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Conditional probability distribution (CPD) method in temperature based death time estimation: Error propagation analysis

机译:基于温度的死亡时间估计中的条件概率分布(CPD)方法:误差传播分析

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Bayesian estimation applied to temperature based death time estimation was recently introduced as conditional probability distribution or CPD-method by Biermann and Potente. The CPD-method is useful, if there is external information that sets the boundaries of the true death time interval (victim last seen alive and found dead). CPD allows computation of probabilities for small time intervals of interest (e.g. no-alibi intervals of suspects) within the large true death time interval. In the light of the importance of the CPD for conviction or acquittal of suspects the present study identifies a potential error source. Deviations in death time estimates will cause errors in the CPD-computed probabilities. We derive formulae to quantify the CPD error as a function of input error. Moreover we observed the paradox, that in cases, in which the small no-alibi time interval is located at the boundary of the true death time interval, adjacent to the erroneous death time estimate, CPD-computed probabilities for that small no-alibi interval will increase with increasing input deviation, else the CPD-computed probabilities will decrease. We therefore advise not to use CPD if there is an indication of an error or a contra-empirical deviation in the death time estimates, that is especially, if the death time estimates fall out of the true death time interval, even if the 95%-confidence intervals of the estimate still overlap the true death time interval.
机译:Biermann和Potente最近将贝叶斯估计应用于基于温度的死亡时间估计中,将其作为条件概率分布或CPD方法。如果存在外部信息来设置真实死亡时间间隔(受害者最后一次活着并发现死亡)的边界,则CPD方法很有用。 CPD允许在较大的真实死亡时间间隔内计算感兴趣的较小时间间隔(例如,犯罪嫌疑人的无居所间隔)的概率。鉴于CPD对于定罪或无罪开释的重要性,本研究确定了潜在的错误来源。死亡时间估计值的偏差将导致CPD计算的概率出现错误。我们得出公式来量化CPD误差作为输入误差的函数。此外,我们观察到了一个悖论,在这种情况下,如果较小的无alibi时间间隔位于真实死亡时间间隔的边界处,并且与错误的死亡时间估算值相邻,则该较小的无alibi时间间隔的CPD计算概率将随着输入偏差的增加而增加,否则CPD计算的概率将减少。因此,如果在死亡时间估算中有错误或相反经验偏差的迹象,特别是如果死亡时间估算值超出了真实的死亡时间间隔,即使95%的死亡时间估算值超出了真实的死亡时间间隔,我们建议不要使用CPD估计的置信区间仍与真实死亡时间区间重叠。

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