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NegRec

Struct NegRec 

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pub struct NegRec {}
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The canonical link function for exponential regression is the negative reciprocal $\eta = -1/mu$. This fails to prevent negative predicted y-values.

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impl Link<Exponential> for NegRec

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fn func<F: Float>(y: F) -> F

Maps the expectation value of the response variable to the linear predictor. In general this is determined by a composition of the inverse natural parameter transformation and the canonical link function.
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fn func_inv<F: Float>(lin_pred: F) -> F

Maps the linear predictor to the expectation value of the response.
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impl Canonical for NegRec

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impl<T> Any for T
where T: 'static + ?Sized,

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fn type_id(&self) -> TypeId

Gets the TypeId of self. Read more
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impl<T> Borrow<T> for T
where T: ?Sized,

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fn borrow(&self) -> &T

Immutably borrows from an owned value. Read more
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impl<T> BorrowMut<T> for T
where T: ?Sized,

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fn borrow_mut(&mut self) -> &mut T

Mutably borrows from an owned value. Read more
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impl<T> From<T> for T

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fn from(t: T) -> T

Returns the argument unchanged.

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impl<T, U> Into<U> for T
where U: From<T>,

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fn into(self) -> U

Calls U::from(self).

That is, this conversion is whatever the implementation of From<T> for U chooses to do.

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impl<T> IntoEither for T

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fn into_either(self, into_left: bool) -> Either<Self, Self>

Converts self into a Left variant of Either<Self, Self> if into_left is true. Converts self into a Right variant of Either<Self, Self> otherwise. Read more
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fn into_either_with<F>(self, into_left: F) -> Either<Self, Self>
where F: FnOnce(&Self) -> bool,

Converts self into a Left variant of Either<Self, Self> if into_left(&self) returns true. Converts self into a Right variant of Either<Self, Self> otherwise. Read more
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impl<T> Same for T

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type Output = T

Should always be Self
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impl<SS, SP> SupersetOf<SS> for SP
where SS: SubsetOf<SP>,

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fn to_subset(&self) -> Option<SS>

The inverse inclusion map: attempts to construct self from the equivalent element of its superset. Read more
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fn is_in_subset(&self) -> bool

Checks if self is actually part of its subset T (and can be converted to it).
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fn to_subset_unchecked(&self) -> SS

Use with care! Same as self.to_subset but without any property checks. Always succeeds.
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fn from_subset(element: &SS) -> SP

The inclusion map: converts self to the equivalent element of its superset.
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impl<T> Transform for T
where T: Canonical,

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fn nat_param<F>( lin_pred: ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, ) -> ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>
where F: Float,

By defintion this function is the identity function for canonical links.

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fn adjust_errors<F>( errors: ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, _lin_pred: &ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, ) -> ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>
where F: Float,

The canonical link function requires no transformation of the error and variance terms.

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fn d_nat_param<F>( lin_pred: &ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, ) -> ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>
where F: Float,

The derivative $\eta'(\omega)$ of the transformation to the natural parameter. If it is zero in a region that the IRLS is in, the algorithm may have difficulty converging. It is given in terms of the link and variance functions as $\eta'(\omega_i) = \frac{1}{g'(\mu_i) V(\mu_i)}$.
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fn adjust_variance<F>( variance: ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, _lin_pred: &ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, ) -> ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>
where F: Float,

Adjust the variance terms of the likelihood function based on the first and second derivatives of the transformation. The linear predictor must be un-transformed, i.e. it must be X*beta without the transformation applied.
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fn adjust_errors_variance<F>( errors: ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, variance: ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, _lin_pred: &ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, ) -> (ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>, ArrayBase<OwnedRepr<F>, Dim<[usize; 1]>>)
where F: Float,

Adjust the error and variance terms of the likelihood function based on the first and second derivatives of the transformation. The adjustment is performed simultaneously. The linear predictor must be un-transformed, i.e. it must be X*beta without the transformation applied.
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impl<T, U> TryFrom<U> for T
where U: Into<T>,

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type Error = Infallible

The type returned in the event of a conversion error.
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fn try_from(value: U) -> Result<T, <T as TryFrom<U>>::Error>

Performs the conversion.
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impl<T, U> TryInto<U> for T
where U: TryFrom<T>,

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type Error = <U as TryFrom<T>>::Error

The type returned in the event of a conversion error.
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fn try_into(self) -> Result<U, <U as TryFrom<T>>::Error>

Performs the conversion.
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impl<V, T> VZip<V> for T
where V: MultiLane<T>,

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fn vzip(self) -> V