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Analysis of Machine Learning based Feature Selection Method for Sentiment Analysis

机译:基于机器学习的教学特征选择方法进行情感分析

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An outfit method to include decrease techniques relevant to the production and conduct of research based on the findings would have an important purpose in this article. An outfit strategy means that it is possible to combine at least two strategies. The element reducing approach used is Principal Component Analysis (PCA) for extraction and Pearson Chi-squared factual research findings. The concept investigation is a field where the concepts expressed are understood and organized into positive, negative, and impartial polarities. The highlight is the pivotal machine learning process. This article investigated the implementation, by Naïve Bayes, k-Nearest Neighbor, Support Vector Machine, Logistic Regression, and Random Forest with various Unigram, Bigram, Chi-Square, and Gini Index FSMs, of five machine learning arrangement calculations. However, there has been very little attempt to highlight methods of estimating the Turkish audits. Further component choice strategy, and Question Expansion Ranking, is provided, which will depend on the extended-term weighting strategies used in the field of information recovery to determine mainly important conditions for growth in study.
机译:一种备用方法,包括减少与生产和对研究的研究相关的技术,在这篇文章中具有重要的目的。装备策略意味着可以将至少两种策略结合起来。所使用的元素还原方法是用于提取和Pearson Chi平方的事实研究结果的主要成分分析(PCA)。概念调查是一种概念所表达的概念被理解和组织成正,阴性和公正极性。突出显示是关键机器学习过程。本文调查了NaïveBayes,K-Collect邻居,支持传染媒介机,逻辑回归和随机森林,其中包括五个机器学习安排计算的各种Unigram,Bigram,Chi-Square和Gini指标FSMS。但是,几乎没有突出估计土耳其审计的方法。提供了进一步的组成选择策略和问题扩展排名,这将取决于信息恢复领域中使用的延长术语加权策略,以确定主要是研究生长的重要条件。

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