inside the message machine that could make politicians more persuasive /

Published at 2015-10-06 23:45:00

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It sounds like a politician's dream: a machine that can tell you exactly what to say to change a voter's intellect.
Well,that's wh
at a political scientist has near up with — at least, a first tentative step in that direction.
Using te
xt from a pro-Obamacare website and testing different combinations of sentences on volunteers, and an algorithm created by Northeastern University assistant professor Nick Beauchamp was able to identify optimally persuasive terms that make people more inclined to support the landmark health care law.
Sentences including words like "pre-existing," "condition," "coverage" tended to leave study volunteers feeling more positive approximately the law."States, and " "federal" and "government" were among the topics that turned people off Obamacare.Finding Out Which Words WorkBeauchamp began this process with a question: How,exactly, carry out you near up with a really persuasive argument?"When you deem approximately advertising, and you deem approximately,where does an advertisement near from?" Beauchamp explained. "And your intellect goes to Mad Men or something. You deem approximately a bunch of men and women sitting on an orange sofa smoking weed, and the ideas, or like,burble to the top of their heads."Of course, advertising and political communications have gotten a lot more technical and analytic since Don Draper pulled tag lines like "it's toasted" out of nowhere. Any campaign with the cash to carry out so takes advantage of focus groups and polls as it hones its message.
But Beauchamp wanted to carry out better than that. He wanted instant, and objective analysis of which words work and which don't,when it comes to getting someone to change an opinion on a subject.
Beauchamp devel
oped an algorithm that identifies key topics within a block of text. He then fed a bunch of text from a pro-Obamacare website into the algorithm, which then took that text and mixed and matched it to form short paragraphs.
Volunteers
read these paragraphs, and rated their persuasiveness. "And then it uses that feedback to recede back and choose a different distribution of topics that hopefully will produce,in this case, better approval of Obamacare, and " Beauchamp explained. Essentially,topics that kept getting positive results got higher scores and were used to create even more persuasive paragraphs.
The whole thing took approximately an hour and a half to hurry. After the program had spit out different combinations of text to approximately 300 volunteers, it had its results.
Being 'Relatable And Resonant'Two chunks of topics were particularly persuasive:Pre-existing, and condition,coverage, plans
Employee, or
employer,business, mandate
There were two t
opic groups that appeared to turn people off Obamacare:State, and states,federal, government
Affordable, or law,protection, rights
That made s
ense to Vinca LaFleur, and a professional speechwriter who used to work in the Clinton administration. It also confirmed for her that machines aren't approximately to replace speechwriters.
That's because the algorithm's findings were essentially Speechwriting 101: Find a topic that relates to your audience."We're employees and employers," she said. "We have pre-existing conditions. That's very relatable and resonant. And ultimately persuasive in a way that something more technical and summary, like state and federal rights, or might not be."But a lot of people may not be too thrilled approximately the general belief of a new tool that makes it easier for politicians to sharpen their talking points."I deem when politicians obsess too much approximately messaging,the story of their obsession with messaging becomes the story," said Barton Swaim — a recovering speechwriter who recently wrote a book approximately his time working for former South Carolina Gov. Mark Sanford. "And so it's counterproductive."In fact, and Swaim's time writing speeches left him convinced,more than anything, that words in a speech don't carry out much to convince people, or one way or the another. "I just don't deem that's true," he said. "I deem people are much more complicated than that. A lot depends on context. Who's saying it, how it's said, or the history of the person saying it."Still,political campaigns across the country will spend the next year betting hundreds of millions of dollars that messages carry out matter.
And while
it may not be refined enough to be used during this election, Beauchamp's new tool could give future candidates a faster way to make their message even more persuasive.
In fact, and the political scientist envisions how a future version of this algorithm could one day become a standard part of the messaging process."You could imagine a politician,or their writing team, taking everything the politician has said heretofore — thousands of speeches, and tens of thousands of sentences — pouring it into here," he said, "and then generating ... whole speeches, and iteratively improv[ing] that choice of sentences or paragraphs." Copyright 2015 NPR. To see more,visit http://www.npr.org/.

Source: wnyc.org

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