Active Sequential Posterior Estimation for Sample-Efficient Simulation-Based Inference
Computer simulations have long presented the exciting possibility of scientific insight into complex real-world processes. Despite the power of modern computing, however, it remains challenging to systematically perform inference under simulation models. This has led to the rise of simulation-based...
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Zusammenfassung: | Computer simulations have long presented the exciting possibility of
scientific insight into complex real-world processes. Despite the power of
modern computing, however, it remains challenging to systematically perform
inference under simulation models. This has led to the rise of simulation-based
inference (SBI), a class of machine learning-enabled techniques for approaching
inverse problems with stochastic simulators. Many such methods, however,
require large numbers of simulation samples and face difficulty scaling to
high-dimensional settings, often making inference prohibitive under
resource-intensive simulators. To mitigate these drawbacks, we introduce active
sequential neural posterior estimation (ASNPE). ASNPE brings an active learning
scheme into the inference loop to estimate the utility of simulation parameter
candidates to the underlying probabilistic model. The proposed acquisition
scheme is easily integrated into existing posterior estimation pipelines,
allowing for improved sample efficiency with low computational overhead. We
further demonstrate the effectiveness of the proposed method in the travel
demand calibration setting, a high-dimensional inverse problem commonly
requiring computationally expensive traffic simulators. Our method outperforms
well-tuned benchmarks and state-of-the-art posterior estimation methods on a
large-scale real-world traffic network, as well as demonstrates a performance
advantage over non-active counterparts on a suite of SBI benchmark
environments. |
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DOI: | 10.48550/arxiv.2412.05590 |