------------------------------------------------- ------------------------------------------------- ------------------------------------------------- KEYWORDS optimization‚ electrical discharge machining‚ soft computing‚ artificial neural network‚ fuzzy logic‚ evolutionary algorithms‚ -------------------------------------------------
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A Computational Methodology for Modelling the Dynamics of Statistical Arbitrage Andrew Neil Burgess Decision Technology Centre Department of Decision Sciences A thesis submitted to the University of London for the degree of Doctor of Philosophy UNIVERSITY OF LONDON LONDON BUSINESS SCHOOL 1 October 1999 To my parents‚ Arnold and Carol. © A. N. Burgess‚ 1999 2 3 Acknowledgements Thanks to my supervisor‚ Paul Refenes‚ for bringing me to LBS‚ keeping me in bread and
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Having established the basis of neural nets in the previous chapters‚ let’s now have a look at some practical networks‚ their applications and how they are trained. Many hundreds of Neural Network types have been proposed over the years. In fact‚ because Neural Nets are so widely studied (for example‚ by Computer Scientists‚ Electronic Engineers‚ Biologists and Psychologists)‚ they are given many different names. You’ll see them referred to as Artificial Neural Networks (ANNs)‚ Connectionism or Connectionist
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Issues from the use of ICT Why do issues arise with the use of ICT? Who has the responsibility of addressing these issues? Tensions can arise through unintended or deliberate actions or opinions of some of the stakeholders. As a result‚ the stakeholders develop‚ control‚ use or affected by the use of ICT have responsibility both to investigate and real and potention negative efftcs and to eliminate the lessen them as much as possible. Computer gaming What are the symptoms of computer addiction
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step of fuzzy inference process of TSK method‚ fuzzifying inputs and applying the fuzzy operator‚ are exactly the same. The most fundamental difference between these two models are the way the crisp output is generated from the fuzzy inputs [1]. TSK network uses weighted average to compute the crisp output instead of the defuzzification step in Mamdani model which is time consuming. Then together with the fact that in most cases TSK model has less fuzzy rules than Mamdani method make TSK model a more
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Data Plans for iPhone 5 starting November 2 » Airtel’s state of the art Network Experience Centre goes LIVE Business Divisions Mobile Services bharti airtel offers GSM mobile services in all the 22-telecom circles of India and is the largest mobile service provider in the country‚ based on the number of customers. Airtel Telemedia Services The group offers high-speed broadband with the best in class network. With fixed line services in 87 cities‚ we help you stay in touch with your
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that web site. The design of Blondie24 is based on a minimax algorithm of the checkers game tree in which the evaluation function is an artificial neural network. The neural net receives as input a vector representation of the checkerboard positions and returns a single value which is passed on to the minimax algorithm. The weights of the neural network were obtained by an evolutionary algorithm (an approach now called neuroevolution). In this case‚ a population of Blondie24-like programs played each
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Levels and loops: the future of arti®cial intelligence and neuroscience Anthony J. Bell Interval Research Corporation‚ 1801 Page Mill Road‚ Palo Alto‚ CA 94304‚ USA In discussing arti¢cial intelligence and neuroscience‚ I will focus on two themes. The ¢rst is the universality of cycles (or loops): sets of variables that a¡ect each other in such a way that any feed-forward account of causality and control‚ while informative‚ is misleading. The second theme is based around the observation that a
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PAPER PRESENTATION ON “Artificial Intelligence” AUTHORS Shahabaz.S (97907647063) Prabhakaran.S (9629296869) shahabazboss2@gmail.com praba.enamour@gmail.com CONTENT 1. Abstract 2. Introduction 3. What is AI 4. Abstract: This paper is about Artificial intelligence which is a branch of Science which deals with helping machines find solutions to complex problems in a more human-like fashion. This generally
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Azzedine Boukerche2 Fernando A. S. Cruz1 Bernardo G. Riso1 Carlos B. Westphall1 1 Network and Management Laboratory Federal University of Santa Catarina (UFSC) {mirela‚ cruz‚ riso‚ westphal}@lrg.ufsc.br 2 Department of Computer Sciences University of North Texas boukerche@silo.csci.unt.edu Abstract: This work presents the development of a distributed security management system for telecommunication networks. The system consists in reducing the use of cloned mobile telephones using three main
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