Publication in conference proceedings
On the suitability of Data Selection for Cross-building Knowledge Transfer
Mouna Labiadh (Labiadh, M.); Christian Obrecht (Obrecht, C.); Catarina Ferreira da Silva (Ferreira da Silva, C.); Parisa Ghodous (Ghodous, P.);
The 17th International Conference on High Performance Computing Simulation (HPCS 2019), The 3rd Special Session on High Performance Services Computing and Internet Technologies (SerCo 2019)
Year (definitive publication)
2019
Language
English
Country
Ireland
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Abstract
Supervised deep learning has achieved remarkable success in various applications. Such advances were mainly attributed to the rise of computational powers and the amounts of training data made available. Therefore, accurate large-scale data collection services are often needed. One representative data is retrieved, it becomes possible to train the supervised machine learning predictor. However, a model trained on existing data, which generally comes from multiple datasets, might generalize poorly on the unseen target data. This problem is referred to as a domain shift. In this paper, we explore the suitability of data selection to tackle the domain shift challenge in the context of domain generalization. We perform our experimental study on the use case of building energy consumption prediction. Experimental results suggest that minimal building description is capable of improving cross-building generalization performances when used to select data.
Acknowledgements
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Keywords
Data selection,domain generalization,knowledge transfer,data-driven modeling,energy consumption modeling
  • Computer and Information Sciences - Natural Sciences
  • Electrical Engineering, Electronic Engineering, Information Engineering - Engineering and Technology

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