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Higher-Order Factorization Machines

About

Factorization machines (FMs) are a supervised learning approach that can use second-order feature combinations even when the data is very high-dimensional. Unfortunately, despite increasing interest in FMs, there exists to date no efficient training algorithm for higher-order FMs (HOFMs). In this paper, we present the first generic yet efficient algorithms for training arbitrary-order HOFMs. We also present new variants of HOFMs with shared parameters, which greatly reduce model size and prediction times while maintaining similar accuracy. We demonstrate the proposed approaches on four different link prediction tasks.

Mathieu Blondel, Akinori Fujino, Naonori Ueda, Masakazu Ishihata• 2016

Related benchmarks

TaskDatasetResultRank
CTR PredictionCriteo
AUC0.8005
282
Click-Through Rate PredictionAvazu (test)
AUC0.7791
191
CTR PredictionAvazu
AUC77.01
144
Click-Through Rate PredictionCriteo (test)
AUC0.8067
47
CTR PredictionKDD 12
AUC0.7707
28
CTR PredictionMovieLens 1M
AUC0.8304
14
Inference Efficiency AnalysisSynthetic data n=100 fields, k=8 embedding size (evaluation)
Latency (ms)0.0049
13
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Other info

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