基于词共现适应度进化的情感分析特征优化

S. S. Sonawane, S. Kolhe
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引用次数: 3

摘要

目标受众的意见是评估与审查、业务决策调查和需要决策制定的诸如此类因素有关的功效状态的主要目标。特征选择是开发鲁棒性和高水平分类并减少训练时间的关键任务。为了提高意见挖掘的最大精度,需要模型来说明描述最优特征选择的范围,以升级特征选择策略。考虑到改进的余地,本文提出了一种n-gram特征选择方法,其中基于词共现适应度的最优特征。遗传算法的重点是确定进化和解决方案,以达到确定性和最大的精度,并以最小的计算过程来反映情绪的情绪范围。评价结果表明,该方法是可行的,优于情感分类中单独的面向过滤器的特征选择模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Optimization in Sentiment Analysis by Term Co-occurrence Fitness Evolution (TCFE)
The opinion of a target audience is a major objective for the assessing state of efficacy pertaining to reviews, business decisions surveys, and such factors that require decision making. Feature selection turns out to be a critical task for developing robust and high levels of classification while decreasing training time. Models are required for stating the scope for depicting optimal feature selection for escalating feature selection strategies to escalate maximal accuracy in opinion mining. Considering the scope for improvement, an n-gram feature selection approach is proposed where optimal features based on term co-occurrence fitness is proposed in this article. Genetic algorithms focus on determining the evolution and solution to attain deterministic and maximal accuracy having a minimal level of computational process for reflecting on the sentiment scope for sentiment. Evaluations reflect that the proposed solution is capable, which outperforms the separate filter-oriented feature selection models of sentiment classification.
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