Sentiment Analysis in Student Experiences of Learning
نویسندگان
چکیده
In this paper we present an evaluation of new techniques for automatically detecting sentiment polarity (Positive or Negative) in the students responses to Unit of Study Evaluations (USE). The study compares categorical model and dimensional model making use of five emotion categories: Anger, Fear, Joy, Sadness, and Surprise. Joy and Surprise are taken as a Positive polarity, whereas Anger, Fear and Sadness belong to Negative polarity in the binary classes, respectively. We evaluate the performances of category-based and dimension-based emotion prediction models on the 2,940 textual responses. In the former model, WordNet-Affect is used as a linguistic lexical resource and two dimensionality reduction techniques are evaluated: Latent Semantic Analysis (LSA) and Non-negative Matrix Factorization (NMF). In the latter model, ANEW (Affective Norm for English Words), a normative database with affective terms, is employed. Despite using generic emotion categories and no syntactical analysis, NMF-based categorical model and dimensional model result in better performances above the baseline.
منابع مشابه
A Grouping Hotel Recommender System Based on Deep Learning and Sentiment Analysis
Recommender systems are important tools for users to identify their preferred items and for businesses to improve their products and services. In recent years, the use of online services for selection and reservation of hotels have witnessed a booming growth. Customer’ reviews have replaced the word of mouth marketing, but searching hotels based on user priorities is more time-consuming. This s...
متن کاملEfficient Method Based on Combination of Deep Learning Models for Sentiment Analysis of Text
People's opinions about a specific concept are considered as one of the most important textual data that are available on the web. However, finding and monitoring web pages containing these comments and extracting valuable information from them is very difficult. In this regard, developing automatic sentiment analysis systems that can extract opinions and express their intellectual process has ...
متن کاملAnalysis of the experiences of teachers about the obstacles and problems of learning math
Abstract Introduction:The purpose of this research was to investigate the problems and barriers of students chr('39')learning in mathematics based on teacherschr('39') experiences and narratives. Metods: A qualitative approach and narrative analysis method have been used to achieve this goal. The statistical population was all the privileged mathematics teachers in Tehran. The samples were s...
متن کاملLearning experience through peer education: a qualitative study
Introduction: Peer education can be a useful approach in learning difficult and important courses such as physiology. Since students encounter new teacher roles and learning from classmates in this approach, they might go through new experiences which contribute to developing effective peer education. However, few studies have examined these experiences, especially in Iranian culture therefore ...
متن کاملExploring the Nursing Students' Experiences of the Hidden Curriculums on Learning Process: A Qualitative Study
Introduction: The hidden curriculum consists of the implicit messages of the social atmosphere of the educational centers that are not written but are felt by everyone. Due to the direct relationship between the hidden curriculum with student learning and the need for nursing faculty members, this study was conducted to exploring the nursing Students' Experiences of the Hidden Curriculums on le...
متن کاملUsing Machine Learning Algorithms for Automatic Cyber Bullying Detection in Arabic Social Media
Social media allows people interact to express their thoughts or feelings about different subjects. However, some of users may write offensive twits to other via social media which known as cyber bullying. Successful prevention depends on automatically detecting malicious messages. Automatic detection of bullying in the text of social media by analyzing the text "twits" via one of the machine l...
متن کامل