Predicting Quality of Answer in Collaborative Question Answer Learning

Abstract

 Studies over the years shown that students had actively and more interactively involved in a classroom discussion to gain their knowledge. By posting questions for other participants to answer, students could obtain several answers to their question. The problem is sometimes the answer chosen by student as the best answer is not necessarily the best quality answer. Therefore, an automatic recommender system based on student activity, may improve these situations as it will choose the best answer objectively. On the other side, in the implementation of collaborative learning, in addition to sharing information, sometimes students also need a reference or domain knowledge which relevant with the topic. In this paper, we proposed answer quality predictor in collaborative question answer (CQA) learning, to predict the quality of answer either from recommender system based on users activity or domain knowledge as reference information.

Authors and Affiliations

Kohei Arai, ANIK Handayani

Keywords

Related Articles

 Category Decomposition Method Based on Matched Filter for Un-Mixing of Mixed Pixels Acquired with Spaceborne Based Hyperspectral Radiometers

 Category decomposition method based on matched filter for un-mixing of mixed pixels: mixels which are acquired with spaceborne based hyperspectral radiometers is proposed. Through simulation studies with simulated...

A Cumulative Multi-Niching Genetic Algorithm for Multimodal Function Optimization

This paper presents a cumulative multi-niching genetic algorithm (CMN GA), designed to expedite optimization problems that have computationally-expensive multimodal objective functions. By never discarding individuals fr...

A Proposed Hybrid Technique for Recognizing Arabic Characters

Optical character recognition systems improve human-machine interaction and are urgently required for many governmental and commercial departments. A considerable progress in the recognition techniques of Latin and Chine...

An Approach with Support Vector Machine using Variable Features Selection on Breast Cancer Prognosis

Cancer diagnosis and clinical outcome prediction are among the most important emerging applications of machine learning. In this paper we have used an approach by using support vector machine classifier to construct a mo...

 Application of K-Means Algorithm for Efficient Customer Segmentation: A Strategy for Targeted Customer Services

 The emergence of many business competitors has engendered severe rivalries among competing businesses in gaining new customers and retaining old ones. Due to the preceding, the need for exceptional customer service...

Download PDF file
  • EP ID EP131474
  • DOI 10.14569/IJARAI.2014.030205
  • Views 71
  • Downloads 0

How To Cite

Kohei Arai, ANIK Handayani (2014).  Predicting Quality of Answer in Collaborative Question Answer Learning. International Journal of Advanced Research in Artificial Intelligence(IJARAI), 3(2), 23-26. https://europub.co.uk/articles/-A-131474