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An informational distance for estimating the faithfulness of a possibility distribution, viewed as a family of probability distributions, with respect to data

机译:相对于数据而言,用于估计可能性分布的真实性的信息距离,被视为概率分布的族

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摘要

An acknowledged interpretation of possibility distributions in quantitative possibility theory is in terms of families of probabilities that are upper and lower bounded by the associated possibility and necessity measures. This paper proposes an informational distance function for possibility distributions that agrees with the above-mentioned view of possibility theory in the continuous and in the discrete cases. Especially, we show that, given a set of data following a probability distribution, the optimal possibility distribution with respect to our informational distance is the distribution obtained as the result of the probability-possibility transformation that agrees with the maximal specificity principle. It is also shown that when the optimal distribution is not available due to representation bias, maximizing this possibilistic informational distance provides more faithful results than approximating the probability distribution and then applying the probability-possibility transformation. We show that maximizing the possibilistic informational distance is equivalent to minimizing the squared distance to the unknown optimal possibility distribution. Two advantages of the proposed informational distance function is that (i) it does not require the knowledge of the shape of the probability distribution that underlies the data, and (ii) it amounts to sum up the elementary terms corresponding to the informational distance between the considered possibility distribution and each piece of data. We detail the particular case of triangular and trapezoidal possibility distributions and we show that any unimodal unknown probability distribution can be faithfully upper approximated by a triangular distribution obtained by optimizing the possibilistic informational distance.
机译:在定量可能性理论中,对可能性分布的公认解释是,概率家族受相关的可能性和必要性度量的限制。本文提出了一种关于可能性分布的信息距离函数,该函数与上述关于连续和离散情况下的可能性理论的观点一致。尤其是,我们表明,给定一组遵循概率分布的数据,相对于我们的信息距离而言,最佳可能性分布是作为与最大特异性原理一致的概率-可能性转换结果而获得的分布。还表明,当由于表示偏差而无法获得最佳分布时,与近似概率分布然后应用概率可能性变换相比,最大化此可能的信息距离可提供更为真实的结果。我们表明,最大化可能的信息距离等同于最小化到未知最佳可能性分布的平方距离。所提出的信息距离函数的两个优点是:(i)不需要了解作为数据基础的概率分布的形状,并且(ii)等于对与距离之间的信息距离相对应的基本项求和。考虑了可能性分布和每条数据。我们详细介绍了三角形和梯形可能性分布的特殊情况,并且我们表明,任何单峰未知概率分布都可以通过优化可能的信息距离而获得的三角形分布来忠实地近似于上。

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