The Infinite Gaussian Mixture Model
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Questions
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(5)
pm.Categorical behaves differently in a model versus as pm.Categorical.dist
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Questions
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(3)
Sampling from prior predictive distribution
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Questions
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(13)
"Bayesian Non-parametric Models for Data Science using PyMC3" - Chris Fonnesbeck, from PyCon 2018
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Sharing
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(2)
A question about the scope of the variable
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Questions
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(5)
Suggestion about sampling methods
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Development
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(3)
Multivariatre categorical variable with different values
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Questions
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(4)
Metropolis equivalent to NUTS target_accept?
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Questions
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(4)
Normal distribution throws errors when using shared variables
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Questions
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(4)
Semi-open uniform distribution
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Questions
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(2)
How to save fitted ADVI Result?
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Questions
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(4)
Weird posterior for correlation structure using LKJ distribution
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Questions
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(6)
Sum of random variables?
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Questions
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(3)
Very slow generation of computation graph with convolution
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Questions
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(1)
How does sampling effect the logp?
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Questions
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(3)
Issue using pm.Interpolated() to update priors in online updating loop
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Questions
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(2)
Softmax regression. Theano `softmax` function slow?
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Questions
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(1)
Error when I build a new program by pymc3
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Questions
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(3)
PyMC3 with GPU support on Google Colab
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Development
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(4)
Error while using DensityDist
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Questions
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(2)
Evaluating Variational Inference: Need Access to fitted (AD)VI approximation density
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Questions
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(3)
Likelihood given by product of two distributions?
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Questions
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(7)
Multidimensional indexing
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Questions
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(9)
Positive samples
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Questions
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(2)
NUTS - FromFunctionOp has no attribute 'grad'
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Questions
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(3)
Model with extended likelihood function using pm.DensityDist or pm.Potential
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Questions
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(5)
Probabilistic Programming vs Probabilistic Graphical Models
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Questions
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(2)
LDA implementation with pymc3
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Questions
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(20)
Memory problems with nested theano.scan
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Questions
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(2)
"ValueError: Bad initial energy: inf. The model might be misspecified"
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Questions
]
(3)
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