Can we evolve better training data for machine learning algorithms? To investigate this question we use population-based optimisation algorithms to generate artificial surrogate training data for naive Bayes for regression. We demonstrate that the generalisation performance of naive Bayes for regression models is enhanced by training them on the artificial data as opposed to the real data. These results are important for two reasons. Firstly, naive Bayes models are simple and interpretable but frequently underperform compared to more complex "black box" models, and therefore new methods of enhancing accuracy are called for. Secondly, the idea of using the real training data indirectly in the construction of the artificial training data, as ...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
Despite its simplicity, the naive Bayes classifier has surprised machine learning researchers by exh...
This paper explores the why and what of statistical learning from a computational modelling perspect...
Can we evolve better training data for machine learning algorithms? To investigate this question we ...
Despite its simplicity, the naïve Bayes learning scheme performs well on most classification tasks, ...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
Differential Evolution can be used to construct effective and compact artificial training datasets f...
Naive Bayes is a well-known and studied algorithm both in statistics and machine learning. Bayesian ...
Many algorithms have been proposed for the machine learning task of classification. One of the simpl...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
AbstractNaive Bayes is a well-known and studied algorithm both in statistics and machine learning. B...
Abstract. We investigate why discretization can be effective in naive-Bayes learning. We prove a the...
We investigate and ultimately suggest remediation to the widely held belief that the best way to tra...
Tuning hyperparameters of machine learning models is important for their performance. Bayesian optim...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
Despite its simplicity, the naive Bayes classifier has surprised machine learning researchers by exh...
This paper explores the why and what of statistical learning from a computational modelling perspect...
Can we evolve better training data for machine learning algorithms? To investigate this question we ...
Despite its simplicity, the naïve Bayes learning scheme performs well on most classification tasks, ...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
Differential Evolution can be used to construct effective and compact artificial training datasets f...
Naive Bayes is a well-known and studied algorithm both in statistics and machine learning. Bayesian ...
Many algorithms have been proposed for the machine learning task of classification. One of the simpl...
Naive Bayes is among the simplest probabilistic classifiers. It often performs surprisingly well in ...
AbstractNaive Bayes is a well-known and studied algorithm both in statistics and machine learning. B...
Abstract. We investigate why discretization can be effective in naive-Bayes learning. We prove a the...
We investigate and ultimately suggest remediation to the widely held belief that the best way to tra...
Tuning hyperparameters of machine learning models is important for their performance. Bayesian optim...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
Despite its simplicity, the naive Bayes classifier has surprised machine learning researchers by exh...
This paper explores the why and what of statistical learning from a computational modelling perspect...