feat(training): 实现数据处理器
- 新增 StandardScaler:全局标准化,训练集学习参数,测试集复用 - 新增 CrossSectionalStandardScaler:截面标准化,每天独立计算 - 新增 Winsorizer:支持全局/截面两种缩尾模式 - 处理器统一遵循 fit/transform 接口,Trainer 可无差别调用 - 添加 17 个单元测试覆盖各种场景
This commit is contained in:
@@ -15,10 +15,20 @@ from src.training.components.selectors import (
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StockFilterConfig,
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)
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# 数据处理器
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from src.training.components.processors import (
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CrossSectionalStandardScaler,
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StandardScaler,
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Winsorizer,
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)
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__all__ = [
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"BaseModel",
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"BaseProcessor",
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"DateSplitter",
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"StockFilterConfig",
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"MarketCapSelectorConfig",
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"StandardScaler",
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"CrossSectionalStandardScaler",
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"Winsorizer",
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]
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16
src/training/components/processors/__init__.py
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16
src/training/components/processors/__init__.py
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@@ -0,0 +1,16 @@
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"""数据处理器子模块
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包含数据预处理、转换等处理器实现。
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"""
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from src.training.components.processors.transforms import (
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CrossSectionalStandardScaler,
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StandardScaler,
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Winsorizer,
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)
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__all__ = [
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"StandardScaler",
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"CrossSectionalStandardScaler",
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"Winsorizer",
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]
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275
src/training/components/processors/transforms.py
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275
src/training/components/processors/transforms.py
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@@ -0,0 +1,275 @@
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"""数据处理器实现
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包含标准化、缩尾等数据处理器。
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"""
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from typing import List, Optional
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import polars as pl
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from src.training.components.base import BaseProcessor
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from src.training.registry import register_processor
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@register_processor("standard_scaler")
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class StandardScaler(BaseProcessor):
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"""标准化处理器(全局标准化)
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在整个训练集上学习均值和标准差,
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然后应用到训练集和测试集。
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适用于需要全局统计量的场景。
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Attributes:
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exclude_cols: 不参与标准化的列名列表
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mean_: 学习到的均值字典 {列名: 均值}
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std_: 学习到的标准差字典 {列名: 标准差}
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"""
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name = "standard_scaler"
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def __init__(self, exclude_cols: Optional[List[str]] = None):
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"""初始化标准化处理器
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Args:
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exclude_cols: 不参与标准化的列名列表,默认为 ["ts_code", "trade_date"]
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"""
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self.exclude_cols = exclude_cols or ["ts_code", "trade_date"]
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self.mean_: dict = {}
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self.std_: dict = {}
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def fit(self, X: pl.DataFrame) -> "StandardScaler":
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"""计算均值和标准差(仅在训练集上)
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Args:
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X: 训练数据
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Returns:
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self
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"""
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numeric_cols = [
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c
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for c in X.columns
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if c not in self.exclude_cols and X[c].dtype.is_numeric()
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]
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for col in numeric_cols:
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self.mean_[col] = X[col].mean()
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self.std_[col] = X[col].std()
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return self
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def transform(self, X: pl.DataFrame) -> pl.DataFrame:
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"""标准化(使用训练集学到的参数)
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Args:
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X: 待转换数据
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Returns:
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标准化后的数据
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"""
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expressions = []
