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Time-Series in Hyper-parameter Initialization of Machine Learning Techniques
  Initializing the hyper-parameters (HPs) of machine learning (ML) techniques became an important step in the area of automated ML (AutoML). The main premise in HP initialization is that a HP setting that performs well for a certain dataset(s) will also be suitable for a similar dataset. Thus, evaluation of similarities of datasets based on their characteristics, named meta-features (MFs), is one of the basic tasks in meta-learning (MtL), a subfield of AutoML. Several types of MFs were developed from which those based on principal component analysis (PCA) are, despite their good descriptive characteristics and relatively easy computation, utilized only marginally. A novel approach to HP initialization combining dynamic time warping (DTW), a well-known similarity measure for time series, with PCA MFs is proposed in this paper which does not need any further settings. Exhaustive experiments, conducted for the use-cases of HP initialization of decision trees and support vector machines show the potential of the proposed approach and encourage further investigation in this direction.

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Horváth, T., Mantovani, R. G., & de Carvalho, A. C. P. L. F. (2021). Time-Series in Hyper-parameter Initialization of Machine Learning Techniques. In Intelligent Data Engineering and Automated Learning – IDEAL 2021: 22nd International Conference, IDEAL 2021, Manchester, UK, November 25–27, 2021, Proceedings (246-258). https://doi.org/10.1007/978-3-030-91608-4_25

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