QuaPy is an open-source framework for performing quantification (a.k.a. supervised prevalence estimation), written in Python. Quantification is the task of training quantifiers via supervised learning, where a quantifier is a predictor that estimates the relative frequencies (a.k.a. prevalence values) of the classes of interest in a sample of unlabelled data. While quantification can be trivially performed by applying a standard classifier to each unlabelled data item and counting how many data items have been assigned to each class, it has been shown that this "classify and count" method is outperformed by methods specifically designed for quantification. QuaPy provides implementations of a number of baseline methods and advanced quantification methods, of routines for quantification-oriented model selection, of several broadly accepted evaluation measures, and of robust evaluation protocols routinely used in the field. QuaPy also makes available datasets commonly used for testing quantifiers, and offers visualization tools for facilitating the analysis and interpretation of the results. The software is open-source and publicly available under a BSD-3 licence via https://github.com/HLT-ISTI/QuaPy, and can be installed via pip (https://pypi.org/project/QuaPy/)
翻译:QuaPy是用Python撰写的量化(a.k.a.a.受监督的流行估计)的开放源码框架。 量化是通过受监督的学习培训量化人的任务。 在这种学习中,一个量化人是一个预测者,预测了未贴标签数据样本中各利益类别相对频率(a.k.a.b.流行值)的估算。虽然量化可以微不足道地进行,办法是对每个未贴标签的数据项目应用标准分类器,并计算分配给每一类的数据项目的数量,但已经表明,这种“分类和计算”方法通过专门为量化而设计的方法,已经超过了这种“分类和计算”方法。QuaPy提供若干基线方法和高级量化方法的实施,以量化为导向的模式选择的例行程序,若干广泛接受的评价措施,以及外地通常使用的稳健的评价协议。QuaPypypycationalationalation, QuaPSD/PuaIPrus, 通过http://gius/gius/piroup/proalitoalQ), 软件是开放源和公开提供的,通过http://gius/pius/pius/pus/pus/pus/pubus/pus/pus/pus/pus/pus/pus/pubus/pusmus/pilp