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    題名: Bi-Phase LSTM: A LSTM-Based Autoencoder Architecture for Dynamic Social Network Prediction
    作者: Hui, Lin;Chen, Yi-Cheng
    關鍵詞: feature extraction;autoencoder;decoder;long short-term memory;dynamic social network
    日期: 2025-12-02
    上傳時間: 2026-03-10 12:08:54 (UTC+8)
    出版者: Inderscience Enterprises
    摘要: In recent years, social networks have grown in popularity, with most people actively engaging on these platforms. These networks hold valuable insights into users' values and interests, allowing us to analyse relationships between connected individuals and even predict potential friendships. However, social networks are dynamic, and their structure evolves over time. To account for this, we employed a dual approach using a bi-phase LSTM autoencoder and a bi-phase LSTM predictor. These tools capture the changing characteristics of social networks and predict future graph structures. We rigorously tested our model on three datasets and compared its performance with other models. The bi-phase LSTM consistently delivered strong results across all datasets. Additionally, the model's hyperparameters were fine-tuned to improve predictive accuracy, demonstrating its reliability in forecasting the evolution of social network structures.
    關聯: International Journal of Web and Grid Services 21(3-4), p. 209-307
    DOI: 10.1504/IJWGS.2025.150155
    顯示於類別:[資訊工程學系暨研究所] 期刊論文

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