the most promising industries in China due to its extensive, complex and close industrial association, which has driven the development of sports tourism, sports finance and insurance, sports labor service, sports intermediary industry, sports goods industry and other related industries [15–18].
In this paper, a multi-objective optimal allocation model of sports and leisure resources based on improved genetic algorithm is constructed, and the traditional variation operator of genetic algorithm is improved to non-uniform variation operator, which realizes the fast and accurate optimization seeking effect on the multi-objective planning model of sports and leisure resources, and thus promotes the development of sports and leisure industry. In addition, in order to further verify the effect of the model on the development of local sports economy, vector autoregression (VAR) model is used to analyze the correlation between the development of sports and leisure industry and the development of local economy, in order to provide a direction guide to promote the design of synergistic development of sports and leisure industry and local sports economy.
This paper first constructs a cross-regional multi-objective planning model for sports and leisure resources to achieve the integration decision of sports and leisure resources, and then uses an improved genetic algorithm to find the optimal model, so as to achieve the optimization of the development of sports and leisure industry and to promote the growth of local sports economy.
The study of multi-objective planning problems, which involves defining multi-objective functions with constraints and conflicting multi-objective functions to construct multi-objective optimization models and solve the optimal decision space. It is widely used to analyze and solve real problems in many fields such as engineering optimization, mathematical finance, etc. The general form of its optimal decision planning model is:
Constraints:
The integration and sustainable development of sports and leisure resources need to seek a balance between conservation and development. First of all, conservation objectives include two major categories: natural resources and socio-cultural resources. The objective of conservation of natural resources is to maintain and restore the natural and ecological environments. The protection of sociocultural resources includes the uniqueness of local culture, the traditional characteristics of folkways and customs, and the “adaptability” of the lives and psychology of local residents. Secondly, the developmental goals are divided into three main categories: first, the growth of income and growth and expansion of sports and leisure tourism enterprises, the expansion of the structure, scale and market life of the tourism industry itself, and the maximization of the economic benefits of sports and leisure. Secondly, to maximize the sports and leisure experience and satisfaction of tourists. Third, to realize the coordinated development of sports and leisure resources and the sports economy. Regional sports and leisure resources have their own characteristics and complement each other. Based on the above single-objective analysis, a multi-objective model is constructed to achieve harmony between humans and nature and to coordinate the economic and social environments.
Where Sports and Leisure Economic Development Objective Among them, Tourist sports and leisure tour experience goal Where, Sports and leisure ecological resources protection and restoration Objective Where
Decision-making attributes, i.e. constraints, need to construct constraint terms according to the industrial economy, natural environment, regional cooperation level and other factors in the development stage of local sports and leisure, and the study presupposes the following decisionmaking attributes (but not limited to):
Sports and leisure industry structure coordination:
The regional natural environment reaches the standard:
Where Analysis of factors for decision-making attributes In the process of integrating local sports and leisure resources, “coordination of industrial structure” and “regional natural environment” are measurable hard indicators, while empirical analysis needs to transform soft conclusions into measurable data through interviews and surveys, and the formation of constraints involves the following major conflicts of interest. The formation of the constraints involves the following major conflicts of interest: Conflict of interest in objectives between administrative regions Although the cross-regional sports and leisure tourism cooperation has broken the administrative boundaries between regions, it is largely subject to the constraints of the administrative power of the local governments, and the constraints of the “region-oriented” concept and the “administrative region economy” have led to the asymmetry of talents, capital, technology, information, resource endowments and the lack of smooth communication and coordination channels, and the cross-regional flow of production factors is often subject to the rigid constraints of administrative divisions. Problems such as homogeneous competition of sports and leisure tourism products, inconsistent marketing actions of sports and leisure tourism, and different standards and policies of sports and leisure tourism. The management model of “sports dismemberment” hinders the process of cross-regional integration and development of sports and leisure resources, which not only restricts the strategic cooperation between provinces and cities, but also affects the overall planning and resource allocation between different urban areas of the same province and city. Conflict of interest among government departments Due to the arrangement of administrative affiliation and functional management mechanisms, the development, utilization, and management of sports and leisure resources involve many functional departments. In the face of the development, utilization and management of sports and leisure resources, under the premise that each administrative department is