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Allow 2-parameter lambda_sampling #19

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Feb 23, 2023
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8 changes: 6 additions & 2 deletions hierarc/Likelihood/cosmo_likelihood.py
Original file line number Diff line number Diff line change
Expand Up @@ -17,7 +17,8 @@ def __init__(self, kwargs_likelihood_list, cosmology, kwargs_bounds, sne_likelih
kwargs_sne_likelihood=None, KDE_likelihood_chain=None, kwargs_kde_likelihood=None,
ppn_sampling=False,
lambda_mst_sampling=False, lambda_mst_distribution='delta', anisotropy_sampling=False,
kappa_ext_sampling=False, kappa_ext_distribution='NONE', alpha_lambda_sampling=False,
kappa_ext_sampling=False, kappa_ext_distribution='NONE',
alpha_lambda_sampling=False, beta_lambda_sampling=False,
lambda_ifu_sampling=False, lambda_ifu_distribution='NONE', sigma_v_systematics=False,
sne_apparent_m_sampling=False, sne_distribution='GAUSSIAN', z_apparent_m_anchor=0.1,
log_scatter=False,
Expand All @@ -44,7 +45,9 @@ def __init__(self, kwargs_likelihood_list, cosmology, kwargs_bounds, sne_likelih
independently
:param lambda_ifu_distribution: string, distribution function of the lambda_ifu parameter
:param alpha_lambda_sampling: bool, if True samples a parameter alpha_lambda, which scales lambda_mst linearly
according to a predefined quantity of the lens
according to the lens posterior kwargs 'lambda_scaling_property'
:param beta_lambda_sampling: bool, if True samples a parameter beta_lambda, which scales lambda_mst linearly
according to the lens posterior kwargs 'lambda_scaling_property_beta'
:param kappa_ext_sampling: bool, if True samples a global external convergence parameter
:param kappa_ext_distribution: string, distribution function of the kappa_ext parameter
:param anisotropy_sampling: bool, if True adds a global stellar anisotropy parameter that alters the single lens
Expand Down Expand Up @@ -75,6 +78,7 @@ def __init__(self, kwargs_likelihood_list, cosmology, kwargs_bounds, sne_likelih
lambda_ifu_sampling=lambda_ifu_sampling,
lambda_ifu_distribution=lambda_ifu_distribution,
alpha_lambda_sampling=alpha_lambda_sampling,
beta_lambda_sampling=beta_lambda_sampling,
sne_apparent_m_sampling=sne_apparent_m_sampling,
sne_distribution=sne_distribution, z_apparent_m_anchor=z_apparent_m_anchor,
sigma_v_systematics=sigma_v_systematics,
Expand Down
16 changes: 12 additions & 4 deletions hierarc/Likelihood/hierarchy_likelihood.py
Original file line number Diff line number Diff line change
Expand Up @@ -13,7 +13,8 @@ class LensLikelihood(TransformedCosmography, LensLikelihoodBase, AnisotropyScali
def __init__(self, z_lens, z_source, name='name', likelihood_type='TDKin', anisotropy_model='NONE',
ani_param_array=None, ani_scaling_array_list=None, ani_scaling_array=None,
num_distribution_draws=50, kappa_ext_bias=False, kappa_pdf=None, kappa_bin_edges=None, mst_ifu=False,
lambda_scaling_property=0, normalized=False, kwargs_lens_properties=None, **kwargs_likelihood):
lambda_scaling_property=0,lambda_scaling_property_beta=0,
normalized=False, kwargs_lens_properties=None, **kwargs_likelihood):
"""

