生物医学文本文献分类研究综述

D. Krishna, Erukulla Laasya, A Sowmya Sri, T Ravinder Reddy, Akhil Sanjoy
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引用次数: 0

摘要

信息提取、信息检索和文本分类只是“生物医学文本分类”标题下的几个重要研究领域。为了增加对数据挖掘领域中各种信息提取机会的理解,本研究分析了实践中使用的几种文本分类方法,以及它们的优缺点。我们收集了一个数据集,重点关注三个类别,包括“甲状腺癌”、“肺癌”和“结肠癌”。本文对分类器进行了实证研究。使用生物医学文本基准进行实验。我们研究了许多元启发式算法,包括遗传算法、粒子群优化、萤火虫算法、布谷鸟算法和蝙蝠算法。所建议的多分类器系统也优于集成学习,集成修剪和传统的分类算法。在使用数据预测生物医学文本文档分类是否为甲状腺癌、肺癌、结肠癌的基础上,进行了基本的EDA、文本预处理,建立了不同的模型,如LogisticRegression、DecisiontreeClassification、RandomForest classification
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 BIOMEDICAL TEXT DOCUMENT CLASSIFICATION
Information extraction, information retrieval, and text classification are only a few of the important study areas that fall under the heading of "bio medical text classification." In order to increase understanding of various information extraction opportunities in the field of data mining, this study analyses several text categorization approaches used in practise, their strengths and shortcomings. We have gathered a dataset with a strong emphasis on three categories, including "Thyroid Cancer," "Lung Cancer," and "Colon Cancer." This essay offers an empirical investigation of a classifier. Benchmarks for biomedical text were used to conduct the experiment. We study many metaheuristic algorithms, including genetic algorithms, particle swarm optimization, firefly, cuckoo, and bat algorithms. The suggested multiple classifier system also outperforms ensemble learning, ensemble pruning, and conventional classification algorithms. In the data we use predict the Biomedical text document classification is whether it's Thyroid Cancer, Lung Cancer, Colon Cancer based on the performed basic EDA, text pre-processing, build different models, such as LogisticRegression, DecisiontreeClassification, RandomForest Classification
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