responsible for its own duties, the concept of overall layout is generally ignored, which hinders the transformation of sports and leisure resources from general leisure resources to high-quality sports and leisure resources, and affects the enhancement of the grade of sports and leisure resources as well as their efficient development and utilization. There are two main reasons for this situation: first, the planning between departments is not unified, and there is a serious conflict of objectives. The second is that departmental “overlapping management boundaries” have resulted in the misalignment of management boundaries and functional boundaries, hindering the overall integration and rational allocation of sports and leisure resources. Conflict of interest between governmental enterprises’ goals The cooperative development of sports and leisure tourism resources is often led by the local government, while regular and specific cooperation must be realized through the behavior of enterprises, and the two paths lead to an easy conflict of goals between the government and enterprises. For example, enterprises need high-quality talents, while the government wants to arrange employment for local residents as much as possible. Enterprises prioritize short-term economic gains, while resource management departments prioritize sustainable development. In addition, the improper behavior and management omission of government departments can also cause the enthusiasm and initiative of enterprises, which is the main body of sports and leisure tourism development, resulting in the slow development of sports and leisure tourism, ineffective market cultivation strategy, low level of marketization and service standards, and low level of enterprise specialization. Conflict of interest among enterprise subjects The cooperation of enterprises upstream and downstream of the value chain of the sports and leisure industry is conducive to extending the scope of the existing business, but too much focus on the competition for their own interests has led to the competitive behavior of maximizing local interests, which ultimately stalls the process of market-oriented operation of sports and leisure tourism cooperation. Enterprises in a certain link in the same value chain are bound to undergo some degree of differentiation in the cooperative development of resources.
Decision-making threshold and target satisfaction function Set the interval of indicators acceptable for decision-making as [ Integration of regional sports and leisure total goal satisfaction function The total satisfaction function of the regional decision maker is a linear integration of the coordinated coupling of the three major goal satisfaction in the region, which can be further derived by the integration of the satisfaction function between the decision indicators of each political region and sector. If the satisfaction level of each specific region or sector
Genetic Algorithm (GA) is a search algorithm based on the principles of natural selection and genetics, which abstracts the problem space as a population of individuals and explores the most adapted individuals by repeatedly iterating to produce offspring [19]. Genetic algorithms evolve the initial population into a high-quality population where each individual represents a solution to its problem. The quality of each individual is measured by a fitness function, which is a quantitative representation of each individual’s adaptation to a particular environment. The process starts with an initial population of randomly generated individuals. For example let the function optimization problem be:
Where
The flow of the genetic algorithm is shown in Fig. 1, and its solution steps are as follows:
Coding Traditional genetic algorithms generally use binary coding, set the length of the code as In the formula The range of variable values [ Random generation of initial parent population Set the population size as Setting the fitness function Decode the binary into variable In fact genetic algorithms consist of two main processes. The first process is the selection of individuals to reproduce the next generation, and the second process is the manipulation of the selected individuals to form the next generation through hybridization and mutation techniques. The mechanism that determines which individuals are selected for reproduction also determines how many offspring each selected individual produces. The main principle of the selection strategy is that the better the individual, the more likely they are to become a parent. Selection The selection operation is to choose elite individuals as parents in the current population that can produce offspring. The fitness value is used as a criterion to determine whether an individual is elite or not. There are many methods to select the best individual, such as roulette selection, Boltzmann selection, tournament selection, rank selection, steady-state selection, elite selection, etc. Roulette selection is commonly used, i.e., the selection probability of the Calculate the probability of selecting each individual, draw a pie chart of the probabilities, and imagine spinning a roulette wheel and the hands of the wheel randomly selecting one. Think of this as selecting a Crossbreeding of parent individuals The generation of offspring in a genetic algorithm is determined by a set of operators that recombine and mutate selected members of the current population. The principle of hybridization operator is to generate two new offspring from two parent strings by copying the genes selected with specified hybridization rules from both parent strings. The gene selected at position In single-point hybridization, the construction of the hybridization mask always starts with a string containing Two-point hybridization, on the other hand, reproduces offspring by replacing the middle segment of one parent string with the middle of a second parent string. The hybridization mask is a string starting with Mutation The control parameter for variation is Evolutionary Iteration The

Flowchart of genetic algorithm
