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arxiv: 2409.08798 · v1 · pith:74J7DG3Vnew · submitted 2024-09-13 · 💻 cs.HC · cs.AI

Reading ability detection using eye-tracking data with LSTM-based few-shot learning

classification 💻 cs.HC cs.AI
keywords abilityreadingdetectionmethodproposeddataeye-trackingfew-shot
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Reading ability detection is important in modern educational field. In this paper, a method of predicting scores of reading ability is proposed, using the eye-tracking data of a few subjects (e.g., 68 subjects). The proposed method built a regression model for the score prediction by combining Long Short Time Memory (LSTM) and light-weighted neural networks. Experiments show that with few-shot learning strategy, the proposed method achieved higher accuracy than previous methods of score prediction in reading ability detection. The code can later be downloaded at https://github.com/pumpkinLNX/LSTM-eye-tracking-pytorch.git

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