From a Harvard scholar and former Obama official, a powerful proposal for curtailing violent crime in America Urban violence is one of the most divisive and allegedly intractable issues of our time. But as Harvard scholar Thomas Abt shows in Bleeding Out, we actually possess all the tools necessary to stem violence in our cities. Coupling the latest social science with firsthand experience as a crime-fighter, Abt proposes a relentless focus on violence itself -- not drugs, gangs, or guns. Because violence is "sticky," clustering among small groups of people and places, it can be predicted and prevented using a series of smart-on-crime strategies that do not require new laws or big budgets. Bringing these strategies together, Abt offers a concrete, cost-effective plan to reduce homicides by over 50 percent in eight years, saving more than 12,000 lives nationally. Violence acts as a linchpin for urban poverty, so curbing such crime can unlock the untapped potential of our cities' most disadvantaged communities and help us to bridge the nation's larger economic and social divides. Urgent yet hopeful, Bleeding Out offers practical solutions to the national emergency of urban violence -- and challenges readers to demand action. Read more
Download NowCan we solve the urban violence problem? After reading, the "yes" sounds less delusional. The book pays impressive attention to the best literature on urban violence, in a digestible and engaging way. As important, it carefully avoids letting ideological preconceptions blind the debate. Although most of the book is dedicated to the US, there is reason to believe that this rich summary of evidence-based knowledge is useful in any violent country. As a Brazilian, I would like every Brazilian governor to have access to this material, as well as the sensitivity to use more evidence and less emotion when designing public safety policies. Maybe we would stop being the country that kills the most in the world.
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