Institute of Computer Science
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  2. 2025/26 fall
  3. Explainable Automated Machine Learning (LTAT.02.023)
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Explainable Automated Machine Learning 2025/26 fall

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Research papers

Paper topicPaper title
HPO and CASHEfficient and robust automated machine learning
HPO and CASHEfficient parameter selection for support vector machines in classification and regression via model-based global optimization
HPO and CASHEvaluation of a Tree-based Pipeline Optimization Tool for Automating Data Science
HPO and CASHAuto-WEKA: Automatic Model Selection and Hyperparameter Optimization in WEKA
HPO and CASHAutoML pipeline selection: Efficiently navigating the combinatorial space.
HPO and CASHAuto-Sklearn 2.0: Hands-free AutoML via Meta-Learning
Automated Feature EngineeringSAFE: Scalable Automatic Feature Engineering Framework for Industrial Tasks
Automated Feature EngineeringThe autofeat Python Library for Automated Feature Engineering and Selection
Automated Feature EngineeringAutolearn - automated feature generation and selection
Automated Feature EngineeringDeep feature synthesis: Towards automating data science endeavors
Automated Feature EngineeringExplorekit: Automatic feature generation and selection
Automated ClusteringAutoClust: A Framework for Automated Clustering based on Cluster Validity Indices
Increasing Transparency and Controllability in Automated Machine LearningATMSeer: Increasing Transparency and Controllability in AutoML
Increasing Transparency and Controllability in AutoMLTrust in AutoML: Exploring Information Needs for Establishing Trust in Automated Machine Learning Systems
Increasing Transparency and Controllability in AutoMLAutoAIViz: opening the blackbox of automated artificial intelligence with conditional parallel coordinates
Increasing Transparency and Controllability in AutoMLPipelineProfiler: A Visual Analytics Tool for the Exploration of AutoML Pipelines
  • Institute of Computer Science
  • Faculty of Science and Technology
  • University of Tartu
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