
Finding a Needle in the Haystack: Recommending Online Communities on Social Media Platforms Using Network and Design Science
Author(s) -
Srikar Velichety,
Sudha Ram
Publication year - 2021
Publication title -
journal of the association for information systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.877
H-Index - 78
ISSN - 1536-9323
DOI - 10.17705/1jais.00694
Subject(s) - haystack , computer science , social media , world wide web , social network (sociolinguistics) , information retrieval , assortativity , data science , online community , clustering coefficient , timeline , cluster analysis , web crawler , quality (philosophy) , position (finance) , the internet , rss , artificial intelligence , complex network , mathematics , philosophy , epistemology , finance , economics , statistics
We address the problem of recommending online communities on social media platforms using design science. Our method is grounded in network science and leverages the random surfer model of the web, small-world networks, strength of weak connections, and connectivity to analyze three types of large-scale networks. In doing so, we design features for structural hole assortativity and local clustering coefficient rank to capture both the diversity and evolution of user interests. We also extract general online community features such as size and overlap. Experiments conducted on a large dataset of 34,000 lists created and subscribed to by 1,600 active Twitter users over a six-month period showed that our network features outperform the general and content features in terms of recommending communities at the top position. In addition, a combination of general and network features generated the best results in the top position with a significant performance improvement over using only the content features. A combination of all three types of features gave the best results in the top-5 and top-10 positions while improving the quality of recommendations at every other position. Our work outperforms the latest work on community recommendations on social media platforms and has major implications for the design of online community recommenders.