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163

I've done some work for Toyota that involved using neural networks to predict when a driver was about to crash. We used a neuroevolution algorithm called NEAT to evolve networks that converted either sonar, laser rangefinder, or CCD camera input into a warning signal. The warning signal was then provided to the driver, with the goal of helping them avoid ...


95

Not homework. My first job as a professional programmer (1995) was writing a genetic-algorithm based automated trading system for S&P500 futures. The application was written in Visual Basic 3 [!] and I have no idea how I did anything back then, since VB3 didn't even have classes. The application started with a population of randomly-generated ...


51

In 2007 I was part of a group of master students put to the task of classifying ground (vs. buildings, cars, trees, etc.) in a photograph. The project was focused on image processing and understanding, where the task was to attempt to extrapolate parts of panoramic 360° photographs. For example, we would take the photograph below (taken with a customized ...


46

I made a little critters that lived in this little world. They had a neural network brain which received some inputs from the world and the output was a vector for movement among other actions. Their brains were the "genes". The program started with a random population of critters with random brains. The inputs and output neurons were static but what was ...


34

I used a GA to optimize seating assignments at my wedding reception. 80 guests over 10 tables. Evaluation function was based on keeping people with their dates, putting people with something in common together, and keeping people with extreme opposite views at separate tables. I ran it several times. Each time, I got nine good tables, and one with all ...


30

I used genetic algorithms (as well as some related techniques) to determine the best settings for a risk management system that tried to keep gold farmers from using stolen credit cards to pay for MMOs. The system would take in several thousand transactions with "known" values (fraud or not) and figure out what the best combination of settings was to ...


29

The other answers seem to be assuming that you are trying to implement a roulette game. I think that you are asking about roulette wheel selection in evolutionary algorithms. Here is some Java code that implements roulette wheel selection. Assume you have 10 items to choose from and you choose by generating a random number between 0 and 1. You divide the ...


29

A genetic algorithm is a class of evolutionary algorithm. Although genetic algorithms are the most frequently encountered type of evolutionary algorithm, there are other types, such as Evolution Strategy. So, evolutionary algorithms encompass genetic algorithms, and more.


29

This is something I have been considering in my own research, and I'd say there are many reasons: The vast majority of research in the GP field has focused on producing formulas rather than the sort of software that gets produced by most programmers. There are plenty of computer scientists in the field, but very few are focused on producing the sort of ...


25

In January 2004, I was contacted by Philips New Display Technologies who were creating the electronics for the first ever commercial e-ink, the Sony Librie, who had only been released in Japan, years before Amazon Kindle and the others hit the market in US an Europe. The Philips engineers had a major problem. A few months before the product was supposed to ...


25

After developing my own Genetic Programming didactic application, I found a complete Genetic Programming Framework called AForge.NET Genetics. It's a part of the Aforge.NET library. It's licensed under LGPL.


25

The following is a complete outline of the GA. I made sure to be very detailed so it can be easily coded to C/Java/Python/.. /* 1. Init population */ POP_SIZE = number of individuals in the population pop = newPop = [] for i=1 to POP_SIZE { pop.add( getRandomIndividual() ) } /* 2. evaluate current population */ totalFitness = 0 for i=1 to POP_SIZE { ...


24

Surprised nobody has chimed in with this one yet, but I used an artificial neural network to attempt to predict the financial markets (FOREX) for my final year dissertation. Did it mainly as a bit of fun, but found that I was able to get around 55-65% accuracy. It's worth noting that neural networks are great for regressions analysis, in this case it was ...


24

It's been a few years since i've done this myself, however the following pseudo code was found easily enough on google. for all members of population sum += fitness of this individual end for for all members of population probability = sum of probabilities + (fitness / sum) sum of probabilities += probability end for loop until new population ...


21

MSDN had an article last year about genetic programming: Genetic Algorithms: Survival of the Fittest with Windows Forms


20

I've used artificial neural networks to predict the shear strength of reinforced concrete columns, as well as their rotational deformation capacity. This is a problem that has many independent variables and extremely nonlinear results, perfect for ANNs. I compiled a large database of tests from many sources to train the network and judge its accuracy. ...


