Research on English Learning Content Rendering and Interactive Application Based on Multimedia Technology
27 lut 2025
O artykule
Data publikacji: 27 lut 2025
Otrzymano: 20 paź 2024
Przyjęty: 21 sty 2025
DOI: https://doi.org/10.2478/amns-2025-0138
Słowa kluczowe
© 2025 Xiaokai Duan, published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
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Comparison of LeNet-5 and WN-LeNet-5 Neural Network Accuracy
Algorithm | Privacy Level( |
||||
---|---|---|---|---|---|
7 | 3 | 1 | 0.5 | 0.1 | |
DPSGD | 93.12% | 92.65% | 91.15% | 90.05% | 83.10 |
WN-DPSGD | 94.63% | 93.06% | 92.77% | 91.63% | 88.68 |
Privacy loss boundary value of different combination mechanisms
Method | Privacy budget boundary value |
---|---|
Common combination mechanism | ( |
Strong combination mechanism | |
Moment accountant mechanism |
Comparison of parameters between ResNet-WN-18 and 5ResNet-18
Layer name | ResNet-18 | Res Net-WN-18 |
---|---|---|
Convolution | 1728 | 1728 |
Normalization layer | 128 | 0 |
Layer 1 | 147968 | 147456 |
Layer 2 | 517120 | 516096 |
Layer 3 | 2066432 | 2064384 |
Layer 4 | 8261632 | 8257536 |
Linear | 5130 | 5130 |
Total | 11000138 | 10992330 |
Comparison of neural network accuracy with different weight noise levels
Model | Weighted noise level | ||||
---|---|---|---|---|---|
0 | 0.001 | 0.1 | 1 | 2 | |
LeNet-5 | 99.20% | 98.72% | 98.01% | Nonconvergence | Nonconvergence |
BN-LeNet-5 | 99.20% | 99.17% | 99.17% | 99.14% | 99.08% |
WN-LeNet-5 | 99.16% | 99.15% | 99.15% | 99.12% | 99.07% |
R Default Parameters
Parameter | Default |
---|---|
0.9 | |
0.01 | |
10–6 | |
5000 | |
∈ | 0.1 |
Q | 100 |
R | 10 |
L | 288 |
Experimental Simulation Environment
Name | Version model |
---|---|
GPU | GeForce GTX 1650 (8GB) |
GPU | Intel Core i7 |
Python | 3.8.5 |
Pytorch | 1.71 (GPU version) |
Effect of hyperbolic discount factor on average relative error
∈= 0.01 | ∈= 0.03 | ∈= 0.05 | ∈= 0.07 | ∈= 0.09 | |
---|---|---|---|---|---|
0.01 | 9.5906 | 3.1894 | 3.1364 | 1.6202 | 1.3371 |
0.1 | 4.0158 | 2.2728 | 1.2470 | 1.0315 | 0.8132 |
1 | 2.9822 | 1.3099 | 0.8551 | 0.5707 | 0.3469 |
10 | 0.9605 | 0.2263 | 0.2120 | 0.2106 | 0.1672 |
100 | 0.2730 | 0.1590 | 0.1488 | 0.1346 | 0.1347 |
Floating point Calculation Times Statistics of Batch Normalization Operation
Batch normalization operation | Floating point number of operations |
---|---|
Comparison of algorithm privacy loss
Data set | Accuracy | Loss of privacy |
Loss of privacy |
Loss of privacy |
|
---|---|---|---|---|---|
MNIST | 88.00% | 10–5 | 0.71 | 0.615 | 0.56 |
90.00% | 1.28 | 1.09 | 0.921 | ||
92.00% | 1.78 | 1.32 | 1.23 | ||
94.00% | 5.73 | 3.68 | 2.98 |