ML-Plan for Unlimited-Length Machine Learning Pipelines

Research output: Contribution to conferencePaperResearchpeer review

Authors

External Research Organisations

  • Paderborn University
  • Heinz Nixdorf Institute
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Details

Original languageGerman
Number of pages8
Publication statusPublished - Jul 2018
Externally publishedYes
EventInternational Workshop on Automatic Machine Learning 2018 - Stockholm, Sweden
Duration: 14 Jul 201814 Jul 2018

Workshop

WorkshopInternational Workshop on Automatic Machine Learning 2018
Abbreviated titleICML 2018 AutoML Workshop
Country/TerritorySweden
CityStockholm
Period14 Jul 201814 Jul 2018

Abstract

In automated machine learning (AutoML), the process of engineering machine learning applications with respect to a specific problem is (partially) automated. Various AutoML tools have already been introduced to provide out-of-the-box machine learning functionality. More specifically, by selecting machine learning algorithms and optimizing their hyperparameters, these tools produce a machine learning pipeline tailored to the problem at hand. Except for TPOT, all of these tools restrict the maximum number of processing steps of such a pipeline. However, as TPOT follows an evolutionary approach, it suffers
from performance issues when dealing with larger datasets. In this paper, we present an alternative approach leveraging a hierarchical planning to configure machine learning pipelines that are unlimited in length. We evaluate our approach and find its performance to be competitive with other AutoML tools, including TPOT.

Cite this

ML-Plan for Unlimited-Length Machine Learning Pipelines. / Wever, Marcel; Mohr, Felix; Hüllermeier, Eyke.
2018. Paper presented at International Workshop on Automatic Machine Learning 2018, Stockholm, Sweden.

Research output: Contribution to conferencePaperResearchpeer review

Wever, M, Mohr, F & Hüllermeier, E 2018, 'ML-Plan for Unlimited-Length Machine Learning Pipelines', Paper presented at International Workshop on Automatic Machine Learning 2018, Stockholm, Sweden, 14 Jul 2018 - 14 Jul 2018. <https://ris.uni-paderborn.de/download/3852/3853>
Wever, M., Mohr, F., & Hüllermeier, E. (2018). ML-Plan for Unlimited-Length Machine Learning Pipelines. Paper presented at International Workshop on Automatic Machine Learning 2018, Stockholm, Sweden. https://ris.uni-paderborn.de/download/3852/3853
Wever M, Mohr F, Hüllermeier E. ML-Plan for Unlimited-Length Machine Learning Pipelines. 2018. Paper presented at International Workshop on Automatic Machine Learning 2018, Stockholm, Sweden.
Wever, Marcel ; Mohr, Felix ; Hüllermeier, Eyke. / ML-Plan for Unlimited-Length Machine Learning Pipelines. Paper presented at International Workshop on Automatic Machine Learning 2018, Stockholm, Sweden.8 p.
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