BigData Applications from Graph Analytics to Machine Learning by Aggregates in Recursion

September 18, 2019 ยท The Ethereal ยท ๐Ÿ› ICLP Technical Communications

๐Ÿ”ฎ THE ETHEREAL: The Ethereal
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Authors Ariyam Das, Youfu Li, Jin Wang, Mingda Li, Carlo Zaniolo arXiv ID 1909.08249 Category cs.LO: Logic in CS Cross-listed cs.DB, cs.LG Citations 13 Venue ICLP Technical Communications Last Checked 2 months ago
Abstract
In the past, the semantic issues raised by the non-monotonic nature of aggregates often prevented their use in the recursive statements of logic programs and deductive databases. However, the recently introduced notion of Pre-mappability (PreM) has shown that, in key applications of interest, aggregates can be used in recursion to optimize the perfect-model semantics of aggregate-stratified programs. Therefore we can preserve the declarative formal semantics of such programs while achieving a highly efficient operational semantics that is conducive to scalable implementations on parallel and distributed platforms. In this paper, we show that with PreM, a wide spectrum of classical algorithms of practical interest, ranging from graph analytics and dynamic programming based optimization problems to data mining and machine learning applications can be concisely expressed in declarative languages by using aggregates in recursion. Our examples are also used to show that PreM can be checked using simple techniques and templatized verification strategies. A wide range of advanced BigData applications can now be expressed declaratively in logic-based languages, including Datalog, Prolog, and even SQL, while enabling their execution with superior performance and scalability.
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