比较贝叶斯分层模型的深度学习方法。

IF 7.6 1区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Lasse Elsemüller, Martin Schnuerch, Paul-Christian Bürkner, Stefan T Radev
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引用次数: 0

摘要

贝叶斯模型比较(BMC)提供了一种原则性方法,用于评估相互竞争的计算模型的相对优点,并将不确定性传播到模型选择决策中。然而,由于分层模型的高维嵌套参数结构,对于流行的分层模型来说,贝叶斯模型比较往往难以实现。为了解决这一难题,我们提出了一种深度学习方法,用于在任意一组可实例化为概率程序的分层模型上执行 BMC。由于我们的方法可以实现摊销推理,因此可以高效地重新估计模型的后验概率,并在任何实际数据应用之前快速进行性能验证。在一系列广泛的验证研究中,我们将我们的方法与最先进的桥接采样方法进行了性能对比,并在所有 BMC 设置中展示了出色的摊销推断。然后,我们通过比较四种分层证据积累模型展示了我们的方法,这些模型之前由于部分隐含似然而被认为在 BMC 中难以实现。此外,我们还展示了如何利用迁移学习来提高训练效率。我们提供了所有分析的可重现代码以及我们方法的开源实现。(PsycInfo Database Record (c) 2024 APA, 版权所有)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep learning method for comparing Bayesian hierarchical models.

Bayesian model comparison (BMC) offers a principled approach to assessing the relative merits of competing computational models and propagating uncertainty into model selection decisions. However, BMC is often intractable for the popular class of hierarchical models due to their high-dimensional nested parameter structure. To address this intractability, we propose a deep learning method for performing BMC on any set of hierarchical models which can be instantiated as probabilistic programs. Since our method enables amortized inference, it allows efficient re-estimation of posterior model probabilities and fast performance validation prior to any real-data application. In a series of extensive validation studies, we benchmark the performance of our method against the state-of-the-art bridge sampling method and demonstrate excellent amortized inference across all BMC settings. We then showcase our method by comparing four hierarchical evidence accumulation models that have previously been deemed intractable for BMC due to partly implicit likelihoods. Additionally, we demonstrate how transfer learning can be leveraged to enhance training efficiency. We provide reproducible code for all analyses and an open-source implementation of our method. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

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来源期刊
Psychological methods
Psychological methods PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
13.10
自引率
7.10%
发文量
159
期刊介绍: Psychological Methods is devoted to the development and dissemination of methods for collecting, analyzing, understanding, and interpreting psychological data. Its purpose is the dissemination of innovations in research design, measurement, methodology, and quantitative and qualitative analysis to the psychological community; its further purpose is to promote effective communication about related substantive and methodological issues. The audience is expected to be diverse and to include those who develop new procedures, those who are responsible for undergraduate and graduate training in design, measurement, and statistics, as well as those who employ those procedures in research.
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