20

The hard part about genetic programming is writing a good scoring function: The scoring function must correctly judge whether the algorithm has the desired properties. This is harder than it sounds -- much harder than writing a test suite. The algorithm may adapt to any quirk of your scoring function and optimize it. Trying to evolve strcmp? Your ...


19

Football Tipping. I built a GA system to predict the week to week outcome of games in the AFL (Aussie Rules Football). A few years ago I got bored of the standard work football pool, everybody was just going online and taking the picks from some pundit in the press. So, I figured it couldn't be too hard to beat a bunch of broadcast journalism majors, ...


17

I did a PhD in neural networks. In it I solved several problems related to time series. For example I modeled a mechanism for recalling sequences of patterns (rather like remembering a phone number). We do this with a system where the part of the sequence recited so far reminds you of what pattern comes next (that's why its very hard to recall your phone ...


17

This is essentially a sequence prediction problem, so you want Recurrent neural networks or hidden Markov models. If you only have a fixed time to look back, time window approaches might suffice. You take the sequence data and split it into overlapping windows of length n. (eg. you split a sequence ABCDEFG into ABC, BCD, CDE, DEF, EFG). Then you train a ...


17

If you're just trying to get familiar with AI, then I would recommend that you take the Stanford's free online courses: https://www.ai-class.com/ http://www.ml-class.org/course/auth/welcome Get a good understanding of the ML/AI concepts and play with the algorithms. Additional links: Neural Network Example: ...


15

If you are sure you want to do this, you want genetic programming, rather than a genetic algorithm. GP allows you to evolve tree-structured programs. What you would do would be to give it a bunch of primitive operations (while($register), read($register), increment($register), decrement($register), divide($result $numerator $denominator), print, progn2 (this ...


15

Try the demo! This is a fascinating question, though I think somewhat beyond the scope of Stack Overflow: it's not something that going to be solved in a few minutes, so I'll stick an outline here and update it if I make any progress. There are going to be three parts to any approach: Scoring the footprint: does the linkage break? does the footprint ...


15

I developed a home brew GA for a 3D laser surface profile system my company developed for the freight industry back in 1992. The system relied upon 3 dimensional triangulation and used a custom laser line scanner, a 512x512 camera (with custom capture hw). The distance between the camera and laser was never going to be precise and the focal point of the ...


14

Here is the deal: in machine learning problems, you typically have two components: a) The model (function class, etc) b) Methods of fitting the model (optimizaiton algorithms) Neural networks are a model: given a layout and a setting of weights, the neural net produces some output. There exist some canonical methods of fitting neural nets, such as ...


13

Although I've used -with variable success- NN to recognize text patterns (like part number and such), the coolest Neural Net implementation I did was for very simple game which I developed in the context of a challenge/contest for users of Numenta NuPIC framework. I didn't submit this game for the contest, owing to its incomplete user interface and general ...


13

I used AForge to decide if multiple-choice answer bubbles had been filled-in, checked, crossed-out, etc.


13

Hebbs law is a brilliant insight for associative learning, but its only part of the picture. And you are right, implemented as you have done, and left unchecked a weight will just keep on increasing. The key is to add in some form of normalisation or limiting process. This is illustrated quite well of the wiki page for Oja's rule. What I suggest you do is ...


12

Simply put, niching is a class of methods that try to converge to more than one solution during a single run. Niching is the idea of segmenting the population of the GA into disjoint sets, intended so that you have at least one member in each region of the fitness function that is "interesting"; generally by this we mean that you cover more than one local ...


12

"Monte Carlo" is, in my experience, a heavily overloaded term. People seem to use it for any technique that uses a random number generator (global optimization, scenario analysis (Google "Excel Monte Carlo simulation"), stochastic integration (the Pi calculation that everybody uses to demonstrate MC). I believe, because you mentioned evolutionary ...



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