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2017-08-05 @ Tokyo Web Mining
Yuta Kashino ( )
BakFoo, Inc. CEO
Astro Physics /Observational Cosmology
Zope / Python
Realtime Data Platform for Enterprise / Prototyping
Yuta Kashino ( )
arXiv
stat.ML, stat.TH, cs.CV, cs.CL, cs.LG
math-ph, astro-ph
PyCon2016
@yutakashino
https://www.slideshare.net/yutakashino/pyconjp2016
-
-
-
http://bayesiandeeplearning.org/
Shakir Mohamed
http://blog.shakirm.com/wp-content/uploads/2015/11/CSML_BayesDeep.pdf
-
Denker, Schwartz, Wittner, Solla, Howard, Jackel, Hopfield (1987)
Denker and LeCun (1991)
MacKay (1992)
Hinton and van Camp (1993)
Neal (1995)
Barber and Bishop (1998)
Graves (2011)
Blundell, Cornebise, Kavukcuoglu, and Wierstra (2015)
Hernandez-Lobato and Adam (2015)
-
Yarin Gal
Zoubin Ghahramani
Shakir Mohamed
Dastin Tran
Rajesh Ranganath
David Blei
Ian Goodfellow
Columbia U
U of Cambridge
-
- :
- :
- :
- :
- : SGD + BackProp
…
…x1 x2 xd
✓(2)
✓(1)
x
y
y(n)
=
X
j
✓
(2)
j (
X
i
✓
(1)
ji x
(n)
i ) + ✏(n)
p(y(n)
| x(n)
, ✓) = (
X
i
✓
(n)
i x
(n)
i )
✓
D = {x(n)
, y(n)
}N
n=1 = (X, y)
:
- +
- 2012 ILSVRC
→ 2015
-
-
-
-
:
-
- ReLU, DropOut, Mini Batch, SGD(Adam), LSTM…
-
- ImageNet, MSCoCo…
- : GPU,
- :
- Theano, Torch, Caffe, TensorFlow, Chainer, MxNet, PyTorch…
:
-
-
-
-
-
https://lossfunctions.tumblr.com/
:
-
-
-
- Adversarial examples
-
-
=
=
-
-
- :
- :
- :
- :
- : SGD + BackProp
…
…x1 x2 xd
✓(2)
✓(1)
x
y
y(n)
=
X
j
✓
(2)
j (
X
i
✓
(1)
ji x
(n)
i ) + ✏(n)
p(y(n)
| x(n)
, ✓) = (
X
i
✓
(n)
i x
(n)
i )
✓
D = {x(n)
, y(n)
}N
n=1 = (X, y)
- data hypothesis
-
-
P(H | D) =
P(H)P(D | H)
P
H P(H)P(D|H)
P(x) =
X
y
P(x, y)
P(x, y) = P(x)P(y | x)
- :
- :
-
-
- :
P(H | D) =
P(H)P(D | H)
P
H P(H)P(D|H)
likelihood priorposterior
P(✓ | D, m) =
P(D | ✓, m)P(✓ | m)
P(D | m)
m:
P(x | D, m) =
Z
P(x | ✓, D, m)P(✓ | D, m)d✓
P(m | D) =
P(D | m)P(m)
P(D)
-
- :
- :
- :
- :
…
…x1 x2 xd
✓(2)
✓(1)
x
y
✓
D = {x(n)
, y(n)
}N
n=1 = (X, y)
P(✓ | D, m) =
P(D | ✓, m)P(✓ | m)
P(D | m)
m:
P(x | D, m) =
Z
P(x | ✓, D, m)P(✓ | D, m)d✓
prior
- (Variational Bayes)
- (MCMC)
P(✓ | D, m) =
P(D | ✓, m)P(✓ | m)
P(D | m)
m:
p(θ|D) KL q(θ)
ELBO
⇤
= argmin KL(q(✓; ) || p(✓ | D))
= argmin Eq(✓; )[logq(✓; ) p(✓ | D)]
ELBO( ) = Eq(✓; )[p(✓, D) logq(✓; )]
⇤
= argmax ELBO( )
- VI
-
- David MacKay “Lecture 14 of the Cambridge Course”
- PRML 10
http://www.inference.org.uk/itprnn_lectures/
- KL =ELBO
q(✓; 1)
q(✓; 5)
p(✓, D) p(✓, D)
✓✓
⇤
= argmax ELBO( )
ELBO( ) = Eq(✓; )[p(✓, D) logq(✓; )]
- p q
- :
- ADVI: Automatic Differentiation Variational Inference
