一组有效管理复杂概率图数据的图论驱动算法

A. Cuzzocrea, Paolo Serafino
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引用次数: 1

摘要

传统上,对概率图数据的有效建模和查询一直是人们关注的问题。最先进的建议不倾向于处理复杂的概率数据,因为它们本质上引入了简单的数据模型(例如,基于置信区间)和直接的查询方法(例如,基于可达性属性)。根据我们的愿景,这些建议需要扩展到实现创新模型和算法的定义,这些模型和算法能够有效地处理管理复杂概率图数据所带来的新需求的硬度。受此主要动机的启发,本文提出并实验评估了一系列创新的图论驱动算法,用于管理复杂的概率图数据,其主要双重目标包括增强底层概率图数据模型的表达能力和图查询的表达能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A family of graph-theory-driven algorithms for managing complex probabilistic graph data efficiently
Traditionally, a great deal of attention has been devoted to the problem of effectively modeling and querying probabilistic graph data. State-of-the-art proposals are not prone to deal with complex probabilistic data, as they essentially introduce simple data models (e.g., based on confidence intervals) and straightforward query methodologies (e.g., based on the reachability property). According to our vision, these proposals need to be extended towards achieving the definition of innovative models and algorithms capable of dealing with the hardness of novel requirements posed by managing complex probabilistic graph data efficiently. Inspired by this main motivation, in this paper we propose and experimentally assess an innovative family of graph-theory-driven algorithms for managing complex probabilistic graph data, whose main double-fold goal consists in enhancing the expressive power of the underlying probabilistic graph data model and the expressive power of graph queries.
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