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A Review of Characterization Approaches for Smallholder Farmers: Towards Predictive Farm Typologies

机译:小农户表征方法综述:预测性农场类型

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摘要

Characterization of smallholder farmers has been conducted in various researches by using machine learning algorithms, participatory and expert-based methods. All approaches used end up with the development of some subgroups known as farm typologies. The main purpose of this paper is to highlight the main approaches used to characterize smallholder farmers, presenting the pros and cons of the approaches. By understanding the nature and key advantages of the reviewed approaches, the paper recommends a hybrid approach towards having predictive farm typologies. Search of relevant research articles published between 2007 and 2018 was done on ScienceDirect and Google Scholar. By using a generated search query, 20 research articles related to characterization of smallholder farmers were retained. Cluster-based algorithms appeared to be the mostly used in characterizing smallholder farmers. However, being highly unpredictable and inconsistent, use of clustering methods calls in for a discussion on how well the developed farm typologies can be used to predict future trends of the farmers. A thorough discussion is presented and recommends use of supervised models to validate unsupervised models. In order to achieve predictive farm typologies, three stages in characterization are recommended as tested in smallholder dairy farmers datasets: (a) develop farm types from a comparative analysis of more than two unsupervised learning algorithms by using training models, (b) assess the training models' robustness in predicting farm types for a testing dataset, and (c) assess the predictive power of the developed farm types from each algorithm by predicting the trend of several response variables.
机译:通过使用机器学习算法,参与式和基于专家的方法,在各种研究中对小农户进行了表征。所有使用的方法最终都会发展出一些称为农场类型学的亚组。本文的主要目的是强调表征小农户特征的主要方法,并介绍这些方法的利弊。通过了解所审查方法的性质和关键优势,本文推荐了一种具有预测性农场类型的混合方法。在ScienceDirect和Google Scholar上搜索了2007年至2018年之间发表的相关研究文章。通过使用生成的搜索查询,保留了与小农户特征相关的20篇研究文章。基于聚类的算法似乎是表征小农的主要方法。然而,由于高度不可预测且前后不一致,使用聚类方法需要讨论如何利用发达的农场类型很好地预测农民的未来趋势。进行了详尽的讨论,并建议使用监督模型来验证非监督模型。为了实现预测的农场类型,建议在小农户奶农数据集中测试三个阶段的表征:(a)通过使用培训模型对两种以上无监督学习算法的比较分析来开发农场类型,(b)评估培训模型在预测测试数据集的场类型方面的鲁棒性,以及(c)通过预测几个响应变量的趋势,从每种算法中评估已开发场类型的预测能力。

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