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logdensities.py
# Copyright 2016-2020 The GPflow Contributors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

import numpy as np
import tensorflow as tf

from .base import TensorType
from .utilities import to_default_float


def gaussian(x: TensorType, mu: TensorType, var: TensorType) -> tf.Tensor:
    return -0.5 * (np.log(2 * np.pi) + tf.math.log(var) + tf.square(mu - x) / var)


def lognormal(x: TensorType, mu: TensorType, var: TensorType) -> tf.Tensor:
    lnx = tf.math.log(x)
    return gaussian(lnx, mu, var) - lnx


def bernoulli(x: TensorType, p: TensorType) -> tf.Tensor:
    return tf.math.log(tf.where(tf.equal(x, 1), p, 1 - p))


def poisson(x: TensorType, lam: TensorType) -> tf.Tensor:
    return x * tf.math.log(lam) - lam - tf.math.lgamma(x + 1.0)


def exponential(x: TensorType, scale: TensorType) -> tf.Tensor:
    return -x / scale - tf.math.log(scale)


def gamma(x: TensorType, shape: TensorType, scale: TensorType) -> tf.Tensor:
    return (
        -shape * tf.math.log(scale)
        - tf.math.lgamma(shape)
        + (shape - 1.0) * tf.math.log(x)
        - x / scale
    )


def student_t(x: TensorType, mean: TensorType, scale: TensorType, df: TensorType) -> tf.Tensor:
    df = to_default_float(df)
    const = (
        tf.math.lgamma((df + 1.0) * 0.5)
        - tf.math.lgamma(df * 0.5)
        - 0.5 * (tf.math.log(tf.square(scale)) + tf.math.log(df) + np.log(np.pi))
    )
    return const - 0.5 * (df + 1.0) * tf.math.log(
        1.0 + (1.0 / df) * (tf.square((x - mean) / scale))
    )


def beta(x: TensorType, alpha: TensorType, beta: TensorType) -> tf.Tensor:
    # need to clip x, since log of 0 is nan...
    x = tf.clip_by_value(x, 1e-6, 1 - 1e-6)
    return (
        (alpha - 1.0) * tf.math.log(x)
        + (beta - 1.0) * tf.math.log(1.0 - x)
        + tf.math.lgamma(alpha + beta)
        - tf.math.lgamma(alpha)
        - tf.math.lgamma(beta)
    )


def laplace(x: TensorType, mu: TensorType, sigma: TensorType) -> tf.Tensor:
    return -tf.abs(mu - x) / sigma - tf.math.log(2.0 * sigma)


def multivariate_normal(x: TensorType, mu: TensorType, L: TensorType) -> tf.Tensor:
    """
    Computes the log-density of a multivariate normal.
    :param x  : Dx1 or DxN sample(s) for which we want the density
    :param mu : Dx1 or DxN mean(s) of the normal distribution
    :param L  : DxD Cholesky decomposition of the covariance matrix
    :return p : (1,) or (N,) vector of log densities for each of the N x's and/or mu's

    x and mu are either vectors or matrices. If both are vectors (N,1):
    p[0] = log pdf(x) where x ~ N(mu, LL^T)
    If at least one is a matrix, we assume independence over the *columns*:
    the number of rows must match the size of L. Broadcasting behaviour:
    p[n] = log pdf of:
    x[n] ~ N(mu, LL^T) or x ~ N(mu[n], LL^T) or x[n] ~ N(mu[n], LL^T)
    """

    d = x - mu
    alpha = tf.linalg.triangular_solve(L, d, lower=True)
    num_dims = tf.cast(tf.shape(d)[0], L.dtype)
    p = -0.5 * tf.reduce_sum(tf.square(alpha), 0)
    p -= 0.5 * num_dims * np.log(2 * np.pi)
    p -= tf.reduce_sum(tf.math.log(tf.linalg.diag_part(L)))

    shape_constraints = [
        (d, ["D", "N"]),
        (L, ["D", "D"]),
        (p, ["N"]),
    ]
    tf.debugging.assert_shapes(shape_constraints, message="multivariate_normal()")

    return p
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