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underkategorier
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SMAC

Bayesian optimization tool using random forests as a surrogate model for algorithm configuration, particularly effective in categorical and conditional hyperparameter spaces.

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Ensemble Selection

Process of automatically building an ensemble of optimized models by dynamically selecting and weighting the best models from a large pool of candidates.

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Optimized Pipeline

Complete sequence of data transformations and machine learning models automatically optimized to maximize predictive performance on a given dataset.

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Bootstrap Ensembling

Ensemble technique where multiple models are trained on different bootstrap samples of the training dataset to reduce variance and improve generalization.

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Algorithm Configuration

Process of systematically searching for the best hyperparameter configuration for a given algorithm on a specific class of problems.

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Conditional Search Space

Hyperparameter space where the validity of certain parameters depends on the values of other parameters, requiring adaptive search strategies.

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Auto-sklearn 2.0

Improved version of Auto-sklearn with advanced parallelization mechanisms, meta-learning sampling strategies, and more efficient ensemble integration.

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Meta-model

Model trained to predict the performance of machine learning algorithms based on dataset meta-features to guide algorithm search.

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Performance-based Model Selection

Automatic model selection strategy based on comparative evaluation of multiple configurations' performance on validation data.

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Resource-aware Optimization

Optimization process that takes into account computational constraints such as time and memory to find the best performance-cost tradeoff.

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