A Hybrid Classification Algorithm to Classify Engineering Students' Problems and Perks
Mitali Desai, Mayuri A. Mehta

TL;DR
This paper introduces a hybrid classification algorithm that analyzes engineering students' sentiments from social media, providing detailed insights into their problems and perks to aid educational decision-making.
Contribution
The paper presents a novel hybrid classification algorithm that offers a more descriptive sentiment analysis, classifying students' sentiments into multiple categories beyond positive, negative, and neutral.
Findings
The algorithm effectively classifies students' sentiments into detailed categories.
It provides deeper insights into students' problems and perks.
The approach enhances decision-making in educational contexts.
Abstract
The social networking sites have brought a new horizon for expressing views and opinions of individuals. Moreover, they provide medium to students to share their sentiments including struggles and joy during the learning process. Such informal information has a great venue for decision making. The large and growing scale of information needs automatic classification techniques. Sentiment analysis is one of the automated techniques to classify large data. The existing predictive sentiment analysis techniques are highly used to classify reviews on E-commerce sites to provide business intelligence. However, they are not much useful to draw decisions in education system since they classify the sentiments into merely three preset categories: positive, negative and neutral. Moreover, classifying the students sentiments into positive or negative category does not provide deeper insight into…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining · Online Learning and Analytics · Text and Document Classification Technologies
