2021
DOI: 10.3390/app11209381
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JUMRv1: A Sentiment Analysis Dataset for Movie Recommendation

Abstract: Nowadays, we can observe the applications of machine learning in every field, ranging from the quality testing of materials to the building of powerful computer vision tools. One such recent application is the recommendation system, which is a method that suggests products to users based on their preferences. In this paper, our focus is on a specific recommendation system called movie recommendation. Here, we make use of user reviews of movies in order to establish a general outlook about the movie and then us… Show more

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Cited by 7 publications
(3 citation statements)
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“…(10) and (11). In addition, the highest Chi-Square value indicates that a feature is very informative or helpful for a classification process [46].…”
Section: E Dimensionality Reductionmentioning
confidence: 99%
“…(10) and (11). In addition, the highest Chi-Square value indicates that a feature is very informative or helpful for a classification process [46].…”
Section: E Dimensionality Reductionmentioning
confidence: 99%
“…There are many algorithms for generating domain-specific dictionaries and many scholars who have conducted research on them. In terms of a sentiment dictionary, the POS (part-of-speech) tag is utilized to generate the sentiment dictionary in the field of shopping reviews; the authors in [5] apply POS, occurrence, and frequency to sentiment analysis of user preferences from social media data as well; feature selection and classification are used for a sentiment analysis dataset to recommend movies to other users in [6]; in [10], researchers presented a sentiment analysis-based decision support system by integrating support vector machines with a whale optimization method for autonomously adjusting hyperparameters and conducting feature weighting; the paper in [11] uses topic models, time series analysis, and sentiment analysis to search for rumors in social media texts; in [12], a sentiment analysis of homestay comments dictionary is based on the sentimental PMI algorithm; in [13], a cosine similarity measurement combining word semantic information about TF-IDF method extracts public sentiment keywords from the public opinion on the network.…”
Section: Related Workmentioning
confidence: 99%
“…For decades, machine learning systems have been used to text feature extraction based on deep learning, but required careful engineering and significant domain expertise to design a feature extractor that transformed the raw data into feature vector. Deep learning learns millions of parameters, features, and feature representations automatically from large data, instead of adopting hand-crafted features, which rely heavily on designers' past knowledge [5,6]. Recently, rich literature has been produced on machine learning algorithms, and this may be an effective method for text feature extraction.…”
Section: Introductionmentioning
confidence: 99%