Sciweavers

ADC
1999
Springer

A Query-sensitive Cost Model for Similarity Queries with M-tree

13 years 9 months ago
A Query-sensitive Cost Model for Similarity Queries with M-tree
We introduce a cost model for the M-tree access method [Ciaccia et al., 1997] which provides estimates of CPU (distance computations) and I/O costs for the execution of similarity queries as a function of each single query. This model is said to be query-sensitive, since it takes into account, by relying on the novel notion of “witness”, the “position” of the query point inside the metric space indexed by the M-tree. We describe the basic concepts underlying the model along with different methods which can be used for its implementation; finally, we experimentally validate the model over both real and synthetic datasets.
Paolo Ciaccia, A. Nanni, Marco Patella
Added 03 Aug 2010
Updated 03 Aug 2010
Type Conference
Year 1999
Where ADC
Authors Paolo Ciaccia, A. Nanni, Marco Patella
Comments (0)