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The rate of convergence for approximate Bayesian computation

机译:近似贝叶斯计算的收敛速度

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Approximate Bayesian Computation (ABC) is a popular computational method for likelihood-free Bayesian inference. The term “likelihood-free” refers to problems where the likelihood is intractable to compute or estimate directly, but where it is possible to generate simulated data $X$ relatively easily given a candidate set of parameters $heta$ simulated from a prior distribution. Parameters which generate simulated data within some tolerance $delta$ of the observed data $x^{*}$ are regarded as plausible, and a collection of such $heta$ is used to estimate the posterior distribution $heta|X=x^{*}$. Suitable choice of $delta$ is vital for ABC methods to return good approximations to $heta$ in reasonable computational time. While ABC methods are widely used in practice, particularly in population genetics, rigorous study of the mathematical properties of ABC estimators lags behind practical developments of the method. We prove that ABC estimates converge to the exact solution under very weak assumptions and, under slightly stronger assumptions, quantify the rate of this convergence. In particular, we show that the bias of the ABC estimate is asymptotically proportional to $delta^{2}$ as $deltadownarrow 0$. At the same time, the computational cost for generating one ABC sample increases like $delta^{-q}$ where $q$ is the dimension of the observations. Rates of convergence are obtained by optimally balancing the mean squared error against the computational cost. Our results can be used to guide the choice of the tolerance parameter $delta$.
机译:近似贝叶斯计算(ABC)是一种流行的计算方法,用于无可能性的贝叶斯推理。术语“无似然性”是指这样的问题,在这些问题中,直接计算或估计的可能性难以解决,但是在给定从先前分布模拟的参数$ theta候选集的情况下,可能相对容易地生成模拟数据$ X $ 。在观测数据$ x ^ {*} $的一定公差范围内生成模拟数据的参数被认为是合理的,并且使用此类$ theta $的集合来估计后验分布$ theta | X = x ^ {*} $。 $ $三角洲合适的选择是至关重要的ABC方法返回良好近似$ THETA在合理的计算时间$。尽管ABC方法在实践中被广泛使用,特别是在群体遗传学中,但是对ABC估计量的数学特性的严格研究落后于该方法的实际开发。我们证明,在非常弱的假设下,ABC估计收敛到精确解,而在稍强的假设下,ABC估计可以量化这种收敛的速率。特别地,我们表明ABC估计的偏差与$ delta ^ {2} $渐近成正比,作为$ delta downarrow 0 $。同时,生成一个ABC样本的计算成本会像$ delta ^ {-q} $一样增加,其中$ q $是观测值的维数。通过使均方误差与计算成本达到最佳平衡,可以获得收敛速度。我们的结果可用于指导公差参数$ delta $的选择。

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