A Sample-Based Approach to Data Quality Assessment in Spatial Databases with Application to Mobile Trajectory Nearest-Neighbor Search
Bagher Saberi, Nasser Ghadiri

TL;DR
This paper proposes a sample-based method to evaluate and improve the quality and efficiency of spatial data in databases, especially for mobile trajectory nearest-neighbor searches, balancing data accuracy with query performance.
Contribution
It introduces a novel approach for assessing spatial data quality through sampling, demonstrating its effectiveness in enhancing query speed with minimal accuracy loss.
Findings
Sampling improves query performance significantly.
Data quality remains acceptable despite sampling.
Method applicable to large mobile trajectory datasets.
Abstract
Spatial data is playing an emerging role in new technologies such as web and mobile mapping and Geographic Information Systems (GIS). Important decisions in political, social and many other aspects of modern human life are being made using location data. Decision makers in many countries are exploiting spatial databases for collecting information, analyzing them and planning for the future. In fact, not every spatial database is suitable for this type of application. Inaccuracy, imprecision and other deficiencies are present in location data just as any other type of data and may have a negative impact on credibility of any action taken based on unrefined information. So we need a method for evaluating the quality of spatial data and separating usable data from misleading data which leads to weak decisions. On the other hand, spatial databases are usually huge in size and therefore…
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Taxonomy
TopicsData Management and Algorithms · Geographic Information Systems Studies · Advanced Database Systems and Queries
