Comments (4)
Hello @ssfootball04 , thank you very much for asking. We are very sorry that we made mistakes in the paper. Actually, for Place, the alpha should be 1.34 and the actual count is 62K. 184K is the number of data generated with alpha=6. We switched to a more extremely long-tailed distribution right before submission. This might be the reason we forgot to change these numbers.
One the other hand, the reason why the distribution in the log-log space is not strict linear is that first, we use numpy to generate random numbers, second, during data generation, the actual min number of the data is 25. then for each class, we take 20 samples to construct the validation set. This process will also affect the log-log distribution.
Does that make sense?
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Yes I understand, thank you for your reply. One further question, just to be sure, for ImageNet, is alpha=6 or alpha=1.34 ?
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@ssfootball04 Yes, I think it is true. Sorry for the late reply!
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Hi, thanks for your great work. I'm also confused about the Pareto distribution. Are you using the following PDF of Pareto distribution to decide the number of images for each class? If so, do you mean f(1)=1280 and f(1000)=5 with \alpha=6 and x_m=1? That seems doesn't make sense.
Have you solve this problem? @ssfootball04
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Related Issues (20)
- Reproducing OLTR results HOT 3
- Stage 2 multi GPU
- why fix all parameters except self attention parameters? HOT 4
- Table 2 results HOT 2
- Pretrained Weights for Places_LT?
- the use of fc layer HOT 2
- the accuracy of the train and val HOT 2
- how to compute centroids?
- Why the input dimension of the `fc_spatial` layer in `ModulatedAttLayer` is 7*7*in_channel? HOT 1
- Many_shot_accuracy_top1: nan on my own dataset HOT 1
- Revised F-measure results for other models in your paper
- Applications for face recognition
- Error when running stage_1.py under Places_LT
- Unable to reproduce baseline result on ImageNet-LT HOT 1
- BUG: stage1 test error!!
- Could you please give me an example of arranging ILSVRC2014 dataset? HOT 7
- Implementation on Inat-18
- About Class aware sampler
- The role of untrained FC(add_fc)
- The question about the version of Places_LT
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