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Research on the Popularization of Marxism by Big Data Based on Attention Mechanism

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27. Feb. 2025

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COVER HERUNTERLADEN

Figure 1.

AER-Net Structural diagram
AER-Net Structural diagram

Figure 2.

Convolution feature concatenation graph
Convolution feature concatenation graph

Figure 3.

Basic structure of residual unit
Basic structure of residual unit

Figure 4.

Conv2 _ x residual block structure
Conv2 _ x residual block structure

Figure 5.

Draw accuracy of neural network classification in sample 1
Draw accuracy of neural network classification in sample 1

Figure 6.

Draw accuracy of neural network in sample 2 classification
Draw accuracy of neural network in sample 2 classification

Figure 7.

Comparison of accuracy indexes of ablation experiments
Comparison of accuracy indexes of ablation experiments

Figure 8.

Histogram comparison of ablation experimental results
Histogram comparison of ablation experimental results

Figure 8.

Extraction histogram of the relationship between randomized index and concrete index
Extraction histogram of the relationship between randomized index and concrete index

Comparison of accuracy indexes of ablation experiments(%)

Dimension Bi-LSTM CNN+ATT
valence 76.65 73.14
arousal 70.15 69.03

Comparison of specific indicators

Vector Precision Recall F1
CNN+Attention(Random indicators) 0.8761 0.8483 0.8619
CNN+Attention(Specific indicators) 0.9176 0.8875 0.9021

Depth residual model structure with different layers

lay out sizes 18-lay 34-lay 50-lay 101-lay 152-lay
convl 112x112 7x7,64,stride 2
3x3 max pool, stride 2
conv2_x 56x56 [ 3×3,643x3,64 ]×2 [ 3×3,643×3,64 ]×3 [ 1x1,643x3,641x1,256 ]x3 [ 1×1,643×3,643×3,256 ]×3 [ 3×3,643×3,643×3,256 ]x3
conv3_x 28x28 [ 3×3,1283×3,128 ]×2 [ 3×3,1283×3,128 ]×4 [ 1×1,1283×3,1281×1,512 ]×4 [ 1×1,1283×3,1281×1,512 ]x4 [ 1x1,1283x3,1281x1,512 ]x8
conv4_x 14x14 [ 3x3,2563x3,256 ]x2 [ 3x3,2563x3,256 ]x6 [ 1x1,2563x3,2561x1,1024 ]x6 [ 1x1,2563x3,2561x1,1024 ]x23 [ 1×1,2563×3,2561x1,1024 ]x36
conv5_x 7x7 [ 3×3,5123×3,512 ]×2 [ 3x3,5123x3,512 ]x3 [ 1x1,5123x3,5121x1,2048 ]x3 [ 1×1,5123×3,5121×1,2048 ]x3 [ 1×1,5123x3,5121×1,2048 ]x3
1x1 average pool,1000-d fc, softmax
FLOPs 1.8x109 3.6x109 3.8x109 7.6x109 11.3x109

Draw accuracy of neural network classification on sample 1 and sample 2 datasets

Dataset Model Accuracy Standard deviation
Sample 1 DGCNN 90.04% 19.25
DBN 86.08% 15.35
CNN+ATT 93.73% 3.56
Sample 2 DGCNN 69.88% 25.68
DBN 69.08% 35.21
CNN+ATT 83.59% 8.92

Comparison of efficiency of different model experimental systems

Model Precision Recall F1
SVM 0.9018 0.8743 0.8878
LR 0.7833 0.7642 0.7736
LSTM 0.9384 0.9353 0.9367
BiLSTM 0.9408 0.9321 0.9363
CNN 0.9264 0.9264 0.8641
CNN+ATT 0.9532 0.9401 0.9449
Sprache:
Englisch
Zeitrahmen der Veröffentlichung:
1 Hefte pro Jahr
Fachgebiete der Zeitschrift:
Biologie, Biologie, andere, Mathematik, Angewandte Mathematik, Mathematik, Allgemeines, Physik, Physik, andere