Kernel Methods

نویسنده

  • Martin Sewell
چکیده

The term kernel is derived from a word that can be traced back to c. 1000 and originally meant a seed (contained within a fruit) or the softer (usually edible) part contained within the hard shell of a nut or stone-fruit. The former meaning is now obsolete. It was first used in mathematics when it was defined for integral equations in which the kernel is known and the other function(s) unknown, but now has several meanings in maths. The machine learning term kernel trick was first used in 1998.

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تاریخ انتشار 2007