示例#1
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def test_update(device, f, dtype):
    npdtype = dtype.as_numpy_dtype
    M, K, tau, F = (20, 30), 3, 0.1, 2
    npU = (np.random.normal(size=(K, M[0])).astype(npdtype),
           np.random.normal(size=(K, M[1])).astype(npdtype))
    U = [tf.constant(npU[0]), tf.constant(npU[1])]
    npnoise = np.random.normal(size=M).astype(npdtype)
    npdata = np.dot(npU[0].T, npU[1]) + npnoise
    data = tf.constant(npdata, dtype=dtype)

    lh = Normal2dLikelihood(M=M, K=K, tau=tau, dtype=dtype)
    lh.init(data=data)

    properties = Properties(persistent=True,
                            dtype=dtype)
    prior = Uniform(dummy=tf.constant(np.random.random(K).astype(npdtype),
                                      dtype=dtype),
                    properties=properties)

    postUf = PostU(lh, prior, f)

    Ufupdated = postUf.update(U, data, transform=False)

    for g in range(F):
        assert(Ufupdated.dtype == dtype)

    with tf.Session() as sess:
        sess.run(tf.global_variables_initializer())
        npUfupdated = sess.run(Ufupdated)

    assert(not np.allclose(npU[f], npUfupdated))

    tf.reset_default_graph()
示例#2
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文件: lomax.py 项目: zcy618/decompose
 def cond(self) -> Exponential:
     tau = self.tau
     name = self.name + "Cond"
     properties = Properties(name=name,
                             drawType=self.drawType,
                             updateType=self.updateType,
                             persistent=False)
     cond = Exponential(beta=1. / tau, properties=properties)
     return (cond)
示例#3
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 def cond(self) -> CenLaplace:
     tau = self.tau
     name = self.name + "Cond"
     properties = Properties(name=name,
                             drawType=self.drawType,
                             updateType=self.updateType,
                             persistent=False)
     cond = CenLaplace(beta=1. / tau, properties=properties)
     return (cond)
示例#4
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 def productParams(self, d0: Distribution, d1: Distribution):
     name = self.name(d0, d1)
     drawType = self.drawType(d0, d1)
     updateType = self.updateType(d0, d1)
     persistent = False
     properties = Properties(name=name,
                             drawType=drawType,
                             updateType=updateType,
                             persistent=persistent)
     params = {"properties": properties}
     return (params)
 def __init__(self, M: Tuple[int, ...], K: int=1, tau: float = 1./1e2,
              drawType: DrawType = DrawType.SAMPLE,
              updateType: UpdateType = UpdateType.ALL,
              dtype=tf.float32) -> None:
     Likelihood.__init__(self, M, K)
     self.__tauInit = tau
     self.__dtype = dtype
     self.__properties = Properties(name='likelihood',
                                    drawType=drawType,
                                    dtype=dtype,
                                    updateType=updateType,
                                    persistent=True)
示例#6
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文件: t.py 项目: zcy618/decompose
 def cond(self) -> Normal:
     mu = self.mu
     Psi = self.Psi
     tau = self.tau
     mu = tf.ones_like(tau) * mu
     Psi = tf.ones_like(tau) * Psi
     name = self.name + "Cond"
     properties = Properties(name=name,
                             drawType=self.drawType,
                             updateType=self.updateType,
                             persistent=False)
     cond = Normal(mu=mu, tau=tau / Psi, properties=properties)
     return (cond)
示例#7
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    def lhUfk(self, Uf: Tensor, prepVars: Tuple[Tensor, ...], f: int,
              k: Tensor) -> Distribution:
        XVT, VVT, alpha = prepVars
        XvT = XVT[:, k]
        VvT = VVT[..., k]
        vvT = VVT[..., k, k]
        Ufk = Uf[k]

        UVvT = tf.reduce_sum(tf.transpose(Uf) * VvT, axis=-1)
        uvvT = Ufk * vvT
        Xtildev = XvT - UVvT + uvvT

        mu = Xtildev / vvT
        tau = vvT * alpha

        properties = Properties(name=f"lhU{f}k",
                                drawType=self.noiseDistribution.drawType,
                                updateType=self.noiseDistribution.updateType,
                                persistent=False)
        lhUfk = Normal(mu=mu, tau=tau, properties=properties)
        return (lhUfk)
示例#8
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 def cond(self) -> CenNnFullyElasticNetCond:
     b = self.b
     mu = self.mu
     tau = self.tau
     betaExponential = self.betaExponential
     tauLomax = self.tauLomax
     b = tf.ones_like(tauLomax) * b
     mu = tf.ones_like(tauLomax) * mu
     tau = tf.ones_like(tauLomax) * tau
     betaExponential = tf.ones_like(tauLomax) * betaExponential
     name = self.name + "Cond"
     properties = Properties(name=name,
                             drawType=self.drawType,
                             updateType=self.updateType,
                             persistent=False)
     cond = CenNnFullyElasticNetCond(b=b,
                                     mu=mu,
                                     tau=tau,
                                     betaExponential=betaExponential,
                                     beta=1. / tauLomax,
                                     properties=properties)
     return (cond)