Cohesion Based Personalized Community Recommendation System

Abstract

Our life is totally engaged by the progressive growth of online social networking. Because, millions of users are interconnecting with each other using different social media sites like Facebook, Twitter, LinkedIn, Google+, Pinterest, Instagram etc. Most of the social sites like Facebook, Google+ allow users to join different groups or communities where people can share their common interests and express opinions around a common cause, problem or activity. However, an information overloading issue has disturbed users as thousands of communities or groups are creating each day. To resolve this problem, we have presented a community or group recommendation system centered on cohesion where cohesion represents high degree of connectedness among users in social network. In this paper, we emphasis on suggesting useful communities (or groups in term of Facebook) that users personally attracted in to join; reducing the effort to find useful information based on cohesion. Our projected framework contains of the steps like: extracting sub-network from a social networking site (SNS), computing the impact of amity(both real-life or social and SNS connected), measuring user proclivity factor, calculating threshold from existing communities or groups of a user and lastly recommending community or group based on derived threshold. In result analysis part, we consider the precision-recall values by discarding community or group one at a time from the list of communities or groups of a certain user and checking whether the removed community or group is recommended by our proposed system. We have evaluated our system with 20 users and found 76% F1 accuracy measure.

Authors and Affiliations

Md Mamunur Rashid, Kazi Ahmed, Hasan Mahmud, Md. Kamrul Hasan, Husne Rubaiyeat

Keywords

Related Articles

Bio-inspired Think-and-Share Optimization for Big Data Provenance in Wireless Sensor Networks

Big data systems are being increasingly adopted by the enterprises exploiting big data applications to manage data-driven process, practices, and systems in an enterprise wide context. Specifically, big data systems and...

Efficient Iris Pattern Recognition Method by using Adaptive Hamming Distance and 1D Log-Gabor Filter

Iris recognition is one of the highly reliable security methods as compared to the other bio-metric security techniques. The iris is an internal organ whose texture is randomly de-termined during embryonic gestation and...

Predicting Garden Path Sentences Based on Natural Language Understanding System

Natural language understanding (NLU) focusing on machine reading comprehension is a branch of natural language processing (NLP). The domain of the developing NLU system covers from sentence decoding to text understanding...

A Framework for Satellite Image Enhancement Using Quantum Genetic and Weighted IHS+Wavelet Fusion Method

This paper examined the applicability of quantum genetic algorithms to solve optimization problems posed by satellite image enhancement techniques, particularly super-resolution, and fusion. We introduce a framework star...

Image noise Detection and Removal based on Enhanced GridLOF Algorithm

Image noise removal is a major task in image processing where noise can harness any information inferred from the image especially when the noise level is high. Although there exists many outlier detection approaches use...

Download PDF file
  • EP ID EP123356
  • DOI 10.14569/IJACSA.2016.070843
  • Views 85
  • Downloads 0

How To Cite

Md Mamunur Rashid, Kazi Ahmed, Hasan Mahmud, Md. Kamrul Hasan, Husne Rubaiyeat (2016). Cohesion Based Personalized Community Recommendation System. International Journal of Advanced Computer Science & Applications, 7(8), 320-326. https://europub.co.uk/articles/-A-123356