Litcius/Paper detail

Study and Comparision of Vectorization Techniques Used in Text Classification

Deepa Rani, Rajeev Kumar, Naveen Chauhan

20222022 13th International Conference on Computing Communication and Networking Technologies (ICCCNT)13 citationsDOI

Abstract

Reviews on products and movies play an important role in predicting and formulating business strategies. Entertainment media, E-commerce, and social media use customers’ reviews to analyze customers’ requirements and level of satisfaction with the product. Business Analyst uses Sentiment Analysis for analyzing the attitude of the users from their reviews. E-commerce websites, entertainment and social media posts, tweets, comments, reviews, status, etc are the major sources of sentiment data (reviews). In the review system, users give the rating on a predefined scale of (1-5) i.e lowest to highest in terms of their satisfaction. As sentiment Analysis is one of the major applications of Machine Learning and machine learning deals with numeric data, so, textual-based review data needs to be converted into numeric data. Conversion of text to numeric form requires a large amount of memory and it is time-consuming also. This paper presents various vectorization techniques and their comparison in terms of memory management to convert text file into a vector file. The comparison shows gensim library-based Doc2Vec approach reduces memory requirements by up to 80%. This will also reduce the time consumption for task analysis and data processing of the model.

Topics & Concepts

Computer scienceVectorization (mathematics)Sentiment analysisSocial mediaEntertainmentSupport vector machineProduct (mathematics)Data scienceTask (project management)Information retrievalWorld Wide WebArtificial intelligenceMathematicsParallel computingEconomicsGeometryVisual artsManagementArtSentiment Analysis and Opinion MiningAdvanced Text Analysis TechniquesSpam and Phishing Detection