Title :
A statistical machine learning approach for ticket mining in IT service delivery
Author :
Ea-Ee Jan ; Jian Ni ; Niyu Ge ; Ayachitula, Naga ; Xiaolan Zhang
Author_Institution :
IBM T.J. Watson Res. Center, Hawthorne, NY, USA
Abstract :
Ticketing is a fundamental management process of IT service delivery. Customers typically express their requests in the form of tickets related to problems or configuration changes of existing systems. Tickets contain a wealth of information which, when connected with other sources of information such as asset and configuration information, monitoring information, can yield new insights that would otherwise be impossible to gain from one isolated source. Linking these various sources of information requires a common key shared by these data sources. The key is the server names. Unfortunately, due to historical as well as practical reasons, the server names are not always present in the tickets as a standalone field. Rather, they are embedded in unstructured text fields such as abstract and descriptions. Thus, automatically identifying server names in tickets is a crucial step in linking various information sources. In this paper, we present a statistical machine learning method called Conditional Random Field (CRF) that can automatically identify server names in tickets with high accuracy and robustness. We then illustrate how such linkages can be leveraged to create new business insights.
Keywords :
data mining; learning (artificial intelligence); statistical analysis; text analysis; CRF; IT service delivery; abstract text field; asset information; automatic server name identification; conditional random field; configuration information; data sources; description text field; management process; monitoring information; statistical machine learning approach; ticket mining; unstructured text fields; Business; Data models; Dictionaries; Robustness; Servers; Training; Training data; Analytics; Data model; Machine Learning; Service management; Statistical Models;
Conference_Titel :
Integrated Network Management (IM 2013), 2013 IFIP/IEEE International Symposium on
Conference_Location :
Ghent
Print_ISBN :
978-1-4673-5229-1