Relevance Prediction from Eye-movements Using Semi-interpretable Convolutional Neural Networks
January 15, 2020 Β· Declared Dead Β· π Conference on Human Information Interaction and Retrieval
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Authors
Nilavra Bhattacharya, Somnath Rakshit, Jacek Gwizdka, Paul Kogut
arXiv ID
2001.05152
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.CV,
cs.IR
Citations
25
Venue
Conference on Human Information Interaction and Retrieval
Last Checked
4 months ago
Abstract
We propose an image-classification method to predict the perceived-relevance of text documents from eye-movements. An eye-tracking study was conducted where participants read short news articles, and rated them as relevant or irrelevant for answering a trigger question. We encode participants' eye-movement scanpaths as images, and then train a convolutional neural network classifier using these scanpath images. The trained classifier is used to predict participants' perceived-relevance of news articles from the corresponding scanpath images. This method is content-independent, as the classifier does not require knowledge of the screen-content, or the user's information-task. Even with little data, the image classifier can predict perceived-relevance with up to 80% accuracy. When compared to similar eye-tracking studies from the literature, this scanpath image classification method outperforms previously reported metrics by appreciable margins. We also attempt to interpret how the image classifier differentiates between scanpaths on relevant and irrelevant documents.
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