Articles with "feature spaces" as a keyword



Photo from wikipedia

Learning feature spaces for regression with genetic programming

Sign Up to like & get
recommendations!
Published in 2020 at "Genetic Programming and Evolvable Machines"

DOI: 10.1007/s10710-020-09383-4

Abstract: Genetic programming has found recent success as a tool for learning sets of features for regression and classification. Multidimensional genetic programming is a useful variant of genetic programming for this task because it represents candidate… read more here.

Keywords: programming; feature spaces; genetic programming; regression ... See more keywords
Photo by liferondeau from unsplash

Feature space learning model

Sign Up to like & get
recommendations!
Published in 2019 at "Journal of ambient intelligence and humanized computing"

DOI: 10.1007/s12652-018-0805-4

Abstract: With the massive volume and rapid increasing of data, feature space study is of great importance. To avoid the complex training processes in deep learning models which project original feature space into low-dimensional ones, we… read more here.

Keywords: feature space; feature spaces; feature; model ... See more keywords
Photo from archive.org

A framework for the definition of complex structured feature spaces

Sign Up to like & get
recommendations!
Published in 2020 at "Neurocomputing"

DOI: 10.1016/j.neucom.2019.11.115

Abstract: Abstract In this paper, we propose a general framework that, starting from the feature space of an existing base graph kernel, allows to define more expressive kernels which can learn more complex concepts, meanwhile generalizing… read more here.

Keywords: feature spaces; framework definition; structured feature; definition complex ... See more keywords
Photo from wikipedia

A supervised clustering MCMC methodology for large categorical feature spaces

Sign Up to like & get
recommendations!
Published in 2021 at "Statistical Methods in Medical Research"

DOI: 10.1177/09622802211009258

Abstract: There is a well-established tradition within the statistics literature that explores different techniques for reducing the dimensionality of large feature spaces. The problem is central to machine learning and it has been largely explored under… read more here.

Keywords: methodology; feature spaces; feature; categorical feature ... See more keywords