2024
DOI: 10.1007/s00778-024-00836-1
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A learning-based framework for spatial join processing: estimation, optimization and tuning

Tin Vu,
Alberto Belussi,
Sara Migliorini
et al.

Abstract: The importance and complexity of spatial join operation resulted in the availability of many join algorithms, some of which are tailored for big-data platforms like Hadoop and Spark. The choice among them is not trivial and depends on different factors. This paper proposes the first machine-learning-based framework for spatial join query optimization which can accommodate both the characteristics of spatial datasets and the complexity of the different algorithms. The main challenge is how to develop portable c… Show more

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