基于遗传规划的文本分类及其地图约简和抓取的实现

Q3 Decision Sciences
W. Wedashwara, Budi Irmawati, Heri Wijayanto, I Wayan Agus Arimbawa, Vandha Widartha
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引用次数: 0

摘要

在线媒体上的文本文档分类是一个大数据问题,需要自动化。类间存在歧义术语会降低文本分类的准确率。Hadoop Map Reduce是一个大数据并行处理框架,广泛用于大数据的文本处理。该研究通过使用Hadoop map-reduce预处理文本和使用web抓取收集数据,提出了使用遗传编程进行文本分类的方法。在文本分类之前,利用遗传规划进行关联规则挖掘(ARM),分析大数据模式。使用的数据来自science-direct的文章,其中包含三个关键词。本研究旨在利用基于arm的数据模式分析和数据收集系统,通过web抓取、map-约简预处理和遗传编程进行文本分类。通过网络抓取,通过减少多达17718个重复来收集数据。Map-reduce已经对36639个术语进行了标记化和停词删除,其中5189个是唯一术语,31450个是常见术语。使用不同数量的多树数据对ARM进行评估,可以产生更多更长的规则和更好的支持。与单一树相比,多树还产生了更具体的规则和更好的ARM性能。文本分类评估表明,单树的准确率(0.7042)高于决策树(0.6892),最低的是多树(0.6754)。评价还表明,ARM结果与分类结果不一致,其中多树显示决策树(0.3588)的最佳结果(0.3904),最低的是单树(0.356)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text Classification Using Genetic Programming with Implementation of Map Reduce and Scraping
Classification of text documents on online media is a big data problem and requires automation. Text classification accuracy can decrease if there are many ambiguous terms between classes. Hadoop Map Reduce is a parallel processing framework for big data that has been widely used for text processing on big data. The study presented text classification using genetic programming by pre-processing text using Hadoop map-reduce and collecting data using web scraping. Genetic programming is used to perform association rule mining (ARM) before text classification to analyze big data patterns. The data used are articles from science-direct with the three keywords. This study aims to perform text classification with ARM-based data pattern analysis and data collection system through web-scraping, pre-processing using map-reduce, and text classification using genetic programming. Through web scraping, data has been collected by reducing duplicates as much as 17718. Map-reduce has tokenized and stopped-word removal with 36639 terms with 5189 unique terms and 31450 common terms. Evaluation of ARM with different amounts of multi-tree data can produce more and longer rules and better support. The multi-tree also produces more specific rules and better ARM performance than a single tree. Text classification evaluation shows that a single tree produces better accuracy (0.7042) than a decision tree (0.6892), and the lowest is a multi-tree(0.6754). The evaluation also shows that the ARM results are not in line with the classification results, where a multi-tree shows the best result (0.3904) from the decision tree (0.3588), and the lowest is a single tree (0.356).
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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