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2 changes: 1 addition & 1 deletion Project.toml
Original file line number Diff line number Diff line change
@@ -1,7 +1,7 @@
name = "TuringGLM"
uuid = "0004c1f4-53c5-4d43-a221-a1dac6cf6b74"
authors = ["Jose Storopoli <[email protected]>, Rik Huijzer <[email protected]>, and contributors"]
version = "1.0.0"
version = "2.0.0"

[deps]
Distributions = "31c24e10-a181-5473-b8eb-7969acd0382f"
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12 changes: 6 additions & 6 deletions docs/src/index.md
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Expand Up @@ -48,13 +48,13 @@ The most popular ones are `DataFrame`s and `NamedTuple`s.
TuringGLM supports non-hiearchical and hierarchical models.
For hierarchical models, only single random-intercept hierarchical models are supported.

For likelihoods, `TuringGLM.jl` supports:
Currently, for likelihoods `TuringGLM.jl` supports:

* `Gaussian()` (the default if not specified): linear regression
* `Student()`: robust linear regression
* `Logistic()`: logistic regression
* `Pois()`: Poisson count data regression
* `NegBin()`: negative binomial robust count data regression
* `Normal` (the default if not specified): linear regression
* `TDist`: robust linear regression
* `Bernoulli`: logistic regression
* `Poisson`: Poisson count data regression
* `NegativeBinomial`: negative binomial robust count data regression

## Tutorials

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2 changes: 1 addition & 1 deletion docs/src/tutorials/custom_priors.jl
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Expand Up @@ -64,7 +64,7 @@ priors = CustomPrior(Normal(0, 2.5), Normal(10, 20), nothing);

# ╔═╡ 56498ac7-3476-42eb-9c12-078562fff51d
md"""
We instantiate our model with `turing_model` without specifying any model, thus the default model will be used: `Gaussian()`.
We instantiate our model with `turing_model` without specifying any model, thus the default model will be used (`model=Normal`).
Notice that we are specifying the `priors` keyword argument:
"""

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2 changes: 1 addition & 1 deletion docs/src/tutorials/hierarchical_models.jl
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Expand Up @@ -59,7 +59,7 @@ fm = @formula(y ~ (1 | cheese) + background)

# ╔═╡ 934b7ec9-d4b3-435c-876f-49215dca8809
md"""
We instantiate our model with `turing_model` without specifying any model, thus the default model will be used: `Gaussian()`
We instantiate our model with `turing_model` without specifying any model, thus the default model will be used (`model=Normal`):
"""

# ╔═╡ 5fc736a2-068e-4deb-9a77-bd21d93f6f32
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2 changes: 1 addition & 1 deletion docs/src/tutorials/linear_regression.jl
Original file line number Diff line number Diff line change
Expand Up @@ -57,7 +57,7 @@ fm = @formula(kid_score ~ mom_hs * mom_iq)

# ╔═╡ 43d63761-adf5-4a52-b996-4ad3adfb35d0
md"""
Next, we instantiate our model with `turing_model` without specifying any model, thus the default model will be used: `Gaussian()`:
Next, we instantiate our model with `turing_model` without specifying any model, thus the default model will be used (`model=Normal`):
"""

# ╔═╡ 55b91963-001e-4753-93a6-2fa64190f353
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4 changes: 2 additions & 2 deletions docs/src/tutorials/logistic_regression.jl
Original file line number Diff line number Diff line change
Expand Up @@ -58,11 +58,11 @@ fm = @formula(switch ~ dist + arsenic + assoc + educ)

# ╔═╡ 2ebfa422-f8a5-44d3-8f2c-a34d7832d3f2
md"""
Now we instantiate our model with `turing_model` passing a third argument `Logistic()` to indicate that the model is a logistic regression:
Now we instantiate our model with `turing_model` passing a keyword argument `model=Bernoulli` to indicate that the model is a logistic regression:
"""

# ╔═╡ 1f1158ce-73f0-49fd-a48a-af3b36376030
model = turing_model(fm, wells, Logistic());
model = turing_model(fm, wells; model=Bernoulli);

# ╔═╡ ebe074cb-7bad-4b52-9c9d-b9752af4bedd
chn = sample(model, NUTS(), 2_000);
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4 changes: 2 additions & 2 deletions docs/src/tutorials/negative_binomial_regression.jl
Original file line number Diff line number Diff line change
Expand Up @@ -57,11 +57,11 @@ fm = @formula(y ~ roach1 + treatment + senior)

# ╔═╡ 124aeb01-7661-4402-a2fa-77d2771b686c
md"""
We instantiate our model with `turing_model` passing a third argument `NegBin()` to indicate that the model is a negative binomial regression:
We instantiate our model with `turing_model` passing a keyword argument `model=NegativeBinomial` to indicate that the model is a negative binomial regression:
"""

# ╔═╡ 7ea3a50d-3b0d-4cfd-b311-806d6ae59c1a
model = turing_model(fm, roaches, NegBin());
model = turing_model(fm, roaches; model=NegativeBinomial);

# ╔═╡ 597ce5d7-df3e-44e3-a154-e06e64894854
chn = sample(model, NUTS(), 2_000);
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5 changes: 2 additions & 3 deletions docs/src/tutorials/poisson_regression.jl
Original file line number Diff line number Diff line change
Expand Up @@ -57,12 +57,11 @@ fm = @formula(y ~ roach1 + treatment + senior)

# ╔═╡ 65f4f379-e9a5-4571-bc80-77c024f3f560
md"""
We instantiate our model with `turing_model` passing a third argument `Pois()` to
indicate that the model is a Poisson Regression
We instantiate our model with `turing_model` passing a keyword argument `model=Poisson` to indicate that the model is a Poisson Regression:
"""

# ╔═╡ 9147ed9e-a047-42ca-aa36-f522fad8388b
model = turing_model(fm, roaches, Pois());
model = turing_model(fm, roaches; model=Poisson);

# ╔═╡ aeeac527-2c32-407f-84a1-912cc74f51b7
md"""
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5 changes: 2 additions & 3 deletions docs/src/tutorials/robust_regression.jl
Original file line number Diff line number Diff line change
Expand Up @@ -55,12 +55,11 @@ fm = @formula(kid_score ~ mom_hs * mom_iq)

# ╔═╡ 4f9ff3fd-3f04-49a5-924e-aa23702e75a0
md"""
We instantiate our model with `turing_model` passing a third argument `Student()` to
indicate that the model is a robust regression with the Student's t-distribution:
We instantiate our model with `turing_model` passing a keyword argument `model=TDist` to indicate that the model is a robust regression with the Student's t-distribution:
"""

# ╔═╡ 3f4241d4-1c76-4d7c-99c1-aaa2111385f9
model = turing_model(fm, kidiq, Student());
model = turing_model(fm, kidiq; model=TDist);

# ╔═╡ 7bbe4fe4-bcaf-4699-88e4-0dff92250d30
chn = sample(model, NUTS(), 2_000);
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2 changes: 0 additions & 2 deletions src/TuringGLM.jl
Original file line number Diff line number Diff line change
Expand Up @@ -41,11 +41,9 @@ end
include("utils.jl")
include("data_constructors.jl")
include("priors.jl")
include("model.jl")
include("turing_model.jl")

export turing_model
export CustomPrior, DefaultPrior
export Gaussian, Student, Logistic, Pois, NegBin

end # module
11 changes: 0 additions & 11 deletions src/model.jl

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