ABSTRACT Many evaluation issues for grammatical error detection have previously been overlooked, making it hard to draw meaningful comparisons between different approaches, even when they are evaluated on the same corpus. To begin with, the three-way contingency between a writer's sentence, the annotator's correction, and the system's output makes evaluation more complex than in some other NLP tasks, which we address by presenting an intuitive evaluation scheme. Of particular importance to error detection is the skew of the data -the low frequency of errors as compared to non-errors -which distorts some traditional measures of performance and limits their usefulness, leading us to recommend the reporting of raw measurements (...
We present experiments on assessing the grammatical correctness of learners’ answers in a language-l...
Grammar is one of the most important properties of natural language. It is a set of structural (i.e....
The demand for computer-assisted language learning systems that can provide corrective feedback on l...
In this thesis, we investigate methods for automatic detection, and to some extent correction, of gr...
This paper explores the issue of automatically generated ungrammatical data and its use in error det...
This paper compares a deep and a shallow processing approach to the problem of classifying a sentenc...
Earlier research has shown that few studies in Natural Language Generation (NLG) evaluate their syst...
Grammatical error correction, like other machine learning tasks, greatly benefits from large quant...
We address the problem of class imbalance in supervised grammatical error detection (GED) for non-na...
While automatically computing numerical scores remains the dominant paradigm in NLP system evaluatio...
We observe a severe under-reporting of the different kinds of errors that Natural Language Generatio...
The Constituent Likelihood Automatic Word-tagging System (CLAWS) was originally designed for the low...
In this thesis, I show the advantages of using symbolic parsers for Grammatical Error Detection and ...
The paper presents experiments on using a Grammatical Error Correction (GEC) model to assess the cor...
Typical grammar checking software use some form of natural language parsing to determine if errors e...
We present experiments on assessing the grammatical correctness of learners’ answers in a language-l...
Grammar is one of the most important properties of natural language. It is a set of structural (i.e....
The demand for computer-assisted language learning systems that can provide corrective feedback on l...
In this thesis, we investigate methods for automatic detection, and to some extent correction, of gr...
This paper explores the issue of automatically generated ungrammatical data and its use in error det...
This paper compares a deep and a shallow processing approach to the problem of classifying a sentenc...
Earlier research has shown that few studies in Natural Language Generation (NLG) evaluate their syst...
Grammatical error correction, like other machine learning tasks, greatly benefits from large quant...
We address the problem of class imbalance in supervised grammatical error detection (GED) for non-na...
While automatically computing numerical scores remains the dominant paradigm in NLP system evaluatio...
We observe a severe under-reporting of the different kinds of errors that Natural Language Generatio...
The Constituent Likelihood Automatic Word-tagging System (CLAWS) was originally designed for the low...
In this thesis, I show the advantages of using symbolic parsers for Grammatical Error Detection and ...
The paper presents experiments on using a Grammatical Error Correction (GEC) model to assess the cor...
Typical grammar checking software use some form of natural language parsing to determine if errors e...
We present experiments on assessing the grammatical correctness of learners’ answers in a language-l...
Grammar is one of the most important properties of natural language. It is a set of structural (i.e....
The demand for computer-assisted language learning systems that can provide corrective feedback on l...