The genetic algorithm includes three operators: selection, hybridization, and mutation. However, this paper only improves the mutation operator. The selection operator still uses the classic roulette wheel, where the higher the fitness of an individual, the higher the probability that its genes will be retained, and replaces the contemporary worst-fit individual with the selected historically optimal individual. Then all individuals mutate with a certain probability to produce the next generation of individuals. The advantage of the mutation operator is that it improves the global search ability of the algorithm, but it may slow down the convergence time and thus have poor local optimization ability. In order to improve the disadvantage of the traditional mutation operator, this paper proposes to replace the traditional genetic algorithm with a non-uniform mutation operator [20]. The specific idea is: select the
Where:
Among them:
From Eq. (16), the changeable range of Δ
The parameter population size Real number coding. The objective of the optimal allocation model of sports and leisure resources is to find Select a reasonable fitness function. In this paper, we directly take the maximum total value of sports economic output as the evaluation function of individual Generate initialized population. Randomly generate the initial population with a population size of Individual evaluation. The fitness values of all individuals in the population are calculated by the fitness function Individual crossbreeding. Adopt the gambling wheel method to select individual Mutation operation. Generate Evaluate the child individuals. For the Check the termination condition. When the number of iterations of the algorithm
According to the improved genetic algorithm to solve the problem of optimal allocation of sports and leisure industry resources, Matlab R2022a is used to write a solution implementation program for the structural model of sports and leisure resources in Province H. The range of the distribution of each variable is set slightly, the population size is taken to be 60, and the crossover rate is 0.4, of which the number of single-point crossover individuals is 4 pairs, the number of arithmetic crossover individuals is 6 pairs, and the number of heuristic crossover individuals is 14 pairs. The variation rate was 0.3, with 2 individuals with boundary variation, 4 individuals with uniform variation, 4 individuals with non-uniform variation, and 8 individuals with multi-point non-uniform amount of variation, and a series of 50 pareto solutions (valid solutions) of the model were obtained after several iterations. Figure 2 depicts the spatial distribution of the resulting solutions.

Solving surface that pareto to the model
Considering the sequence of pareto solutions, comprehensively measuring each variable, analyzing the results of the objective function and consulting relevant experts, the 30th effective solution is chosen as the “optimal solution” for the optimization of the resource allocation structure of the whole sports and leisure industry, as shown in Table 1. In Table 1, the unit of
Pareto solution of sports leisure resource allocation optimization
Variables | |||||
---|---|---|---|---|---|
Optimization value | 162.37 | 41.28 | 201.45 | 305.74 | 9.159 |
Variables | |||||
Optimization value | 13.412 | 29.508 | 69.631 | 24.259 | 43.083 |
Variables | |||||
Optimization value | 26.564 | 58.317 | 28.243 | 21.267 | 30.524 |
Variables | |||||
Optimization value | 501.21 | 324.52 | 2908.74 | 1224.32 | 30071 |
Variables | |||||
Optimization value | 2406.32 | 51.718 | 611.45 | 0.0009 | 849.62 |
In order to better assess the effectiveness of the constructed multi-objective optimal allocation model of sports and leisure resources, i.e., the efficacy of the improved genetic algorithm in optimizing the development of the sports and leisure industry and thus promoting the growth of the local sports economy, this paper explores the relationship between the development of the sports and leisure industry and the growth of the local sports economy by using the VAR model.
The vector autoregressive (VAR) model employs an unstructured approach aimed at exploring the interactions between variables in an economic system and analyzing the dynamic shocks of random disturbance terms on economic variables [21].The core idea of the VAR model is that each endogenous variable is regressed on the lagged values of all the endogenous variables of the model to estimate the dynamics of the full set of endogenous variables.
In Eq. (18),
The variables analyzed in this study are “Value Added of Sports and Leisure Industry (TYC)” and “Regional GDP (hereinafter referred to as GDP)”, and since both of them are time-series variables, there may be the influence of heteroskedasticity. Therefore, in this study, we firstly take the natural logarithm of the variables as
In this study, we use ADF (Augmented Dickey-Fuller) method to carry out the unit root test, and the mathematical expression of ADF test method is:
Eq. (19) where (Δ
The results of the smoothness test of the value added of sports and leisure industry and gross regional product are shown in Table 2. The results show that the ADF values of
Stability test of sports industry added value and GDP
Variables | ADF test value | t statistic | Stability | ||
---|---|---|---|---|---|
1% threshold | 5% threshold | 10% threshold | |||
5.042 | -2.704 | -1.941 | -1.598 | Non-stationary | |
7.641 | -2.704 | -1.941 | -1.598 | Non-stationary | |
-1.185 | -2.704 | -1.941 | -1.598 | Non-stationary | |
-2.235 | -2.704 | -1.941 | -1.598 | Non-stationary | |
-2.934 | -2.704 | -1.941 | -1.598 | Smooth | |
-2.738 | -2.704 | -1.941 | -1.598 | Smooth |
According to the results of ADF unit root test, it can be seen that there may be a smooth long-term equilibrium relationship between the two series of data, i.e. “co-integration relationship”. In order to further clarify whether there is a long-term equilibrium relationship between the value-added of sports and leisure industry and the gross regional product, this paper carries out the cointegration test.
