Submitted:
29 June 2025
Posted:
08 July 2025
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Abstract
Keywords:
1. Introduction
2. Related Works
3. Methods and Materials
3.1. Dataset Overview


- AD group: Mean duration of 13.5 minutes (min = 5.1, max = 21.3)
- FTD group:Mean duration of 12 minutes (min = 7.9, max = 16.9)
- CN group: Mean duration of 13.8 minutes (min = 12.5, max = 16.5)

3.2. Signal Preprocessing and Feature Extraction

3.2.1. Data Preprocssing
3.2.2. Signal Segmentation
3.2.3. Data Standardization
3.2.4. Data Reduction

3.2.5. Feature Extraction
- Delta:(1–4 Hz)
- Theta:(4–8 Hz)
- Alpha: (8–13 Hz)
- Beta: (13–30 Hz)
- Gamma: (30–60 Hz)
4. Implemented Approaches
4.1. Machine Learning Models
4.1.1. K-Nearest Neighbors (KNN)
4.1.2. Support Vector Machines (SVM)
4.2. Deep Learning Architectures
4.3. EXplainibilty AI, XAI
5. Results & Discussion
6. Conclusions and Future Work
References
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| The model | Accurancy | Precision | Recall | F1 Score |
| KNN | 38% | 43% | 49% | 46% |
| SVM | 40% | 45% | 47% | 49% |
| LSTM | 84% | 83% | 84% | 71% |
| Bidrectional LSTM | 98% | 99% | 99% | 99% |
| Sliding Window | 3s | 5s | 7s | 10s | 12s |
| Accurancy | 0.987703 | 0.981313 | 0.964953 | 0.934151 | 0.879695 |
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