Incorporating Heterogeneous User Behaviors and Social Influences for
Predictive Analysis
- URL: http://arxiv.org/abs/2207.11776v1
- Date: Sun, 24 Jul 2022 17:05:37 GMT
- Title: Incorporating Heterogeneous User Behaviors and Social Influences for
Predictive Analysis
- Authors: Haobing Liu, Yanmin Zhu, Chunyang Wang, Jianyu Ding, Jiadi Yu, Feilong
Tang
- Abstract summary: We aim to incorporate heterogeneous user behaviors and social influences for behavior predictions.
This paper proposes a variant of Long-Short Term Memory (LSTM) which can consider context while a behavior sequence.
A residual learning-based decoder is designed to automatically construct multiple high-order cross features based on social behavior representation.
- Score: 32.31161268928372
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Behavior prediction based on historical behavioral data have practical
real-world significance. It has been applied in recommendation, predicting
academic performance, etc. With the refinement of user data description, the
development of new functions, and the fusion of multiple data sources,
heterogeneous behavioral data which contain multiple types of behaviors become
more and more common. In this paper, we aim to incorporate heterogeneous user
behaviors and social influences for behavior predictions. To this end, this
paper proposes a variant of Long-Short Term Memory (LSTM) which can consider
context information while modeling a behavior sequence, a projection mechanism
which can model multi-faceted relationships among different types of behaviors,
and a multi-faceted attention mechanism which can dynamically find out
informative periods from different facets. Many kinds of behavioral data belong
to spatio-temporal data. An unsupervised way to construct a social behavior
graph based on spatio-temporal data and to model social influences is proposed.
Moreover, a residual learning-based decoder is designed to automatically
construct multiple high-order cross features based on social behavior
representation and other types of behavior representations. Qualitative and
quantitative experiments on real-world datasets have demonstrated the
effectiveness of this model.
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