Learning to recommend questions based on user ratings

Ke Sun, Yunbo Cao, Xinying Song, Young-In Song, Xiaolong Wang, Chin-Yew Lin
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引用次数: 38

Abstract

At community question answering services, users are usually encouraged to rate questions by votes. The questions with the most votes are then recommended and ranked on the top when users browse questions by category. As users are not obligated to rate questions, usually only a small proportion of questions eventually gets rating. Thus, in this paper, we are concerned with learning to recommend questions from user ratings of a limited size. To overcome the data sparsity, we propose to utilize questions without users rating as well. Further, as there exist certain noises within user ratings (the preference of some users expressed in their ratings diverges from that of the majority of users), we design a new algorithm called 'majority-based perceptron algorithm' which can avoid the influence of noisy instances by emphasizing its learning over data instances from the majority users. Experimental results from a large collection of real questions confirm the effectiveness of our proposals.
学习根据用户评分推荐问题
在社区问答服务中,通常鼓励用户通过投票对问题进行评分。当用户按类别浏览问题时,获得最多投票的问题会被推荐并排在最前面。由于用户没有义务对问题进行评级,通常只有一小部分问题最终得到评级。因此,在本文中,我们关注的是从有限规模的用户评分中学习推荐问题。为了克服数据稀疏性,我们建议使用不带用户评分的问题。此外,由于用户评分中存在某些噪声(一些用户在评分中表达的偏好与大多数用户的偏好不同),我们设计了一种称为“基于多数的感知器算法”的新算法,该算法通过强调对大多数用户的数据实例的学习来避免噪声实例的影响。大量实际问题的实验结果证实了我们的建议的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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