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majumderb avatar mbodhisattwa avatar shuyangli94 avatar

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recipe-personalization's Issues

About measuring personalization

Hi,
Thanks for your sharing. I have questions to ask you. How is the personalization evaluation calculated. Is it to pre train the evaluation model according to the training set, and then use the pre-trained model to evaluate the personalized performance in the evaluation part. And I can't find the code about this part. Can you tell me which file is related to the evaluation.
Thanks!

How can I preprocess the data?

There are only raw kaggle data(csv), not preprocessed data(pkl) to train the model.
Is there any addiational code to preprocess the data?

sample code

Hi, I have got the recipe_gen code from https://github.com/majumderb/recipe-personalization.git and food-com-recipes-and-user-interactions data. How to train and test the code? Do you have any sample code or README with details? Current README says "the code is tested on a Linux server (with NVIDIA GeForce Titan X Pascal / NVIDIA GeForce GTX 1080 Ti) with PyTorch 1.1.0 and Python 3.6."

Keras

Hi, there a keras version of the model I can look at for better understanding as I'm finding it a bit hard to replicate,

Loss value might be negative. Is it ok?

Hi, I've read your paper. It's very nice and interesting.
I would like to ask you a question about an evaluation of recipe level coherence using an absolute order network.

In your code at recipe-personalization/recipe_gen/analysis/absolute_order_teacher.py L77, the cosine similarity loss is calculated as:

cos_similarity = F.cosine_similarity(repr_1, repr_2, dim=1)

I replicated it and found that the loss value would be negative after training.
Is it acceptable?

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