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  Report: Fact and opinion construction(think tanks)

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 WORLD-INFOSTRUCTURE > FACT AND OPINION CONSTRUCTION(THINK TANKS) > EXAMPLES OF MAINLY CORPORATE ...
  Examples of Mainly Corporate Funded Think Tanks: Manhattan Institute


The Manhattan Institute, founded by William Casey, who later became President Reagan's CIA director, besides subsidies from a number of large conservative foundations has gained funding from such corporate sources as: The Chase Manhattan Bank, Citicorp, Time Warner, Procter & Gamble and State Farm Insurance, as well as the Lilly Endowment and philantropic arms of American Express, Bristol-Myers Squibb, CIGNA and Merrill Lynch. Boosted by major firms, the Manhattan Institute budget reached US$ 5 million a year by the early 1990s.




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Fact and opinion construction(think tanks)
    Think Tanks
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-3   History of Corporate Funding of Conservative Think Tanks
-2   Examples of Mainly Corporate Funded Think Tanks: Brookings Institution
-1   Examples of Mainly Corporate Funded Think Tanks: Cato Institute
0   Examples of Mainly Corporate Funded Think Tanks: Manhattan Institute
+1   Corporate Money and Politics
+2   Influence of Corporate Funding on Think Tank Activities
+3   The Microsoft Case
     ...
Advertising, Public Relations and Think Tanks
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Neural network
A bottom-up artificial intelligence approach, a neural network is a network of many very simple processors ("units" or "neurons"), each possibly having a (small amount of) local memory. The units are connected by unidirectional communication channels ("connections"), which carry numeric data. The units operate only on their local data and on the inputs they receive via the connections. A neural network is a processing device, either an algorithm, or actual hardware, whose design was inspired by the design and functioning of animal brains and components thereof. Most neural networks have some sort of "training" rule whereby the weights of connections are adjusted on the basis of presented patterns. In other words, neural networks "learn" from examples and exhibit some structural capability for generalization.