Title
A PSO Based Approach for Producing Optimized Latent Factor in Special Reference to Big Data.
Abstract
Now a dayu0027s application deal with Big Data has tremendously been used in the popular areas. To tackle with such kind of data various approaches have been developed by researchers in the last few decades. A recent investigated techniques to factored the data matrix through a known latent factor in a lower size space is the so called matrix factorization. In addition, one of the problems with the NMF approaches, its randomized valued could not provide absolute optimization in limited iteration, but having local optimization. Due to this, the authors have proposed a new approach that considers the initial values of the decomposition to tackle the issues of computationally expensive. They have devised an algorithm for initializing the values of the decomposed matrix based on the PSO. In this paper, the auhtors have intended a genetic algorithm based technique while incorporating the nonnegative matrix factorization. Through the experimental result, they will show the proposed method converse very fast in comparison to other low rank approximation like simple NMF multiplicative, and ACLS technique.
Year
Venue
Field
2016
IJSSMET
Mathematical optimization,Multiplicative function,Matrix (mathematics),Matrix decomposition,Algorithm,Low-rank approximation,Non-negative matrix factorization,Engineering,Local search (optimization),Initialization,Genetic algorithm
DocType
Volume
Issue
Journal
7
3
Citations 
PageRank 
References 
0
0.34
0
Authors
2
Name
Order
Citations
PageRank
Singh Bharat111.37
Om Prakash Vyas2528.92