I have a database of recipes which is essentially structured as a list of ingredients and their associated quantities. If you are given a recipe how would you identify similar recipes allowing for variations and omissions? For example using milk instead of water, or honey instead of sugar or entirely omitting something for flavour.

The current strategy is to do multiple inner joins for combinations of the main ingredients but this is can be exceedingly slow with a large database. Is there another way to do this? Something to the equivalent of perceptual hashing would be ideal!


How about cosine similarity?

This technique is commonly used in Machine Learning for text recognition as a similarity measure. With it, you can calculate the distance between two texts (actually, between any two vectors) which can be interpreted as how much are those texts alike (the closer, the more alike).

Take a look at this great question that explains cosine similarity in a simple way. In general, you could use any similarity measure to obtain a distance to compare your recipe. This article talks about different similarity measures, you can check it out if you wish to know more.

  • Ok cool! Let me explore this approach. – Peter Pudaite Jun 16 '17 at 19:01

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.