:param z_lens: lens redshift
Expand All @@ -37,6 +38,8 @@ def __init__(self, z_lens, z_source, name='name', likelihood_type='TDKin', aniso
in sampling this lens.
:param lambda_scaling_property: float (optional), scaling of
lambda_mst = lambda_mst_global + alpha * lambda_scaling_property
:param lambda_scaling_property_beta: float (optional), scaling of
lambda_mst = lambda_mst_global + beta * lambda_scaling_property_beta
:param normalized: bool, if True, returns the normalized likelihood, if False, separates the constant prefactor
(in case of a Gaussian 1/(sigma sqrt(2 pi)) ) to compute the reduced chi2 statistics
:param kwargs_lens_properties: keyword arguments of the lens properties
Expand All @@ -60,6 +63,7 @@ def __init__(self, z_lens, z_source, name='name', likelihood_type='TDKin', aniso
else:
self._draw_kappa = False
self._lambda_scaling_property = lambda_scaling_property
self._lambda_scaling_property_beta = lambda_scaling_property_beta

def lens_log_likelihood(self, cosmo, kwargs_lens=None, kwargs_kin=None, kwargs_source=None):
"""
Expand Down Expand Up @@ -199,7 +203,7 @@ def check_dist(self, kwargs_lens, kwargs_kin, kwargs_source):
return False

def draw_lens(self, lambda_mst=1, lambda_mst_sigma=0, kappa_ext=0, kappa_ext_sigma=0, gamma_ppn=1, lambda_ifu=1,
lambda_ifu_sigma=0, alpha_lambda=0):
lambda_ifu_sigma=0, alpha_lambda=0, beta_lambda=0):
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add documentation for beta_lambda

"""
draws a realization of a specific model from the hyper-parameter distribution

Expand All @@ -212,13 +216,17 @@ def draw_lens(self, lambda_mst=1, lambda_mst_sigma=0, kappa_ext=0, kappa_ext_sig
:param lambda_ifu_sigma: secondary lambda_mst_sigma parameter for subset of lenses specified for
:param alpha_lambda: float, linear slope of the lambda_int scaling relation with lens quantity
self._lambda_scaling_property
:param beta_lambda: float, a second linear slope of the lambda_int scaling relation with lens quantity
self._lambda_scaling_property_beta
:return: draw from the distributions
"""
if self._mst_ifu is True:
lambda_lens = lambda_ifu + alpha_lambda * self._lambda_scaling_property
lambda_lens = lambda_ifu + alpha_lambda * self._lambda_scaling_property \
+ beta_lambda * self._lambda_scaling_property_beta
lambda_mst_draw = np.random.normal(lambda_lens, lambda_ifu_sigma)
else:
lambda_lens = lambda_mst + alpha_lambda * self._lambda_scaling_property
lambda_lens = lambda_mst + alpha_lambda * self._lambda_scaling_property \
+ beta_lambda * self._lambda_scaling_property_beta
lambda_mst_draw = np.random.normal(lambda_lens, lambda_mst_sigma)
if self._draw_kappa is True:
kappa_ext_draw = self._kappa_dist.draw_one
Expand Down
20 changes: 19 additions & 1 deletion hierarc/Sampling/ParamManager/lens_param.py
Original file line number Diff line number Diff line change
Expand Up @@ -7,7 +7,7 @@ class LensParam(object):
"""
def __init__(self, lambda_mst_sampling=False, lambda_mst_distribution='NONE', kappa_ext_sampling=False,
kappa_ext_distribution='NONE', lambda_ifu_sampling=False, lambda_ifu_distribution='NONE',
alpha_lambda_sampling=False, kwargs_fixed=None, log_scatter=False):
alpha_lambda_sampling=False, beta_lambda_sampling=False, kwargs_fixed=None, log_scatter=False):
"""

