Being able to accurately perform Question Difficulty Estimation (QDE) can improve the accuracy of students’ assessment and better their learning experience. Traditional approaches to QDE are either subjective or introduce a long delay before new questions can be used to assess students. Thus, recent work proposed machine learning-based approaches to overcome these limitations. They use questions of known difficulty to train models capable of inferring the difficulty of questions from their text. Once trained, they can be used to perform QDE of newly created questions. Existing approaches employ supervised models which are domain-dependent and require a large dataset of questions of known difficulty for training. Therefore, they cannot be us...
Question generation (QG) approaches based on large neural models require (i) large-scale and (ii) hi...
Online education platforms enable teachers to share a large number of educational resources such as ...
Data labelling for question answering tasks (QA) is a costly procedure that requires oracles to read...
Being able to accurately perform Question Difficulty Estimation (QDE) can improve the accuracy of st...
Question calibration especially on difficulty degree is important for supporting Web-based testing a...
In this paper, we address the problem of estimating question difficulty in community question answer...
Automatic difficulty calibration (ADC) is the application of computational techniques to estimate th...
Standard tests aim to evaluate the performance of examinees using different tests with consistent di...
Semantics based information representations such as ontologies are found to be very useful in repeat...
Estimating questions ’ difficulty levels is an important task in community question answering (CQA) ...
In this paper, we present a framework for Question Difficulty and Expertise Estimation (QDEE) in Com...
The performance of question answering system is evaluated through successive evaluations campaigns. ...
peer reviewedSemantics-based knowledge representations such as ontologies are found to be very usefu...
This paper addresses a question difficulty estimation of which goal is to estimate the difficulty le...
The increasing levels of international communication in all aspects of life lead to a growing demand...
Question generation (QG) approaches based on large neural models require (i) large-scale and (ii) hi...
Online education platforms enable teachers to share a large number of educational resources such as ...
Data labelling for question answering tasks (QA) is a costly procedure that requires oracles to read...
Being able to accurately perform Question Difficulty Estimation (QDE) can improve the accuracy of st...
Question calibration especially on difficulty degree is important for supporting Web-based testing a...
In this paper, we address the problem of estimating question difficulty in community question answer...
Automatic difficulty calibration (ADC) is the application of computational techniques to estimate th...
Standard tests aim to evaluate the performance of examinees using different tests with consistent di...
Semantics based information representations such as ontologies are found to be very useful in repeat...
Estimating questions ’ difficulty levels is an important task in community question answering (CQA) ...
In this paper, we present a framework for Question Difficulty and Expertise Estimation (QDEE) in Com...
The performance of question answering system is evaluated through successive evaluations campaigns. ...
peer reviewedSemantics-based knowledge representations such as ontologies are found to be very usefu...
This paper addresses a question difficulty estimation of which goal is to estimate the difficulty le...
The increasing levels of international communication in all aspects of life lead to a growing demand...
Question generation (QG) approaches based on large neural models require (i) large-scale and (ii) hi...
Online education platforms enable teachers to share a large number of educational resources such as ...
Data labelling for question answering tasks (QA) is a costly procedure that requires oracles to read...