Community Search in Time-dependent Road-social Attributed Networks
- URL: http://arxiv.org/abs/2505.12309v1
- Date: Sun, 18 May 2025 08:45:05 GMT
- Title: Community Search in Time-dependent Road-social Attributed Networks
- Authors: Li Ni, Hengkai Xu, Lin Mu, Yiwen Zhang, Wenjian Luo,
- Abstract summary: Real-world networks often involve both keywords and locations, along with travel time variations between locations due to traffic conditions.<n>Most existing cohesive subgraph-based community search studies utilize a single attribute, either keywords or locations, to identify communities.<n>We propose an exact and a greedy algorithm, both of which gradually expand outward from the query node.
- Score: 6.120128190130239
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Real-world networks often involve both keywords and locations, along with travel time variations between locations due to traffic conditions. However, most existing cohesive subgraph-based community search studies utilize a single attribute, either keywords or locations, to identify communities. They do not simultaneously consider both keywords and locations, which results in low semantic or spatial cohesiveness of the detected communities, and they fail to account for variations in travel time. Additionally, these studies traverse the entire network to build efficient indexes, but the detected community only involves nodes around the query node, leading to the traversal of nodes that are not relevant to the community. Therefore, we propose the problem of discovering semantic-spatial aware k-core, which refers to a k-core with high semantic and time-dependent spatial cohesiveness containing the query node. To address this problem, we propose an exact and a greedy algorithm, both of which gradually expand outward from the query node. They are local methods that only access the local part of the attributed network near the query node rather than the entire network. Moreover, we design a method to calculate the semantic similarity between two keywords using large language models. This method alleviates the disadvantages of keyword-matching methods used in existing community search studies, such as mismatches caused by differently expressed synonyms and the presence of irrelevant words. Experimental results show that the greedy algorithm outperforms baselines in terms of structural, semantic, and time-dependent spatial cohesiveness.
Related papers
- Enhancing Community Detection in Networks: A Comparative Analysis of Local Metrics and Hierarchical Algorithms [49.1574468325115]
This study employs the same method to evaluate the relevance of using local similarity metrics for community detection.
The efficacy of these metrics was evaluated by applying the base algorithm to several real networks with varying community sizes.
arXiv Detail & Related papers (2024-08-17T02:17:09Z) - LIST: Learning to Index Spatio-Textual Data for Embedding based Spatial Keyword Queries [53.843367588870585]
List K-kNN spatial keyword queries (TkQs) return a list of objects based on a ranking function that considers both spatial and textual relevance.
There are two key challenges in building an effective and efficient index, i.e., the absence of high-quality labels and the unbalanced results.
We develop a novel pseudolabel generation technique to address the two challenges.
arXiv Detail & Related papers (2024-03-12T05:32:33Z) - Implicit models, latent compression, intrinsic biases, and cheap lunches
in community detection [0.0]
Community detection aims to partition a network into clusters of nodes to summarize its large-scale structure.
Some community detection methods are inferential, explicitly deriving the clustering objective through a probabilistic generative model.
Other methods are descriptive, dividing a network according to an objective motivated by a particular application.
We present a solution that associates any community detection objective, inferential or descriptive, with its corresponding implicit network generative model.
arXiv Detail & Related papers (2022-10-17T15:38:41Z) - Exploring Complicated Search Spaces with Interleaving-Free Sampling [127.07551427957362]
In this paper, we build the search algorithm upon a complicated search space with long-distance connections.
We present a simple yet effective algorithm named textbfIF-NAS, where we perform a periodic sampling strategy to construct different sub-networks.
In the proposed search space, IF-NAS outperform both random sampling and previous weight-sharing search algorithms by a significant margin.
arXiv Detail & Related papers (2021-12-05T06:42:48Z) - Unsupervised Domain-adaptive Hash for Networks [81.49184987430333]
Domain-adaptive hash learning has enjoyed considerable success in the computer vision community.
We develop an unsupervised domain-adaptive hash learning method for networks, dubbed UDAH.
arXiv Detail & Related papers (2021-08-20T12:09:38Z) - Quotient Space-Based Keyword Retrieval in Sponsored Search [7.639289301435027]
Synonymous keyword retrieval has become an important problem for sponsored search.
We propose a novel quotient space-based retrieval framework to address this problem.
This method has been successfully implemented in Baidu's online sponsored search system.
arXiv Detail & Related papers (2021-05-26T07:27:54Z) - Unsupervised Key-phrase Extraction and Clustering for Classification
Scheme in Scientific Publications [0.0]
We investigate possible ways of automating parts of the Systematic Mapping (SM) and Systematic Review (SR) process.
Key-phrases are extracted from scientific documents using unsupervised methods, which are then used to construct the corresponding Classification Scheme.
We also explore how clustering can be used to group related key-phrases.
arXiv Detail & Related papers (2021-01-25T10:17:33Z) - On the use of local structural properties for improving the efficiency
of hierarchical community detection methods [77.34726150561087]
We study how local structural network properties can be used as proxies to improve the efficiency of hierarchical community detection.
We also check the performance impact of network prunings as an ancillary tactic to make hierarchical community detection more efficient.
arXiv Detail & Related papers (2020-09-15T00:16:12Z) - Detecting Communities in Heterogeneous Multi-Relational Networks:A
Message Passing based Approach [89.19237792558687]
Community is a common characteristic of networks including social networks, biological networks, computer and information networks.
We propose an efficient message passing based algorithm to simultaneously detect communities for all homogeneous networks.
arXiv Detail & Related papers (2020-04-06T17:36:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.