# When to use Genetic Algorithms vs. when to use Neural Networks? [closed]

Is there a rule of thumb or set of examples to determine when to use Genetic Algorithms versus when to use Neural Networks to solve a problem?

I know there are cases in which you can have both methods mixed, but I am looking for a high level reasoning between the two methods.

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## closed as not constructive by casperOne♦Dec 23 '12 at 18:58

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It's worth pointing out there are two types of neural network - supervised and unsupervised. Supervised get training data from a human, unsupervised feedback into themselves and are more like GAs in that respect. –  Chris S Oct 25 '12 at 22:53
Can we work on getting out the non constructive bits in the question? It's a lot around the "set of examples" as that's very list-y and we don't want to encourage that. The answers are fairly good, and we'd like to keep it that way. We'll be happy to reopen it once that bit's taken care of. –  casperOne Dec 23 '12 at 19:11
I don't think it's "list-y" at all. The answers compare two methods, and clarify when to use one vs the other. –  Neil N Dec 23 '12 at 19:36

From wikipedia:

A genetic algorithm (GA) is a search technique used in computing to find exact or approximate solutions to optimization and search problems.

and:

Neural networks are non-linear statistical data modeling tools. They can be used to model complex relationships between inputs and outputs or to find patterns in data.

If you have a problem where you can quantify the worth of a solution, a genetic algorithm can perform a directed search of the solution space. (E.g. find the shortest route between two points)

When you have a number of items in different classes, a neural network can "learn" to classify items it has not "seen" before. (E.g. face recognition, voice recognition)

Execution times must also be considered. A genetic algorithm takes a long time to find an acceptable solution. A neural network takes a long time to "learn", but then it can almost instantly classify new inputs.

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I just want to add a bit to the GA definition. Sometimes people think of the solution space of a GA problem as a set of states or values. Such as "Find all of the ways a set of four chess pieces could be arranged on a chessboard to create a checkmate." However the solution space can also be a set of algorithms. This is where the real power of genetic algorithms come into play. They help you to answer a question like "Find a sequence of moves with a given set of chess pieces that will result in a checkmate." –  lfalin Mar 13 '14 at 10:46

A genetic algorithm, despite its sexy name, is for most purposes just an optimisation technique. It primarily boils down to you having a number of variables and wanting to find the best combination of values for these variables. It just borrows techniques from natural evolution to get there.

Neural networks are useful for recognising patterns. They follow a simplistic model of the brain, and by changing a number of weights between them, attempt to predict outputs based on inputs.

They are two fundamentally different entities but sometimes the problems they are capable of solving overlap.

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.."just an optimization technique".. That is it? –  Amit Oct 27 '09 at 18:13
'just an optimisation technique' was not intended to belittle the power of optimisation. The point was to show that GAs perform the same function as many other optimisation techniques such as hill-climbing. –  zenna Nov 1 '09 at 20:42
Neural networks are just an interpolation technique, actually. :) –  Don Reba May 5 '11 at 9:52
+1 for genetic algorithms (optimization) and neural networks (supervised learning) have almost nothing in common. –  alfa Mar 4 '12 at 17:58
The only common element is that they dynamically rearrange themselves as they approach a goal. –  lfalin Mar 13 '14 at 10:49

GAs generate new patterns in a structure that you define

NNs classify/recognize existing patterns based on training that you provide

GAs perform well at efficiently searching a large state-space of solutions, and converging on one or more good solutions, but not necessarily the 'best' solution

NNs can learn to recognize patterns (via training), but it is notoriously difficult to figure out what they have learned, i.e. to extract the knowledge from them once trained, and reuse the knowledge in some other (non-NN)

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can't really figure out why this was downvoted... –  Steven A. Lowe Sep 11 '09 at 16:03

There are many similarities between them, so I will only try to outline their differences.

# Neural networks

Are able to analyze online patterns (those that change over time). Generally this is a time varying sample that needs to be matched and predicted.

Examples: Graph extrapolation. Facial recognition.

# Genetic algorithms

Used when you can code attributes that you think may contribute to a specific, non-changing problem. The emphasis is on being able to code these attributes (sometimes you know what they are) and that the problem is to a large degree unchanging (otherwise evolutions don't converge).

Examples: Scheduling airplanes/shipping. Timetables. Finding the best characteristics for a simple agent in an artificial environment. Rendering an approximation of a picture with random polygons.

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You are comparing two totally different things here.

Neural Networks are used for regression/classification - given a set of (x, y) examples, you want regress the unknown y for some given x.

Genetic algorithms are an optimization technique. Given a function f(x), you want to determine the x which minimizes/maximizes f(x).

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Indeed. They are really 'orthogonal' techniques. You can use a GA to find neural net weights and/or architecture. –  redcalx Oct 12 '09 at 21:10

In fact, you can use Genetic Algorithms as an alternative to the Backpropagation algorithm to update weights in Neural Nets. For an example of this refer to:
http://www.ai-junkie.com/ann/evolved/nnt1.html

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And also NEAT (cs.ucf.edu/~kstanley/neat.html). With a C# Implementation at (sharpneat.sourceforge.net) –  redcalx Oct 12 '09 at 21:08

Genetic Algorithms (usually) work on discrete data (enums, integer ranges, etc.). A typical application for GAs is searching a discrete space for a "good enough" solution when the only available alternative is a brute force search (evaluating all combinations).

Neural Networks on the other hand (usually) work on continuous data (floats, etc.). A typical application for NNs is function approximation where you've got a set X of inputs and a set Y of related outputs but the analytical function f : X → Y.

Of course there are thousands of variants of both so the line between them is somewhat blurred.

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There is no rule of thumb. In many cases you can formulate your problem to make use of either of them. Machine learning is still an active area of research and which learning model to use can be debatable.

GA's take sexy languages from evolution but you're waiting for your computer to stumble upon a solution through a random process. Study your data, make good assumptions, try to know what you want and pick an approach that can make good use of these. If your first choice gives poor results, know why it was so, and improve the algorithm itself or pick a better one.

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