Learning Machines: Foundations of Trainable Pattern-classifying Systems |
Kirjan sisältä
Tulokset 1 - 3 kokonaismäärästä 12
Sivu 3
weather - prediction example discussed previously , we might have d = 4 and Xi = X2 1023 1013 4 -7 X 3 = - X 4 = These four numbers might be the current atmospheric pressures ( in millibars ) at stations 1 and 2 and the pressure changes ...
weather - prediction example discussed previously , we might have d = 4 and Xi = X2 1023 1013 4 -7 X 3 = - X 4 = These four numbers might be the current atmospheric pressures ( in millibars ) at stations 1 and 2 and the pressure changes ...
Sivu 8
The adjustments can occur after the machine is constructed by making changes in the organization , structure , or parameter values of the parts of the machine , or it can occur before hardware construction by making these changes on a ...
The adjustments can occur after the machine is constructed by making changes in the organization , structure , or parameter values of the parts of the machine , or it can occur before hardware construction by making these changes on a ...
Sivu 59
The value of the present probabilistic model is that the unconditional density function for X changes as a result of being given a set of training patterns . We can see how it changes by first calculating an a posteriori density ...
The value of the present probabilistic model is that the unconditional density function for X changes as a result of being given a set of training patterns . We can see how it changes by first calculating an a posteriori density ...
Mitä ihmiset sanovat - Kirjoita arvostelu
Yhtään arvostelua ei löytynyt.
Sisältö
I | 1 |
SOME NONPARAMETRIC TRAINING METHODS | 65 |
APPENDIX | 127 |
Tekijänoikeudet | |
1 muita osia ei näytetty
Muita painoksia - Näytä kaikki
Yleiset termit ja lausekkeet
adjusted apply assume bank belonging to category called changes Chapter cluster committee components consider consists contains correction corresponding covariance decision surfaces define denote density depends derivation described discriminant functions discussed distance distribution element equal error-correction estimates example exists expression FIGURE fixed given implemented important initial layered machine linear dichotomies linear machine linearly separable matrix measurements negative normal Note optimum origin parameters partition pattern classifier pattern hyperplane pattern space pattern vector piecewise linear plane points positive presented probability problem proof properties proved PWL machine quadric reduced regions respect response rule sample mean selection separable shown side solution space specific Stanford step Suppose theorem theory threshold training methods training patterns training procedure training sequence training subsets transformation values weight vectors zero
Viitteet tähän teokseen
A Probabilistic Theory of Pattern Recognition Luc Devroye,László Györfi,Gabor Lugosi Rajoitettu esikatselu - 1997 |