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Iterative Local Tangent Space Alignment with Adaptive Neighbourhood for Social Network Mining

S.K. Mishra1 , A. Agarwal2

Section:Research Paper, Product Type: Journal Paper
Volume-7 , Issue-3 , Page no. 259-265, Mar-2019

CrossRef-DOI:   https://doi.org/10.26438/ijcse/v7i3.259265

Online published on Mar 31, 2019

Copyright © S.K. Mishra, A. Agarwal . 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: S.K. Mishra, A. Agarwal, “Iterative Local Tangent Space Alignment with Adaptive Neighbourhood for Social Network Mining,” International Journal of Computer Sciences and Engineering, Vol.7, Issue.3, pp.259-265, 2019.

MLA Style Citation: S.K. Mishra, A. Agarwal "Iterative Local Tangent Space Alignment with Adaptive Neighbourhood for Social Network Mining." International Journal of Computer Sciences and Engineering 7.3 (2019): 259-265.

APA Style Citation: S.K. Mishra, A. Agarwal, (2019). Iterative Local Tangent Space Alignment with Adaptive Neighbourhood for Social Network Mining. International Journal of Computer Sciences and Engineering, 7(3), 259-265.

BibTex Style Citation:
@article{Mishra_2019,
author = {S.K. Mishra, A. Agarwal},
title = {Iterative Local Tangent Space Alignment with Adaptive Neighbourhood for Social Network Mining},
journal = {International Journal of Computer Sciences and Engineering},
issue_date = {3 2019},
volume = {7},
Issue = {3},
month = {3},
year = {2019},
issn = {2347-2693},
pages = {259-265},
url = {https://www.ijcseonline.org/full_paper_view.php?paper_id=3827},
doi = {https://doi.org/10.26438/ijcse/v7i3.259265}
publisher = {IJCSE, Indore, INDIA},
}

RIS Style Citation:
TY - JOUR
DO = {https://doi.org/10.26438/ijcse/v7i3.259265}
UR - https://www.ijcseonline.org/full_paper_view.php?paper_id=3827
TI - Iterative Local Tangent Space Alignment with Adaptive Neighbourhood for Social Network Mining
T2 - International Journal of Computer Sciences and Engineering
AU - S.K. Mishra, A. Agarwal
PY - 2019
DA - 2019/03/31
PB - IJCSE, Indore, INDIA
SP - 259-265
IS - 3
VL - 7
SN - 2347-2693
ER -

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Abstract

High dimensional data is a function of feature space inputs and noise. This makes it difficult to analyse and visualize the data, specially, in case of social network analysis where the aim is to analyse user’s behaviour. Heterogeneous contents (text, audio, video, images etc.) make it more difficult to model. However, it is known that the actual feature vectors lie on much lower dimensions which can be obtained through non-linear manifold learning techniques. In this paper, we propose iterative local tangent space alignment with adaptive neighbourhood to extract the true low dimensional representation of data by sequentially aligning the tangent spaces and thereby reducing the overall reconstruction error. As the sub-manifold regions become linear, its neighbourhood size increases which leads to more information fusion. Extensive experiments on both synthetic and real world dataset proves that proposed method outperforms existing non-linear dimensionality reduction technique in both low dimensional representation and classification.

Key-Words / Index Term

Social Network Mining, Dimensionality reduction, Manifold learning, Local tangent space alignment, Adaptive neighbourhood

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