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XBM code regarding #43
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I don't know myself but I'm really interested in this concept too, I started my own implementation of it if you want I can share it here when its done if you are still interested in it. @bnu-wangxun any timeframe on release? |
XBM is simple and easy to implement following our pseudo-code. We may not release code very soon (in 1 month). But just as we said in our paper, we don't use any tricks in experiments, so reproducing our results is not difficult based on this repo. Note that the learning rate is probably the most important hyper-parameter. Select the best learning rate by scanning it with log-scale (1e-5, 3e-5, 1e-4, 3e-4, etc.). Thanks for your interest and feel free to ask any questions. |
yes indeed its really not that difficult, thanks for the amazing work! Is the paper accepted yet? Last status was under review on arxiv? @ZhangHZ9 @bnu-wangxun |
@mattzque In fact, our XBM was submitted to CVPR and supposed to be accepted due high review scores . |
This is a pretty cool idea, so I tried implementing it. If anyone's interested, you can check it out here. |
@KevinMusgrave your pytorch-metric-learning is really a great repo for DML. |
@KevinMusgrave 1、 the memory size, What is the value to set (my ` for epoch in epochs: |
@tejavoo XBM: |
Hey when would the XBM code be released ? Is it possible to get it before you post it here (If it takes time) ? Thanks !
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