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Using Partitioning Methods for Mining URL Weight in Social Networks

M. Sheela1 , M. Harikrishnan2

Section:Research Paper, Product Type: Journal Paper
Volume-7 , Issue-2 , Page no. 928-933, Feb-2019

CrossRef-DOI:   https://doi.org/10.26438/ijcse/v7i2.928933

Online published on Feb 28, 2019

Copyright © M. Sheela, M. Harikrishnan . This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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IEEE Style Citation: M. Sheela, M. Harikrishnan, “Using Partitioning Methods for Mining URL Weight in Social Networks,” International Journal of Computer Sciences and Engineering, Vol.7, Issue.2, pp.928-933, 2019.

MLA Style Citation: M. Sheela, M. Harikrishnan "Using Partitioning Methods for Mining URL Weight in Social Networks." International Journal of Computer Sciences and Engineering 7.2 (2019): 928-933.

APA Style Citation: M. Sheela, M. Harikrishnan, (2019). Using Partitioning Methods for Mining URL Weight in Social Networks. International Journal of Computer Sciences and Engineering, 7(2), 928-933.

BibTex Style Citation:
@article{Sheela_2019,
author = {M. Sheela, M. Harikrishnan},
title = {Using Partitioning Methods for Mining URL Weight in Social Networks},
journal = {International Journal of Computer Sciences and Engineering},
issue_date = {2 2019},
volume = {7},
Issue = {2},
month = {2},
year = {2019},
issn = {2347-2693},
pages = {928-933},
url = {https://www.ijcseonline.org/full_paper_view.php?paper_id=3773},
doi = {https://doi.org/10.26438/ijcse/v7i2.928933}
publisher = {IJCSE, Indore, INDIA},
}

RIS Style Citation:
TY - JOUR
DO = {https://doi.org/10.26438/ijcse/v7i2.928933}
UR - https://www.ijcseonline.org/full_paper_view.php?paper_id=3773
TI - Using Partitioning Methods for Mining URL Weight in Social Networks
T2 - International Journal of Computer Sciences and Engineering
AU - M. Sheela, M. Harikrishnan
PY - 2019
DA - 2019/02/28
PB - IJCSE, Indore, INDIA
SP - 928-933
IS - 2
VL - 7
SN - 2347-2693
ER -

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Abstract

A standout amongst the most essential issues in such frameworks that has pulled in a great deal of interests as of late, is connect expectation. Systems can speak to a wide scope of complex frameworks, for example, social, natural and innovative frameworks. In such complex conditions, there are numerous difficulties and issues that can be contemplated and considered. Numerous examinations have been practiced on connection forecast in the course of the most recent couple of years, however the current methodologies are not tasteful in handing topological data as they have high time multifaceted nature. Numerous examines in conventional techniques expect that endpoint impact spoken to by endpoint degree, wants to encourage the association between huge degree endpoints. The proposed mining User-mindful Rare Sequential Topic Patterns in record streams comprises of three stages. At first, literary archives are crept from some small scale blog destinations or discussions, and establish a report stream as the contribution of our methodology. At that point, as preprocessing algorithm and partition algorithm utilized for the first stream is changed to a subject dimension archive stream and then separated into numerous sessions to distinguish total client practices. Our straight data structure empowers us to figure a tight headed for amazing pruning and to straightforwardly distinguish high utility examples in a productive and versatile way. Preprocessing algorithm and partition algorithm preprocessing algorithm and partition algorithm.

Key-Words / Index Term

Prartitioning Algorithm, Link Weight, Social Network

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