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동적 베이즈 모델 평균화×동적 변분 추론×
분야베이지안베이지안
계열Bayesian methodsBayesian methods
기원 연도20102014–2015
창시자Raftery, Karny & EttlerBayer, Osendorfer, Krishnan and colleagues
유형dynamic ensemble / model combinationBayesian approximate inference
원전Raftery, A. E., Karny, M., & Ettler, P. (2010). Online prediction under model uncertainty via dynamic model averaging: Application to a cold rolling mill. Technometrics, 52(1), 52-66. DOI ↗Krishnan, R. G., Shalit, U., & Sontag, D. (2015). Deep Kalman Filters. NIPS 2015 Workshop on Advances in Approximate Bayesian Inference. link ↗
별칭DMA, dynamic model averaging, time-varying BMA, online Bayesian model averagingsequential variational inference, temporal variational inference, variational inference for state-space models, DVI
관련66
요약Dynamic Bayesian Model Averaging (DMA) extends standard Bayesian model averaging to settings where the best predictive model may change over time. It maintains a probability distribution over a set of competing models and updates that distribution sequentially as new observations arrive, allowing model weights to evolve rather than remaining fixed across the entire sample.Dynamic variational inference extends the variational inference framework to sequential and time-series settings by positing a structured approximate posterior that respects the temporal ordering of latent states. It jointly learns a generative model of how hidden states evolve over time and a recognition network that maps observed sequences back to those latent states, optimising a sequential evidence lower bound (ELBO).
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ScholarGate방법 비교: Dynamic Bayesian Model Averaging · Dynamic Variational Inference. 2026-06-15에 다음에서 검색함: https://scholargate.app/ko/compare