Evolutionary Algorithms in Search and Problem Solving

نویسنده

  • Keith L. Downing
چکیده

At each point during your walk, the altitude reading will give some indication of your progress, especially when compared to readings from earlier points, but at no time will you receive complete directions to the top of the mountain. You will always be guessing, but in an educated manner based on your previous longitude-latitude locations and their altitudes. For example, if, during the past 20 minutes, your latitude has remained constant while your longitude has decreased and your altitude has increased, then a good strategy is to continue along this line of decreasing longitude.

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تاریخ انتشار 2006