Combined Mining: Analyzing Object and Pattern Relations for Discovering Actionable Complex Patterns
نویسنده
چکیده
Combined mining is a technique for analyzing object relations and pattern relations, and for extracting and constructing actionable complex knowledge (patterns or exceptions) in complex situations. Although combined patterns can be built within a single method, such as combined sequential patterns by aggregating relevant frequent sequences, this knowledge is composed of multiple constituent components (the left hand side) from multiple data sources which are represented by different feature spaces, or identified by diverse modeling methods. In some cases, this knowledge is also associated with certain impact (influence, action or conclusion, on the right hand side). This paper presents a high-level picture of combined mining and the combined patterns from the perspective of object and pattern relation analysis. Several fundamental aspects of combined pattern mining are discussed, including feature interaction, pattern interaction, pattern dynamics, pattern impact, pattern relation, pattern structure, pattern paradigm, pattern formation criteria, and pattern presentation (in terms of pattern ontology and pattern dynamic charts). We also briefly illustrate the concepts and discuss how they can be applied to mining complex data for complex knowledge in either a multi-feature, multi-source, or multi-method scenario.
منابع مشابه
Combined Pattern Mining for D3M Using Fuzzy
Many algorithms and models were developed but the findings are not actionable and lack of soft power while solving the complex problems. Domain Driven Data mining is used a major efforts to promote the action ability of the knowledge discovery in the real world smart decision making. Combined mining is one of the common methods for analyzing complex data for identifying complex knowledge. The d...
متن کاملGeneral Frameworks for Combined Mining: Discovering Informative Knowledge in Complex Data
Enterprise data mining applications such as mining government service data often involve multiple large heterogeneous data sources, user preferences and business impact. Business people expect data mining deliverables to inform direct business decision-making actions. In such situations, a single method or one-step mining is often limited in discovering informative knowledge. It would also be v...
متن کاملCombined Pattern Mining: From Learned Rules to Actionable Knowledge
Association mining often produces large collections of association rules that are difficult to understand and put into action. In this paper, we have designed a novel notion of combined patterns to extract useful and actionable knowledge from a large amount of learned rules. We also present definitions of combined patterns, design novel metrics to measure their interestingness and analyze the r...
متن کاملDiscovery of Actionable Patterns in Databases: The Action Hierarchy Approach
An approach to defining actionability as a measure of interestingness of patterns is proposed. This approach is based on the concept of an action hierarchy which is defined as a tree of actions with patterns and pattern templates (data mining queries) assigned to its nodes. A method for discovering actionable patterns is presented and various techniques for optimizing the discovery process are ...
متن کاملActionable Combined High Utility Itemset Mining
The itemsets discovered by traditional High Utility Itemsets Mining (HUIM) methods are more useful than frequent itemset mining outcomes; however, they are usually disordered and not actionable, and sometime accidental, because the utility is the only judgement and no relations among itemsets are considered. In this paper, we introduce the concept of combined mining to select combined itemsets ...
متن کامل