International audienceSimilarity functions are a fundamental component of many learning algorithms. When dealing with string or tree-structured data, edit distancebased measures are widely used, and there exists a few methods for learning them from data. However, these methods offer no theoretical guarantee as to the generalization ability and discriminative power of the learned similarities. In this paper, we propose a loss minimization-based edit similarity learning approach, called GESL. It is driven by the notion of (e, γ, τ )-goodness, a theory that bridges the gap between the properties of a similarity function and its performance in classification. We show that our learning framework is a suitable way to deal not only with strings bu...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
Abstract—Similarity functions are essential to many learning algorithms. To allow their use in suppo...
International audienceSimilarity functions are essential to many learning algorithms. To allow their...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
Abstract. Similarity and distance functions are essential to many learn-ing algorithms, thus trainin...
Similarity functions are a fundamental component of many learning algorithms. When dealing with stri...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
Abstract—Similarity functions are essential to many learning algorithms. To allow their use in suppo...
International audienceSimilarity functions are essential to many learning algorithms. To allow their...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
Abstract. Similarity and distance functions are essential to many learn-ing algorithms, thus trainin...
Similarity functions are a fundamental component of many learning algorithms. When dealing with stri...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
International audienceSimilarity functions are a fundamental component of many learning algorithms. ...
Abstract—Similarity functions are essential to many learning algorithms. To allow their use in suppo...
International audienceSimilarity functions are essential to many learning algorithms. To allow their...