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What is the meaning of the last dimension of the input (Batch_size, Time granularity, Node number,2) of the network? #19
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Hi zhengxu, the input data is (N x T x V x D), where N is the number of training examples, T corresponds to the number of input steps, V denotes the number of nodes, and D represents the input feature dimension, here 2 consists of 1) the speed and 2) the time. |
About the second dim, what 'the time' means to be specific? |
The second dimension |
Hi, liyaguang @liyaguang thanks for sharing the great work. actually I don't think the second input feature dimensions is time. because I find the value is something like float in In scientific counting, the value is between [0,1] , mean value 0.497, max value 0.997, min value 0; so can you provide some evidence for the second feature dimenson please? thanks and best regards, |
Hi @yansicing , thanks for your explaination, but I still have questions here. You said "D is the |
Hi @chenz97, @mengmeng716, the time dimension refers to the normalized time in a day, e.g., 0:00 am will be 0, while 12pm will be 0.5. |
Hi @liyaguang , I got it. Thanks a lot. |
Hi, where can I get the introduction of the METR-LA and the PEMS-Bay dataset? What is the meaning of the last dimension of the input (Batch_size, Time granularity, Node number,2) of the network?
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