In online review sites, the analysis of user feedback for assessing its helpfulness for decision-making is usually carried out by locally studying the properties of individual reviews. However, global properties should be considered as well to precisely evaluate the quality of user feedback. In this paper we investigate the role of deviations in the properties of reviews as helpfulness determinants with the intuition that "out of the core" feedback helps item evaluation. We propose a novel helpfulness estimation model that extends previous ones with the analysis of deviations in rating, length and polarity with respect to the reviews written by the same person, or concerning the same item. A regression analysis carried out on two large datasets of reviews extracted from Yelp social network shows that user-based deviations in review length and rating clearly influence perceived helpfulness. Moreover, an experiment on the same datasets shows that the integration of our helpfulness estimation model improves the performance of a collaborative recommender system by enhancing the selection of high-quality data for rating estimation. Our model is thus an effective tool to select relevant user feedback for decision-making.
翻译:在线审查网站对用户反馈进行分析,以评估用户反馈对决策的有用性,通常通过在当地研究个别审查的特性来进行;然而,全球特性应同时考虑,以便准确评价用户反馈的质量;在本文件中,我们调查审查性质偏差的作用,作为“核心”反馈有助于项目评价的直觉的有益性决定因素;我们提出了一个新的有益性估计模型,将以前的模型与同一人撰写的审查或同一项目审查的评级、长度和极性偏差分析相扩展;对从叶尔普社会网络摘取的两份大型审查数据集进行的回归分析表明,基于用户的审查长度偏差和评级明显影响人们所认为的有益性;此外,对同一数据集的实验表明,将我们的“核心”反馈模型整合起来,通过加强选择用于评级估计的高质量数据,改善了协作性建议系统的业绩;因此,我们的模型是选择决策相关用户反馈的有效工具。