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Given two different graphs, can I use SVM to detect whether they are closely (not exactly) matching with a defined margin of error or threshold? If yes, what are the steps? How do I do it? Sorry I am very new to the field of machine learning and appreciate expertise help.

Reason I am asking is that I have a set of (x) inputs over (t) time that I would like to verify and match against predefined sets of (x) values over (t). This can be used in motion type detection using accelerometers on mobile devices.

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I read "graph matching" to be *Graph Matching*(en.wikipedia.org/wiki/Matching_%28graph_theory%29), you may want to change your title to be more like "Matching time series using support vector machines" – Dave Jul 31 '12 at 12:43
    
Thanks for the suggestion – Ali Jul 31 '12 at 13:06
up vote 0 down vote accepted

Taking the the first sentences of your two paragraphs: you just want to detect when a new instance is "close to" any one of the instances in your predefined set of time-series. The straightforward way to do that is to just do it; no need for fancy machine learning algorithms.

If you don't want to compare each instance against everything in you predefined set, then you could (possibly) try to distil it down to a fewer number prototypes, using a clustering or other unsupervised learning algorithm.

The SVM is typically used to solve data-driven classification problems where you have: two (or more) labelled data sets, each with many instances; each instance has a set of feature values, and you want to construct a classification model that will label subsequent data.

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Actually I think in my case SVM is more appropriate. What I intend to do is collect a set of training data, each of which can be labelled specifically. In the case of accelerometer motion type detection, I will have 10 samplings for running, 10 samplings for jumping and etc. Then I want to use those samples to train the system. At runtime, I would like to feed the system with dynamically collected samples and label them accordingly. It's a bit similar to hand-writing recognition, except that instead of handwriting images, I have graphs of movements over time. – Ali Jul 31 '12 at 13:25
    
Now I am confused on how to convert my data into inputs acceptable by SVM. For example in case of handwriting, how do they convert images into something that svm can process. Sorry I might sound very stupid, but I am very new to machine learning and I have very little time for implementation of the mentioned project. – Ali Jul 31 '12 at 13:26
    
You should add these additional details into your question. – Dave Jul 31 '12 at 14:07
    
In my opinion, feature selection, i.e. how to map the raw data into the data format required by the machine learning algorithm is exactly the key step in the whole process. – Dave Aug 1 '12 at 13:29

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