电子商务网站评论评价的混合算法

Osama Rababah, A. K. Hwaitat, D. A. Qudah, R. Halaseh
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引用次数: 2

摘要

在线评论被认为是用户决定他们想要做的活动的重要指标,无论是看电影,去餐馆还是购买产品。它还为企业提供服务,因为它可以跟踪用户反馈。大量的在线评论使得人类很难处理和提取所有重要信息来做出购买选择。因此,出现了一种趋势,即系统可以自动从一组评论中总结意见。在本文中,我们提出了一种将自动摘要算法与情感分析(SA)算法相结合的混合算法,以提供个性化的用户体验并解决语义-语用差距。该算法由六个步骤组成,从原始文本文档开始,通过选择文本中最相关的N个句子来生成该文本的摘要。然后对标记的文本进行处理,然后将其与标记一起作为训练数据传递给朴素贝叶斯分类器。本文使用的原始数据属于文献[1]中引入的带标签的正负处理影评语料库。用于衡量所有测试用例的SA和分类算法的性能的度量包括准确性、召回率和精度。对系统的情感提取模块和情感检测模块进行了详细的描述。
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Hybrid Algorithm to Evaluate E-Business Website Comments
Online reviews are considered of an important indicator for users to decide on the activity they wish to do, whether it is watching a movie, going to a restaurant, or buying a product. It also serves businesses as it keeps tracking user feedback. The sheer volume of online reviews makes it difficult for a human to process and extract all significant information to make purchasing choices. As a result, there has been a trend toward systems that can automatically summarize opinions from a set of reviews. In this paper, we present a hybrid algorithm that combines an auto-summarization algorithm with a sentiment analysis (SA) algorithm, to offer a personalized user experiences and to solve the semantic-pragmatic gap. The algorithm consists of six steps that start with the original text document and generate a summary of that text by choosing the N most relevant sentences in the text. The tagged texts are then processed and then passed to a Naive Bayesian classifier along with their tags as training data. The raw data used in this paper belong to the tagged corpus positive and negative processed movie reviews introduced in [1]. The measures that are used to gauge the performance of the SA and classification algorithm for all test cases consist of accuracy, recall, and precision. We describe in details both the aspect of extraction and sentiment detection modules of our system.
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