Search Results for author: Marc-André Zöller

Found 6 papers, 3 papers with code

auto-sktime: Automated Time Series Forecasting

1 code implementation13 Dec 2023 Marc-André Zöller, Marius Lindauer, Marco F. Huber

To meet the growing demand for efficient forecasting, we introduce auto-sktime, a novel framework for automated time series forecasting.

AutoML Bayesian Optimization +3

Automated Machine Learning for Remaining Useful Life Predictions

no code implementations21 Jun 2023 Marc-André Zöller, Fabian Mauthe, Peter Zeiler, Marius Lindauer, Marco F. Huber

Recently, data-driven approaches to RUL predictions are becoming prevalent over model-based approaches since no underlying physical knowledge of the engineering system is required.

AutoML Management

XAutoML: A Visual Analytics Tool for Understanding and Validating Automated Machine Learning

1 code implementation24 Feb 2022 Marc-André Zöller, Waldemar Titov, Thomas Schlegel, Marco F. Huber

Even though such automatically synthesized ML pipelines are able to achieve a competitive performance, recent studies have shown that users do not trust models constructed by AutoML due to missing transparency of AutoML systems and missing explanations for the constructed ML pipelines.

AutoML BIG-bench Machine Learning +2

Incremental Search Space Construction for Machine Learning Pipeline Synthesis

no code implementations26 Jan 2021 Marc-André Zöller, Tien-Dung Nguyen, Marco F. Huber

We prove the effectiveness and competitiveness of our approach on 28 data sets used in well-established AutoML benchmarks in comparison with state-of-the-art AutoML frameworks.

BIG-bench Machine Learning Hyperparameter Optimization

Benchmark and Survey of Automated Machine Learning Frameworks

1 code implementation26 Apr 2019 Marc-André Zöller, Marco F. Huber

This paper is a combination of a survey on current AutoML methods and a benchmark of popular AutoML frameworks on real data sets.

AutoML BIG-bench Machine Learning

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