Finding Top-r Influential Communities under Aggregation Functions

07/03/2022
by   You Peng, et al.
0

Community search is a problem that seeks cohesive and connected subgraphs in a graph that satisfy certain topology constraints, e.g., degree constraints. The majority of existing works focus exclusively on the topology and ignore the nodes' influence in the communities. To tackle this deficiency, influential community search is further proposed to include the node's influence. Each node has a weight, namely influence value, in the influential community search problem to represent its network influence. The influence value of a community is produced by an aggregated function, e.g., max, min, avg, and sum, over the influence values of the nodes in the same community. The objective of the influential community search problem is to locate the top-r communities with the highest influence values while satisfying the topology constraints. Existing studies on influential community search have several limitations: (i) they focus exclusively on simple aggregation functions such as min, which may fall short of certain requirements in many real-world scenarios, and (ii) they impose no limitation on the size of the community, whereas most real-world scenarios do. This motivates us to conduct a new study to fill this gap. We consider the problem of identifying the top-r influential communities with/without size constraints while using more complicated aggregation functions such as sum or avg. We give a theoretical analysis demonstrating the hardness of the problems and propose efficient and effective heuristic solutions for our topr influential community search problems. Extensive experiments on real large graphs demonstrate that our proposed solution is significantly more efficient than baseline solutions.

READ FULL TEXT
research
11/16/2017

An Optimal and Progressive Approach to Online Search of Top-k Influential Communities

Community search over large graphs is a fundamental problem in graph ana...
research
03/15/2023

CS-TGN: Community Search via Temporal Graph Neural Networks

Searching for local communities is an important research challenge that ...
research
12/04/2019

Keyword Aware Influential Community Search in Large Attributed Graphs

We introduce a novel keyword-aware influential community query KICQ that...
research
02/08/2022

Predicting Voting Outcomes in the Presence of Communities, Echo Chambers and Multiple Parties

A recently proposed graph-theoretic metric, the influence gap, has shown...
research
04/29/2019

A Survey of Community Search Over Big Graphs

With the rapid development of information technologies, various big grap...
research
12/18/2019

Finding Effective Geo-Social Group for Impromptu Activity with Multiple Demands

Geo-social group search aims to find a group of people proximate to a lo...
research
07/11/2017

Unsupervised robust nonparametric learning of hidden community properties

We consider learning of fundamental properties of communities in large n...

Please sign up or login with your details

Forgot password? Click here to reset