- BBVI: Blackbox Variational Inference
q(✓; 1)
q(✓; 5)
p(✓, D) p(✓, D)
✓✓
arxiv:1603.00788
arxiv:1401.0118
Reference
- Zoubin Ghahramani “History of Bayesian neural
networks” NIPS 2016 Workshop Bayesian Deep
Learning
- Yarin Gal “Bayesian Deep Learning"O'Reilly
Artificial Intelligence in New York, 2017
- Probabilistic Programing Library/Langage
- Stan, PyMC3, Anglican, Church, Venture,Figaro, WebPPL,
Edward
- : Edward / PyMC3
- (VI)
Metropolis Hastings
Hamilton Monte Carlo
Stochastic Gradient Langevin Dynamics
No-U-Turn Sampler
Blackbox Variational Inference
Automatic Differentiation Variational Inference
Edward
Edward
- Dustin Tran (Open AI)
- Blei Lab
- (PPL)
- Stan, PyMC3, Anglican, Church, Venture,Figaro, WebPPL
- 2016 2 PPL
- TensorFlow
- George Edward Pelham Box
Box-Cox Trans., Box-Jenkins, Ljung-Box test box plot Tukey,
3 2 RA Fisher
PPL
Edward
TensorFlow(TF) + (PPL)
TF:
PPL: + +
Python/Numpy
1. TF:
-
- :
1. TF:
1. TF:
-
-
- GPU / TPU
Inception v3 Inception v4
1. TF:
- Keras, Slim
- TensorBoard
2.
x:
edward
x⇤
s P(x | ↵)
✓⇤
⇠ Beta(✓ | 1, 1)
2.
- ( )
Edward
p(x, ✓) = Beta(✓ | 1, 1)
50Y
n=1
Bernoulli(xn | ✓),
2.
-
log_prob()
-
mean()
-
sample()
3.
Edward TF
3.
256 28*28
4.
X, Z Z
- (Variational Bayes)
- (MCMC)
p(z | x) =
p(x, z)
R
p(x, z)dz
.
4.
4.
p(z|x) KL q(z)
ELBO
4.
Edward KLqp
5. Box’s loop
George Edward Pelham Box
Blei 2014
5. Box’s loop
Edward
- Edward = TensorFlow + +
- TensorFlow
-
- TF GPU, TPU, TensorBoard, Keras
-
- Box’s Loop
- Python
Refrence
•D. Tran, A. Kucukelbir, A. Dieng, M. Rudolph, D. Liang, and
D.M. Blei. Edward: A library for probabilistic modeling,
inference, and criticism.(arXiv preprint arXiv:1610.09787)
•D. Tran, M.D. Hoffman, R.A. Saurous, E. Brevdo, K. Murphy,
and D.M. Blei. Deep probabilistic programming.(arXiv
preprint arXiv:1701.03757)
•Box, G. E. (1976). Science and statistics. (Journal of the
American Statistical Association, 71(356), 791–799.)
•D.M. Blei. Build, Compute, Critique, Repeat: Data Analysis
with Latent Variable Models. (Annual Review of Statistics
and Its Application Volume 1, 2014)
Dropout
- Yarin Gal ”Uncertainty in Deep Learning”
- Dropout
- Dropout : conv
- LeNet with Dropout http://mlg.eng.cam.ac.uk/yarin/blog_2248.html
Dropout
- LeNet DNN
- conv Dropout MNIST
Dropout
- CO2
-
-
-
Questions
kashino@bakfoo.com
@yutakashino
BakFoo, Inc.
NHK NMAPS: +
BakFoo, Inc.
PyConJP 2015
Python
BakFoo, Inc.
BakFoo, Inc.
: SNS +

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FWD Group - Insurer Innovation Award 2024
 

深層学習とベイズ統計