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#134 Building Great Machine Learning Products at Opendoor

DataFramed

CHAPTER

How to Mitigate Data Sparsity Issues in Product Development

If you don't have much data or the data is not least sparse, that's just going to lead to a weak model. The second level when you move on to an ML product is to use a relatively simple, highly-parameterized model. Take those priors that you have about how the features should work and actually encode them to some extent in the model. Maybe allow your model to update as new data surfaces but don't force the model to learn the entirety of your belief set just from data.

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