fnctId=thesis,fnctNo=358
[김희영] Deep Latent Factor Model for Spatio-Temporal Forecasting
- 작성자
- scsc연구센터
- 저자
- Wonmo Koo; Eun-Yeol Ma; Heeyoung Kim
- 발행사항
- 발행일
- Accepted
- 저널명
- Technometrics
- 국문초록
- 영문초록
- Latent factor models can perform spatio-temporal forecasting (i.e., predicting future responses at unmeasured as well as measured locations) by modeling temporal dependence using latent factors and considering spatial dependence using a spatial prior on factor loadings. However, they may fail to capture complex spatio-temporal dependence because the latent factors are typically assumed to follow a classical linear time series model, such as a vector autoregressive model. In this paper, we propose a deep latent factor model for spatio-temporal forecasting that can model complex spatio-temporal dependence more flexibly by leveraging the high expressive power of a deep neural network. Specifically, the latent factors are modeled using a recurrent neural network and the factor loadings are modeled using a distance-based Gaussian process. The proposed model allows the number of latent factors to be inferred from the data using a beta-Bernoulli process, which enables computationally more efficient implementation compared to previous methods. We derive a stochastic variational inference algorithm for scalable inference of the proposed model and validate the model using simulated and real data examples.
- 일반텍스트
- 첨부파일