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for col in X.columns:
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if col in self.mean_ and col in self.std_:
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# 避免除以0
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std_val = self.std_[col] if self.std_[col] != 0 else 1.0
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expr = ((pl.col(col) - self.mean_[col]) / std_val).alias(col)
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expressions.append(expr)
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else:
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expressions.append(pl.col(col))
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return X.select(expressions)
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@register_processor("cs_standard_scaler")
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class CrossSectionalStandardScaler(BaseProcessor):
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"""截面标准化处理器
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每天独立进行标准化:对当天所有股票的某一因子进行标准化。
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特点:
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- 不需要 fit,每天独立计算当天的均值和标准差
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- 适用于截面因子,消除市值等行业差异
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- 公式:z = (x - mean_today) / std_today
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Attributes:
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exclude_cols: 不参与标准化的列名列表
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date_col: 日期列名
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"""
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name = "cs_standard_scaler"
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def __init__(
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self,
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exclude_cols: Optional[List[str]] = None,
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date_col: str = "trade_date",
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):
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"""初始化截面标准化处理器
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Args:
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exclude_cols: 不参与标准化的列名列表,默认为 ["ts_code", "trade_date"]
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date_col: 日期列名
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"""
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self.exclude_cols = exclude_cols or ["ts_code", "trade_date"]
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self.date_col = date_col
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def transform(self, X: pl.DataFrame) -> pl.DataFrame:
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"""截面标准化
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按日期分组,每天独立计算均值和标准差并标准化。
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不需要 fit,因为每天使用当天的统计量。
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Args:
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X: 待转换数据
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Returns:
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标准化后的数据
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"""
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numeric_cols = [
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c
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for c in X.columns
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if c not in self.exclude_cols and X[c].dtype.is_numeric()
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]
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# 构建表达式列表
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expressions = []
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for col in X.columns:
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if col in numeric_cols:
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# 截面标准化:每天独立计算均值和标准差
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# 避免除以0,当std为0时设为1
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expr = (
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(pl.col(col) - pl.col(col).mean().over(self.date_col))
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/ (pl.col(col).std().over(self.date_col) + 1e-10)
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).alias(col)
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expressions.append(expr)
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else:
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expressions.append(pl.col(col))
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return X.select(expressions)
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@register_processor("winsorizer")
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class Winsorizer(BaseProcessor):
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"""缩尾处理器
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对每一列的极端值进行截断处理。
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可以全局截断(在整个训练集上学习分位数),
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也可以截面截断(每天独立处理)。
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Attributes:
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lower: 下分位数(如0.01表示1%分位数)
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upper: 上分位数(如0.99表示99%分位数)
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by_date: True=每天独立缩尾, False=全局缩尾
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date_col: 日期列名
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bounds_: 存储分位数边界(全局模式)
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"""
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name = "winsorizer"
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def __init__(
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self,
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lower: float = 0.01,
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upper: float = 0.99,
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by_date: bool = False,
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date_col: str = "trade_date",
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):
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"""初始化缩尾处理器
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Args:
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lower: 下分位数,默认0.01
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upper: 上分位数,默认0.99
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by_date: 每天独立缩尾,默认False(全局缩尾)
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date_col: 日期列名
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Raises:
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ValueError: 分位数参数无效
