In this paper we present a multi-level approach for extracting well-defined and semantic ally sound information granules from numerical data. The approach is based on the Double Clustering framework (DCf), which performs two main clustering steps on the data space in order to extract granules qualitatively described in terms of fuzzy sets that meet a number of interpretability constraints. While DCf can extract information granules with a fixed level of granulation, its multi-level extension, called ML-DC (Multi-Level Double Clustering), can perform granulation of data at different levels, in a hierarchical fashion. At the first level, the whole dataset is granulated. At the second level, data embraced in each first-level granule are furthe...
Revealing a structure in data is of paramount importance in a broad range of problems of information...
DC* (Double Clustering with A*) is an algorithm capable of generating highly interpretable fuzzy inf...
AbstractPrototype Reasoning using granular objects is an important technology for knowledge discover...
In this paper we present a multi-level approach for extracting well-defined and semantic ally sound ...
In this paper, we present a framework for extracting well-defined and semantically sound information...
This paper proposes an approach to derive fuzzy granules from numerical data. Granules are first for...
This paper addresses the problem of forming information granules of well-defied and clearly delineat...
In this paper we present an approach for extracting well-defined and interpretable information granu...
Fuzzy information granules indicate sufficiently interpretable fuzzy sets for achieving a high level...
Granular computing is a problem solving paradigm based on information granules, which are conceptual...
Fuzzy rule-based systems are effective tools for acquiring knowledge from data and represent it in a...
This paper presents a method to construct information granules that provide a relevant description o...
Information granules are complex entities that arise in the process of abstraction of data and deriv...
In this paper we compare two algorithms that are capable of generating fuzzy partitions from data so...
DC* (Double Clustering by A*) is an algorithm for interpretable fuzzy information granulation of dat...
Revealing a structure in data is of paramount importance in a broad range of problems of information...
DC* (Double Clustering with A*) is an algorithm capable of generating highly interpretable fuzzy inf...
AbstractPrototype Reasoning using granular objects is an important technology for knowledge discover...
In this paper we present a multi-level approach for extracting well-defined and semantic ally sound ...
In this paper, we present a framework for extracting well-defined and semantically sound information...
This paper proposes an approach to derive fuzzy granules from numerical data. Granules are first for...
This paper addresses the problem of forming information granules of well-defied and clearly delineat...
In this paper we present an approach for extracting well-defined and interpretable information granu...
Fuzzy information granules indicate sufficiently interpretable fuzzy sets for achieving a high level...
Granular computing is a problem solving paradigm based on information granules, which are conceptual...
Fuzzy rule-based systems are effective tools for acquiring knowledge from data and represent it in a...
This paper presents a method to construct information granules that provide a relevant description o...
Information granules are complex entities that arise in the process of abstraction of data and deriv...
In this paper we compare two algorithms that are capable of generating fuzzy partitions from data so...
DC* (Double Clustering by A*) is an algorithm for interpretable fuzzy information granulation of dat...
Revealing a structure in data is of paramount importance in a broad range of problems of information...
DC* (Double Clustering with A*) is an algorithm capable of generating highly interpretable fuzzy inf...
AbstractPrototype Reasoning using granular objects is an important technology for knowledge discover...