2021
DOI: 10.3390/app11093986
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Sentiment Analysis of Students’ Feedback with NLP and Deep Learning: A Systematic Mapping Study

Abstract: In the last decade, sentiment analysis has been widely applied in many domains, including business, social networks and education. Particularly in the education domain, where dealing with and processing students’ opinions is a complicated task due to the nature of the language used by students and the large volume of information, the application of sentiment analysis is growing yet remains challenging. Several literature reviews reveal the state of the application of sentiment analysis in this domain from diff… Show more

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Cited by 133 publications
(86 citation statements)
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“…A recent development in sentiment analysis and affective computing is to explore textual data to get public views on financial markets [3], politics [4], education [5,6], etc., just to name a few. Various research studies have also discussed the people's reactions to events expressed in social media, in general, and Twitter in particular.…”
Section: Related Workmentioning
confidence: 99%
“…A recent development in sentiment analysis and affective computing is to explore textual data to get public views on financial markets [3], politics [4], education [5,6], etc., just to name a few. Various research studies have also discussed the people's reactions to events expressed in social media, in general, and Twitter in particular.…”
Section: Related Workmentioning
confidence: 99%
“…In education, different SA methods have been developed as a proxy measure in real time of the emotional climate of a group, as well as to assess the quality of the trainer’s feedback (Yadegaridehkordi et al, 2019 ). SA has also been used to improve the understanding of educational processes, study participants’ satisfaction (Kastrati et al, 2021 ; Mite-Baidal et al, 2018 ), and make performance and dropout predictions (Iglesias-Estradé, 2019 ). However, these methods use a collection of textual data and have paid little attention to possible differences of communication because of personal characteristics of participants, such as cultural differences, language barriers, age and gender (Yadegaridehkordi et al, 2019 ).…”
Section: Introductionmentioning
confidence: 99%
“…Sentiments can provide a valuable source of information not only for analyzing a student's behavior towards a course topic, but also for enhancing policies and higher education institutions for their improvement (Kastrati et al, 2021). In this perspective, the past couple of years there has been a trend with increased publications where different sentiment analysis techniques, including NLP, and deep learning (DL), are successfully used for this purpose (Estrada et al, 2020;Zhou and Ye, 2020).…”
Section: Introductionmentioning
confidence: 99%