Selectivity Estimation for Predictive Spatio-Temporal Queries
نویسندگان
چکیده
This paper proposes a cost model for selectivity estimation of predictive spatio-temporal window queries. Initially, we focus on uniform data proposing formulae that capture both points and rectangles, and any type of object/query mobility combination (i.e., dynamic objects, dynamic queries or both). Then, we apply the model to non-uniform datasets by introducing spatio-temporal histograms, which in addition to the spatial, also consider the velocity distributions during partitioning. The advantages of our techniques are (i) high accuracy (1-2 orders of magnitude lower error than previous techniques), (ii) ability to handle all query types, and (iii) efficient handling of updates.
منابع مشابه
Clustering Moving Objects for Spatio-temporal Selectivity Estimation
Many spatio-temporal applications involve managing and querying moving objects. In such an environment, predictive spatio-temporal queries become an important query class to be processed to capture the nature of moving objects. In this paper, we investigated the problem of selectivity estimation for predictive spatio-temporal queries. We propose a novel histogram technique based on a clustering...
متن کاملSpatio-Temporal-Keyword Pattern Queries over Semantic Trajectories with Hermes@Neo4j
In this paper, we demonstrate Hermes@Neo4j1, an extension of Neo4j graph DMBS for semantic trajectories of moving objects, on the so-called Spatio-Temporal-Keyword Pattern queries. For this purpose, our engine exploits on hybrid Spatio-TemporalKeyword (STK) index structures, also boosted by an appropriate selectivity estimation model. Hermes@Neo4j functionality is demonstrated over synthetic an...
متن کاملSpatio-temporal Histograms
This paper presents a framework for building and continuously maintaining spatio-temporal histograms (ST-Histograms, for short). ST-Histograms are used for selectivity estimation of continuous pipelined query operators. Unlike traditional histograms that examine and/or sample all incoming data tuples, ST-Histograms are built by monitoring the actual selectivities of the outstanding continuous q...
متن کاملOn-Line Discovery of Dense Areas in Spatio-temporal Databases
Moving object databases have received considerable attention recently. Previous work has concentrated mainly on modeling and indexing problems, as well as query selectivity estimation. Here we introduce a novel problem, that of addressing density-based queries in the spatio-temporal domain. For example: “Find all regions that will contain more than 500 objects, ten minutes from now”. The user m...
متن کاملPerformance Evaluation of Spatio-temporal Selectivity Estimation Techniques
Many novel spatio-temporal applications deal with moving objects. In such environments, a database typically maintains the initial position and the moving function for each object. Instead of updating the database whenever an object position changes (which is not manageable), updates are issued whenever a function parameter (velocity, direction, etc.) changes. For simplicity, we assume that obj...
متن کامل