We demonstrate that an attention-based encoder-decoder model can be used for sentence-level grammatical error identification for the Automated Evaluation of Scientific Writing (AESW) Shared Task 2016. The attention-based encoder-decoder models can be used for the generation of corrections, in addition to error identification, which is of interest for certain end-user applications. We show that a character-based encoder-decoder model is particularly effective, outperforming other results on the AESW Shared Task on its own, and showing gains over a word-based counterpart. Our final model— a combination of three character-based encoder-decoder models, one word-based encoder-decoder model, and a sentence-level CNN—is the highest performing s...
Shortage of available training data is holding back progress in the area of automated error detectio...
We describe two entries from the Cambridge University Engineering Department to the BEA 2019 Shared ...
In this thesis, we investigate methods for automatic detection, and to some extent correction, of gr...
Grammatical error correction, like other machine learning tasks, greatly benefits from large quant...
Grammar is one of the most important properties of natural language. It is a set of structural (i.e....
We improve automatic correction of grammatical, orthographic, and collocation errors in text using a...
In this work, we investigated the recent sequence tagging approach for the Grammatical Error Correc...
Grammatical error correction (GEC) is one of the areas in natural language processing in which purel...
Chinese Grammatical Error Correction (CGEC) aims to generate a correct sentence from an erroneous se...
We propose an approach to N-best list reranking using neural sequence-labelling models. We train a c...
The task of Grammatical Error Correction (GEC) has received remarkable attention with wide applicati...
This paper explores the issue of automatically generated ungrammatical data and its use in error det...
Grammatical Error Correction (GEC) and Grammatical Error Correction (GED) are two important tasks in...
In this thesis, I show the advantages of using symbolic parsers for Grammatical Error Detection and ...
With the advent of deep learning, research in many areas of machine learning is converging towards t...
Shortage of available training data is holding back progress in the area of automated error detectio...
We describe two entries from the Cambridge University Engineering Department to the BEA 2019 Shared ...
In this thesis, we investigate methods for automatic detection, and to some extent correction, of gr...
Grammatical error correction, like other machine learning tasks, greatly benefits from large quant...
Grammar is one of the most important properties of natural language. It is a set of structural (i.e....
We improve automatic correction of grammatical, orthographic, and collocation errors in text using a...
In this work, we investigated the recent sequence tagging approach for the Grammatical Error Correc...
Grammatical error correction (GEC) is one of the areas in natural language processing in which purel...
Chinese Grammatical Error Correction (CGEC) aims to generate a correct sentence from an erroneous se...
We propose an approach to N-best list reranking using neural sequence-labelling models. We train a c...
The task of Grammatical Error Correction (GEC) has received remarkable attention with wide applicati...
This paper explores the issue of automatically generated ungrammatical data and its use in error det...
Grammatical Error Correction (GEC) and Grammatical Error Correction (GED) are two important tasks in...
In this thesis, I show the advantages of using symbolic parsers for Grammatical Error Detection and ...
With the advent of deep learning, research in many areas of machine learning is converging towards t...
Shortage of available training data is holding back progress in the area of automated error detectio...
We describe two entries from the Cambridge University Engineering Department to the BEA 2019 Shared ...
In this thesis, we investigate methods for automatic detection, and to some extent correction, of gr...