swarm optimized functional link artificial neural network
Budget ₹12500-37500 INR
Job Description:
Multilayer perceptron (MLP) (trained with back propagation learning algorithm) takes large computational time. The complexity of the network increases as the number of layers and number of nodes in
layers increases. Further, it is also very dif?cult to decide the number of nodes in a layer and the number
of layers in the network required for solving a problem a priori. In this paper an improved particle swarm
optimization (IPSO) is used to train the functional link arti?cial neural network (FLANN) for classi?cation
and we name it ISO-FLANN. In contrast to MLP, FLANN has less architectural complexity, easier to train,
and more insight may be gained in the classi?cation problem. Further, we rely on global classi?cation
capabilities of IPSO to explore the entire weight space, which is plagued by a host of local optima. Using
the functionally expanded features; FLANN overcomes the non-linear nature of [url removed, login to view] believe that
the combined efforts of FLANN and IPSO (IPSO + FLANN = ISO − FLANN) by harnessing their best attributes
can give rise to a robust classi?er. An extensive simulation study is presented to show the effectiveness
of proposed classi?er. Results are compared with MLP, support vector machine(SVM) with radial basis
function (RBF) kernel, FLANN with gradiend descent learning and fuzzy swarm net (FSN).
4 freelancers are bidding on average ₹43000 for this job
I am familiar with soft computing and machine learning. I have done Gaussian Mixture Modeling and Artificial Neural Network. I can do this work for you
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