Source code for feets.extractors.ext_weighted_mean

#!/usr/bin/env python
# -*- coding: utf-8 -*-
# Copyright (c) 2017-2024, Cabral, Juan
# Copyright (c) 2025, QuatroPe; ClariĆ”, Felipe
# License: MIT
# Full Text:
#     https://github.com/quatrope/feets/blob/master/LICENSE

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# DOC
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"""Weighted mean extractor."""

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# IMPORTS
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from light_curve import WeightedMean as _WeightedMean

from .light_curve_extractor import LightCurveExtractor
from ..libs import doctools


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# EXTRACTOR CLASS
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[docs] class WeightedMean(LightCurveExtractor): r"""Weighted mean magnitude. **WeightedMean** (:math:`\bar{m}`) .. math:: \bar{m} = \frac{\sum_i m_i / \delta_i^2}{\sum_i 1 / \delta_i^2}. Parameters ---------- transform : str or bool or None, optional Transformer to apply to the feature values. If str, must be one of: - 'default' - use default transformer for the feature, it same as giving True. The default for this feature is 'identity' - 'arcsinh' - Hyperbolic arcsine feature transformer - 'clipped_lg' - Decimal logarithm of a value clipped to a minimum value - 'identity' - Identity feature transformer - 'lg' - Decimal logarithm feature transformer - 'ln1p' - :math:`ln(1+x)` feature transformer - 'sqrt' - Square root feature transformer If bool, must be True to use default transformer or False to disable. If None, no transformation is applied. See Also -------- feets.extractors.Mean """ features = ["WeightedMean"] def __init__(self, transform=None): self.transform = transform self._extract = _WeightedMean(**self.params)
[docs] @doctools.doc_inherit(LightCurveExtractor.extract) def extract(self, magnitude, error, time=None): """ Parameters ---------- magnitude : array-like error : array-like time : array-like, optional """ [weighted_mean] = self._extract(time, magnitude, error) return {"WeightedMean": weighted_mean}