Title :
Graph and Manifold Co-regularization
Author :
Sacca, Claudio ; Diligenti, Michelangelo ; Gori, Marco
Author_Institution :
Dipt. di Ing. dell´Inf., Univ. of Siena, Siena, Italy
Abstract :
Classical foundations of Statistical Learning Theory rely on the assumption that the input patterns are independently and identically distributed. However, in many applications, the inputs, represented as feature vectors, are also embedded into a network of pair wise relations. Transductive approaches like graph regularization rely on the network topology without considering the feature vectors. Semi-supervised approaches like Manifold Regularization learn a function taking the feature vectors as input, while being smooth over the network connections. In this latter case, the connectivity information is processed at training time, but is still neglected during generalization, as the final classification decision takes only the feature vector representations as input. This paper presents and evaluates a model merging the advantages of graph regularization and kernel machines for transductive classification problems.
Keywords :
graph theory; learning (artificial intelligence); statistical analysis; vectors; connectivity information; feature vector representations; graph regularization; kernel machines; manifold regularization; network topology; pair wise relations; statistical learning theory; transductive classification problems; Cost function; Kernel; Manifolds; Motion pictures; Support vector machines; Training; Vectors; graph regularization; manifold regularization; statistical relational learning; transductive learning;
Conference_Titel :
Machine Learning and Applications (ICMLA), 2013 12th International Conference on
Conference_Location :
Miami, FL
DOI :
10.1109/ICMLA.2013.58