We propose the neural string edit distance model for string-pair matching and string transduction based on learnable string edit distance. We modify the original expectation-maximization learned edit distance algorithm into a differentiable loss function, allowing us to integrate it into a neural network providing a contextual representation of the input. We evaluate on cognate detection, transliteration, and grapheme-to-phoneme conversion, and show that we can trade off between performance and interpretability in a single framework. Using contextual representations, which are difficult to interpret, we match the performance of state-of-the-art string-pair matching models. Using static embeddings and a slightly different loss function, we f...
We introduce a string-to-string distance measure which extends the edit distance by block transposit...
AbstractIn this paper we examine string block edit distance, in which two strings A and B are compar...
The computation of string similarity measures has been thoroughly studied in the scientific literatu...
In many applications, it is necessary to determine the similarity of two strings. A widely-used noti...
Abstract—In many applications, it is necessary to determine the similarity of two strings. A widely-...
International audienceThis work aims at inferring a set of regular expressions to parse a text file,...
We analyze an approach to a similarity preserving coding of symbol sequences based on neural distrib...
The edit distance between two strings S and R is defined to be the minimum number of character inser...
Abstract Background The problem of approximate string matching is important in many different areas ...
The edit distance (or Levenshtein distance) between two strings x, y is the minimum number of charac...
Abstract—An edit-distance model that can be used for the approximate matching of contiguous and non-...
Edit distance is a powerful measure of similarity in string matching, measuring the minimum amount o...
The first step prior to data mining is often to merge databases from different sources. Entries in t...
In order to better fit a variety of pattern recognition problems over strings, using a normalised ve...
Edit distance measures the similarity between two strings (as the minimum number of change, insert o...
We introduce a string-to-string distance measure which extends the edit distance by block transposit...
AbstractIn this paper we examine string block edit distance, in which two strings A and B are compar...
The computation of string similarity measures has been thoroughly studied in the scientific literatu...
In many applications, it is necessary to determine the similarity of two strings. A widely-used noti...
Abstract—In many applications, it is necessary to determine the similarity of two strings. A widely-...
International audienceThis work aims at inferring a set of regular expressions to parse a text file,...
We analyze an approach to a similarity preserving coding of symbol sequences based on neural distrib...
The edit distance between two strings S and R is defined to be the minimum number of character inser...
Abstract Background The problem of approximate string matching is important in many different areas ...
The edit distance (or Levenshtein distance) between two strings x, y is the minimum number of charac...
Abstract—An edit-distance model that can be used for the approximate matching of contiguous and non-...
Edit distance is a powerful measure of similarity in string matching, measuring the minimum amount o...
The first step prior to data mining is often to merge databases from different sources. Entries in t...
In order to better fit a variety of pattern recognition problems over strings, using a normalised ve...
Edit distance measures the similarity between two strings (as the minimum number of change, insert o...
We introduce a string-to-string distance measure which extends the edit distance by block transposit...
AbstractIn this paper we examine string block edit distance, in which two strings A and B are compar...
The computation of string similarity measures has been thoroughly studied in the scientific literatu...