An In-Depth Comparison of s-t Reliability Algorithms over Uncertain Graphs

04/10/2019
by   Xiangyu Ke, et al.
0

Uncertain, or probabilistic, graphs have been increasingly used to represent noisy linked data in many emerging applications, and have recently attracted the attention of the database research community. A fundamental problem on uncertain graphs is the s-t reliability, which measures the probability that a target node t is reachable from a source node s in a probabilistic (or uncertain) graph, i.e., a graph where every edge is assigned a probability of existence. Due to the inherent complexity of the s-t reliability estimation problem (#P-hard), various sampling and indexing based efficient algorithms were proposed in the literature. However, since they have not been thoroughly compared with each other, it is not clear whether the later algorithm outperforms the earlier ones. More importantly, the comparison framework, datasets, and metrics were often not consistent (e.g., different convergence criteria were employed to find the optimal number of samples) across these works. We address this serious concern by re-implementing six state-of-the-art s-t reliability estimation methods in a common system and code base, using several medium and large-scale, real-world graph datasets, identical evaluation metrics, and query workloads. Through our systematic and in-depth analysis of experimental results, we report surprising findings, such as many follow-up algorithms can actually be several orders of magnitude inefficient, less accurate, and more memory intensive compared to the ones that were proposed earlier. We conclude by discussing our recommendations on the road ahead.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/20/2019

Budgeted Reliability Maximization in Uncertain Graphs

Network reliability measures the probability that a target node is reach...
research
09/04/2020

Efficient Network Reliability Computation in Uncertain Graphs

Network reliability is an important metric to evaluate the connectivity ...
research
01/19/2018

CGQ: Relationship-Aware Contextual Graph Querying in Large Networks

The phenomenal growth of graph data from a wide-variety of real-world ap...
research
06/15/2021

A Survey on Mining and Analysis of Uncertain Graphs

Uncertain Graph (also known as Probabilistic Graph) is a generic model t...
research
12/17/2022

Most Probable Densest Subgraphs

Computing the densest subgraph is a primitive graph operation with criti...
research
11/13/2022

Parallel and I/O-Efficient Algorithms for Non-Linear Preferential Attachment

Preferential attachment lies at the heart of many network models aiming ...
research
03/17/2023

High Accurate and Explainable Multi-Pill Detection Framework with Graph Neural Network-Assisted Multimodal Data Fusion

Due to the significant resemblance in visual appearance, pill misuse is ...

Please sign up or login with your details

Forgot password? Click here to reset