I'm interested in classifying recipes programmatically based on a statistical analysis of various properties of the recipe. In other words, I want to classify a recipe as `Breakfast`

, `Lunch`

, `Dinner`

or `Dessert`

without any user input.

The properties I have available are:

- The recipe title (such as
*chicken salad*) - The recipe description (arbitrary text describing the recipe)
- The cooking method (the steps involved in preparing this recipe)
- Prep and cook times
- Each ingredient in the recipe, and its amount

The good news is I have a sample set of about 10,000 recipes that are already classified, and I can use these data to *teach* my algorithm. My idea is to look for patterns, such as if the word *syrup* appears statistically more frequently in *breakfast* recipes, or any recipe that calls for over *1 cup of sugar* is 90% likely to be a *dessert*. I figure if I analyze the recipe across several dimensions, and then tweak the weights as appropriate, I can get something that's decently accurate.

What would be some good algorithms to investigate while approaching this problem? Would something like k-NN be helpful, or are there ones betters suited to this task?