TY - GEN
T1 - Causally Informed Factorization Machines
AU - Li, Mao Lin
AU - Candan, K. Selçuk
AU - Sapino, Maria Luisa
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - Factorization machines (FMs) are a class of general predictors for sparse data. One major benefit of FMs is their ability to capture the interactions across features when making recommendations. In this paper, we note that the interactions captured by existing FMs generally represent correlations in the data and we argue that such correlations, unless informed by the true causality structures underlying the data, may be spurious and may result in unwanted bias. To tackle this challenge, we propose a Causally-Informed Factorization Machine (CIFM) model that introduces a novel causal injection mechanism. CIFM leverages a priori causal knowledge, described in the form of a causal graph, to boost the representational ability of FMs and achieve better predictions. Specifically, given a (potentially learned) causal graph which describes the causal relationships among features, CIFM distills this structural information into a pairwise causal impact matrix and guides the learning process to ensure that the learned representations capture those relationships that are consistent with the causal relationships. Extensive evaluations of CIFM, along with its integrations with NeuralFM and DeepFM, conducted with synthetic and real-world data sets, demonstrate the effectiveness of causal injection in generating better recommendations.
AB - Factorization machines (FMs) are a class of general predictors for sparse data. One major benefit of FMs is their ability to capture the interactions across features when making recommendations. In this paper, we note that the interactions captured by existing FMs generally represent correlations in the data and we argue that such correlations, unless informed by the true causality structures underlying the data, may be spurious and may result in unwanted bias. To tackle this challenge, we propose a Causally-Informed Factorization Machine (CIFM) model that introduces a novel causal injection mechanism. CIFM leverages a priori causal knowledge, described in the form of a causal graph, to boost the representational ability of FMs and achieve better predictions. Specifically, given a (potentially learned) causal graph which describes the causal relationships among features, CIFM distills this structural information into a pairwise causal impact matrix and guides the learning process to ensure that the learned representations capture those relationships that are consistent with the causal relationships. Extensive evaluations of CIFM, along with its integrations with NeuralFM and DeepFM, conducted with synthetic and real-world data sets, demonstrate the effectiveness of causal injection in generating better recommendations.
KW - Causality
KW - Factorization Machines
UR - http://www.scopus.com/inward/record.url?scp=85218007178&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85218007178&partnerID=8YFLogxK
U2 - 10.1109/BigData62323.2024.10825754
DO - 10.1109/BigData62323.2024.10825754
M3 - Conference contribution
AN - SCOPUS:85218007178
T3 - Proceedings - 2024 IEEE International Conference on Big Data, BigData 2024
SP - 448
EP - 455
BT - Proceedings - 2024 IEEE International Conference on Big Data, BigData 2024
A2 - Ding, Wei
A2 - Lu, Chang-Tien
A2 - Wang, Fusheng
A2 - Di, Liping
A2 - Wu, Kesheng
A2 - Huan, Jun
A2 - Nambiar, Raghu
A2 - Li, Jundong
A2 - Ilievski, Filip
A2 - Baeza-Yates, Ricardo
A2 - Hu, Xiaohua
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2024 IEEE International Conference on Big Data, BigData 2024
Y2 - 15 December 2024 through 18 December 2024
ER -