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Comment #26

@ghost

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If you apply a predetermined random pattern of sign flipping to an input array followed by the fast (Walsh) Hadamard transform you get a random projection of the input data. You can use that for unbiased dimension reduction or increase. Repeat the process for better quality.
The outputs of the random projection strongly follow the Gaussian distribution because the central limit theorem applies not only to sums but also sums and differences.
Anyway if you binarize the outputs of the the random projection you have a locality sensitive hash. If you interpret the output bits as +1,-1 you can multiply each bit by a weight and sum to get a recalled value. To train, recall and calculate the error. Divide by the number of bits. Then add or subtract that from each weight as appropriate to make the error zero. In that way you have created an associative memory.
Because the error has been distributed non-similar input will result in the error fragments being multiplied by arbitrary +1,-1 hash bit values. Again you can invoke the central limit theorem to see the error fragments sum to zero mean, low level Gaussian noise.
The memory capacity is just short of the number of bits. If you use the system under capacity you get some repetition code error correction.
Basically when you store an new memory in that system all the previous memories get contaminate by a little bit of Gaussian noise. However for an under capacity set of training data you can drive that noise to zero by repeated presentation.
This also provides a means to understand extreme learning machines and reservoir computing as associative memory.

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