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Classification with imprecise likelihoods: A comparison of TBM, random set and imprecise probability approach

机译:具有不精确的可能性的分类:TBM,随机集和不精确概率方法的比较

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The problem is target classification in the circumstances where the likelihood models are imprecise. The paper highlights the differences between three suitable solutions: the Transferrable Belief model (TBM), the random set approach and the imprecise probability approach. The random set approach produces identical results to those obtained using the TBM classifier, provided that equivalent measurement models are employed. Similar classification results are also obtained using the imprecise probability theory, although the latter is more general and provides more robust framework for reasoning under uncertainty.
机译:问题是在可能性模型不精确的情况下的目标分类。 本文突出了三种合适解决方案之间的差异:可转移信念模型(TBM),随机设定方法和不精确的概率方法。 随机设定方法产生与使用TBM分类器获得的结果相同的结果,只要采用等效测量模型即可。 使用不精确的概率理论也可以获得类似的分类结果,尽管后者更加通用,但在不确定性下提供了更强大的推理框架。

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