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Education Data Mining, Visualization and Sentiment Analysis of Coursera Course Review


Affiliations
1 U & P U. Patel Department of Computer Engineering., India
2 Department of Computer Science & Engineering, Chandubhai S. Patel Institute of Technology, Faculty of Technology & Engineering, Charotar University of Science and Technology, Changa – 388421, Gujarat, India
     

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Objective: No Decisions are good or bed they are taken based on the available data. It is very much essential to represent the data in the right form to the right people and at the right time. Higher Engineering Institutes (HEI) is having a plethora of information available to them. Most of the available data are not used properly and remain just as dead storage. Methods: In this study, we have shown the importance of data visualization using a case study on Coursera review dataset. Different useful tools that support improving an Education System are summarized. Sentiment analysis is performed for coursera course review dataset using deep learning method. At the end, dashboard is also created to visualize student data using powerBI tool. Results: Uses of different visualization tools can help to improve the education system and its performance. The Sentiment expressed by students will help to improve the teaching-learning process and research contribution significantly as they are the major components for evaluation when any HEI wants to receive NAAC [National Assessment and Accreditation Council] approval for benefitting all stakeholders of the HEI. Conclusions: Proper analysis of available data and their proper visualization can help us to improve the education system to a great extent in terms of improving the most important factors like student teaching- learning and their placement to make their future bright. Students expressed sentiments are also key features to analyze the success of the teaching-learning process for both teachers and students as well. We have also used our institute students' data to g enerate a d ash bo ard t hat con tain s s tu den t information from a different perspective that can help higher authorities to make better fruitful decisions.

Keywords

Education Data Mining, Dashboard, Data Visualization, Sentiment.
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  • A picture is worth a thousand words - Wikipedia.(n.d.).Retrieved February 10, 2022, from https://en.wikipedia.org/wiki/A_picture_is_wor th_a_thousand_words
  • Bhadri,G.N. & Patil, L.R.(2022).Blended Learning: An effective approach for Online Teaching and Learning. Journal of Engineering Education Transformations, 35(Special issue), 53–60.
  • Cabada,R.Z.,Lucia M. Estrada,B. & Oramas, R.(n.d.).Mining of educational opinions with deeplearning.https://www.researchgate.net/publication/ 331877377
  • Jha, S. (2020). A case study of implementation of active - cooperative learning approaches introduced through a faculty development programme and their effects on the pass percentage of undergraduate engineering students. Journal of Engineering Education Transformations, 34(1),7–11.https://doi.org/10.16920/jeet/2020/v34i1/15500 7
  • KABIR, A. I., KARIM, R., NEWAZ, S., & HOSSAIN, [6] M. I. (2018). The Power of Social Media Analytics: Text Analytics Based on Sentiment Analysis and Word Clouds on R. Informatica Economica,22(1/2018),25–38.https://doi.org/10.12948/issn14531305/22.1.20 18.03
  • Kaggle: Your Machine Learning and Data Science Community. (n.d.). Retrieved February 10, 2022, from https://www.kaggle.com/
  • Krishnan, V. (2017). IR @ INFLIBNET: Research Data Analysis with Power BI. https://ir.inflibnet.ac.in/handle/ 1944/2116
  • Liu, B. (2012). Sentiment Analysis and Opinion Mining. Morgan & Claypool Publishers.
  • Nadj, M., Maedche, A., & Schieder, C.(2020). The effect of interactive analytical dashboard features on situation awareness and task performance. Decision Support Systems,135,113322.https://doi.org/10.1016/J.DSS.2020.113322
  • Rajarapollu, P. Bansode, N. V. & Katkar, V.(2022).ICT-A Tool to Enhance Teaching Learning Activity in Technical Education. Journal of Engineering Education Transformations,35(Special Issue),14–18.
  • Sapountzi, A. & Psannis, K. E.(2018). Social networking data analysis tools & challenges. Future Generation Computer Systems, 86,893–913.https://doi.org/10.1016/j.future.2016.10.019
  • Zentner, A., Covit, R., & Guevarra, D. (2019). Exploring Effective Data Visualization Strategies in Higher Education. SSRN Electronic Journal. https://doi.org/10.2139/ssrn.3322856.

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  • Education Data Mining, Visualization and Sentiment Analysis of Coursera Course Review

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Authors

Dhaval Bhoi
U & P U. Patel Department of Computer Engineering., India
Amit Thakkar
Department of Computer Science & Engineering, Chandubhai S. Patel Institute of Technology, Faculty of Technology & Engineering, Charotar University of Science and Technology, Changa – 388421, Gujarat, India

Abstract


Objective: No Decisions are good or bed they are taken based on the available data. It is very much essential to represent the data in the right form to the right people and at the right time. Higher Engineering Institutes (HEI) is having a plethora of information available to them. Most of the available data are not used properly and remain just as dead storage. Methods: In this study, we have shown the importance of data visualization using a case study on Coursera review dataset. Different useful tools that support improving an Education System are summarized. Sentiment analysis is performed for coursera course review dataset using deep learning method. At the end, dashboard is also created to visualize student data using powerBI tool. Results: Uses of different visualization tools can help to improve the education system and its performance. The Sentiment expressed by students will help to improve the teaching-learning process and research contribution significantly as they are the major components for evaluation when any HEI wants to receive NAAC [National Assessment and Accreditation Council] approval for benefitting all stakeholders of the HEI. Conclusions: Proper analysis of available data and their proper visualization can help us to improve the education system to a great extent in terms of improving the most important factors like student teaching- learning and their placement to make their future bright. Students expressed sentiments are also key features to analyze the success of the teaching-learning process for both teachers and students as well. We have also used our institute students' data to g enerate a d ash bo ard t hat con tain s s tu den t information from a different perspective that can help higher authorities to make better fruitful decisions.

Keywords


Education Data Mining, Dashboard, Data Visualization, Sentiment.

References