Handling Dynamic Weights in Weighted Frequent Pattern Mining
スポンサーリンク
概要
- 論文の詳細を見る
Even though weighted frequent pattern (WFP) mining is more effective than traditional frequent pattern mining because it can consider different semantic significances (weights) of items, existing WFP algorithms assume that each item has a fixed weight. But in real world scenarios, the weight (price or significance) of an item can vary with time. Reflecting these changes in item weight is necessary in several mining applications, such as retail market data analysis and web click stream analysis. In this paper, we introduce the concept of a dynamic weight for each item, and propose an algorithm, DWFPM (dynamic weighted frequent pattern mining), that makes use of this concept. Our algorithm can address situations where the weight (price or significance) of an item varies dynamically. It exploits a pattern growth mining technique to avoid the level-wise candidate set generation-and-test methodology. Furthermore, it requires only one database scan, so it is eligible for use in stream data mining. An extensive performance analysis shows that our algorithm is efficient and scalable for WFP mining using dynamic weights.
著者
-
AHMED Chowdhury
Department of Computer Engineering, Kyung Hee University
-
TANBEER Syed
Department of Computer Engineering, Kyung Hee University
-
JEONG Byeong-Soo
Department of Computer Engineering, Kyung Hee University
-
LEE Young-Koo
Department of Computer Engineering, Kyung Hee University
関連論文
- An Efficient Algorithm for Sliding Window-Based Weighted Frequent Pattern Mining over Data Streams
- Handling Dynamic Weights in Weighted Frequent Pattern Mining
- An Integrated Sleep-Scheduling and Routing Algorithm in Ubiquitous Sensor Networks Based on AHP(Ubiquitous Sensor Networks)
- An Efficient Algorithm for Sliding Window-Based Weighted Frequent Pattern Mining over Data Streams
- Handling Dynamic Weights in Weighted Frequent Pattern Mining
- Mining Regular Patterns in Transactional Databases
- Multi-Floor Semantically Meaningful Localization Using IEEE 802.11 Network Beacons