Determining the number of lags is a prerequisite for the cointegration test. According to the criteria of LL, LR, AIC, HQIC, SBIC, etc., the optimal lag period is found to be 2. In addition, through the parameter estimation of the cointegration test of the two series of data, it can be seen that the trace test statistic of the hypothesis that “there is no cointegration relationship between
The vector correction error model (VCE) is built on the basis that two time series variables have a long-term cointegration relationship, which is a measure of short-term fluctuations between the time series variables. Based on the cointegration relationship between
In equation (20),
The fit index
The results of the vector error correction model test are shown in Table 3. As can be seen from Table 3, the coefficient estimate of the error correction model with the explanatory variable being the value added of sports and leisure industry is -1.3026, and the corresponding companion probability P=0.179>0.05, indicating that the adjustment strength of regional GDP to the deviation of the value added of sports and leisure industry from the long-run equilibrium relationship is not significant. On the contrary, the adjustment of the value added of sports and leisure industry to the deviation of GDP from the long-run equilibrium relationship is significant (the estimated value of the model coefficient is -0.2526, and the probability of companionship is P=0.000<0.05), which indicates that the value added of the sports and leisure industry in the current period is able to adjust the deviation of the previous period with the strength of -0.2526, and pull it back to the long-run equilibrium state.
Test results of vector corrected error model
Explained variable | Interpretation variable | Coefficient estimate | Standard deviation | Z statistic | Interaction probability (P value) |
---|---|---|---|---|---|
TYC | Δ |
2.2658 | 0.0758 | -37.92 | 0.000 |
Δ |
1.3984 | 1.4934 | 1.03 | 0.328 | |
Δ |
0.9243 | 0.7732 | 1.18 | 0.274 | |
-1.3026 | 0.9463 | -1.52 | 0.179 | ||
0.0065 | 0.1842 | 0.04 | 0.993 | ||
GDP | Δ |
0.4793 | 0.0187 | -37.65 | 0.000 |
Δ |
0.0542 | 0.2075 | 0.20 | 0.829 | |
Δ |
0.2567 | 0.3793 | 0.65 | 0.537 | |
-0.2526 | 0.5324 | -0.53 | 0.000 | ||
0.0460 | 0.0459 | 0.88 | 0.418 |
The results of the vector correction error model test are shown in Table 3.
According to the existing analysis, it is known that there is a smooth long-term positive equilibrium relationship between the value added of the sports and leisure industry and the gross regional product, and the optimal lag period is 2, so the model parameters of VAR(2) can be estimated. The results of parameter estimation for the VAR model for the series of value added in sports and leisure industry and gross regional product are shown in Table 4.
Parameter estimation of VAR model
Variable | ||
---|---|---|
0.6648 | 0.1759 | |
(0.7458) | (0.1926) | |
[0.94] | [0.96] | |
-0.9642 | -0.0674 | |
(0.8135) | (0.2082) | |
[-1.22] | [-3.38] | |
3.4278 | 0.7869 | |
(3.4275) | (0.8523) | |
[1.07] | [0.98] | |
-0.7025 | -0.0456 | |
(1.8051) | (0.4373) | |
[-0.39] | [-0.14] | |
Constant term | -25.0564 | 3.0226 |
(21.3515) | (5.2713) | |
[-1.19] | [0.62] | |
0.9843 | 0.9964 | |
41.0548 | 139.8421 | |
0.0019 | 0.0002 | |
-6.4927 | -3.1954 | |
-7.2149 | -3.8516 | |
-6.4208 | -3.1454 |
The results in Table 4 show that the goodness of fit of mnTYC and hGDP are 0.9758 and 0.9931, respectively, and the two fit indices are good. Meanwhile, the characteristic polynomial inverse roots of the VAR(2) model are shown in Fig. 3, which shows that the inverse of the characteristic polynomial roots are all within the unit circle range, indicating that the stability of the two serial data is good. This indicates that the economic system between the development of sports and leisure industry and local economic growth has stability, and can gradually recover to a stable equilibrium state with the passage of time when it is hit by external disturbing factors.

