Due to the high production of complex data, the last decades have provided a huge advance in the development of similarity search methods. Recently graph-based methods have outperformed other ones in the literature of approximate similarity search. However, a graph employed on a dataset may present different behaviors depending on its parameters. Therefore, finding a suitable graph configuration is a time-consuming task, due to the necessity to build a structure for each parameterization. Our main contribution is to save time avoiding this exhaustive process. We propose in this work an intelligent approach based on meta-learning techniques to recommend a suitable graph along with its set of parameters for a given dataset. We also present and evaluate generic and tuned instantiations of the approach using Random Forests as the meta-model. The experiments reveal that our approach is able to perform high quality recommendations based on the user preferences.
Towards Proximity Graph Auto-configuration: An Approach Based on Meta-learning
Barbon Junior S.;
2020-01-01
Abstract
Due to the high production of complex data, the last decades have provided a huge advance in the development of similarity search methods. Recently graph-based methods have outperformed other ones in the literature of approximate similarity search. However, a graph employed on a dataset may present different behaviors depending on its parameters. Therefore, finding a suitable graph configuration is a time-consuming task, due to the necessity to build a structure for each parameterization. Our main contribution is to save time avoiding this exhaustive process. We propose in this work an intelligent approach based on meta-learning techniques to recommend a suitable graph along with its set of parameters for a given dataset. We also present and evaluate generic and tuned instantiations of the approach using Random Forests as the meta-model. The experiments reveal that our approach is able to perform high quality recommendations based on the user preferences.File | Dimensione | Formato | |
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(Lecture Notes in Computer Science 12245) Jérôme Darmont, Boris Novikov, Robert Wrembel - Advances in Databases and Information Systems_ 24th European Conference, ADBIS 2020, Lyon, France, August 25–2(1).pdf
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(Lecture+Notes+in+Computer+Science+12245)+Jérôme+Darmont,+Boris+Novikov,+Robert+Wrembel+-+Advances+in+Databases+and+Information+Systems_+24th+European+Conference,+ADBIS+2020,+Lyon,+France,+August+25–2(1)-Post_print.pdf
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