Computational Complexity of Finding Meaningful Association Rules
スポンサーリンク
概要
- 論文の詳細を見る
Recent developments in computer technology allow us to analyze all the data in a huge database. Data mining is to analyze all the data in such a database and to obtain useful information for database users. One of the well-studied problems in data mining is the search for meaningful association rules in a market basket database which contains massive amounts of transactions. One way to find meaningful association rules is to find all the large itemsets first, and then to find meaningful association rules from the large itemsets. Although a number of algorithms for computing all the large itemsets have been proposed, the computational complexity of them is scarcely disscussed. In this paper, we show that it is NP-complete to decide whether there exists a large itemset that has a given cardinality. Also, we propose subclasses of databases in which all the meaningful association rules can be computed in time polynomial of the size of a database.
- 社団法人電子情報通信学会の論文
- 1999-09-25
著者
-
ITO Minoru
Graduate School of Information Science, Nara Institute of Science and Technology (NAIST)
-
Kwon Yeon-dae
Graduate School Of Information Science Nara Institute Of Science And Technology
-
NAKANISHI Ryuichi
Graduate School of Information Science, Nara Institute of Science and Technology
-
NAKANISHI Michio
Education Center for Information Processing, Osaka University
-
Nakanishi M
Education Center For Information Processing Osaka University
-
Ito M
Nara Inst. Sci. And Technol. Nara Jpn
-
Nakanishi Michio
Education Center For Information Processing Osaka University
-
Nakanishi R
Graduate School Of Information Science Nara Institute Of Science And Technology
-
Nakanishi Ryuichi
Graduate School Of Information Science Nara Institute Of Science And Technology
-
Ito Minoru
Graduate School Of Information Science Nara Institute Of Science And Technology (naist)
-
Ito Minoru
Graduate School Of Information Science Nara Institute Of Science And Technology
関連論文
- Two-layer distributed service placement method on mobile ad-hoc networks (モバイルコンピューティングとユビキタス通信)
- HDAR: Highly Distributed Adaptive Service Replication for MANETs
- Computational Complexity of Finding Meaningful Association Rules
- Implication Problems for Specialization Constraints on Databases Supporting Complex Objects
- Querying Molecular Biology Databases by Integration Using Multiagents (Special Issue on New Generation Database Technologies)
- Computational Complexity of Finding Highly Co-occurrent Itemsets in Market Basket Databases
- An Approximation Algorithm for the Task-Coalition Assignment Problem
- A Formal Approach to Detecting Security Flaws in Object-Oriented Databases (Special Issue on New Generation Database Technologies)
- An Authorization Model for Object-Oriented Databases and Its Efficient Access Control
- Complexity of the Type-Consistency Problem for Acyclic Object-Oriented Database Schemas
- A Polynomial-Time Recognizable Subclass of Lexical-Functional Grammars
- A Note on Inadequacy of the Model for Learning from Queries
- The Universal Recognition Problems for Multiple Context-Free Grammars and for Linear Context-Free Rewriting Systems
- A Personal Navigation System with Functions to Compose Tour Schedules Based on Multiple Conflicting Criteria(Selected Papers from ICMU 2005(Second International Conference on Mobile Computing and Ubiquitous Networking))
- HDAR : Highly Distributed Adaptive Service Replication for MANETs
- Tree Automaton with Tree Memory
- Probabilistic Coverage Methods in People-Centric Sensing
- Specialization Constraints for a Complex Object Model Supporting Selective Inheritance
- A Reinforcement Learning Method with the Inference of the Other Agent's Policy for 2-Player Stochastic Games
- A Personal Navigation System with Functions to Compose Tour Schedules Based on Multiple Conflicting Criteria
- A Personal Navigation System with Functions to Compose Tour Schedules Based on Multiple Conflicting Criteria
- Probabilistic Coverage Methods in People-Centric Sensing