Sciweavers

ICFCA
2009
Springer

A Concept Lattice-Based Kernel for SVM Text Classification

13 years 9 months ago
A Concept Lattice-Based Kernel for SVM Text Classification
Abstract. Standard Support Vector Machines (SVM) text classification relies on bag-of-words kernel to express the similarity between documents. We show that a document lattice can be used to define a valid kernel function that takes into account the relations between different terms. Such a kernel is based on the notion of conceptual proximity between pairs of terms, as encoded in the document lattice. We describe a method to perform SVM text classification with concept lattice-based kernel, which consists of text pre-processing, feature selection, lattice construction, computation of pairwise term similarity and kernel matrix, and SVM classification in the transformed feature space. We tested the accuracy of the proposed method on the 20NewsGroup database: the results show an improvement over the standard SVM when very little training data are available.
Claudio Carpineto, Carla Michini, Raffaele Nicolus
Added 19 Feb 2011
Updated 19 Feb 2011
Type Journal
Year 2009
Where ICFCA
Authors Claudio Carpineto, Carla Michini, Raffaele Nicolussi
Comments (0)