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A Hybrid Semantic Knowledgebase-Machine Learning Approach for Opinion Mining

机译:一种意见采矿的混合语义知识库机器学习方法

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摘要

Opinion mining tools enable users to efficiently process a large number of online reviews in order to determine the underlying opinions. This paper presents a Hybrid Semantic Knowledgebase-Machine Learning approach for mining opinions at the domain feature level and classifying the overall opinion on a multi-point scale. The proposed approach benefits from the advantages of deploying a novel Semantic Knowledgebase approach to analyse a collection of reviews at the domain feature level and produce a set of structured information that associates the expressed opinions with specific domain features. The information in the knowledgebase is further supplemented with domain-relevant facts sourced from public Semantic datasets, and the enriched semantically-tagged information is then used to infer valuable semantic information about the domain as well as the expressed opinions on the domain features by summarising the overall opinions about the domain across multiple reviews, and by averaging the overall opinions about other cinematic features. The retrieved semantic information represents a valuable resource for modelling a machine learning classifier to predict the numerical rating of each review. Experimental evaluation revealed that the proposed Hybrid Semantic Knowledgebase-Machine Learning approach improved the precision and recall of the extracted domain features, and hence proved suitable for producing an enriched dataset of semantic features that resulted in higher classification accuracy.
机译:意见挖掘工具使用户能够有效地处理大量的在线评论,以确定潜在的意见。本文介绍了一个混合语义知识库 - 机器 - 机器学习方法,用于域特征级别的挖掘意见,并对多点比例进行分类。建议的方法从部署新颖的语义知识库方法的优势中的优势,分析域特征级别的一系列评论,并生成一组与特定域功能相关的表示性意见的结构化信息。知识库中的信息进一步补充了来自公共语义数据集的域相关事实,然后使用丰富的语义标记信息来推断有关域的有价值的语义信息以及通过总结域特征的表达的意见。关于域跨多次评论的总体意见,并通过对其他电影功能的整体意见进行平均。检索到的语义信息表示用于对机器学习分类器建模以预测每次评判的数值等级的有价值资源。实验评估表明,提出的混合语义知识库机 - 机器学习方法改进了提取的域特征的精度和召回,因此证明是制造富集的语义特征的丰富数据集,导致较高的分类准确性。

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