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Publicações

Publicações por LIAAD

2022

The Quantile Methods to Analyze Distributional Data

Autores
Ichino, M; Brito, P;

Publicação
Analysis of Distributional Data

Abstract

2022

Regression Analysis with the Distribution and Symmetric Distribution Model

Autores
Dias, S; Brito, P;

Publicação
Analysis of Distributional Data

Abstract

2022

Descriptive Statistics based on Frequency Distribution

Autores
Dias, S; Brito, P;

Publicação
Analysis of Distributional Data

Abstract

2022

Divisive Clustering of Histogram Data

Autores
Chavent, M; Brito, P;

Publicação
Analysis of Distributional Data

Abstract

2022

Fundamental Concepts about Distributional Data

Autores
Dias, S; Brito, P;

Publicação
Analysis of Distributional Data

Abstract

2022

Meta-features for meta-learning

Autores
Rivolli, A; Garcia, LPF; Soares, C; Vanschoren, J; de Carvalho, ACPLF;

Publicação
KNOWLEDGE-BASED SYSTEMS

Abstract
Meta-learning is increasingly used to support the recommendation of machine learning algorithms and their configurations. These recommendations are made based on meta-data, consisting of performance evaluations of algorithms and characterizations on prior datasets. These characterizations, also called meta-features, describe properties of the data which are predictive for the performance of machine learning algorithms trained on them. Unfortunately, despite being used in many studies, meta-features are not uniformly described, organized and computed, making many empirical studies irreproducible and hard to compare. This paper aims to deal with this by systematizing and standardizing data characterization measures for classification datasets used in meta-learning. Moreover, it presents an extensive list of meta-features and characterization tools, which can be used as a guide for new practitioners. By identifying particularities and subtle issues related to the characterization measures, this survey points out possible future directions that the development of meta-features for meta-learning can assume.

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