Can One Improve Now-Casts of Crop Prices in Africa? Google Can.

R. Weber, Lukas Kornher
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引用次数: 0

Abstract

With increasing Internet user rates across Africa, there is considerable interest in exploring new, online data sources. Particularly, search engine metadata, i.e. data representing the contemporaneous online-interest in a specific topic, has gained considerable interest, due to its potential to extract a near real-time online signal about the current interest of a society. The objective of this study is to analyze whether search engine metadata in the form of Google Search Query (GSQ) data can be used to improve now-casts of maize prices in nine African countries, these are Ethiopia, Kenya, Malawi, Mozambique, Rwanda, Tanzania and Uganda, Zambia and Zimbabwe. We formulate as benchmark an auto-regressive model for each country, which we subsequently augment by two specifications based on contemporary GSQ data. We test the models in in-sample, and in a pseudo out-of-sample, one-step-ahead now-casting environment and compare their forecasting errors. The GSQ specifications improve the now-casting fit in 8 out 9 countries and reduce the now-casting error between 3% and 23%. The largest improvement of maize price now-casts is achieved for Malawi, Kenya, Zambia and Tanzania, with improvements larger than 14%.
我们能改善非洲农作物价格的现状吗?谷歌。
随着整个非洲互联网用户比例的增加,人们对探索新的在线数据源产生了相当大的兴趣。特别是,搜索引擎元数据,即代表当前在线对特定主题的兴趣的数据,已经获得了相当大的兴趣,因为它有可能提取有关社会当前兴趣的近乎实时的在线信号。本研究的目的是分析谷歌搜索查询(GSQ)数据形式的搜索引擎元数据是否可以用于改善9个非洲国家的玉米价格预测,这些国家是埃塞俄比亚、肯尼亚、马拉维、莫桑比克、卢旺达、坦桑尼亚、乌干达、赞比亚和津巴布韦。我们为每个国家制定了一个自回归模型作为基准,随后我们根据当代GSQ数据增加了两个规格。我们在样本内和伪样本外测试了模型,并比较了它们的预测误差。GSQ规范改善了9个国家中8个国家的现铸配合度,并将现铸误差减少了3%至23%。目前,马拉维、肯尼亚、赞比亚和坦桑尼亚的玉米价格涨幅最大,涨幅超过14%。
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