This research introduces an automatic multiple choice question generation system to evaluate the understanding of the semantic role labels and named entities in a text. The system provided selects the informative sentence and the keyword to be asked based on the semantic labels and named entities that exist in the sentence, the distractors are chosen based on a similarity measure between sentences in the data set. The system is tested using a set of sentences extracted from the TREC 2007 dataset for question answering. From the experimental results, it can be induced that the semantic role labeling and named entity recognition approaches could be used as a good keyword selection mechanism. The second conclusion is that the string similari...
In this paper, we investigate an unsupervised approach to Relation Extraction to be applied in the c...
This paper describes an automatic question generator that uses semantic pattern recognition to creat...
In this paper, a novel approach to automatic question generation (AQG) using semantic role labeling ...
This research introduces an automatic multiple choice question generation system to evaluate the und...
In this research, an automatic multiple choice question generation system for evaluating semantic ro...
This research introduces a semantic based Automatic Question Generation System using both Semantic R...
Abstract—This research proposes an automatic question generation model for evaluating the understand...
© 2008-2011 IEEE. Automatic question generation can help teachers to save the time necessary for con...
Automatic question generation can help teachers to save the time necessary for constructing examinat...
Abstract The use of automated systems in second-language learning could substantially reduce the wor...
Automatic question generation can help teachers to save the time necessary for constructing examinat...
Automatic multiple-choice question generation (MCQG) is a useful yet challenging task in Natural Lan...
In this paper, we propose an ontology-based framework for formulating multiple-choice questions that...
This paper describes an automatic question generator that uses semantic pattern recognition to creat...
Mitkov and Ha (2003) and Mitkov et al. (2006) offered an alternative to the lengthy and demanding ac...
In this paper, we investigate an unsupervised approach to Relation Extraction to be applied in the c...
This paper describes an automatic question generator that uses semantic pattern recognition to creat...
In this paper, a novel approach to automatic question generation (AQG) using semantic role labeling ...
This research introduces an automatic multiple choice question generation system to evaluate the und...
In this research, an automatic multiple choice question generation system for evaluating semantic ro...
This research introduces a semantic based Automatic Question Generation System using both Semantic R...
Abstract—This research proposes an automatic question generation model for evaluating the understand...
© 2008-2011 IEEE. Automatic question generation can help teachers to save the time necessary for con...
Automatic question generation can help teachers to save the time necessary for constructing examinat...
Abstract The use of automated systems in second-language learning could substantially reduce the wor...
Automatic question generation can help teachers to save the time necessary for constructing examinat...
Automatic multiple-choice question generation (MCQG) is a useful yet challenging task in Natural Lan...
In this paper, we propose an ontology-based framework for formulating multiple-choice questions that...
This paper describes an automatic question generator that uses semantic pattern recognition to creat...
Mitkov and Ha (2003) and Mitkov et al. (2006) offered an alternative to the lengthy and demanding ac...
In this paper, we investigate an unsupervised approach to Relation Extraction to be applied in the c...
This paper describes an automatic question generator that uses semantic pattern recognition to creat...
In this paper, a novel approach to automatic question generation (AQG) using semantic role labeling ...