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首页> 外文期刊>Frontiers of earth science >The quest for conditional independence in prospectivity modeling: weights-of-evidence, boost weights-of-evidence, and logistic regression
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The quest for conditional independence in prospectivity modeling: weights-of-evidence, boost weights-of-evidence, and logistic regression

机译:对前瞻性建模中条件独立性的追求:证据权重,增强证据权重和逻辑回归

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The objective of prospectivity modeling is prediction of the conditional probability of the presence T = 1 or absence T = 0 of a target T given favorable or prohibitive predictors B, or construction of a two classes 0,1 classification of T. A special case of logistic regression called weights-of-evidence (WofE) is geologists' favorite method of prospectivity modeling due to its apparent simplicity. However, the numerical simplicity is deceiving as it is implied by the severe mathematical modeling assumption of joint conditional independence of all predictors given the target. General weights of evidence are explicitly introduced which are as simple to estimate as conventional weights, i.e., by counting, but do not require conditional independence. Complementary to the regression view is the classification view on prospectivity modeling. Boosting is the construction of a strong classifier from a set of weak classifiers. From the regression point of view it is closely related to logistic regression. Boost weights-of-evidence (BoostWofE) was introduced into prospectivity modeling to counterbalance violations of the assumption of conditional independence even though relaxation of modeling assumptions with respect to weak classifiers was not the (initial) purpose of boosting. In the original publication of BoostWofE a fabricated dataset was used to "validate" this approach. Using the same fabricated dataset it is shown that BoostWofE cannot generally compensate lacking conditional independence whatever the consecutively processing order of predictors. Thus the alleged features of BoostWofE are disproved by way of counterexamples, while theoretical findings are confirmed that logistic regression including interaction terms can exactly compensate violations of joint conditional independence if the predictors are indicators.
机译:前瞻性建模的目的是在给定有利或禁止性预测变量B的情况下,预测目标T存在T = 1或不存在T = 0的条件概率,或构造T的两类0,1分类。逻辑回归称为证据权重(WofE),由于其表面上的简单性,是地质学家最喜欢的前瞻性建模方法。但是,数值简单性是诱人的,因为严格的数学建模假设暗示了给定目标的所有预测变量的联合条件独立性。明确引入了一般的证据权重,它们与常规权重一样容易估算,即通过计数,但不需要条件独立性。与回归视图互补的是前瞻性建模的分类视图。提升是从一组弱分类器构造一个强分类器。从回归的角度来看,它与逻辑回归密切相关。将增强证据权重(BoostWofE)引入前瞻性建模中,以抵消对条件独立性假设的违反,即使针对弱分类器的建模假设的放松并不是增强的(最初)目的。在BoostWofE的原始出版物中,使用捏造的数据集来“验证”此方法。使用相同的预制数据集表明,无论预测变量的连续处理顺序如何,BoostWofE通常都无法弥补条件独立性的不足。因此,BoostWofE的所谓特征通过反例得以证明,而理论发现则证实,如果预测变量是指标,则包括交互作用项在内的逻辑回归可以准确地弥补对联合条件独立性的侵犯。

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