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BAYESIAN MODEL COMPARISON AND THE BIC FOR REGRESSION MODELS

机译:贝叶斯模型比较和BIC用于回归模型

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In the signal processing literature, many methods have been proposed for solving the important model comparison and selection problem. However, most of these methods only find the most likely model or only work well under particular circumstances such as a large number of data points or a high signal-to-noise ratio (SNR). One of the most successful classes of methods is the Bayesian information criteria (BIC) and in this paper, we extend some of the recent work on the BIC. In particular, we develop methods in a full Bayesian framework which work well across a large/small number of data points and high/low SNR for either real- or complex-valued data originating from a regression model. Aside from selecting the most probable model, these rules can also be used for model averaging as they assign a probability to each candidate model. Through simulations on a polynomial trend model, we demonstrate that the proposed rules outperform other rules in terms of detecting the true model order, de-noising the noisy signal, and making predictions of unobserved data points. The simulation code is available online.
机译:在信号处理文献中,已经提出了许多方法来解决重要的模型比较和选择问题。然而,这些方法中的大多数仅在特定情况下发现最可能的模型或仅在诸如大量数据点或高信噪比(SNR)的情况下工作。最成功的方法之一是贝叶斯信息标准(BIC),在本文中,我们延长了最近的BIC工作。特别是,我们在全贝叶斯框架中开发方法,该方法在大量/少数数据点和高/低SNR中运行良好,用于源自回归模型的实际或复值数据。除了选择最可能的模型之外,这些规则还可用于平均模型平均,因为它们为每个候选模型分配了概率。通过模拟多项式趋势模型,我们证明所提出的规则在检测真正的模型顺序,取消通知嘈杂信号的方面表现出其他规则,并制定对未观察的数据点的预测。模拟代码可在线获取。

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