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Merge pull request #11 from lindahua/master
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Expanding logsumexp, softmax, and pventropy to allow per-column and per-row computation
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lindahua committed Jun 12, 2013
2 parents c5677e9 + c32a28b commit 59008c8
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Showing 2 changed files with 175 additions and 47 deletions.
208 changes: 161 additions & 47 deletions src/Stats.jl
Expand Up @@ -309,7 +309,15 @@ module Stats

invlogit(z::Real) = 1.0 / (1.0 + exp(-clamp(z, -709.0, 745.0)))


# logsumexp
#
# We use the following formula for numerically stable computation
#
# logsumexp(x) = log(sum_i exp(x[i] - c)) + c
#
# Here, c = max(x)
#

function logsumexp{T <: Real}(a::AbstractVector{T})
c = max(a)
Expand All @@ -320,34 +328,74 @@ module Stats
return c + log(s)
end

function logsumexp!{T <: Real}(a::AbstractMatrix{T}, r::AbstractVector{T})
function logsumexp!{T <: Real}(r::AbstractVector{T}, a::AbstractMatrix{T}; dim::Int=1)
m = size(a, 1)
n = size(a, 2)
if length(r) != n
throw(ArgumentError("Inconsistent argument dimensions."))
end

for j = 1 : n
c = a[1, j]
for i = 2 : m
if a[i, j] > c
c = a[i, j]

if dim == 1
if length(r) != n
throw(ArgumentError("Inconsistent argument dimensions."))
end

for j = 1 : n
c = a[1, j]
for i = 2 : m
if a[i, j] > c
c = a[i, j]
end
end
s = 0.
for i = 1 : m
s += exp(a[i,j] - c)
end
r[j] = c + log(s)
end

elseif dim == 2
if length(r) != m
throw(ArgumentError("Inconsistent argument dimensions."))
end
s = 0.

# temporily store per-row maximums
c = a[:,1]
for j = 2 : n
for i = 1 : m
if a[i,j] > c[i]
c[i] = a[i,j]
end
end
end

# first column
for i = 1 : m
r[i] = exp(a[i,1] - c[i])
end

# remaining columns
for j = 2 : n
for i = 1 : m
r[i] += exp(a[i,j] - c[i])
end
end

# get the final value
for i = 1 : m
s += exp(a[i,j] - c)
r[i] = log(r[i]) + c[i]
end
r[j] = c + log(s)
end

else
throw(ArgumentError("The dim argument must be either 1 or 2."))
end
end

function logsumexp{T <: Real}(a::AbstractMatrix{T})
r = Array(Float64, size(a, 2))
logsumexp!(a, r)
function logsumexp{T <: Real}(a::AbstractMatrix{T}; dim::Int=1)
rlen::Int = dim == 1 ? size(a, 2) : size(a, 1)
r = Array(Float64, rlen)
logsumexp!(r, a, dim=dim)
r
end


# entropy of probability vectors

function pventropy{T <: Real}(p::AbstractVector{T})
Expand All @@ -361,39 +409,67 @@ module Stats
-s
end

function pventropy!{T <: Real}(p::AbstractMatrix{T}, r::AbstractVector{T})
function pventropy!{T <: Real}(r::AbstractVector{T}, p::AbstractMatrix{T}; dim::Int=1)
m = size(p, 1)
n = size(p, 2)
if length(r) != n
throw(ArgumentError("Inconsistent argument dimensions."))
end

if dim == 1
if length(r) != n
throw(ArgumentError("Inconsistent argument dimensions."))
end

for j = 1 : n
s = 0.
for j = 1 : n
s = 0.
for i = 1 : m
pi::T = p[i, j]
if pi > 0.
s += pi * log(pi)
end
end
r[j] = -s
end

elseif dim == 2
if length(r) != m
throw(ArgumentError("Inconsistent argument dimensions."))
end

# first column
for i = 1 : m
pi::T = p[i, j]
if pi > 0.
s += pi * log(pi)
pi::T = p[i,1]
r[i] = pi > 0. ? -pi * log(pi) : 0.
end

