Journal of Siberian Federal University. Mathematics & Physics / Topic Categorization Based on Collectives of TermWeighting Methods for Natural Language Call Routing

Full text (.pdf)
Issue
Journal of Siberian Federal University. Mathematics & Physics. 2016 9 (2)
Authors
Sergienko, Roman B.; Shan, Muhammad; Minker, Wolfgang; Semenkin, Eugene S.
Contact information
Sergienko, Roman B.:Institute of Telecommunication Engineering Ulm University Albert-Einstein-Allee, 43, Ulm, 89081 Germany; ; Shan, Muhammad:Institute of Telecommunication Engineering Ulm University Albert-Einstein-Allee, 43, Ulm, 89081 Germany; ; Minker, Wolfgang:Institute of Telecommunication Engineering Ulm University Albert-Einstein-Allee, 43, Ulm, 89081 Germany; ; Semenkin, Eugene S.:Informatics and Telecommunications Institute Siberian State Aerospace University Krasnoyarskiy Rabochiy, 31, Krasnoyarsk, 660037 Russia;
Keywords
natural language call routing; text classification; term weighting
Abstract

Natural language call routing is an important data analysis problem which can be applied in different do- mains including airspace industry. This paper presents the investigation of collectives of term weighting methods for natural language call routing based on text classification. The main idea is that collectives of different term weighting methods can provide classification effectiveness improvement with the same classification algorithm. Seven different unsupervised and supervised term weighting methods were tested and compared with each other for classification with k-NN. After that different combinations of term weighting methods were formed as collectives. Two approaches for the handling of the collectives were considered: the meta-classifier based on the rule induction and the majority vote procedure. The nu- merical experiments have shown that the best result is provided with the vote of all seven different term weighting methods. This combination provides a significant increasing of classification effectiveness in comparison with the most effective term weighting methods

Pages
235–245
Paper at repository of SibFU
https://elib.sfu-kras.ru/handle/2311/20248