Research Article Open Access

High Precision Latent Semantic Evaluation for Descriptive Answer Assessment

Amarjeet Kaur1 and M. Sasi Kumar2
  • 1 SNDT Women’s University, India
  • 2 Centre for Development of Advanced Computing, India

Abstract

This paper proposes an approach to evaluate student’s descriptive answers, using comparison-based approach in which student’s answer is compared with the standard answer. The standard answers contains domain specific knowledge as per the category (how, why, what, etc.) of questions asked in the examination. Several state-of-art claims that LSA correlates with the human assessor’s way of evaluation. With this as background, we investigated evaluation of students’ descriptive answer using Latent Semantic Analysis (LSA). In the course of research, it was discovered that standard LSA has limitations like: LSA research usually involves heterogeneous text (text from various domains) which may include irrelevant terms that are highly susceptible to noisy, missing and inconsistent data. We propose a new technique inspired by LSA, denoted as “High Precision Latent Semantic Evaluation” (HPLSE), LSA has been modified to overcome some of the limitations; this has also increased precision. By using the proposed technique (HPLSE), for the same datasets, average score difference and standard deviation between a human assessor and computer assessor has reduced and the Pearson correlation coefficient (r) has increased considerably. The new technique has been discussed and demonstrates on various problem classes.

Journal of Computer Science
Volume 14 No. 10, 2018, 1293-1302

DOI: https://doi.org/10.3844/jcssp.2018.1293.1302

Submitted On: 5 May 2018 Published On: 17 October 2018

How to Cite: Kaur, A. & Kumar, M. S. (2018). High Precision Latent Semantic Evaluation for Descriptive Answer Assessment. Journal of Computer Science, 14(10), 1293-1302. https://doi.org/10.3844/jcssp.2018.1293.1302

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Keywords

  • Latent Semantic Analysis
  • Descriptive Answer
  • Assessment
  • Dimension Reduction
  • Feature Extraction
  • Evaluation