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"""
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if not 0 <= lower < upper <= 1:
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raise ValueError(
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f"lower ({lower}) 必须小于 upper ({upper}),且都在 [0, 1] 范围内"
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)
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self.lower = lower
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self.upper = upper
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self.by_date = by_date
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self.date_col = date_col
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self.bounds_: dict = {}
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def fit(self, X: pl.DataFrame) -> "Winsorizer":
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"""学习分位数边界(仅在全局模式下)
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Args:
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X: 训练数据
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Returns:
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self
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"""
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if not self.by_date:
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numeric_cols = [c for c in X.columns if X[c].dtype.is_numeric()]
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for col in numeric_cols:
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self.bounds_[col] = {
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"lower": X[col].quantile(self.lower),
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"upper": X[col].quantile(self.upper),
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}
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return self
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def transform(self, X: pl.DataFrame) -> pl.DataFrame:
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"""缩尾处理
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Args:
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X: 待转换数据
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Returns:
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缩尾处理后的数据
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"""
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if self.by_date:
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return self._transform_by_date(X)
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else:
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return self._transform_global(X)
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def _transform_global(self, X: pl.DataFrame) -> pl.DataFrame:
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"""全局缩尾(使用训练集学到的边界)"""
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expressions = []
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for col in X.columns:
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if col in self.bounds_:
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lower = self.bounds_[col]["lower"]
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upper = self.bounds_[col]["upper"]
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expr = pl.col(col).clip(lower, upper).alias(col)
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expressions.append(expr)
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else:
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expressions.append(pl.col(col))
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return X.select(expressions)
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def _transform_by_date(self, X: pl.DataFrame) -> pl.DataFrame:
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"""每日独立缩尾"""
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numeric_cols = [c for c in X.columns if X[c].dtype.is_numeric()]
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# 先计算每天的分位数
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lower_exprs = [
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pl.col(col).quantile(self.lower).over(self.date_col).alias(f"{col}_lower")
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for col in numeric_cols
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]
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upper_exprs = [
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pl.col(col).quantile(self.upper).over(self.date_col).alias(f"{col}_upper")
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for col in numeric_cols
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]
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# 添加分位数列
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result = X.with_columns(lower_exprs + upper_exprs)
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# 执行缩尾
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clip_exprs = []
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for col in X.columns:
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if col in numeric_cols:
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clipped = (
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pl.col(col)
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.clip(pl.col(f"{col}_lower"), pl.col(f"{col}_upper"))
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.alias(col)
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)
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clip_exprs.append(clipped)
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else:
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clip_exprs.append(pl.col(col))
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result = result.select(clip_exprs)
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return result
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300
tests/training/test_processors.py
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300
tests/training/test_processors.py
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@@ -0,0 +1,300 @@
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"""测试数据处理器
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验证 StandardScaler、CrossSectionalStandardScaler 和 Winsorizer 功能。
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"""
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import numpy as np
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import polars as pl
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import pytest
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from src.training.components.processors import (
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CrossSectionalStandardScaler,
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StandardScaler,
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Winsorizer,
