Abstract
In this paper, we develop an approach to automatically predict user ratings for recipes at Epicurious.com, based on the recipes' reviews. We investigate two distributional methods for feature selection, Information Gain and Bi-Normal Separation; we also compare distributionally selected features to linguistically motivated features and two types of frameworks: a one-layer system where we aggregate all reviews and predict the rating vs. a two-layer system where ratings of individual reviews are predicted and then aggregated. We obtain our best results by using the two-layer architecture, in combination with 5 000 features selected by Information Gain. This setup reaches an overall accuracy of 65.60%, given an upper bound of 82.57%.
Cite
CITATION STYLE
Liu, C., Guo, C., Dakota, D., Rajagopalan, S., Li, W., Kübler, S., & Yu, N. (2014). “My Curiosity was Satisfied, but not in a Good Way”: Predicting User Ratings for Online Recipes. In SocialNLP 2014 - 2nd Workshop on Natural Language Processing for Social Media, in conjunction with COLING 2014 (pp. 12–21). Association for Computational Linguistics (ACL). https://doi.org/10.3115/v1/w14-5903
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