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    How the 1 Percent Is Pulling America’s Cities and Regions Apart

    How the 1 Percent Is Pulling America’s Cities and Regions Apart

    April 3, 2019
    CityLab | By Richard Florida.

    The two gravest challenges facing America today, economic inequality and geographic divides, are increasingly intertwined. Economic inequality has surged with nearly all the growth being captured by the 1 percent, and the economic fortunes of coastal superstar cities and the rest of the nation have dramatically diverged.

    These two trends are fundamental to a new study by Robert Manduca, a PhD candidate in Sociology and Social Policy at Harvard University. The study uses census microdata culled from 1980 to 2013, and finds that America’s growing regional divide is largely a product of national economic inequality, in particular the outsized economic gains that have been captured by the 1 percent.

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    How the Equifax Hack Could Hurt Anyone Applying for a Job

    How the Equifax Hack Could Hurt Anyone Applying for a Job

    October 4, 2017
    The Atlantic | By Barbara Kiviat, PhD candidate in Sociology & Social Policy. Fraudulent activity will likely start to show up in Americans' credit history—which many employers use to evaluate prospective hires. This article is based on Barbara Kiviat's research, published in Socio-Economic Review, which found considerable subjectivity and lack of empirical basis for the way that employers used credit reports in hiring decisions.
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    How to Hire with Algorithms

    How to Hire with Algorithms

    October 17, 2016

    Harvard Business Review |  By Oren Danieli (Ph.D. candidate in Business Economics), Andrew Hillis, and Michael Luca (Assistant Professor of Business Administration). Algorithms have the potential to improve hiring and promotion decisions, the authors argue, but need to be managed.

    "We explored that potential in a recent study (American Economic Review, May 2016) on selecting teachers and policemen. We used machine learning algorithms to transform data about teacher and police characteristics – for example, educational background, surveys, and test performance – into predictions about their likely performance in the future. Our results demonstrate that students and communities alike could benefit from a more data-driven selection process. Algorithms can help with some of the nation’s most challenging personnel issues. For example, the data suggest that police departments can predict, at the time of hire, which officers are most likely to be involved in a shooting or accused of abuse."
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    How Unions Boost Democratic Partcipation

    How Unions Boost Democratic Partcipation

    September 16, 2015

    The American Prospect | Cites research by James Feigenbaum, Ph.D. candidate in Economics, on impact of union membership on voting activity, and earlier estimates by Richard Freeman.

    Jack Cao

    Ideas42: A Talk with Jack Cao

    November 20, 2017

    Ideas42 | With the ideas42 Seminar Series, we invite leading scholars to share their insights and what inspires their exploration into human behavior. Our New York office was pleased to host Jack Cao, a 5th year PhD candidate in social psychology at Harvard University. Jack’s research examines the divide between the conscious values we try to uphold and the implicit biases that reside within the mind...After giving a talk to the ideas42 team, Jack was kind enough to share some of his thoughts on behavioral science.

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