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)
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class TestStandardScaler:
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"""StandardScaler 测试类"""
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def test_init_default(self):
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"""测试默认初始化"""
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scaler = StandardScaler()
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assert scaler.exclude_cols == ["ts_code", "trade_date"]
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assert scaler.mean_ == {}
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assert scaler.std_ == {}
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def test_init_custom_exclude(self):
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"""测试自定义排除列"""
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scaler = StandardScaler(exclude_cols=["id", "date"])
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assert scaler.exclude_cols == ["id", "date"]
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def test_fit_transform(self):
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"""测试拟合和转换"""
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data = pl.DataFrame(
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{
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"ts_code": ["A", "B", "C", "D"],
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"trade_date": ["20240101"] * 4,
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"value": [1.0, 2.0, 3.0, 4.0],
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}
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)
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scaler = StandardScaler()
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result = scaler.fit_transform(data)
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# 验证学习到的统计量
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assert scaler.mean_["value"] == 2.5
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assert scaler.std_["value"] == pytest.approx(1.290, rel=1e-2)
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# 验证转换结果
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expected_std = (np.array([1.0, 2.0, 3.0, 4.0]) - 2.5) / 1.290
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assert result["value"].to_list() == pytest.approx(
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expected_std.tolist(), rel=1e-2
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)
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def test_transform_use_fitted_params(self):
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"""测试转换使用拟合时的参数"""
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train_data = pl.DataFrame(
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{
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"ts_code": ["A", "B", "C"],
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"trade_date": ["20240101"] * 3,
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"value": [1.0, 2.0, 3.0],
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}
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)
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test_data = pl.DataFrame(
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{
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"ts_code": ["D"],
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"trade_date": ["20240102"],
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"value": [100.0], # 远离训练分布
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}
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)
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scaler = StandardScaler()
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scaler.fit(train_data)
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# 使用训练集的均值(2.0)和标准差进行转换
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result = scaler.transform(test_data)
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expected = (100.0 - 2.0) / 1.0 # 均值2.0, 标准差1.0
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assert result["value"][0] == pytest.approx(expected, rel=1e-2)
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def test_exclude_non_numeric(self):
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"""测试自动排除非数值列"""
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data = pl.DataFrame(
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{
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"ts_code": ["A", "B"],
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"trade_date": ["20240101", "20240102"],
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"category": ["X", "Y"], # 字符串列
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"value": [1.0, 2.0],
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}
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)
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scaler = StandardScaler()
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result = scaler.fit_transform(data)
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# category 列应该原样保留
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assert result["category"].to_list() == ["X", "Y"]
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# value 列应该被标准化
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assert "value" in scaler.mean_
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def test_zero_std_handling(self):
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"""测试处理标准差为0的情况"""
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data = pl.DataFrame(
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{
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"ts_code": ["A", "B"],
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"trade_date": ["20240101", "20240102"],
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"constant": [5.0, 5.0], # 常数列
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}
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)
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scaler = StandardScaler()
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result = scaler.fit_transform(data)
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# 标准差为0时,结果应该为0(避免除以0)
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assert result["constant"].to_list() == [0.0, 0.0]
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class TestCrossSectionalStandardScaler:
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"""CrossSectionalStandardScaler 测试类"""
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def test_init_default(self):
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"""测试默认初始化"""
