In metric search, worst-case analysis is of little value, as the search invariably degenerates to a linear scan for ill-behaved data. Consequently, much effort has been expended on more nuanced descriptions of what performance might in fact be attainable, including heuristic baselines like the AESA family, as well as statistical proxies such as intrinsic dimensionality. This paper gets to the heart of the matter with an exact characterization of the best performance actually achievable for any given data set and query. Specifically, linear-time objective-preserving reductions are established in both directions between optimal metric search and the minimum dominating set problem, whose greedy approximation becomes the equivalent of an oracle...
Artículo de publicación ISISimilarity searching in metric spaces has a vast number of applications i...
Among the metric space indexing methods, AESA is known to produce the lowest query costs in terms of...
Heuristic search algorithms (eg. A* and IDA*) with accurate lower bounds can solve impressively larg...
The ever increasing amount of data and the growing diversity in data types requires effective and ef...
The metric search paradigm has been to this day successfully applied to several real-world problems,...
Proximity searching consists in retrieving from a database those elements that are similar to a quer...
With few exceptions, proximity search algorithms in metric spaces based on the use of pivots select ...
chris at cwilt.org, ruml at cs.unh.edu Suboptimal heuristic search algorithms such as greedy best-fi...
This dissertation considers a suite of search problems in which agents are trying to find goals in m...
This work focus on fast nearest neighbor (NN) search algorithms that can work in any metric space (n...
Traditionally, a fundamental assumption in evaluating the performance of algorithms for sorting and ...
Effective similarity search indexing in general metric spaces has traditionally received special att...
In the realm of metric search, the permutation-based approaches have shown very good performance in ...
Abstract. Traditionally, a fundamental assumption in evaluating the performance of algorithms for so...
One natural, yet unusual, source of data is the set of queries that are performed on a database. We ...
Artículo de publicación ISISimilarity searching in metric spaces has a vast number of applications i...
Among the metric space indexing methods, AESA is known to produce the lowest query costs in terms of...
Heuristic search algorithms (eg. A* and IDA*) with accurate lower bounds can solve impressively larg...
The ever increasing amount of data and the growing diversity in data types requires effective and ef...
The metric search paradigm has been to this day successfully applied to several real-world problems,...
Proximity searching consists in retrieving from a database those elements that are similar to a quer...
With few exceptions, proximity search algorithms in metric spaces based on the use of pivots select ...
chris at cwilt.org, ruml at cs.unh.edu Suboptimal heuristic search algorithms such as greedy best-fi...
This dissertation considers a suite of search problems in which agents are trying to find goals in m...
This work focus on fast nearest neighbor (NN) search algorithms that can work in any metric space (n...
Traditionally, a fundamental assumption in evaluating the performance of algorithms for sorting and ...
Effective similarity search indexing in general metric spaces has traditionally received special att...
In the realm of metric search, the permutation-based approaches have shown very good performance in ...
Abstract. Traditionally, a fundamental assumption in evaluating the performance of algorithms for so...
One natural, yet unusual, source of data is the set of queries that are performed on a database. We ...
Artículo de publicación ISISimilarity searching in metric spaces has a vast number of applications i...
Among the metric space indexing methods, AESA is known to produce the lowest query costs in terms of...
Heuristic search algorithms (eg. A* and IDA*) with accurate lower bounds can solve impressively larg...