Extract knowledge and significant information from very large data sets is a main topic in Data Science, bringing the interest of researchers in machine learning field. Several machine learning techniques have proven effective to deal with massive data like Deep Neuronal Networks. Evolutionary algorithms are considered not well suitable for such problems because of their relatively high computational cost. This work is an attempt to prove that, with some extensions, evolutionary algorithms could be an interesting solution to learn from very large data sets. We propose the use of the Cartesian Genetic Programming (CGP) as meta-heuristic approach to learn from the Higgs big data set. CGP is extended with an active sampling technique in order ...
Evolutionary algorithms have been applied to high dimensional classification problems in order to lo...
Big data processing is the new challenge for analytical, machine learning techniques. Many efforts a...
The use of machine learning techniques to automatically analyse data for information is becoming inc...
Dans cette thèse, nous étudions l'adaptation des Programmes Génétiques (GP) pour surmonter l'obstacl...
With the growing number of available databases having a very large number of records, existing knowl...
in Advances in Intelligent Systems and Computing, vol. 529The amount of available data for data mini...
This paper describes a forecasting method that is suitable for long range predictions. Forecasts are...
High Energy Physics has been using Machine Learning techniques (commonly known as Multivariate Analy...
The analysis of vast amounts of data constitutes a major challenge in modern high energy physics exp...
Abstract: This chapter discusses the use of evolutionary algorithms, particularly genetic algorithms...
4siBig data knowledge discovery emerged as an important factor contributing to advancements in socie...
In this thesis, we investigate the adaptation of GP to overcome the data Volume hurdle in Big Data p...
A b s t r a c t. Recently, several evolutionary algorithms have been proposed that build and use an ...
Genetic programming is a technique that can be used to tackle the hugely demanding data-processing p...
Cartesian genetic programming (CGP) is a form of genetic programming where candidate programs are re...
Evolutionary algorithms have been applied to high dimensional classification problems in order to lo...
Big data processing is the new challenge for analytical, machine learning techniques. Many efforts a...
The use of machine learning techniques to automatically analyse data for information is becoming inc...
Dans cette thèse, nous étudions l'adaptation des Programmes Génétiques (GP) pour surmonter l'obstacl...
With the growing number of available databases having a very large number of records, existing knowl...
in Advances in Intelligent Systems and Computing, vol. 529The amount of available data for data mini...
This paper describes a forecasting method that is suitable for long range predictions. Forecasts are...
High Energy Physics has been using Machine Learning techniques (commonly known as Multivariate Analy...
The analysis of vast amounts of data constitutes a major challenge in modern high energy physics exp...
Abstract: This chapter discusses the use of evolutionary algorithms, particularly genetic algorithms...
4siBig data knowledge discovery emerged as an important factor contributing to advancements in socie...
In this thesis, we investigate the adaptation of GP to overcome the data Volume hurdle in Big Data p...
A b s t r a c t. Recently, several evolutionary algorithms have been proposed that build and use an ...
Genetic programming is a technique that can be used to tackle the hugely demanding data-processing p...
Cartesian genetic programming (CGP) is a form of genetic programming where candidate programs are re...
Evolutionary algorithms have been applied to high dimensional classification problems in order to lo...
Big data processing is the new challenge for analytical, machine learning techniques. Many efforts a...
The use of machine learning techniques to automatically analyse data for information is becoming inc...