1,108 research outputs found
Optimization of Evolutionary Neural Networks Using Hybrid Learning Algorithms
Evolutionary artificial neural networks (EANNs) refer to a special class of
artificial neural networks (ANNs) in which evolution is another fundamental
form of adaptation in addition to learning. Evolutionary algorithms are used to
adapt the connection weights, network architecture and learning algorithms
according to the problem environment. Even though evolutionary algorithms are
well known as efficient global search algorithms, very often they miss the best
local solutions in the complex solution space. In this paper, we propose a
hybrid meta-heuristic learning approach combining evolutionary learning and
local search methods (using 1st and 2nd order error information) to improve the
learning and faster convergence obtained using a direct evolutionary approach.
The proposed technique is tested on three different chaotic time series and the
test results are compared with some popular neuro-fuzzy systems and a recently
developed cutting angle method of global optimization. Empirical results reveal
that the proposed technique is efficient in spite of the computational
complexity
ANTIDS: Self-Organized Ant-based Clustering Model for Intrusion Detection System
Security of computers and the networks that connect them is increasingly
becoming of great significance. Computer security is defined as the protection
of computing systems against threats to confidentiality, integrity, and
availability. There are two types of intruders: the external intruders who are
unauthorized users of the machines they attack, and internal intruders, who
have permission to access the system with some restrictions. Due to the fact
that it is more and more improbable to a system administrator to recognize and
manually intervene to stop an attack, there is an increasing recognition that
ID systems should have a lot to earn on following its basic principles on the
behavior of complex natural systems, namely in what refers to
self-organization, allowing for a real distributed and collective perception of
this phenomena. With that aim in mind, the present work presents a
self-organized ant colony based intrusion detection system (ANTIDS) to detect
intrusions in a network infrastructure. The performance is compared among
conventional soft computing paradigms like Decision Trees, Support Vector
Machines and Linear Genetic Programming to model fast, online and efficient
intrusion detection systems.Comment: 13 pages, 3 figures, Swarm Intelligence and Patterns (SIP)- special
track at WSTST 2005, Muroran, JAPA
Analysis of Hybrid Soft and Hard Computing Techniques for Forex Monitoring Systems
In a universe with a single currency, there would be no foreign exchange
market, no foreign exchange rates, and no foreign exchange. Over the past
twenty-five years, the way the market has performed those tasks has changed
enormously. The need for intelligent monitoring systems has become a necessity
to keep track of the complex forex market. The vast currency market is a
foreign concept to the average individual. However, once it is broken down into
simple terms, the average individual can begin to understand the foreign
exchange market and use it as a financial instrument for future investing. In
this paper, we attempt to compare the performance of hybrid soft computing and
hard computing techniques to predict the average monthly forex rates one month
ahead. The soft computing models considered are a neural network trained by the
scaled conjugate gradient algorithm and a neuro-fuzzy model implementing a
Takagi-Sugeno fuzzy inference system. We also considered Multivariate Adaptive
Regression Splines (MARS), Classification and Regression Trees (CART) and a
hybrid CART-MARS technique. We considered the exchange rates of Australian
dollar with respect to US dollar, Singapore dollar, New Zealand dollar,
Japanese yen and United Kingdom pounds. The models were trained using 70% of
the data and remaining was used for testing and validation purposes. It is
observed that the proposed hybrid models could predict the forex rates more
accurately than all the techniques when applied individually. Empirical results
also reveal that the hybrid hard computing approach also improved some of our
previous work using a neuro-fuzzy approach
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