Abstract
Many different machine learning algorithms exist; taking into account each algorithm's hyperparameters, there is a staggeringly large number of possible alternatives overall. We consider the problem of simultaneously selecting a learning algorithm and setting its hyperparameters, going beyond previous work that attacks these issues separately. We show that this problem can be addressed by a fully automated approach, leveraging recent innovations in Bayesian optimization. Specifically, we consider a wide range of feature selection techniques (combining 3 search and 8 evaluator methods) and all classification approaches implemented in WEKA's standard distribution, spanning 2 ensemble methods, 10 meta-methods, 27…
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Authors
4Topics & keywords
Topics
Keywords
- Hyperparameter
- Machine learning
- Computer science
- MNIST database
- Artificial intelligence
- Hyperparameter optimization
- Bayesian optimization
- Classifier (UML)
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