Evolutionary Systems


Design by Evolution: How to evolve your neural network with AutoML

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But as the available processing power increases, it makes sense to begin automating this network optimisation process. Typically, reinforcement learning problems are modelled as a Markov decision process. Inspired by biological evolution, an evolutionary algorithm searches the solution space by creating a population of solutions. Another popular method is the tournament selection where randomly selected individuals participate in a tournament play to define the winner (individuals selected for passing on their genes).



Discover an Underrated face of Artificial Intelligence: the genetic algorithm.

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In this article, I am going to explain the concept of genetic algorithm. This algorithm is especially efficient with optimization problems. The backpack optimization is a classical algorithm problem. The genetic algorithm is well suited to solve that because it's an optimization problem with a lot of possible solutions.


Data Mining with Computational Intelligence Lipo Wang Springer

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He is an Associate Editor / Editorial Board member for 7 international journals, including IEEE Transactions on Neural Networks, IEEE Transactions on Evolutionary Computation. He is Chair of the Emergent Technologies Technical Committee, IEEE Neural Networks Society. He is also the Founding Chair of both IEEE Engineering in Medicine and Biology Chapter Singapore and IEEE Neural Networks Chapter Singapore. He will be Technical Program Co-Chair for the 2006 IEEE International Joint Conference on Neural Networks.


Artificial Intelligence and Cyber Defense

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Therefore, there is an increasing opinion that effective cyber defense can only be provided by real time flexible Artificial Intelligence (AI) systems with learning capability. The offensive cyber operations could involve both military and intelligence agencies since both computer network exploitation and computer network attacks are involved. Artificial Neural Networks- In 2012, Barman, and Khataniar studied the development of intrusion detection systems, IDSs based on neural network systems. Miscellaneous AI Applications- In 2014, Barani proposed a genetic algorithm (GA) and artificial immune system (AIS), GAAIS – a dynamic intrusion detection method for Mobile ad hoc Networks based on genetic algorithm and AIS.


[P] Making a robot learn how to move, part 1 -- Evolutionary algorithms • r/MachineLearning

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This is part of a project I've been working in that involves using ML techniques to robot control. The first one is applying evolutionary algorithms to a neural controller. You cna find a Jupyter Notebook on the linked repository.


Introduction to Genetic Algorithm & their application in data science

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Few days back, I started working on a practice problem – Big Mart Sales. Therefore, we generally use Roulette Wheel Selection method. You always look at the feature importance of some model, and then manually decide the threshold, and select the features which have importance above that threshold. Once this code finishes running, tpot_exported_pipeline.py will contain the Python code for the optimised pipeline.


How to define a Fitness Function in a Genetic Algorithm?

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Fitness Function (also known as the Evaluation Function) evaluates how close a given solution is to the optimum solution of the desired problem. For optimization problems, basic functions such as sum of a set of calculated parameters related to the problem domain can be used as the fitness function. You can formulate the fitness function as the inverse of the number of students with class conflicts. Hope you got a basic idea on how to define a fitness function for a given problem where genetic algorithms are used for solving.


Making a robot learn how to move, part 1 -- Evolutionary algorithms

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Evolutionary algorithms are inspired by the natural process of evolution and natural selection. Every possible solution is made by a series of parameters, w. We then define a fitness function, h(w). As evolution suggests, we select and combine the best performing solutions, finding a new one that shares parameters with both. After some iterations selection, genetic combination and random mutaments will generate solutions that have very high performances.


Learning Club 16: Genetic Algorithms

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Some time ago I published a blog post with the title Know your data structures!. In this previous post I explained how I improved the running time of a genetic algorithm. The post Learning Club 16: Genetic Algorithms appeared first on verenahaunschmid.