Title :
An Experimental Study on Learning with Good Edit Similarity Functions
Author :
Bellet, Aurélien ; Sebban, Marc ; Habrard, Amaury
Author_Institution :
Lab. Hubert Curien, Univ. of Jean Monnet, St. Etienne, France
Abstract :
Similarity functions are essential to many learning algorithms. To allow their use in support vector machines (SVM), i.e., for the convergence of the learning algorithm to be guaranteed, they must be valid kernels. In the case of structured data, the similarities based on the popular edit distance often do not satisfy this requirement, which explains why they are typically used with k-nearest neighbor (k-NN). A common approach to use such edit similarities in SVM is to transform them into potentially (but not provably) valid kernels. Recently, a different theory of learning with (e,g,t) -good similarity functions was proposed, allowing the use of non-kernel similarity functions. Moreover, the resulting models are supposedly sparse, as opposed to standard SVM models that can be unnecessarily dense. In this paper, we study the relevance and applicability of this theory in the context of string edit similarities. We show that they are naturally good for a given string classification task and provide experimental evidence that the obtained models not only clearly outperform the k-NN approach, but are also competitive with standard SVM models learned with state-of-the-art edit kernels, while being much sparser.
Keywords :
data structures; learning (artificial intelligence); linear programming; pattern classification; string matching; support vector machines; SVM model; edit distance; edit similarity; good edit similarity function; k-NN approach; k-nearest neighbor; learning algorithm; learning theory; nonkernel similarity function; state-of-the-art edit kernel; string classification task; string edit similarity; structured data; support vector machine; Accuracy; Buildings; Context; Kernel; Particle separators; Support vector machines; Training; edit distance; linear program; similarity function; sparsity; structured data;
Conference_Titel :
Tools with Artificial Intelligence (ICTAI), 2011 23rd IEEE International Conference on
Conference_Location :
Boca Raton, FL
Print_ISBN :
978-1-4577-2068-0
Electronic_ISBN :
1082-3409
DOI :
10.1109/ICTAI.2011.27