示例#1
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class Amygdala(object):
    def __init__(self):
        self.la = LA(la_size=1, la_map_size=(8, 8), la_in_size=3)
        self.ce = CE(in_size=1 * 8 * 8, out_size=2)

    def inference(self, xs, var=0.4):
        h = self.la.inference(xs, var)
        y = self.ce.inference(h)
        return y

    def update(self, t, lr_la=0.01, var_la=0.5, lr_ce=0.1):
        self.la.update(lr_la, var_la)
        self.ce.update(t, lr_ce)
示例#2
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class Amygdala(object):
    def __init__(self):
        self.la1 = LA(la_size=1, la_map_size=(8, 8), la_in_size=3 * 64 * 64)
        self.la2 = LA(la_size=1, la_map_size=(8, 8), la_in_size=3)
        self.ce = CE(in_size=2 * 8 * 8, out_size=3)

    def inference(self, x1, x2, var=0.4):
        h1 = self.la1.inference(x1, var)
        h2 = self.la2.inference(x2, var)
        h = np.concatenate((h1, h2), axis=1)
        y = self.ce.inference(h)
        return y

    def update(self, t, lr_la=0.01, var_la=0.5, lr_ce=0.1):
        self.la1.update(lr_la, var_la)
        self.la2.update(lr_la, var_la)
        self.ce.update(t, lr_ce)
示例#3
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 def __init__(self):
     self.la = LA(la_size=1, la_map_size=(8, 8), la_in_size=3)
     self.ce = CE(in_size=1 * 8 * 8, out_size=2)
示例#4
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 def __init__(self):
     self.la1 = LA(la_size=1, la_map_size=(8, 8),
                   la_in_size=3 * 64 * 64)  # face
     self.la2 = LA(la_size=1, la_map_size=(8, 8), la_in_size=2)  # place
     self.ce = CE(in_size=2 * 8 * 8, out_size=4)
示例#5
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 def __init__(self):
     self.la1 = LA(la_size=1, la_map_size=(8, 8), la_in_size=3*64*64)    # for face
     self.la2 = LA(la_size=2, la_map_size=(8, 8), la_in_size=3)          # for place & time
     self.ce = CE(in_size=3*8*8, out_size=3)