R. Purushothaman, S. Rajagopalan, C. Saravanakumar
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引用次数: 0
摘要
文本挖掘是从各种来源收集的文档中提取单词的过程。它用于将文本转换为执行机器学习操作的规范化数据。文本中的特征提取过程考虑文本中的各种单词,然后将其转换为特征。传统的提取方法由于数据格式不同,提取的是数据中没有语义的特征。由于使用自然语言表示,文本挖掘过程使用文档作为输入,并评估文档之间的含义和关系。该分析的主要目标是提取具有各种模型和参数的文本的特征。分析了Bag of Words、GloVe、Word2Vec、TF-IDF和Doc2Vec模型。该分析考虑了诸如成本、迭代次数、学习率、相似性度量和对象关系等参数来进行性能度量。该模型使用维基百科数据源进行分析,并给出大量的原始数据
Efficient Analysis for Extracting Feature and Evaluation of Text Mining using Natural Language Processing Model
Text mining is the process of extracting the word from the document which is collected from various sources. It is used to transform the text into normalized data for performing machine learning operations. Feature extraction process in the text considers various words in the text then converted into features. Traditional extraction methods extract the features without semantic meaning of the data due to different data formats. Because of the natural language representation, the text mining process uses the document as an input and evaluates the meaning and relationship between the documents. The main objective of the proposed analysis for extracting the features forms the text with various models and parameters. Bag of Words, GloVe, Word2Vec, TF-IDF and Doc2Vec models are analyzed. This analysis considers parameters like cost, number of iteration, learning rate, similarity measure and object relationship for performance measurement. This model uses the Wikipedia data source for analysis and gives raw data with high volume