In this paper, we address the binary classification problem, in which one is given a set of observations, characterized by a number of (binary and non-binary) attributes and wants to determine which class each observation belongs to. The proposed classification algorithm is based on the Logical Analysis of Data (LAD) technique and belongs to the class of supervised learning algorithms. We introduce a novel metaheuristic-based approach for pattern generation within LAD. The key idea relies on the generation of a pool of patterns for each given observation of the training set. Such a pool is built with one or more criteria in mind (e.g., diversity, homogeneity, coverage, etc.), and is paramount in the achievement of high classification accura...
In data mining, we emphasize the need for learning from huge, incomplete, and imperfect data sets. T...
About 20 years ago, we proposed an innovative approach to data mining based on a blend of Boolean te...
The analysis of groups of binary data can be achieved by logical based approaches. These approaches ...
Logical analysis of data (LAD) is a data analysis methodology used to solve the binary classificatio...
Logical Analysis of Data (LAD) is a machine learning/data mining methodology that combines ideas fro...
The Logical Analysis of Data (LAD) is a combinatorics, optimization and logic based methodology for ...
Logical analysis of data (LAD), an approach to data analysis based on Boolean functions, combinatori...
This work deals with the problem of producing a fast and accurate binary classification of data reco...
In this paper we consider Box Clustering, a method for supervised classification that partitions the...
The formation of patterns is one of the main stages in logical data analysis. Fuzzy approaches to pa...
We investigate an aspect of the construction of logical recognition algorithms - selection of patter...
In this paper we address a classification method and a technique for effectively dealing with the fr...
AbstractPattern generation methods for the Logical Analysis of Data (LAD) have been term-enumerative...
AbstractIn a finite dataset consisting of positive and negative observations represented as real val...
AbstractGiven a binary dataset of positive and negative observations, a positive (negative) pattern ...
In data mining, we emphasize the need for learning from huge, incomplete, and imperfect data sets. T...
About 20 years ago, we proposed an innovative approach to data mining based on a blend of Boolean te...
The analysis of groups of binary data can be achieved by logical based approaches. These approaches ...
Logical analysis of data (LAD) is a data analysis methodology used to solve the binary classificatio...
Logical Analysis of Data (LAD) is a machine learning/data mining methodology that combines ideas fro...
The Logical Analysis of Data (LAD) is a combinatorics, optimization and logic based methodology for ...
Logical analysis of data (LAD), an approach to data analysis based on Boolean functions, combinatori...
This work deals with the problem of producing a fast and accurate binary classification of data reco...
In this paper we consider Box Clustering, a method for supervised classification that partitions the...
The formation of patterns is one of the main stages in logical data analysis. Fuzzy approaches to pa...
We investigate an aspect of the construction of logical recognition algorithms - selection of patter...
In this paper we address a classification method and a technique for effectively dealing with the fr...
AbstractPattern generation methods for the Logical Analysis of Data (LAD) have been term-enumerative...
AbstractIn a finite dataset consisting of positive and negative observations represented as real val...
AbstractGiven a binary dataset of positive and negative observations, a positive (negative) pattern ...
In data mining, we emphasize the need for learning from huge, incomplete, and imperfect data sets. T...
About 20 years ago, we proposed an innovative approach to data mining based on a blend of Boolean te...
The analysis of groups of binary data can be achieved by logical based approaches. These approaches ...