The problem of Approximate Nearest Neighbor (ANN) search is fundamental in computer science and has benefited from significant progress in the past couple of decades. However, most work has been devoted to pointsets whereas complex shapes have not been sufficiently treated. Here, we focus on distance functions between discretized curves in...
-
June 11, 2018 (v1)Conference paperUploaded on: December 4, 2022
-
August 21, 2020 (v1)Journal article
Approximate Nearest Neighbor (ANN) search is a fundamental computational problem that has benefited from significant progress in the past couple of decades. However, most work has been devoted to pointsets, whereas complex shapes have not been sufficiently addressed. Here, we focus on distance functions between discretized curves in Euclidean...
Uploaded on: December 4, 2022 -
January 2023 (v1)Journal article
Randomized dimensionality reduction has been recognized as one of the cornerstones in handling high-dimensional data, originating in various foundational works such as the celebrated Johnson-Lindenstrauss Lemma. More specifically, nearest neighbor-preserving embeddings exist for L2 (Euclidean) and L1 (Manhattan) metrics, as well as doubling...
Uploaded on: November 25, 2023 -
December 2022 (v1)Journal article
International audience
Uploaded on: February 22, 2023 -
September 20, 2019 (v1)Conference paper
Randomized dimensionality reduction has been recognized as one of the fundamental techniques in handling high-dimensional data. Starting with the celebrated Johnson-Lindenstrauss Lemma, such reductions have been studied in depth for the Euclidean (L2) metric, but much less for the Manhattan (L1) metric. Our primary motivation is the approximate...
Uploaded on: December 4, 2022 -
June 4, 2018 (v1)Journal article
The approximate nearest neighbor problem (e-ANN) in high dimensional Euclidean space has been mainly addressed by Locality Sensitive Hashing (LSH), which has polynomial dependence in the dimension, sublinear query time, but subquadratic space requirement. In this paper, we introduce a new definition of "low-quality" embeddings for metric...
Uploaded on: December 4, 2022 -
June 2020 (v1)Journal article
The construction of r-nets offers a powerful tool in computational and metric geometry. We focus on high-dimensional spaces and present a new randomized algorithm which efficiently computes approximate r-nets with respect to Euclidean distance. For any fixed ϵ>0, the approximation factor is 1+ϵ and the complexity is polynomial in the dimension...
Uploaded on: December 4, 2022 -
January 15, 2017 (v1)Conference paper
The construction of r-nets offers a powerful tool in computational and metric geometry. We focus on high-dimensional spaces and present a new randomized algorithm which efficiently computes approximate $r$-nets with respect to Euclidean distance. For any fixed \epsilon>0, the approximation factor is 1+\epsilon and the complexity is polynomial...
Uploaded on: December 4, 2022