VAR model characteristic polynomial inverse root
In the results of parameter estimation of VAR(2) model, as far as the development of sports and leisure industry is concerned, the coefficients of the influence of regional GDP on the value added of sports and leisure industry in lag 1 and 2 periods are 3.4278 and -0.7025, respectively, but this influence is statistically insignificant, which indicates that the regional economic growth has little influence on the development of sports and leisure industry in the short term. From the perspective of regional economic growth, the coefficients of the impact of the value added of sports and leisure industry on regional GDP in lag 1 and 2 periods are 0.1759 and -0.0674 respectively, and the coefficients of the lag 2 periods are significantly affected at the 1% level, which means that the development of sports and leisure industry is able to promote the growth of the local sports economy, and that this positive impact gradually slows down with the passage of time.
In order to further explore the specific correlation between the two variables of sports and leisure industry development and local sports economy, this paper explores the detailed influence mechanism through Granger causality analysis, impulse response function (IRF) analysis and variance decomposition analysis.
In order to verify the existence of causal relationship between the added value of sports and leisure industry and local economic development, this paper selects Granger causality test for analysis on the basis of cointegration analysis. The test model is:
Where
In a VAR model, a random disturbance shock to an endogenous variable not only affects itself directly, but can also affect other variables industry by passing this disturbance to other endogenous variables through the dynamic structure of the model. Impulse response function (IRF) analysis is mainly used to measure the impact of a one standard deviation shock to the randomly perturbed term on the current and future values of the endogenous variables. By analyzing the shock response function, it is possible to identify the dynamic response of each variable to the perturbation term’s shock.
The impulse response and cumulative impulse response of

The impulse response and cumulative impulse response of

The impulse response and cumulative impulse response of

The impulse response and cumulative impulse response of

While the impulse response function describes the effect of a shock to one endogenous variable on the other endogenous variables, the variance decomposition provides another way of describing the dynamics of the system by analyzing the degree of contribution of each structural shock to the change in the endogenous variable and further evaluating the importance of the different structural shocks. By decomposing the mean square error of a variable shock into the contribution made by the random shocks of each variable in the system, and then calculating the relative importance of each variable shock, i.e., the ratio of the contribution of the variable shocks to the total contribution is the result of the equation decomposition. The results of the variance decomposition of the VAR model are shown in Table 5.
Variance decomposition of VAR model
Period | ||||||
---|---|---|---|---|---|---|
S.E. | S.E. | |||||
1 | 0.2356 | 100.0000 | 0.0000 | 0.0881 | 51.6388 | 48.3612 |
2 | 0.0975 | 52.9653 | 47.0347 | 0.1117 | 52.9158 | 47.0842 |
3 | 0.1545 | 62.3246 | 37.6754 | 0.1332 | 55.2703 | 44.7297 |
4 | 0.1693 | 62.4273 | 37.5727 | 0.1567 | 57.0939 | 42.9061 |
5 | 0.1887 | 64.2145 | 35.7855 | 0.1745 | 58.2465 | 41.7535 |
6 | 0.1896 | 64.4615 | 35.5385 | 0.1796 | 57.9066 | 42.0934 |
7 | 0.1905 | 64.0687 | 35.9313 | 0.1922 | 57.1062 | 42.8938 |
8 | 0.2182 | 62.1418 | 37.8582 | 0.2109 | 57.1469 | 42.8531 |
9 | 0.2514 | 63.0612 | 36.9388 | 0.2198 | 57.9134 | 42.0866 |
10 | 0.2492 | 63.8279 | 36.1721 | 0.2295 | 58.0631 | 41.9369 |
11 | 0.2542 | 64.1278 | 35.8722 | 0.2413 | 58.3265 | 41.6735 |
12 | 0.2545 | 64.4675 | 35.5325 | 0.2442 | 58.0489 | 41.9511 |
The variance decomposition of
This paper constructs a cross-regional multi-objective integration model of sports and leisure resources, and realizes the further optimization of the model by using the improved genetic algorithm based on the non-uniform variation operator, and explores the relationship between the development of the sports and leisure industry and the development of the local economy based on the VAR model, and designing a practical path for the synergistic development of the two.
The multi-objective optimization model of sports and leisure resource allocation solves a total of 50 pareto solution sequences, and the 30th effective solution is selected as the “optimal solution” for the optimization of the resource allocation structure of the whole sports and leisure industry by comprehensively measuring the variables and analyzing the results of the objective function and consulting with relevant experts.
The optimal lag period of the cointegration test between the value added (TYC) of the sports and leisure industry and the series data of gross domestic product (GDP) is 2, and the trace test statistic of “
The variance decomposition shows that in period 1 the predicted variance of