Title :
Automatic Classification of Change Requests for Improved IT Service Quality
Author :
Kadar, Cristina ; Wiesmann, Dorothea ; Iria, Jose ; Husemann, Dirk ; Lucic, Mario
Author_Institution :
Zurich Res. Lab., IBM, Ruschlikon, Switzerland
fDate :
March 29 2011-April 2 2011
Abstract :
Faulty changes to the IT infrastructure can lead to critical system and application outages, and therefore cause serious economical losses. In this paper, we describe a change planning support tool that aims at assisting the change requesters in leveraging aggregated information associated with the change, like past failure reasons or best implementation practices. The thus gained knowledge can be used in the subsequent planning and implementation steps of the change. Optimal matching of change requests with the aggregated information is achieved through the classification of the change request into about 200 fine-grained activities. We propose to automatically classify the incoming change requests using various information retrieval and machine learning techniques. The cost of building the classifiers is reduced by employing active learning techniques or by leveraging labeled features. Historical tickets from two customers were used to empirically assess and compare the accuracy of the different classification approaches (Lucene index, multinomial logistic regression, and generalized expectation criteria).
Keywords :
DP industry; classification; information retrieval; learning (artificial intelligence); management of change; planning (artificial intelligence); IT infrastructure; Lucene index; active learning techniques; application outages; change planning support tool; change request optimal matching; change requests automatic classification; economical losses; faulty changes; generalized expectation criteria; improved IT service quality; information retrieval technique; machine learning technique; multinomial logistic regression; subsequent planning; Accuracy; Computational modeling; Data models; Indexes; Information retrieval; Machine learning; Training; automation; change management; generalized expectation criteria; information retrieval; logistic regression; service quality; text classification;
Conference_Titel :
SRII Global Conference (SRII), 2011 Annual
Conference_Location :
San Jose, CA
Print_ISBN :
978-1-61284-415-2
Electronic_ISBN :
978-0-7695-4371-0
DOI :
10.1109/SRII.2011.95