Cognitive Inference of Demographic Data by User Ratings
Jinliang Xu, Shangguang Wang, Fangchun Yang, Rong N. Chang

TL;DR
This paper introduces the R2P model that infers user demographics from ratings data, effectively capturing demographic attributes and improving inference accuracy using a supervised learning approach on real-world datasets.
Contribution
The paper presents a novel R2P model that infers multiple user demographic attributes from sparse ratings data, integrating feature extraction and classification in a supervised framework.
Findings
R2P outperforms existing methods in demographic inference accuracy.
The model effectively captures correlations between different demographic attributes.
Experimental results demonstrate significant improvements on real-world datasets.
Abstract
Cognitive inference of user demographics, such as gender and age, plays an important role in creating user profiles for adjusting marketing strategies and generating personalized recommendations because user demographic data is usually not available due to data privacy concerns. At present, users can readily express feedback regarding products or services that they have purchased. During this process, user demographics are concealed, but the data has never yet been successfully utilized to contribute to the cognitive inference of user demographics. In this paper, we investigate the inference power of user ratings data, and propose a simple yet general cognitive inference model, called rating to profile (R2P), to infer user demographics from user provided ratings. In particular, the proposed R2P model can achieve the following: 1. Correctly integrate user ratings into model training.…
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Taxonomy
TopicsAuthorship Attribution and Profiling · Recommender Systems and Techniques · Topic Modeling
