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I'm going to say from the beginning that I am not a programmer, I have a cursory knowledge of different types of AI and am just a businessman building a web app.

Anyways, the web app I am investing in to develop is for a hobby of mine. There are many part manufacturers, product manufacturers, upgrade and addon manufacturers etc. for hardware/products in this hobby's industry. Currently, I am in the process of building a crowd sourced platform for people who are knowledgeable to go in and mark up compatibility between those parts as its not always clear cut if they are for example:

Manufacturer A makes a "A" class product, and manufacturer B makes upgrade/part that generally goes with class "A" products, but is for one reason or another not compatible with Manufacturer A's particular "A" class product.

However, a good chunk (>60%-70%) of the products/parts in the database can have their compatibility inferenced by their properties,

For example:

Part 1 is type "A" with "X" mm receiver and part 2 is also Type "A" with "X" mm interface and thus the two parts are compatible..

or

Part 1 is a 8mm gear, thus all bushings of 8mm from any manufacturer is compatible with part 1. Further more, all gears can only have compatibility relationships in the database with bushing and gear boxes, but there can be no meaningful compatibility between a gear and a rail, or receiver since those parts don't interface.

Now what I want is an AI to be able to learn from the decisions of the crowdsourced platform community and be able to inference compatibility for new parts/products based on their tagged attributes, what type of part they are etc.

What would be the best form of AI to tackle this? I was thinking a Expert System, but explicitly engineering all of the knowledge rules would be daunting because of the complex relations between literally tens of thousands of parts, hundreds of part types and many manufacturers.

Would a ANN (neural network) be ideal to learn from the many inputs/decisions of the crowdsource platform users?

Any help/input is much appreciated.

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closed as off topic by C. A. McCann, kapa, Steve Fenton, JYelton, Maerlyn Nov 1 '12 at 21:11

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You might want to have a look at programmers.stackexchange.com as this is probably better suited for the guys there. –  simbabque Nov 1 '12 at 15:58
    
@simbabque thanks, I'll post it there too and see what they have to say. –  ptpatil Nov 1 '12 at 16:21

2 Answers 2

up vote 1 down vote accepted

This sounds complex enough to perhaps justify trying to train a neural net at the task. Since decisions are already being crowdsourced, these decisions can be used to train the neural net.

The disadvantage would be that it's hard to achieve a result that is correct 100% at the time. When the NN makes a mistake, then that should be used as training data, and hope that the same mistake is avoided the future.. but that's pretty much the general disadvantage in neural net: It's hard to unerstand the logic behind a fully evolved NN, and sometimes even harder to correct said logic, if it is a result of something that the NN has learned over a long period of time.


Alternatively, a more traditional approach could also be tried, if you can figure out a way to define what makes parts incomplatible. Or perhaps by sorting them into compatibility groups (which i'm sure will be a long and daunting task.. but this is where the crowdsourcing comes in).


Not much of an answer, i know, but i hope it helps you produce some ideas on where to start

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Hmm, not achieving 100% correct results is not that big of a problem really, because the AI's purpose is to make compatibility suggestions in the future and thus reduce the amount of work involved for the crowdsourced community. These suggestions would then be voted on by the community and thus in the future the AI makes better suggestions. Thus the Neural Network sounds like a good idea to me. The black box aspect of it is a bit worrying, but I guess I have little choice. –  ptpatil Nov 1 '12 at 16:05
    
@user1154277 the black box aspect is possible to eliminate for someone who is involved with building and training it, but disassembling the thing and peeking inside it normally takes up so much time that i prefer to just let it (dys)function and make sure that any incorrect results with are fed to it as training data, maybe even more than once if necessary. –  Jarmund Nov 1 '12 at 16:11
    
Ah, ok, the function to feed mistakes as training data sounds easy enough to integrate into the crowdsource platform. Thanks, I might use Tremani or FANN for PHP to implement this. –  ptpatil Nov 1 '12 at 16:16

This sounds like a constraint satisfaction problem. I would attempt to solve it using a CSP solution such as min-conflicts.

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how would it learn anything though? All the constraints have to be known before hand correct? –  ptpatil Nov 1 '12 at 19:30
    
Typically, but you can express pretty complicated constraints fairly simply in many cases (even for pretty complex problems). I would approach it this way before trying a more complicated solution. –  Corey Nov 1 '12 at 19:34

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