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scaler = CrossSectionalStandardScaler()
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assert scaler.exclude_cols == ["ts_code", "trade_date"]
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assert scaler.date_col == "trade_date"
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def test_init_custom(self):
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"""测试自定义参数"""
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scaler = CrossSectionalStandardScaler(
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exclude_cols=["id"],
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date_col="date",
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)
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assert scaler.exclude_cols == ["id"]
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assert scaler.date_col == "date"
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def test_transform_no_fit_needed(self):
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"""测试不需要 fit"""
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data = pl.DataFrame(
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{
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"ts_code": ["A", "B"],
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"trade_date": ["20240101", "20240101"],
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"value": [1.0, 3.0],
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}
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)
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scaler = CrossSectionalStandardScaler()
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# 截面标准化不需要 fit
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result = scaler.transform(data)
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# 当天均值=2.0, 样本标准差=sqrt(2)≈1.414, z-score=[-0.707, 0.707]
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assert result["value"].to_list() == pytest.approx([-0.707, 0.707], rel=1e-2)
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||||
def test_transform_by_date(self):
|
||||
"""测试按日期分组标准化"""
|
||||
data = pl.DataFrame(
|
||||
{
|
||||
"ts_code": ["A", "B", "C", "D"],
|
||||
"trade_date": ["20240101", "20240101", "20240102", "20240102"],
|
||||
"value": [1.0, 3.0, 10.0, 30.0],
|
||||
}
|
||||
)
|
||||
|
||||
scaler = CrossSectionalStandardScaler()
|
||||
result = scaler.transform(data)
|
||||
|
||||
# 2024-01-01: 均值=2.0, 样本std≈1.414 -> [-0.707, 0.707]
|
||||
# 2024-01-02: 均值=20.0, 样本std≈14.14 -> [-0.707, 0.707]
|
||||
values = result["value"].to_list()
|
||||
assert values[0] == pytest.approx(-0.707, abs=1e-2)
|
||||
assert values[1] == pytest.approx(0.707, abs=1e-2)
|
||||
assert values[2] == pytest.approx(-0.707, abs=1e-2)
|
||||
assert values[3] == pytest.approx(0.707, abs=1e-2)
|
||||
|
||||
def test_exclude_columns_preserved(self):
|
||||
"""测试排除列保持原样"""
|
||||
data = pl.DataFrame(
|
||||
{
|
||||
"ts_code": ["A", "B"],
|
||||
"trade_date": ["20240101", "20240101"],
|
||||
"value": [1.0, 3.0],
|
||||
}
|
||||
)
|
||||
|
||||
scaler = CrossSectionalStandardScaler()
|
||||
result = scaler.transform(data)
|
||||
|
||||
assert result["ts_code"].to_list() == ["A", "B"]
|
||||
assert result["trade_date"].to_list() == ["20240101", "20240101"]
|
||||
|
||||
|
||||
class TestWinsorizer:
|
||||
"""Winsorizer 测试类"""
|
||||
|
||||
def test_init_default(self):
|
||||
"""测试默认初始化"""
|
||||
winsorizer = Winsorizer()
|
||||
assert winsorizer.lower == 0.01
|
||||
assert winsorizer.upper == 0.99
|
||||
assert winsorizer.by_date is False
|
||||
assert winsorizer.date_col == "trade_date"
|
||||
|
||||
def test_init_custom(self):
|
||||
"""测试自定义参数"""
|
||||
winsorizer = Winsorizer(lower=0.05, upper=0.95, by_date=True, date_col="date")
|
||||
assert winsorizer.lower == 0.05
|
||||
assert winsorizer.upper == 0.95
|
||||
assert winsorizer.by_date is True
|
||||
assert winsorizer.date_col == "date"
|
||||
|
||||
def test_invalid_quantiles(self):
|
||||
"""测试无效的分位数参数"""
|
||||
with pytest.raises(ValueError, match="lower .* 必须小于 upper"):
|
||||
Winsorizer(lower=0.5, upper=0.3)
|
||||
|
||||
with pytest.raises(ValueError, match="lower .* 必须小于 upper"):
|
||||
Winsorizer(lower=-0.1, upper=0.5)
|
||||
|
||||
with pytest.raises(ValueError, match="lower .* 必须小于 upper"):
|
||||
Winsorizer(lower=0.5, upper=1.5)
|
||||
|
||||
def test_global_winsorize(self):
|
||||
"""测试全局缩尾"""
|
||||
# 创建包含极端值的数据
|
||||
values = list(range(1, 101)) # 1-100
|
||||
values[0] = -1000 # 极端小值
|
||||
values[-1] = 1000 # 极端大值
|
||||
|
||||
data = pl.DataFrame(
|
||||
{
|
||||
"ts_code": [f"A{i}" for i in range(100)],
|
||||
"trade_date": ["20240101"] * 100,
|
||||
"value": values,
|
||||
}
|
||||
)
|
||||
|
||||
winsorizer = Winsorizer(lower=0.01, upper=0.99)
|
||||
result = winsorizer.fit_transform(data)
|
||||
|
||||
# 1%分位数=2, 99%分位数=99
|
||||
# -1000 应该被截断为 2
|
||||
# 1000 应该被截断为 99
|
||||
result_values = result["value"].to_list()
|
||||
assert result_values[0] == 2 # 原-1000被截断
|
||||
assert result_values[-1] == 99 # 原1000被截断
|
||||
assert result_values[1] == 2 # 原2保持不变
|
||||
assert result_values[98] == 99 # 原99保持不变
|
||||
|
||||
def test_by_date_winsorize(self):
|
||||
"""测试每日独立缩尾"""
|
||||
data = pl.DataFrame(
|
||||
{
|
||||
"ts_code": ["A", "B", "C", "D", "E", "F"],
|
||||
"trade_date": ["20240101"] * 3 + ["20240102"] * 3,
|
||||
"value": [1.0, 50.0, 100.0, 200.0, 250.0, 300.0],
|
||||
}
|
||||
)
|
||||
|
||||
winsorizer = Winsorizer(lower=0.0, upper=0.5, by_date=True)
|
||||
result = winsorizer.transform(data)
|
||||
|
||||
# 每天独立处理:
|
||||
# 2024-01-01: [1, 50, 100], 50%分位数=50
|
||||
# -> 截断为 [1, 50, 50]
|
||||
# 2024-01-02: [200, 250, 300], 50%分位数=250
|
||||
# -> 截断为 [200, 250, 250]
|
||||
result_values = result["value"].to_list()
|
||||
assert result_values[0] == 1.0
|
||||
assert result_values[1] == 50.0
|
||||
assert result_values[2] == 50.0 # 被截断
|
||||
assert result_values[3] == 200.0
|
||||
assert result_values[4] == 250.0
|
||||
assert result_values[5] == 250.0 # 被截断
|
||||
|
||||
def test_global_transform_after_fit(self):
|
||||
"""测试全局模式下,转换使用拟合时的边界"""
|
||||
train_data = pl.DataFrame(
|
||||
{
|
||||
"ts_code": ["A", "B", "C"],
|
||||
"trade_date": ["20240101"] * 3,
|
||||
"value": [1.0, 50.0, 100.0],
|
||||
}
|
||||
)
|
||||
|
||||
test_data = pl.DataFrame(
|
||||
{
|
||||
"ts_code": ["D"],
|
||||
"trade_date": ["20240102"],
|
||||
"value": [200.0],
|
||||
}
|
||||
)
|
||||
|
||||
winsorizer = Winsorizer(lower=0.0, upper=1.0) # 0%和100%分位数
|
||||
winsorizer.fit(train_data)
|
||||
|
||||
# 使用训练集的分位数边界 [1, 100]
|
||||
result = winsorizer.transform(test_data)
|
||||
assert result["value"][0] == 100.0 # 被截断为100
|
||||
|
||||
|
||||
if __name__ == "__main__":
|
||||
pytest.main([__file__, "-v"])
|
||||
Reference in New Issue
Block a user