:param lambda_mst_sampling: bool, if True adds a global mass-sheet transform parameter in the sampling
Expand All @@ -19,6 +19,8 @@ def __init__(self, lambda_mst_sampling=False, lambda_mst_distribution='NONE', ka
:param lambda_ifu_distribution: string, distribution function of the lambda_ifu parameter
:param alpha_lambda_sampling: bool, if True samples a parameter alpha_lambda, which scales lambda_mst linearly
according to a predefined quantity of the lens
:param beta_lambda_sampling: bool, if True samples a parameter beta_lambda, which scales lambda_mst linearly
according to a predefined quantity of the lens
:param log_scatter: boolean, if True, samples the Gaussian scatter amplitude in log space (and thus flat prior in log)
:param kwargs_fixed: keyword arguments that are held fixed through the sampling
"""
Expand All @@ -29,6 +31,7 @@ def __init__(self, lambda_mst_sampling=False, lambda_mst_distribution='NONE', ka
self._kappa_ext_sampling = kappa_ext_sampling
self._kappa_ext_distribution = kappa_ext_distribution
self._alpha_lambda_sampling = alpha_lambda_sampling
self._beta_lambda_sampling = beta_lambda_sampling
self._log_scatter = log_scatter
if kwargs_fixed is None:
kwargs_fixed = {}
Expand Down Expand Up @@ -89,6 +92,12 @@ def param_list(self, latex_style=False):
list.append(r'$\alpha_{\lambda}$')
else:
list.append('alpha_lambda')
if self._beta_lambda_sampling is True:
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add test function

if 'beta_lambda' not in self._kwargs_fixed:
if latex_style is True:
list.append(r'$\beta_{\lambda}$')
else:
list.append('beta_lambda')
return list

def args2kwargs(self, args, i=0):
Expand Down Expand Up @@ -146,6 +155,12 @@ def args2kwargs(self, args, i=0):
else:
kwargs['alpha_lambda'] = args[i]
i += 1
if self._beta_lambda_sampling is True:
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add test function

if 'beta_lambda' in self._kwargs_fixed:
kwargs['beta_lambda'] = self._kwargs_fixed['beta_lambda']
else:
kwargs['beta_lambda'] = args[i]
i += 1
return kwargs, i

def kwargs2args(self, kwargs):
Expand Down Expand Up @@ -182,4 +197,7 @@ def kwargs2args(self, kwargs):
if self._alpha_lambda_sampling is True:
if 'alpha_lambda' not in self._kwargs_fixed:
args.append(kwargs['alpha_lambda'])
if self._beta_lambda_sampling is True:
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add test function

if 'beta_lambda' not in self._kwargs_fixed:
args.append(kwargs['beta_lambda'])
return args
6 changes: 5 additions & 1 deletion hierarc/Sampling/ParamManager/param_manager.py
Original file line number Diff line number Diff line change
Expand Up @@ -11,7 +11,8 @@ class for managing the parameters involved
def __init__(self, cosmology, ppn_sampling=False, lambda_mst_sampling=False, lambda_mst_distribution='NONE',
anisotropy_sampling=False, anisotropy_model='OM', anisotropy_distribution='NONE',
kappa_ext_sampling=False, kappa_ext_distribution='NONE', lambda_ifu_sampling=False,
lambda_ifu_distribution='NONE', alpha_lambda_sampling=False, sigma_v_systematics=False,
lambda_ifu_distribution='NONE', alpha_lambda_sampling=False, beta_lambda_sampling=False,
sigma_v_systematics=False,
sne_apparent_m_sampling=False, sne_distribution='GAUSSIAN', z_apparent_m_anchor=0.1,
log_scatter=False,
kwargs_lower_cosmo=None, kwargs_upper_cosmo=None,
Expand All @@ -28,6 +29,8 @@ def __init__(self, cosmology, ppn_sampling=False, lambda_mst_sampling=False, lam
independently
:param alpha_lambda_sampling: bool, if True samples a parameter alpha_lambda, which scales lambda_mst linearly
according to a predefined quantity of the lens
:param beta_lambda_sampling: bool, if True samples a parameter beta_lambda, which scales lambda_mst linearly
according to a predefined quantity of the lens
:param lambda_ifu_distribution: string, distribution function of the lambda_ifu parameter
:param anisotropy_sampling: bool, if True adds a global stellar anisotropy parameter that alters the single lens
kinematic prediction
Expand All @@ -52,6 +55,7 @@ def __init__(self, cosmology, ppn_sampling=False, lambda_mst_sampling=False, lam
kappa_ext_sampling=kappa_ext_sampling,
kappa_ext_distribution=kappa_ext_distribution,
alpha_lambda_sampling=alpha_lambda_sampling,
beta_lambda_sampling=beta_lambda_sampling,
log_scatter=log_scatter,
kwargs_fixed=kwargs_fixed_lens)
self._source_param = SourceParam(sne_apparent_m_sampling=sne_apparent_m_sampling,
Expand Down
18 changes: 9 additions & 9 deletions test/test_Sampling/test_ParamManager/test_lens_param.py
Original file line number Diff line number Diff line change
Expand Up @@ -7,28 +7,28 @@ class TestLensParam(object):
def setup(self):
self._param = LensParam(lambda_mst_sampling=True, lambda_mst_distribution='GAUSSIAN', kappa_ext_sampling=True,
kappa_ext_distribution='GAUSSIAN', lambda_ifu_sampling=True, lambda_ifu_distribution='GAUSSIAN',
alpha_lambda_sampling=True, kwargs_fixed={})
alpha_lambda_sampling=True, beta_lambda_sampling=True, kwargs_fixed={})

