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Constructivism Learning: A Learning Paradigm for Transparent Predictive Analytics

机译:建构主义学习:透明预测分析的学习范式

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Developing transparent predictive analytics has attracted significant research attention recently. There have been multiple theories on how to model learning transparency but none of them aims to understand the internal and often complicated modeling processes. In this paper we adopt a contemporary philosophical concept called "constructivism", which is a theory regarding howhuman learns. We hypothesize that a critical aspect of transparent machine learning is to "reveal" model construction with two key process: (1) the assimilation process where we enhance our existing learning models and (2) the accommodation process where we create new learning models. With this intuition we propose a new learning paradigm, constructivism learning, using a Bayesian nonparametric model to dynamically handle the creation of new learning tasks. Our empirical study on both synthetic and real data sets demonstrate that the new learning algorithm is capable of delivering higher quality models (as compared to base lines and state-of-the-art) and at the same time increasing the transparency of the learning process.
机译:发展透明​​预测分析最近引起了显着的研究。有多种关于如何模拟学习透明度的理论,但其中没有一个旨在理解内部和经常复杂的建模流程。在本文中,我们采用了一个称为“建构主义”的当代哲学概念,这是一个关于Huhuman学习的理论。我们假设透明机器学习的一个关键方面是用两个关键过程“揭示”模型结构:(1)我们增强了我们现有的学习模型的同化过程和(2)我们创建新的学习模型的住宿过程。通过这种直觉,我们提出了一种新的学习范式,建构主义学习,使用贝叶斯非参数模型动态处理新的学习任务的创建。我们对合成和实数据集的实证研究表明,新的学习算法能够提供更高质量的模型(与基线和最先进的),同时增加学习过程的透明度。

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