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首页> 外文期刊>Journal of ICT Research and Applications >Efficient Utilization of Dependency Pattern and Sequential Covering for Aspect Extraction Rule Learning
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Efficient Utilization of Dependency Pattern and Sequential Covering for Aspect Extraction Rule Learning

机译:高效利用依赖模式和顺序覆盖方面提取规则学习

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摘要

The use of dependency rules for aspect extraction tasks in aspect-based sentiment analysis is a promising approach. One problem with this approach is incomplete rules. This paper presents an aspect extraction rule learning method that combines dependency rules with the Sequential Covering algorithm. Sequential Covering is known for its characteristics in constructing rules that increase positive examples covered and decrease negative ones. This property is vital to make sure that the rule set used has high performance, but not inevitably high coverage, which is a characteristic of the aspect extraction task. To test the new method, four datasets were used from four product domains and three baselines: Double Propagation, Aspectator, and a previous work by the authors. The results show that the proposed approach performed better than the three baseline methods for the F-measure metric, with the highest F-measure value at 0.633.
机译:在基于方面的情感分析中使用依赖性规则的方面提取任务是一种有希望的方法。这种方法的一个问题是不完整的规则。本文介绍了一个方面提取规则学习方法,将依赖性规则与顺序覆盖算法组合。序贯覆盖以其特征来构建增加覆盖阳性示例并减少负数的规则。此属性至关重要,以确保使用的规则集具有高性能,但不太高的覆盖,这是一个方面提取任务的特征。要测试新方法,请从四个产品域和三个基线使用四个数据集:作者的双重传播,Adventator和以前的工作。结果表明,所提出的方法比F测量度量的三种基线方法更好,最高的F测量值为0.633。

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