kwargs_fixed = {'lambda_mst': 1, 'lambda_mst_sigma': 0.1, 'lambda_ifu': 1.1, 'lambda_ifu_sigma': 0.2,
'kappa_ext': 0.01, 'kappa_ext_sigma': 0.03, 'alpha_lambda': 0}
'kappa_ext': 0.01, 'kappa_ext_sigma': 0.03, 'alpha_lambda': 0, 'beta_lambda': 0 }
self._param_fixed = LensParam(lambda_mst_sampling=True, lambda_mst_distribution='GAUSSIAN', kappa_ext_sampling=True,
kappa_ext_distribution='GAUSSIAN', lambda_ifu_sampling=True,
lambda_ifu_distribution='GAUSSIAN', alpha_lambda_sampling=True,
lambda_ifu_distribution='GAUSSIAN', alpha_lambda_sampling=True, beta_lambda_sampling=True,
kwargs_fixed=kwargs_fixed)
self._param_log_scatter = LensParam(lambda_mst_sampling=True, lambda_mst_distribution='GAUSSIAN', kappa_ext_sampling=True,
kappa_ext_distribution='GAUSSIAN', lambda_ifu_sampling=True, lambda_ifu_distribution='GAUSSIAN',
alpha_lambda_sampling=True, log_scatter=True, kwargs_fixed={})
alpha_lambda_sampling=True, beta_lambda_sampling=True, log_scatter=True, kwargs_fixed={})

def test_param_list(self):
param_list = self._param.param_list(latex_style=False)
assert len(param_list) == 7
assert len(param_list) == 8
param_list = self._param.param_list(latex_style=True)
assert len(param_list) == 7
assert len(param_list) == 8

param_list = self._param_log_scatter.param_list(latex_style=False)
assert len(param_list) == 7
assert len(param_list) == 8
param_list = self._param_log_scatter.param_list(latex_style=True)
assert len(param_list) == 7
assert len(param_list) == 8

param_list = self._param_fixed.param_list(latex_style=False)
assert len(param_list) == 0
Expand All @@ -37,7 +37,7 @@ def test_param_list(self):

def test_args2kwargs(self):
kwargs = {'lambda_mst': 1.1, 'lambda_mst_sigma': 0.1, 'lambda_ifu': 1.1, 'lambda_ifu_sigma': 0.2,
'kappa_ext': 0.01, 'kappa_ext_sigma': 0.03, 'alpha_lambda': 0.1}
'kappa_ext': 0.01, 'kappa_ext_sigma': 0.03, 'alpha_lambda': 0.1, 'beta_lambda': 0.1}
args = self._param.kwargs2args(kwargs)
kwargs_new, i = self._param.args2kwargs(args, i=0)
args_new = self._param.kwargs2args(kwargs_new)
Expand Down