With the surging popularity of approximate near-neighbor search (ANNS), driven by advances in neural representation learning, the ability to serve queries accompanied by a set of constraints has become an area of intense interest. While the community has recently proposed several algorithms for constrained ANNS, almost all of these methods focus on integration with graph-based indexes, the predominant class of algorithms achieving state-of-the-art performance in latency-recall tradeoffs. In this work, we take a different approach and focus on developing a constrained ANNS algorithm via space partitioning as opposed to graphs. To that end, we introduce Constrained Approximate Partitioned Search (CAPS), an index for ANNS with filters via spac...
We introduce a new variant of the nearest neighbor search problem, which allows for some coordinates...
Aggregate similarity search, a.k.a. aggregate nearest neighbor (Ann) query, finds many useful applic...
Similarity search based on a distance function in metric spaces is a fundamental problem for many ap...
Both supervised and unsupervised machine learning algorithms have been used to learn partition-based...
Search engines and recommendation systems are built to efficiently display relevant information from...
Nearest-neighbor search is a very natural and universal problem in computer science. Often times, th...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
Many fields are experiencing a Big Data explosion, with data collection rates outpacing the rate of ...
In this article, we present an efficient B + -tree based indexing method, ca...
Approximate Nearest Neighbor (ANN) search in high di-mensional space has become a fundamental paradi...
Previous algorithms for unrestricted constraint satisfaction use reduction search, which inferential...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
The entire history and, we dare say, future of similarity search is governed by the underlying notio...
Approximate Nearest Neighbor (ANN) search in high dimensional space has become a fundamental paradig...
We introduce a new variant of the nearest neighbor search problem, which allows for some coordinates...
Aggregate similarity search, a.k.a. aggregate nearest neighbor (Ann) query, finds many useful applic...
Similarity search based on a distance function in metric spaces is a fundamental problem for many ap...
Both supervised and unsupervised machine learning algorithms have been used to learn partition-based...
Search engines and recommendation systems are built to efficiently display relevant information from...
Nearest-neighbor search is a very natural and universal problem in computer science. Often times, th...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
Many fields are experiencing a Big Data explosion, with data collection rates outpacing the rate of ...
In this article, we present an efficient B + -tree based indexing method, ca...
Approximate Nearest Neighbor (ANN) search in high di-mensional space has become a fundamental paradi...
Previous algorithms for unrestricted constraint satisfaction use reduction search, which inferential...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
The entire history and, we dare say, future of similarity search is governed by the underlying notio...
Approximate Nearest Neighbor (ANN) search in high dimensional space has become a fundamental paradig...
We introduce a new variant of the nearest neighbor search problem, which allows for some coordinates...
Aggregate similarity search, a.k.a. aggregate nearest neighbor (Ann) query, finds many useful applic...
Similarity search based on a distance function in metric spaces is a fundamental problem for many ap...