Sciweavers

DASFAA
2007
IEEE

Probabilistic Nearest-Neighbor Query on Uncertain Objects

13 years 10 months ago
Probabilistic Nearest-Neighbor Query on Uncertain Objects
Nearest-neighbor queries are an important query type for commonly used feature databases. In many different application areas, e.g. sensor databases, location based services or face recognition systems, distances between objects have to be computed based on vague and uncertain data. A successful approach is to express the distance between two uncertain objects by probability density functions which assign a probability value to each possible distance value. By integrating the complete probabilistic distance function as a whole directly into the query algorithm, the full information provided by these functions is exploited. The result of such a probabilistic query algorithm consists of tuples containing the result object and a probability value indicating the likelihood that the object satisfies the query predicate. In this paper we introduce an efficient strategy for processing probabilistic nearest-neighbor queries, as the computation of these probability values is very expensive. In ...
Hans-Peter Kriegel, Peter Kunath, Matthias Renz
Added 02 Jun 2010
Updated 02 Jun 2010
Type Conference
Year 2007
Where DASFAA
Authors Hans-Peter Kriegel, Peter Kunath, Matthias Renz
Comments (0)