# Suggestions on better contextual lookup algorithm?

I am developing an application that provides contextual knowledge lookup. The application is in its design phase.

I need to know whether a simple graph structure and a traversal algorithm would be sufficient or whether I should go with a neural network. I want to go with the most long-term solution.

I am thinking of representing individual concepts with simple nodes. Suppose I want to lookup John's hair color (which is black). I think I need four concept nodes: John, hair, color, and black. Here are two algorithms--which one is best suited for my task?

Traversal lookup algorithm

See this diagram for reference: http://chadjohnson.ath.cx:8080/static/concept%5Fmap.png

1. Input (something like this), in order: 1. person 2. john 3. hair 4. color
2. Find the graph node corresponding to 'person'.
3. Look at all nodes adjacent to the 'person' node, and find the 'john' node.
4. Look at all nodes adjacent to the 'john' node, and find a node that has links to both the 'hair' node and the 'color' node.

Another option would be to represent 'hair color' as its own concept node, making it so 'blond hair' is a 'hair color' concept. Then step (4) would become

Look at all nodes adjacent to the 'john' node, and find a node that is a 'hair color' concept.

Neural network algorithm

1. Input, in no particular order: 1. person 2. john 3. hair 4. color
2. Train the network to map these particular inputs to the concept 'blond hair'.

Any feedback would be appreciated. Thanks!

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A milestone goal would be the ability to answer the question, "What color is John's hair?"

So, I want to be able to store the concept of 'person,' concepts of different people, the concept of hair, the concept of color, concepts of multiple different colors, and then I want to link different people to different hair colors.

Once this knowledge and their associations are in place, I'd like to be able to look up a given person's hair color, given (inputs) a reference to a person, the concept of hair, and the concept of color.

That is where my question comes into play: traversal vs. a neural network.

In case it changes the way you answer, future milestones would be:

1. the computer learning a language's grammar from scratch
2. a computer to answer questions using its knowledge of a language's grammar
3. a computer to translate sentences from one language to another, correctly, based on context and existing knowledge. In its most simple form, it would store a concept, associate a word for a given language with the concept, and associate another word for another language with that same concept. To translate, the word for the target language associated with the concept would be found and returned (see http://chadjohnson.ath.cx:8080/static/language%5Ftranslation.png).
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I doubt you'll get anything reasonable out of neural networks in this case. Graph based reasoning is a more likely match if I understand correctly what you are trying to do. It's hard to suggest anything specific without knowing the details of the task you are trying to solve.

Possibly something in the area of querying of semistructured databases is relevant.

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See comment here: stackoverflow.com/questions/1835856/… – Chad Johnson Dec 3 '09 at 19:40
Do you have any thoughts? – Chad Johnson Dec 4 '09 at 22:48