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On the estimation of independent binomial random variables using occurrence and sequential information

机译:利用出现和顺序信息估计独立二项​​式随机变量

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We re-visit(2) the age-old problem of estimating the parameters of a distribution from its observations. Traditionally, scientists and statisticians have attempted to obtain strong estimates by 'extracting' the information contained in the observations taken as a set. However, generally speaking, the information contained in the sequence in which the observations have appeared, has been ignored-i.e., except to consider dependence information as in the case of Markov models and n-gram statistics. In this paper, we present results which, to the best of our knowledge, are the first reported results, which consider how estimation can be enhanced by utilizing both the information in the observations and in their sequence of appearance. The strategy, known as sequence based estimation (SBE) works as follows. We first quickly allude to the results pertaining to computing the maximum likelihood estimates (MLE) of the data when the samples are taken individually. We then derive the corresponding MLE results when the samples are taken two-at-a-time, and then extend these for the cases when they are processed three-at-a-time, four-at-a-time etc. In each case, we also experimentally demonstrate the convergence of the corresponding estimates. We then suggest various avenues for future research, including those by which these estimates can be fused to yield a superior overall cumulative estimate of the parameter of the distribution, in pattern recognition (PR), and in other internet and compression applications. We believe that our new estimates have great potential for practitioners, especially when the cardinality of the observation set is small. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:我们重新考察(2)从其观测值估计分布参数的古老问题。传统上,科学家和统计学家试图通过“提取”一组观测值中包含的信息来获得强大的估计。但是,一般而言,观察结果出现的顺序中包含的信息已被忽略,即,除了像马尔可夫模型和n-gram统计数据那样考虑依赖信息之外,其他信息都被忽略了。在本文中,我们提供的结果是据我们所知,是第一个报告的结果,其中考虑了如何通过利用观测值中的信息及其出现顺序来增强估计。该策略称为基于序列的估计(SBE),其工作原理如下。首先,我们快速提到与分别获取样本时计算数据的最大似然估计(MLE)有关的结果。然后,当每次采样两次时,我们得出相应的MLE结果,然后将其扩展到每次采样3次,每次4次等的情况。在这种情况下,我们还通过实验证明了相应估计的收敛性。然后,我们为以后的研究提出了各种途径,包括可以将这些估计值融合在一起以产生模式参数(PR)以及其他Internet和压缩应用程序中分布参数的优异总体累积估计值的方法。我们认为,我们的新估计对从业者具有巨大的潜力,尤其是在观察集的基数较小时。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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