Efficient indexing and retrieval in generic metric spaces often translate into the search for approximate methods that can retrieve relevant samples to a query performing the least amount of distance computations. To this end, when indexing and fulfilling queries, distances are computed and stored only against a small set of reference points (also referred to as pivots) and then adopted in geometrical rules to estimate real distances and include or exclude elements from the result set. In this paper, we propose to learn a regression model that estimates the distance between a pair of metric objects starting from their distances to a set of reference objects. We explore architectural hyper-parameters and compare with the state-of-the-art geometrical method based on the n-simplex projection. Preliminary results show that our model provides a comparable or slightly degraded performance while being more efficient and applicable to generic metric spaces.

Learning distance estimators from pivoted embeddings of metric objects

Carrara F;Gennaro C;Falchi F;Amato G
2020

Abstract

Efficient indexing and retrieval in generic metric spaces often translate into the search for approximate methods that can retrieve relevant samples to a query performing the least amount of distance computations. To this end, when indexing and fulfilling queries, distances are computed and stored only against a small set of reference points (also referred to as pivots) and then adopted in geometrical rules to estimate real distances and include or exclude elements from the result set. In this paper, we propose to learn a regression model that estimates the distance between a pair of metric objects starting from their distances to a set of reference objects. We explore architectural hyper-parameters and compare with the state-of-the-art geometrical method based on the n-simplex projection. Preliminary results show that our model provides a comparable or slightly degraded performance while being more efficient and applicable to generic metric spaces.
2020
Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI
Inglese
Shin'ichi Satoh et al.
Similarity Search and Applications 13th International Conference, SISAP 2020, Copenhagen, Denmark, September 30 - October 2, 2020, Proceedings
SISAP 2020: the 13th International Conference on Similarity Search and Applications
361
368
978-3-030-60935-1
https://link.springer.com/chapter/10.1007%2F978-3-030-60936-8_28
Sì, ma tipo non specificato
30/09/2020 - 02/10/2020
Copenhagen, Denmark (Virtual)
Distance estimation
Metric spaces
Regression
Deep neural networks
Pivoted embeddings
4
partially_open
Carrara, F; Gennaro, C; Falchi, F; Amato, G
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
   A European AI On Demand Platform and Ecosystem
   AI4EU
   H2020
   825619
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Dimensione 383.92 kB
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383.92 kB Adobe PDF Visualizza/Apri

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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/381942
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