我们能改善非洲农作物价格的现状吗?谷歌。

R. Weber, Lukas Kornher
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引用次数: 0

摘要

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%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can One Improve Now-Casts of Crop Prices in Africa? Google Can.
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%.
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