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An ensemble of ordered logistic regression and random forest for child garment size matching

机译:用于儿童服装尺码匹配的有序逻辑回归和随机森林的集合

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摘要

Size fitting is a significant problem for online garment shops. The return rates due to size misfit are very high. We propose an ensemble (with an original and novel definition of the weights) of ordered logistic regression and random forest (RF) for solving the size matching problem, where ordinal data should be classified. These two classifiers are good candidates for combined use due to their complementary characteristics. A multivariate response (an ordered factor and a numeric value assessing the fit) was considered with a conditional random forest. A fit assessment study was carried out with 113 children. They were measured using a 3D body scanner to obtain their anthropometric measurements. Children tested different garments of different sizes, and their fit was assessed by an expert. Promising results have been achieved with our methodology. Two new measures have been introduced based on RF with multivariate responses to gain a better understanding of the data. One of them is an intervention in prediction measure defined locally and globally. It is shown that it is a good alternative to variable importance measures and it can be used for new observations and with multivariate responses. The other proposed tool informs us about the typicality of a case and allows us to determine archetypical observations in each class.
机译:尺码合身是在线服装商店的重要问题。由于尺寸不合适而导致的退货率很高。我们提出了有序逻辑回归和随机森林(RF)的集合(具有权重的原始和新颖定义)来解决大小匹配问题,其中应对有序数据进行分类。这两个分类器具有互补性,因此很适合组合使用。考虑了条件随机森林的多变量响应(排序因子和评估拟合的数值)。对113名儿童进行了适合度评估研究。使用3D人体扫描仪对其进行了测量,以获得人体测量值。孩子们测试了不同尺寸的不同服装,并由专家评估了它们的合身性。我们的方法已经取得了可喜的成果。已经基于RF引入了两个具有多变量响应的新度量,以更好地理解数据。其中之一是对本地和全局定义的预测措施的干预。结果表明,它是变量重要性度量的良好替代方案,可用于新的观察结果和多变量响应。提出的另一个工具可告知我们案件的典型性,并允许我们确定每个类别中的原型观察结果。

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