The use of semantic in Natural Language Processing (NLP) has sparked the interest of academics and businesses in various fields. One such field is Automated Short-answer Grading Systems (ASAGS) for automatically evaluating responses for similarity with the expected answer. ASAGS poses semantic challenges because the responses of a topic are in the responder’s own words. This study is providing an in-depth analysis of work to improve the assessment of semantic similarity between corpora in natural language in the context of ASAGS. Three popular semantic approaches are corpus- based, knowledge-based, and deep learning are used to evaluate against the conventional methods in ASAGS. Finally, the gaps in knowledge are identified and new research...
Automatic short answer grading (ASAG) has become part of natural language processing problems. Moder...
The difficulties of grading essays with natural language processing tools are addressed. The present...
This paper presents a method for measuring the semantic similarity of texts, using corpus-based and ...
The assessment of free-text answers may demand significant human effort, especially in scenarios wit...
Automatic short-answer grading (ASAG) is a system that aims to help speed up the assessment proces...
In natural language processing, short-text semantic similarity (STSS) is a very prominent field. It ...
Short snippets of written text play a central role in our day-to-day communication—SMS and email mes...
In this paper, the authors explore unsupervised techniques for the task of automatic short answer gr...
Automatic Short Answer Grading (ASAG) is the task of grading short answer questions using computer m...
Estimating the semantic similarity between short texts plays an increasingly prominent role in many ...
During the past decades, researches about automatic grading have become an interesting issue. These ...
Under the influence of the COVID-19 pandemic, traditional in-person teaching has undergone significa...
This research presents a new benchmark dataset for evaluating Short Text Semantic Similarity (STSS) ...
This dissertation presents methods and resources proposed to improve onmeasuring semantic textual si...
This article discusses corpus-based and knowledge-based measures of text semantic similarity
Automatic short answer grading (ASAG) has become part of natural language processing problems. Moder...
The difficulties of grading essays with natural language processing tools are addressed. The present...
This paper presents a method for measuring the semantic similarity of texts, using corpus-based and ...
The assessment of free-text answers may demand significant human effort, especially in scenarios wit...
Automatic short-answer grading (ASAG) is a system that aims to help speed up the assessment proces...
In natural language processing, short-text semantic similarity (STSS) is a very prominent field. It ...
Short snippets of written text play a central role in our day-to-day communication—SMS and email mes...
In this paper, the authors explore unsupervised techniques for the task of automatic short answer gr...
Automatic Short Answer Grading (ASAG) is the task of grading short answer questions using computer m...
Estimating the semantic similarity between short texts plays an increasingly prominent role in many ...
During the past decades, researches about automatic grading have become an interesting issue. These ...
Under the influence of the COVID-19 pandemic, traditional in-person teaching has undergone significa...
This research presents a new benchmark dataset for evaluating Short Text Semantic Similarity (STSS) ...
This dissertation presents methods and resources proposed to improve onmeasuring semantic textual si...
This article discusses corpus-based and knowledge-based measures of text semantic similarity
Automatic short answer grading (ASAG) has become part of natural language processing problems. Moder...
The difficulties of grading essays with natural language processing tools are addressed. The present...
This paper presents a method for measuring the semantic similarity of texts, using corpus-based and ...