# remaining columns
for j = 2 : n
for i = 1 : m
pi::T = p[i,j]
if pi > 0.
r[i] -= pi * log(pi)
end
end
end
r[j] = -s
end

else
throw(ArgumentError("The dim argument must be either 1 or 2."))
end
end

function pventropy{T <: Real}(p::AbstractMatrix{T})
r = Array(Float64, size(p, 2))
pventropy!(p, r)
function pventropy{T <: Real}(p::AbstractMatrix{T}; dim::Int=1)
rlen::Int = dim == 1 ? size(p, 2) : size(p, 1)
r = Array(Float64, rlen)
pventropy!(r, p; dim=dim)
r
end

# softmax
#
# y[i] = exp(x[i]) / sum(exp(x))
#
# It is useful to turn log-likelihood into posterior
# It is useful for turning log-likelihood into posterior
#

function softmax!{T <: Real}(x::AbstractVector{T}, y::AbstractVector{T})
function softmax!{T <: Real}(y::AbstractVector{T}, x::AbstractVector{T})
n::Int = length(x)
if length(y) != n
throw(ArgumentError("Inconsistent argument dimensions."))
Expand All @@ -411,40 +487,78 @@ module Stats

function softmax{T <: Real}(x::AbstractVector{T})
y = Array(Float64, length(x))
softmax!(x, y)
softmax!(y, x)
y
end

function softmax!{T <: Real}(x::AbstractMatrix{T}, y::AbstractMatrix{T})
function softmax!{T <: Real}(y::AbstractMatrix{T}, x::AbstractMatrix{T}; dim::Int=1)
m::Int = size(x, 1)
n::Int = size(x, 2)
if size(y) != (m, n)
throw(ArgumentError("Inconsistent argument dimensions."))
end
for j = 1 : n
c = 0.
for i = 1 : m
if x[i,j] > c
c = x[i,j]

if dim == 1
for j = 1 : n
c = 0.
for i = 1 : m
if x[i,j] > c
c = x[i,j]
end
end
s = 0.
for i = 1 : m
s += (y[i,j] = exp(x[i,j] - c))
end
inv_s = 1. / s
for i = 1 : m
y[i,j] *= inv_s
end
end
s = 0.
for i = 1 : m
s += (y[i,j] = exp(x[i,j] - c))

elseif dim == 2
# per-row maximums
c = x[:,1]
for j = 2 : n
for i = 1 : m
if x[i,j] > c[i]
c[i] = x[i,j]
end
end
end

s = zeros(m)
for j = 1 : n
for i = 1 : m
v = exp(x[i,j] - c[i])
y[i,j] = v
s[i] += v
end
end
inv_s = 1. / s

# normalize
for i = 1 : m
y[i,j] *= inv_s
s[i] = 1.0 / s[i]
end

for j = 1 : n
for i = 1 : m
y[i,j] *= s[i]
end
end

else
throw(ArgumentError("The dim argument must be either 1 or 2."))
end
end

function softmax{T <: Real}(x::AbstractMatrix{T})
function softmax{T <: Real}(x::AbstractMatrix{T}; dim::Int=1)
y = Array(Float64, size(x))
softmax!(x, y)
softmax!(y, x, dim=dim)
y
end


# some functions for sampling

function randshuffle!{T}(x::AbstractArray{T}, n::Integer)
Expand Down
14 changes: 14 additions & 0 deletions test/02.jl
Expand Up @@ -22,6 +22,12 @@ for i = 1 : 3
r[i] = logsumexp(a[:,i])
end
@test_approx_eq logsumexp(a) r
@test_approx_eq logsumexp(a, dim=1) r
@test_approx_eq logsumexp(a', dim=2) r

@test_approx_eq logsumexp(a + 1000.) r + 1000.
@test_approx_eq logsumexp(a + 1000., dim=1) r + 1000.
@test_approx_eq logsumexp(a' + 1000., dim=2) r + 1000.

# entropy

Expand All @@ -33,6 +39,8 @@ for i = 1 : 6
r[i] = pventropy(a[:,i])
end
@test_approx_eq pventropy(a) r
@test_approx_eq pventropy(a; dim=1) r
@test_approx_eq pventropy(a'; dim=2) r

# softmax

Expand All @@ -46,3 +54,9 @@ for i = 1 : 3
r[:,i] = softmax(a[:,i])
end
@test_approx_eq softmax(a) r
@test_approx_eq softmax(a; dim=1) r
@test_approx_eq softmax(a'; dim=2) r'

@test_approx_eq softmax(a+1000.) r
@test_approx_eq softmax(a+1000.; dim=1) r
@test_approx_eq softmax(a'+1000.; dim=2) r'

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