Association Rule Filter for Data Mining in Call Tracking Data (Special Issue on the Latest Development of Telecommunication Research)
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概要
- 論文の詳細を見る
Call tracking data contains a calling address, called address, service type, and other usuful attributes to predict a customer's calling activity. Call tracking data is beoming a target of data mining for telecommunication carriers. Conventional data-mining programs control the number of association rulrs found with two types of thresholds (minimum confidence and minimum support), however, often they generate too many association rules because of the wide variety of patterns found in call tracking data. This paper proposes a new method to reduce the number of generated rules. The method proposed tests each generated rule based on Akaike Information Criteria (AIC) without using conventional thresholds. Experiments with artificial call tracking data show the high performance of the aproposed method.
- 社団法人電子情報通信学会の論文
- 1998-12-25
著者
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Hashimoto K
Kddi Labs. Usa Inc. Ca Usa
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MATSUMOTO Kazunori
KDD R&D Laboratories INC
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HASHIMOTO Kazuo
KDD R&D Laboratories INC
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Matsumoto K
Kddi R&d Lab. Inc. Kamifukuoka‐shi Jpn
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Hashimoto Kazuo
Kdd R&d Laboratories
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Hashimoto Kazuo
Kdd R&d Laboratories Inc
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Matsumoto Kazunori
Kdd R&d Laboratories
関連論文
- Association Rule Filter for Data Mining in Call Tracking Data (Special Issue on the Latest Development of Telecommunication Research)
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- Formulating International Telephone Network Management as Distributed Problem Solving
- Association Rule Filter for Data Mining in Call Tracking Data