In data clustering‚ we choose 5 artificial datasets and 9 UCI datasets to test the performance of ARMOPSO. Table 4 shows the specific information of these datasets. Table 4 The information of datasets used in data clustering. Datasets Number of data objects Dimension of a data object Number of clusters Art2 data3 data1 Art1 data9 Iris Wine Glass Thyroid Ecoli bupaLD Cancer pimaIndians CMC 250 400 400 600 600 150 178 214 215 336 345 683 768 1473 3 2 2 2 3 4 13 9 5 7 6 9 8 9 5 3 2 4 3 3 3 6 3 8 2 2
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that are already in the data but were previously unseen. The most popular tool used when mining is artificial intelligence (AI). AI technologies try to work the way the human brain works‚ by making intelligent guesses‚ learning by example‚ and using deductive reasoning. Some of the more popular AI methods used in data mining include neural networks‚ clustering‚ and decision trees. Neural networks look at the rules of using data‚ which are based on the connection found or on a sample set of data
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IRIS DATA ANALYSIS USING BACK PROPAGATION NEURAL NETWORKS Sean Van Osselaer Murdoch University‚ Western Australia ABSTRACT This project paper refers to experiments towards the classification of Iris plants with back propagation neural networks (BPNN). The problem concerns the identification of Iris plant species on the basis of plant attribute measurements. The paper outlines background information concerning the problem‚ making reference to statistics and value constraints identified
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Demand Forecasting Demand forecasting is the activity of estimating the quantity of a product or service that consumers will purchase. Demand forecasting involves techniques including both informal methods‚ such as educated guesses‚ and quantitative methods‚ such as the use of historical sales data or current data from test markets. Demand forecasting may be used in making pricing decisions‚ in assessing future capacity requirements‚ or in making decisions on whether to enter a new market.
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2.3.3 Feature Extraction Feature extraction deals with the extraction of the distinctive features out of face images so that those face images can be differentiated among each other. There are several algorithms available for extracting features out of a face image. The most common is the use of mathematical formulas that generate a mathematical representation of a face image that is termed as a template‚ these templates are “the refined‚ processed and stored representation of the distinguishing
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Research on Suspension System Based on Genetic Algorithm and Neural Network Control Chuan-Yin Tang and Li-Xin Guo* School of Mechanical Engineering and Automation‚ Northeastern University‚ Shenyang 110004‚ China Abstract: In this paper‚ a five degree of freedom half body vehicle suspension system is developed and the road roughness intensity is modeled as a filtered white noise stochastic process. Genetic algorithm and neural network control are used to control the suspension system. The desired
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This file of CIS 207 Week 4 Discussion Question 2 includes: Describe neural networks‚ and provide examples of their use. Computer Science - General CS DQ #2‚ Week 4 --- neural networks Describe neural networks‚ and provide examples of their use. Read Technology Guide 4: Intelligent Systems‚ in Introduction to Information Systems. Supporting and Transforming Business‚ Fourth Edition. At college‚ the pressure is on like nothing you have experienced thus far! Try to
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model (with bootstrap)‚ neural networks and the latest one being fuzzy logic. The use of these techniques makes it very easy and cost effective to design reactors for specific needs and in cases where similar production procedures do not exist. This can reduce the time taken in the development of reactors. KEYWORDS: Bioreactor designing‚ reaction kinetics‚ transport phenomena‚ reactor simulation‚ computational modeling‚ MATLAB‚ narmax model‚ wavelet model‚ neural networks‚ fuzzy logic. INTRODUCTION
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Harrisburg School of Business Administration INFSY 566: Data Mining and Knowledge Discovery Spring 2014 ASSIGNMENT: Neural Networks for classification Professor Name: Dr. Parag Pendharkar Submitted by: Deepak Mahajan Date: February 26‚ 2014 The strategies used to create training and test data sets are random sampling and stratified sampling. Neural network has been used as modelling technique to create bankruptcy predicting model. Random Sampling File conversion from excel
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Robust Fixed-Point Algorithms for Independent Component Analysis Aapo Hyvärinen Helsinki University of Technology Laboratory of Computer and Information Science P.O. Box 5400‚ FIN-02015 HUT‚ Finland Email: aapo.hyvarinen@@hut.fi IEEE Trans. on Neural Networks‚ 10(3):626-634‚ 1999. Abstract Independent component analysis (ICA) is a statistical method for transforming an observed multidimensional random vector into components that are statistically as independent from each other as possible. In this
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