从电子商务产品评论中生成正面和负面情绪词云

Shaswat Dharaiya, Bhavin Soneji, D. Kakkad, N. Tada
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引用次数: 3

摘要

大多数喜欢在电子商务网站上在线购买产品的客户倾向于依赖其他客户对产品的评级或现有客户评论的摘要。然而,评论文本中存储了大量有意义的数据,这些数据无法通过客户评级或评论摘要来表示。但是把每一个审查都看一遍是低效的。因此,我们的模型采用两种方法来演示和解决生成的问题——通用方法(根据评级对数据进行排序)和特定方法(根据产品对数据进行排序)。随后的结果是生成两个新的语料库,然后为每个现有产品分别生成两个由正面和负面特征组成的新词云。这些词云的目的是突出在评论中提到的产品的特性。因此,这种模型对所提供的产品提供了更准确、更有效的分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating Positive and Negative Sentiment Word Clouds from E-Commerce Product Reviews
Most customers who prefer buying products online on E-Commerce websites tend to rely on the ratings given to a product by other customers or a summary of the already existing customer reviews. However, a plethora of meaningful data is stored in the review text which eludes representation through customer ratings or the summary of the reviews likewise. But it is inefficient to go through each and every review. Our model thus adopts two approaches to demonstrate and resolve the generated issue - General Approach where the data is sorted based on the ratings, and Specific Approach where the data is sorted based on the products. The subsequent result is the generation of two new corpora followed by the generation of two new Word Clouds consisting of positive and negative features respectively for each existing product. The purpose of these Word Clouds is to highlight the features of products that are mentioned in the reviews. Hence, such a model provides more accurate as well as an efficient analysis of the offered products.
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