Conference proceeding
Is the Lecture Engaging? Lecture Sentiment Analysis for Knowledge Graph-Supported Intelligent Lecturing Assistant (ILA) System
IEEE International Conference on Big Data (Print), pp 3358-3366
15 Dec 2024
Abstract
This paper introduces an intelligent lecturing assistant (ILA) system that utilizes a knowledge graph to represent course content and optimal pedagogical strategies. The system is designed to support instructors in enhancing student learning through real-time analysis of voice, content, and teaching methods. As an initial investigation, we present a case study on lecture voice sentiment analysis, in which we developed a training set comprising over 3,000 1-minute lecture voice clips. Each clip was manually labeled as either engaging or non-engaging. Utilizing this dataset, we constructed and evaluated several classification models based on a variety of features extracted from the voice clips. The results demonstrate promising performance, achieving an F1-score of 90% for boring lectures on an independent set of over 800 test voice clips. This case study lays the groundwork for the development of a more sophisticated model that will integrate content analysis and pedagogical practices. Our ultimate goal is to aid instructors in teaching more engagingly and effectively by leveraging modern artificial intelligence and big data techniques.
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Details
- Title
- Is the Lecture Engaging? Lecture Sentiment Analysis for Knowledge Graph-Supported Intelligent Lecturing Assistant (ILA) System
- Creators
- Yuan An - Drexel UniversitySamarth Kolanupaka - Drexel UniversityJacob An - Drexel UniversityMatthew Ma - Drexel UniversityUnnat Chhatwal - Drexel UniversityAlex Kalinowski - Drexel UniversityMichelle Rogers - Drexel UniversityBrian Smith - Boston College
- Publication Details
- IEEE International Conference on Big Data (Print), pp 3358-3366
- Publisher
- IEEE
- Resource Type
- Conference proceeding
- Language
- English
- Academic Unit
- Information Science (Informatics)
- Scopus ID
- 2-s2.0-85218027954
- Other Identifier
- 991022019600604721