Local Regression Transfer Learning for Users Personality Prediction
Guan, ZD (Guan, Zengda); Guan, ZD (Guan, Zengda); Nie, D (Nie, Dong); Hao, BB (Hao, Bibo); Bai, ST (Bai, Shuotian); Zhu, TS (Zhu, Tingshao)
2014
会议日期AUG 11-14, 2014
会议地点Univ Warsaw, Warsaw, POLAND
关键词Local Regression Transfer Learning Importance Reweighting Personality Prediction
卷号8610
期号不详
页码23-34
国家POLAND
英文摘要

    Some research has been done to predict users' personality based on their web behaviors. They usually use supervised learning methods to model on training dataset and predict on test dataset. However, when training dataset has different distributions from test dataset, which doesn't meet independently identical distribution condition, traditional supervised learning models may perform not well on test dataset. Thus, we introduce a new regression transfer learning framework to deal with this problem, and propose two local regression instance-transfer methods. We use clustering and k-nearest-neighbor to reweight importance of each training instance to adapt to test dataset distribution, and then train a weighted risk regression model for prediction. We perform experiments on the condition that users dataset are from different genders and from different districts, and the results indicate that our methods can reduce mean square error about 30% to the most compared with non-transfer methods and be better than other transfer method in the whole.

会议录ACTIVE MEDIA TECHNOLOGY, AMT 2014
语种英语
ISBN号978-3-319-09912-5; 978-3-319-09911-8
WOS记录号WOS:000349148900003
内容类型会议论文
源URL[http://ir.psych.ac.cn/handle/311026/26349]  
专题心理研究所_社会与工程心理学研究室
作者单位Chinese Acad Sci, Inst Psychol, Beijing
推荐引用方式
GB/T 7714
Guan, ZD ,Guan, ZD ,Nie, D ,et al. Local Regression Transfer Learning for Users Personality Prediction[C]. 见:. Univ Warsaw, Warsaw, POLAND. AUG 11-14, 2014.
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