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A method to implement continuous characters in digital identification keys that estimates the probability of an annotation

机译:一种在数字标识密钥中实现连续字符的方法,该方法可估计注释的可能性

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Premise Species identification is vital to many disciplines. Digital technology has improved identification tools, but the direct use of characters with continuous states has yet to be fully realized. To achieve full use of continuous characters for identification, I propose a classifier that calculates a posterior probability (degree of belief) in possible name assignments and an estimate of the relative evidence for the candidate annotations. Methods A model for a species is defined using continuous morphological characters, and an algorithm for identification with a naive Bayesian classifier, using the model, is presented. A method of estimating the strength of evidence for candidate species is also described. Results The proposed method is applied in two example identifications: native vs. invasive Myriophyllum in North America and vegetative Rhipidocladum bamboos in Mexico. In each instance, the new method provides a probability and estimate of the strength of the probability to enhance the name assignment in situations where taxa are difficult to differentiate using discrete character states. Discussion Naive Bayesian classifiers take advantage of the predictive information inherent in continuous morphological characters. Application of this methodology to plant taxonomy advances our ability to leverage digital technology for improved interactive taxonomic identifications.
机译:前提物种识别对许多学科至关重要。数字技术已经改进了识别工具,但是具有连续状态的字符的直接使用尚未完全实现。为了充分利用连续字符进行识别,我提出了一种分类器,该分类器计算可能的名称分配中的后验概率(置信度),并估算候选注释的相对证据。方法使用连续的形态学特征定义一个物种的模型,并提出一种利用朴素贝叶斯分类器进行识别的算法。还描述了一种评估候选物种证据强度的方法。结果所提出的方法可用于两个实例鉴定:北美的原生与入侵桃金娘和墨西哥的无性Rhipidocladum竹子。在每种情况下,在分类单元难以使用离散字符状态区分的情况下,新方法都提供了概率和概率强度估计,以增强名称分配。讨论朴素贝叶斯分类器利用了连续形态特征中固有的预测信息。这种方法在植物分类学中的应用提高了我们利用数字技术改进交互式分类学鉴定的能力。

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