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By Rufus Rock , UCL ; Tim O’Reilly , UCL ; Ilan Strauss , UCL ; and Mariana Mazzucato , UCL This article is republished from The Conversation under a Creative Commons license. An Amazon spokesperson said: We disagree with a number of conclusions made in this research, which misrepresents and overstates the limited data it uses.
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