Sentiment analysis using random forest algorithm-online social media based

Bahrawi, Bahrawi (2019) Sentiment analysis using random forest algorithm-online social media based. Journal of Information Technology and Its Utilization, 2 (2): 1. pp. 29-33. ISSN e-ISSN 2654-802X

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Abstract

Every day billions of data in the form of text flood the internet be it sourced from forums, blogs, social media, or review sites. With the help of sentiment analysis, previously unstructured data can be transformed into more structured data and make this data important information. The data can describe opinions/sentiments from the public, about products, brands, community services, services, politics, or other topics. Sentiment analysis is one of the fields of Natural Language Processing (NLP) that builds systems for recognizing and extracting opinions in text form. At the most basic level, the goal is to get emotions or 'feelings' from a collection of texts or sentences. The field of sentiment analysis, or also called 'opinion mining', always involves some form of the data mining process to get the text that will later be carried out the learning process in the machine learning that will be built. this study conducts a sentimental analysis with data sources from Twitter using the Random Forest algorithm approach, we will measure the evaluation results of the algorithm we use in this study. The accuracy of measurements in this study, around 75%. the model is good enough. but we suggest trying other algorithms in further research.

Item Type: Article
Uncontrolled Keywords: Sentiment analysis, Random forest algorithm, Classification, machine learnings
Subjects: Computers, Control & Information Theory
Depositing User: - siti Elly
Date Deposited: 12 Dec 2022 07:19
Last Modified: 12 Dec 2022 07:19
URI: https://karya.brin.go.id/id/eprint/13705

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