Title :
Service demand analysis using multiattribute learning mechanisms
Author :
Inoue, Akiya ; Takahashi, Shoko ; Nishimatsu, Ken ; Kawano, Hiromichi
Author_Institution :
NTT Service Integration Labs., Tokyo, Japan
fDate :
30 Sept.-4 Oct. 2003
Abstract :
We describe a new approach to analyze customer demand for various types of Internet services and IT systems. We have proposed a multi-attribute learning mechanism called LMDCM (Learning Mechanism using Discrete Choice Models) to evaluate customer satisfaction levels for services. A multiattribute learning mechanism can indicate the customer satisfaction level of each service under given situations. We give an overview of customer-behavior modeling using LMDCM and the framework to analyze customer-churning and service demand. This framework can be used to simulate scenarios under assumed situations. It consists of customer-behavior modeling, service modeling, environment modeling, and scenario simulation functions. Service demand analysis for providers of various services (xSPs) is shown as an application example.
Keywords :
Internet; customer satisfaction; customer services; decision making; learning (artificial intelligence); IT system; Internet services; customer satisfaction level; customer-behavior modeling; environment modeling; multiattribute learning mechanism; scenario simulation function; service demand analysis; service modeling; service provider; Customer satisfaction; Decision making; Electronic mail; Frequency selective surfaces; Investments; Laboratories; Learning systems; Time series analysis; USA Councils; Web and internet services;
Conference_Titel :
Integration of Knowledge Intensive Multi-Agent Systems, 2003. International Conference on
Print_ISBN :
0-7803-7958-6
DOI :
10.1109/KIMAS.2003.1245113