Abstract. We propose a novel approach to discover useful patterns from ill-defined decision tables with a real value decision and nominal conditional attributes. The proposed solution is based on a two-layered learning algorithm. In the first layer the preference relation between objects is approximated from the data. In the second layer the approximated preference relation is used to create three applications: (1) to learn a ranking order on a collection of combinations, (2) to predict the real decision value, (3) to optimize the process of searching for the combination with maximal decision.
Abstract. One of the key tasks in data mining and information retrieval is to learn preference relat...
Pattern mining provides useful tools for exploratory data analysis. Numerous ecient algorithms exist...
Data mining is the process of extracting informative patterns from data stored in a database or data...
Abstract. We propose a novel approach to discover useful patterns from ill-defined decision tables w...
International audienceThe field of Multiple Criteria Decision Aiding studies decision problems where...
Decision mining enriches process models with rules underlying decisions in processes using historica...
This paper describes the use of decision tree and rule induction in data mining applications. Of met...
Decision mining enriches process models with rules underlying decisions in processes using historica...
One of the key tasks in data mining and information retrieval is to learn preference relations betwe...
In this paper we present an approach for mining decisions. We show that through the use of a Decisio...
The assessment of knowledge derived from databases depends on many factors. Decision makers often ne...
This paper presents an incremental and scalable learning algorithm in order to mine numeric, low di...
Decision mining enriches process models with rules underlying decisions in processes using historica...
We introduce the task of learning to pick a single preferred example out a finite set of examples, a...
Multicriteria decision ranking methods (MCDM) are used to aggregate information from differ-ent pref...
Abstract. One of the key tasks in data mining and information retrieval is to learn preference relat...
Pattern mining provides useful tools for exploratory data analysis. Numerous ecient algorithms exist...
Data mining is the process of extracting informative patterns from data stored in a database or data...
Abstract. We propose a novel approach to discover useful patterns from ill-defined decision tables w...
International audienceThe field of Multiple Criteria Decision Aiding studies decision problems where...
Decision mining enriches process models with rules underlying decisions in processes using historica...
This paper describes the use of decision tree and rule induction in data mining applications. Of met...
Decision mining enriches process models with rules underlying decisions in processes using historica...
One of the key tasks in data mining and information retrieval is to learn preference relations betwe...
In this paper we present an approach for mining decisions. We show that through the use of a Decisio...
The assessment of knowledge derived from databases depends on many factors. Decision makers often ne...
This paper presents an incremental and scalable learning algorithm in order to mine numeric, low di...
Decision mining enriches process models with rules underlying decisions in processes using historica...
We introduce the task of learning to pick a single preferred example out a finite set of examples, a...
Multicriteria decision ranking methods (MCDM) are used to aggregate information from differ-ent pref...
Abstract. One of the key tasks in data mining and information retrieval is to learn preference relat...
Pattern mining provides useful tools for exploratory data analysis. Numerous ecient algorithms exist...
Data mining is the process of extracting informative patterns from data stored in a database or data...