LAMP: A New Analytical Method for Prediction

Lockwood, Jonathan
April 1995
Military Intelligence Professional Bulletin;Apr-Jun95, Vol. 21 Issue 2, p29
Discusses the Lockwood Analytical Method for Prediction (LAMP), a method forecasting events. 12 steps of LAMP method; Basis of the method.


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