Title
Fixpoint Semantics and Optimization of Recursive Datalog Programs with Aggregates.
Abstract
A very desirable Datalog extension investigated by many researchers in the last thirty years consists in allowing the use of the basic SQL aggregates min, max, count and sum in recursive rules. In this paper, we propose a simple comprehensive solution that extends the declarative least-fixpoint semantics of Horn Clauses, along with the optimization techniques used in the bottom-up implementation approach adopted by many Datalog systems. We start by identifying a large class of programs of great practical interest in which the use of min or max in recursive rules does not compromise the declarative fixpoint semantics of the programs using those rules. Then, we revisit the monotonic versions of count and sum aggregates proposed in (Mazuran et al. 2013b) and named, respectively, mcount and msum. Since mcount, and also msum on positive numbers, are monotonic in the lattice of set-containment, they preserve the fixpoint semantics of Horn Clauses. However, in many applications of practical interest, their use can lead to inefficiencies, that can be eliminated by combining them with max, whereby mcount and msum become the standard count and sum. Therefore, the semantics and optimization techniques of Datalog are extended to recursive programs with min, max, count and sum, making possible the advanced applications of superior performance and scalability demonstrated by BigDatalog (Shkapsky et al. 2016) and Datalog-MC (Yang et al. 2017). This paper is under consideration for acceptance in TPLP.
Year
Venue
DocType
2017
TPLP
Journal
Volume
Issue
Citations 
abs/1707.05681
5-6
4
PageRank 
References 
Authors
0.38
18
6
Name
Order
Citations
PageRank
Carlo Zaniolo143051447.58
Mohan Yang2716.86
Matteo Interlandi318224.28
Ariyam Das4348.00
Alexander Shkapsky5714.86
Tyson Condie6116264.84