Weakly Supervised Deep Embedding for Product Review Sentiment Analysis

Sandeep P, Dr. D. R. Krithika
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Abstract

Online reviews have become an important source of information for users before making an informed purchase decision. Early reviews of a product tend to have a high impact on the subsequent product sales. In this project, we take the initiative to study the behavior characteristics of early reviewers through their posted reviews on two real-world large e-commerce platforms, i.e., Amazon and Yelp. In specific, we divide product lifetime into three consecutive stages, namely early, majority and laggards. A user who has posted a review in the early stage is considered as an early reviewer. We quantitatively characterize early reviewers based on their rating behaviors, the helpfulness scores received from others and the correlation of their reviews with product popularity. We have found that (1) an early reviewer tends to assign a higher average rating score; and (2) an early reviewer tends to post more helpful reviews. Our analysis of product reviews also indicates that early reviewers’ ratings and their received helpfulness scores are likely to influence product popularity. By viewing review posting process as a multiplayer competition game, we propose a novel margin-based embedding model for early reviewer prediction. Extensive experiments on two different e-commerce datasets have shown that our proposed approach outperforms a number of competitive baselines. In our project we have used algorithms like Decision Tree (DT) and Multi Layer Perceptron (MLP). All are measured in terms of accuracy
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用于产品评论情感分析的弱监督深度嵌入
在线评论已成为用户做出明智购买决策前的重要信息来源。产品的早期评论往往会对产品的后续销售产生很大影响。在本项目中,我们通过亚马逊和 Yelp 这两个现实世界中的大型电子商务平台上发布的评论,主动研究早期评论者的行为特征。具体而言,我们将产品生命周期分为三个连续阶段,即早期、多数和落后。在早期阶段发布评论的用户被视为早期评论者。我们根据早期评论者的评分行为、从他人处获得的有用性评分以及他们的评论与产品受欢迎程度的相关性,对他们进行定量分析。我们发现:(1) 早期评论者倾向于给予更高的平均评分;(2) 早期评论者倾向于发布更多有帮助的评论。我们对产品评论的分析还表明,早期评论者的评分及其获得的有用性分数很可能会影响产品的受欢迎程度。通过将评论发布过程视为多人竞争游戏,我们提出了一种新颖的基于边际的嵌入模型来预测早期评论者。在两个不同的电子商务数据集上进行的广泛实验表明,我们提出的方法优于一些竞争基线。在我们的项目中,我们使用了决策树(DT)和多层感知器(MLP)等算法。所有算法都以准确率为衡量标准
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