https://github.com/danilofreire/mercatus-analytics-papers

Papers submitted to the Mercatus Policy Analytics Symposium (2021)

https://github.com/danilofreire/mercatus-analytics-papers

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Papers submitted to the Mercatus Policy Analytics Symposium (2021)

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Created almost 6 years ago · Last pushed over 5 years ago
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Submitted Papers: Mercatus Center's Policy Analytics Colloquium

Danilo Freire

Here are two working papers I have submitted to Mercatus Center's Policy Analytics Colloquium in March 2020. The first paper is "Democratising Policy Analytics with AutoML" and it discusses how social scientists can use automated machine learning algorithms in their research. The second paper is titled "How to Improve Data Validation in Five Steps", which offers a few suggestions on how to increase the validity of a novel dataset.

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  • Name: Danilo Freire
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