基于Word2vec的特征工程:基于k -最近邻算法的文本分类

S. Putra, M. Gunawan, Arief Akbar Hidayat
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引用次数: 0

摘要

文本特征提取是将非结构化文本数据转换为结构化文本数据,以便机器学习算法进行处理的过程。常用的文本特征提取技术之一是tf-idf。该技术具有产生高维数据的潜力,这会导致较长的计算时间并影响结果的准确性。本研究旨在比较word2vec和TF-IDF的特征提取。该研究使用数据探索4步方法,并使用KNN算法建模的文本分类过程。结果表明,在具有8133个特征的7:3场景下,使用KNN算法的TF-IDF准确率最高值为73%。使用KNN算法的Wod2vec在场景9:1、300个特征时准确率最高,达到74%。在IDF中,word2vec生成维度更少的数据。本研究可以证明使用word2vec进行特征提取不仅可以用于深度学习,还可以用于机器学习研究。本研究也可以作为不同特征提取的分类性能测量的比较,以后可以应用于web或移动应用。
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Feature Engineering with Word2vec on Text Classification Using The K-Nearest Neighbor Algorithm
Text feature extraction is the process of convering unstructured text data into structured so that machine learning algorithms can process it. One of the commonly used text feature extraction techniques is tf-idf. This technique has the potential to produce high-dimensional data which results in longer computational time and affects accuracy results. This study aims to compare feature extraction between word2vec and TF-IDF. The study uses a data explore 4 step approach with a text classification process whose modeling uses the KNN algorithm. The results showed that the highest accuracy value of TF-IDF with the KNN algorithm was 73% in the 7:3 scenario with 8133 features. The highest accuracy value of Wod2vec with the KNN algorithm was 74% in scenario 9: 1 with 300 features. IDF where word2vec produces data with fewer dimensions. This study can prove that feature extraction with word2vec can be done for machine learning research, not only for deep learning. This study can also be used as a comparison of classification per-formance measurement with different feature extraction which can later be applied in web or mobile apps.
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