Various Feature Extraction and Selection Techniques for Lexicon Based and Machine learning Sentiment Classification

Shital A. Patil, Krishnakant P. Adhiya, Girishkumar K. Patnaik
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Abstract

Introduction: Natural Language Processing (NLP) is a kind of software that gives computers the ability to comprehend human languages. Words are often used as the fundamental unit for grammatical and semantic analysis on a deeper level, and the major objective of most natural language processing (NLP) projects is word segmentation Objectives: Proposed System uses the feature extraction method for generating the hybrid feature to get good accuracy for classification in order to solve the practical problem of huge structural differences between different data modalities in a multi-modal environment, where traditional machine learning methods cannot be directly applied to solve the problem. Methods: In order to do so, this paper introduces the method for generating the hybrid feature. In this System, we utilise a various feature extraction and selection technique from large text. The data has collected from students’ feedback and these feature extraction techniques has applied Results: Each technique provides different feature extraction while NLP based dependency features provides homogeneous feature set with relationship. Conclusions: In extensive experimental analysis NLP based features obtains higher precision over the other feature extraction techniques in classification.
基于词典和机器学习情感分类的各种特征提取和选择技术
简介:自然语言处理(NLP)是一种赋予计算机理解人类语言能力的软件。单词通常被用作更深层次的语法和语义分析的基本单位,大多数自然语言处理(NLP)项目的主要目标是分词目标:为了解决多模态环境下不同数据模态之间存在巨大结构差异,传统机器学习方法无法直接解决的实际问题,本系统采用特征提取方法生成混合特征,获得较好的分类精度。方法:为此,本文介绍了混合特征的生成方法。在这个系统中,我们利用了各种特征提取和选择技术从大文本。结果:每种技术提供不同的特征提取,而基于NLP的依赖特征提供具有关系的同构特征集。结论:在大量的实验分析中,基于NLP的特征在分类中获得了比其他特征提取技术更高的精度。
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