阿拉伯语文本数据情感分析算法与技术综述

A. Admin, G. Hussein, A. N. Zaied
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引用次数: 1

摘要

情感这个概念是指对某种东西的感觉、行为、信念或态度。情感分析是对人们给出的各种评论、意见和人类的排放物进行分析、提取、研究和分类的过程,分为积极、消极、中性。它被认为是最重要的科学分支之一,旨在根据某些主题确定说话者的行为,作者的态度,或对网站,文件,事件,互动,产品或服务的整体情感反应。许多用户每天都可以分享不同主题的各种观点,这些观点可以通过使用微博来检测或嵌入,微博被认为是情感分析和信念挖掘的丰富资源,如Facebook、Twitter、论坛和博客。最近,在不同的社交媒体网站上发布的大量评论,推文和评论包括丰富的信息,此外,大多数在线购物网站为客户提供了撰写产品评论的机会,以提高这些产品的销售,提高产品质量和客户满意度。手工分析这些大型审查实际上是不可能的,因此需要发现一种自动化的方法来解决这样一个困难的过程。在中东,特别是阿拉伯世界,社交媒体网站仍然是访问量最大的网站,尤其是在这个地区当前的社会和政治变化中。该研究的主要目的是区分依赖于阿拉伯语的各种情感分析和分类算法和技术,因为少数研究人员讨论了与阿拉伯语相关的这一点。不同的数据挖掘算法和技术,如支持向量机(SVM)、Naïve贝叶斯(NB)、贝叶斯网络(BN)、决策树(DT)、k近邻(KNN)、最大熵(ME)和神经网络(NN),以及许多其他用于分析和分类文本数据的替代技术。由于对大量语言词汇的分析和挖掘存在困难,这些技术是基于阿拉伯语的丰富性和多样性进行估计的。各种数据挖掘技术的比较表明,最准确的技术是支持向量机(SVM)算法。每一个成功的情感都依赖于两个必不可少的分析工具:语言和文化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey on Sentiment Analysis Algorithms and Techniques For Arabic Textual Data
The concept Sentiment means the feeling, behavior, belief, or attitude towards something that almost being embedded. sentiment analysis is the process of analyzing, extracting, studying, and classifying the various reviews, opinions are given by people, and human’s emictions into positive, negative, neutral. It is considered one of the most significant scientific branches that aim to determine the behavior of the speaker, the attitude of the writer according to some topic, or the overall emotional reaction to website, document, event, interaction, products, or services. many users can share every day various opinions on different topics that may be detected or embedded by using micro-blogging which considered a rich resource for sentiment analysis and belief mining such as Facebook, Twitter, forums, and Blogs. recently a huge number of posted comments, tweets, and reviews of different social media websites include rich information in addition to most of the on-line shopping sites provide the opportunity to customers to write reviews about products in order to enhance the sales of those products and to improve both of product quality and customer satisfaction. manual analysis of these large reviews is practically impossible thus it is needed to discover an automated approach to solving such a hard process. In the Middle East and particularly in the Arab world, social media websites continue to be the top-visited websites especially with the current social and political changes in this part of the world. the main objective of that research is to differentiate between various algorithms and techniques of sentiment analysis and classification dependent on the Arabic language as a little number of researchers discusses that point relevant to the Arabic language. Different algorithms and techniques of data mining such as Support Vector Machine (SVM), Naïve Bayes (NB), Bayesian Network (BN), Decision tree (DT), k-nearest neighbor (KNN), Maximum Entropy (ME), and Neural Network (NN) in addition to many other alternative techniques which are used for analyzing and classifying textual data. For the reasons of difficulties in analyzing and mining a large number of linguistic words for their Those techniques are estimated based on the Arabic language due to its richness and diversity. The comparison between data mining techniques showed that the most accurate technique is the support vector machine (SVM) algorithm. every successful sentiment depends on two essential analysis tools are language and culture.
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