The Accuracy Comparison Between Word2Vec and FastText On Sentiment Analysis of Hotel Reviews

Khomsah, Siti and Ramadhani, Rima Dias and Wijayanto, Sena (2022) The Accuracy Comparison Between Word2Vec and FastText On Sentiment Analysis of Hotel Reviews. Jurnal Resti. ISSN 2580-0760

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Abstract

Word embedding vectorization is more efficient than Bag-of-Word in word vector size. Word embedding also overcomes the loss of information related to sentence context, word order, and semantic relationships between words in sentences. Several kinds of Word Embedding are often considered for sentiment analysis, such as Word2Vec and Fast text works on N-Gram, while Word2Vec is based on the word. This research aims to compare the accuracy of the sentiment analysis model using Word2Vec and FastText. Both models are tested in the sentiment analysis of Indonesian hotel reviews using the dataset from TripAdvisor. Word2vec and FastText use the use the Skip-gram model. Both methods use the same parameters: number of features, minimum word count, number of parallel threads, and the context window size. Those vectorizers are combined by ensemble learning: Random Forest, Extra Tree, and AdaBoost. The Decision Tree is used as a baseline for measuring the performance of both models. The results showed that both FastText and Word2Vec well-to-do increase accuracy on Random Forest and Extra Tree. FastTesxt reached higher accuracy than Word2Vec when using Extra tree and Random Forest as classifiers. FastText leverage accuracy 8% (baseline: Decision Tree 85%), it is proofed by the accuracy of 93%, with 100 estimators.

Item Type: Article
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Depositing User: Rima Dias Ramadhani
Date Deposited: 07 Apr 2023 01:58
Last Modified: 07 Apr 2023 01:58
URI: http://repository.ittelkom-pwt.ac.id/id/eprint/9313

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