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Learning undirected graphical models using persistent sequential Monte Carlo

机译:使用持久性顺序蒙特卡洛学习无向图形模型

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Along with the popular use of algorithms such as persistent contrastive divergence, tempered transition and parallel tempering, the past decade has witnessed a revival of learning undirected graphical models (UGMs) with sampling-based approximations. In this paper, based upon the analogy between Robbins-Monro's stochastic approximation procedure and sequential Monte Carlo (SMC), we analyze the strengths and limitations of state-of-the-art learning algorithms from an SMC point of view. Moreover, we apply the rationale further in sampling at each iteration, and propose to learn UGMs using persistent sequential Monte Carlo (PSMC). The whole learning procedure is based on the samples from a long, persistent sequence of distributions which are actively constructed. Compared to the above-mentioned algorithms, one critical strength of PSMC-based learning is that it can explore the sampling space more effectively. In particular, it is robust when learning rates are large or model distributions are high-dimensional and thus multi-modal, which often causes other algorithms to deteriorate. We tested PSMC learning, comparing it with related methods, on carefully designed experiments with both synthetic and real-world data. Our empirical results demonstrate that PSMC compares favorably with the state of the art by consistently yielding the highest (or among the highest) likelihoods. We also evaluated PSMC on two practical tasks, multi-label classification and image segmentation, in which PSMC displays promising applicability by outperforming others.
机译:随着算法的广泛使用,例如持续的对比发散,回火过渡和平行回火,过去十年见证了基于采样的近似学习无向图形模型(UGM)的复兴。在本文中,基于Robbins-Monro的随机逼近过程和顺序蒙特卡罗(SMC)之间的类比,我们从SMC的角度分析了最新学习算法的优势和局限性。此外,我们在每次迭代的采样中进一步应用原理,并建议使用持久性顺序蒙特卡洛(PSMC)学习UGM。整个学习过程是基于长期,持续分布的序列中的样本,这些样本被主动构建。与上述算法相比,基于PSMC的学习的一项关键优势在于它可以更有效地探索采样空间。特别是,当学习率很高或模型分布是高维的,因此是多模态的时,它会很健壮,这通常会导致其他算法恶化。我们在精心设计的综合和真实数据实验上测试了PSMC学习,并将其与相关方法进行了比较。我们的经验结果表明,PSMC始终如一地产生最高(或最高)可能性,从而与现有技术相媲美。我们还评估了PSMC的两项实际任务,即多标签分类和图像分割,在这些任务中,PSMC表现出了比其他产品更好的应用前景。

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