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161 lines
5.3 KiB
Python
161 lines
5.3 KiB
Python
import sys
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from _typeshed import Self, SupportsRichComparisonT
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from decimal import Decimal
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from fractions import Fraction
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from typing import Any, Hashable, Iterable, NamedTuple, Sequence, SupportsFloat, TypeVar, Union
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if sys.version_info >= (3, 10):
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__all__ = [
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"NormalDist",
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"StatisticsError",
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"correlation",
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"covariance",
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"fmean",
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"geometric_mean",
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"harmonic_mean",
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"linear_regression",
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"mean",
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"median",
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"median_grouped",
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"median_high",
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"median_low",
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"mode",
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"multimode",
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"pstdev",
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"pvariance",
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"quantiles",
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"stdev",
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"variance",
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]
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elif sys.version_info >= (3, 8):
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__all__ = [
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"NormalDist",
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"StatisticsError",
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"fmean",
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"geometric_mean",
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"harmonic_mean",
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"mean",
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"median",
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"median_grouped",
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"median_high",
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"median_low",
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"mode",
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"multimode",
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"pstdev",
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"pvariance",
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"quantiles",
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"stdev",
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"variance",
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]
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else:
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__all__ = [
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"StatisticsError",
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"pstdev",
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"pvariance",
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"stdev",
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"variance",
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"median",
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"median_low",
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"median_high",
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"median_grouped",
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"mean",
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"mode",
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"harmonic_mean",
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]
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# Most functions in this module accept homogeneous collections of one of these types
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_Number = Union[float, Decimal, Fraction]
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_NumberT = TypeVar("_NumberT", float, Decimal, Fraction)
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# Used in mode, multimode
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_HashableT = TypeVar("_HashableT", bound=Hashable)
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class StatisticsError(ValueError): ...
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if sys.version_info >= (3, 11):
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def fmean(data: Iterable[SupportsFloat], weights: Iterable[SupportsFloat] | None = ...) -> float: ...
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elif sys.version_info >= (3, 8):
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def fmean(data: Iterable[SupportsFloat]) -> float: ...
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if sys.version_info >= (3, 8):
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def geometric_mean(data: Iterable[SupportsFloat]) -> float: ...
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def mean(data: Iterable[_NumberT]) -> _NumberT: ...
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if sys.version_info >= (3, 10):
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def harmonic_mean(data: Iterable[_NumberT], weights: Iterable[_Number] | None = ...) -> _NumberT: ...
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else:
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def harmonic_mean(data: Iterable[_NumberT]) -> _NumberT: ...
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def median(data: Iterable[_NumberT]) -> _NumberT: ...
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def median_low(data: Iterable[SupportsRichComparisonT]) -> SupportsRichComparisonT: ...
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def median_high(data: Iterable[SupportsRichComparisonT]) -> SupportsRichComparisonT: ...
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def median_grouped(data: Iterable[_NumberT], interval: _NumberT = ...) -> _NumberT: ...
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def mode(data: Iterable[_HashableT]) -> _HashableT: ...
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if sys.version_info >= (3, 8):
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def multimode(data: Iterable[_HashableT]) -> list[_HashableT]: ...
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def pstdev(data: Iterable[_NumberT], mu: _NumberT | None = ...) -> _NumberT: ...
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def pvariance(data: Iterable[_NumberT], mu: _NumberT | None = ...) -> _NumberT: ...
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if sys.version_info >= (3, 8):
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def quantiles(data: Iterable[_NumberT], *, n: int = ..., method: str = ...) -> list[_NumberT]: ...
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def stdev(data: Iterable[_NumberT], xbar: _NumberT | None = ...) -> _NumberT: ...
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def variance(data: Iterable[_NumberT], xbar: _NumberT | None = ...) -> _NumberT: ...
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if sys.version_info >= (3, 8):
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class NormalDist:
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def __init__(self, mu: float = ..., sigma: float = ...) -> None: ...
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@property
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def mean(self) -> float: ...
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@property
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def median(self) -> float: ...
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@property
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def mode(self) -> float: ...
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@property
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def stdev(self) -> float: ...
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@property
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def variance(self) -> float: ...
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@classmethod
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def from_samples(cls: type[Self], data: Iterable[SupportsFloat]) -> Self: ...
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def samples(self, n: int, *, seed: Any | None = ...) -> list[float]: ...
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def pdf(self, x: float) -> float: ...
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def cdf(self, x: float) -> float: ...
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def inv_cdf(self, p: float) -> float: ...
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def overlap(self, other: NormalDist) -> float: ...
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def quantiles(self, n: int = ...) -> list[float]: ...
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if sys.version_info >= (3, 9):
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def zscore(self, x: float) -> float: ...
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def __eq__(self, x2: object) -> bool: ...
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def __add__(self, x2: float | NormalDist) -> NormalDist: ...
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def __sub__(self, x2: float | NormalDist) -> NormalDist: ...
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def __mul__(self, x2: float) -> NormalDist: ...
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def __truediv__(self, x2: float) -> NormalDist: ...
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def __pos__(self) -> NormalDist: ...
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def __neg__(self) -> NormalDist: ...
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__radd__ = __add__
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def __rsub__(self, x2: float | NormalDist) -> NormalDist: ...
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__rmul__ = __mul__
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def __hash__(self) -> int: ...
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if sys.version_info >= (3, 10):
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def correlation(__x: Sequence[_Number], __y: Sequence[_Number]) -> float: ...
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def covariance(__x: Sequence[_Number], __y: Sequence[_Number]) -> float: ...
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class LinearRegression(NamedTuple):
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slope: float
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intercept: float
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if sys.version_info >= (3, 11):
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def linear_regression(
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__regressor: Sequence[_Number], __dependent_variable: Sequence[_Number], *, proportional: bool = ...
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) -> LinearRegression: ...
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elif sys.version_info >= (3, 10):
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def linear_regression(__regressor: Sequence[_Number], __dependent_variable: Sequence[_Number]) -> LinearRegression: ...
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