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Neural Factorization Machines for Sparse Predictive Analytics
[article]
2017
arXiv
pre-print
Many predictive tasks of web applications need to model categorical variables, such as user IDs and demographics like genders and occupations. To apply standard machine learning techniques, these categorical predictors are always converted to a set of binary features via one-hot encoding, making the resultant feature vector highly sparse. To learn from such sparse data effectively, it is crucial to account for the interactions between features. Factorization Machines (FMs) are a popular
arXiv:1708.05027v1
fatcat:7owdrtpnpbhxpjpmik6gbmrtxq