We consider the isolated spelling error correction problem as a specific subproblem of the more general string-to-string translation problem. In this context, we investigate four general string-to-string transformation models that have been suggested in recent years and apply them within the spelling error correction paradigm. In particular, we investigate how a simple ‘k-best decoding plus dictionary lookup’ strategy performs in this context and find that such an approach can significantly outdo baselines such as edit distance, weighted edit distance, and the noisy channel Brill and Moore model to spelling error correction. We also consider elementary combination techniques for our models such as language model weighted majority voting and...
We present two algorithms for automatically improving the quality of texts which contain a large num...
Character-recognition devices, present and future, are likely to make errors. A system for spelling ...
Abstract- Machine learning techniques are provided with small amount of data to learn and training m...
We consider the isolated spelling error correction problem as a specific subproblem of the more gene...
In this paper, we describe a spelling correction system designed specifically for OCR-generated text...
In this paper, we describe a spelling correction system designed specifically for OCR-generated text...
This paper describes a new automatic spelling correction program to deal with OCR generated errors. ...
This paper describes a new automatic spelling correction program to deal with OCR generated errors. ...
This paper accounts for a new technique of correcting isolated words in typed texts. A language-depe...
Abstract. In this paper, we describe a spelling correction system designed specifically for OCR-gene...
Understanding handwritten and printed text is easier for humans but computers do not have the same l...
This paper presents a comparative study of spelling errors that are corrected as you type, vs. those...
Spelling normalization is the task to normalize non-standard words into standard words in texts, res...
Spelling normalization is the task to normalize non-standard words into standard words in texts, res...
Spelling normalization is the task to normalize non-standard words into standard words in texts, res...
We present two algorithms for automatically improving the quality of texts which contain a large num...
Character-recognition devices, present and future, are likely to make errors. A system for spelling ...
Abstract- Machine learning techniques are provided with small amount of data to learn and training m...
We consider the isolated spelling error correction problem as a specific subproblem of the more gene...
In this paper, we describe a spelling correction system designed specifically for OCR-generated text...
In this paper, we describe a spelling correction system designed specifically for OCR-generated text...
This paper describes a new automatic spelling correction program to deal with OCR generated errors. ...
This paper describes a new automatic spelling correction program to deal with OCR generated errors. ...
This paper accounts for a new technique of correcting isolated words in typed texts. A language-depe...
Abstract. In this paper, we describe a spelling correction system designed specifically for OCR-gene...
Understanding handwritten and printed text is easier for humans but computers do not have the same l...
This paper presents a comparative study of spelling errors that are corrected as you type, vs. those...
Spelling normalization is the task to normalize non-standard words into standard words in texts, res...
Spelling normalization is the task to normalize non-standard words into standard words in texts, res...
Spelling normalization is the task to normalize non-standard words into standard words in texts, res...
We present two algorithms for automatically improving the quality of texts which contain a large num...
Character-recognition devices, present and future, are likely to make errors. A system for spelling ...
Abstract- Machine learning techniques are provided with small amount of data to learn and training m...