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Towards Machine Learning of Predictive Models from Ecological Data

机译:从生态数据到预测模型的机器学习

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In a previous paper we described a machine learning approach which was used to automatically generate food-webs from national-scale agricultural data. The learned food-webs in the previous study consist of hundreds of ground facts representing trophic links between individual species. These species food-webs can be used to explain the structure and dynamics of particular eco-systems, however, they cannot be directly used as general predictive models. In this paper we describe the first steps towards this generalisation and present initial results on (i) learning general functional food-webs (i.e. trophic links between functional groups of species) and (ii) meta-interpretive learning (MIL) of general predictive rules (e.g. about the effect of agricultural management). Experimental results suggest that functional food-webs have at least the same levels of predictive accuracies as species food-webs despite being much more compact. In this paper we also present initial experiments where predicate invention and recursive rule learning in MIL are used to learn food-webs as well as predictive rules directly from data.
机译:在上一篇论文中,我们描述了一种机器学习方法,用于自动生成来自国家规模的农业数据的食物网。前一项研究中的学习食品网包括数百个代表各种物种之间营养链接的地面事实。这些物种食物纤维网可用于解释特定生态系统的结构和动态,但是,它们不能直接用作一般预测模型。在本文中,我们描述了这一概括的第一步,并提出了(i)学习一般功能性食物网(即物种功能群之间的营养链接)和(ii)常规预测规则(II)的营养链接的初始结果(例如,关于农业管理的影响)。实验结果表明,尽管水平更紧凑,功能性食品纤维网具有至少与物种食物网的预测准确性等级。在本文中,我们还存在初步实验,其中in Mil中的谓词发明和递归统治学习用于学习食品网以及直接从数据的预测规则。

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