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"""
Stock 15-minute return prediction experiments.
This module provides dataset loading and experiment utilities for
stock 15-minute (intraday) return prediction.
Example:
>>> from alpha_lab.stock_15m import Stock15mLoader
>>>
>>> loader = Stock15mLoader(
... normalization_mode='dual',
... positive_factor=1.0,
... negative_factor=2.0
... )
>>> dataset = loader.load(
... dt_range=['2020-01-01', '2023-12-31'],
... feature_path='/data/parquet/stock_1min_alpha158',
... kline_path='/data/parquet/stock_1min_kline'
... )
>>>
>>> # Extract training data
>>> X_train, y_train, w_train = dataset.to_numpy()
Training:
>>> from alpha_lab.stock_15m import train_model, TrainConfig
>>>
>>> config = TrainConfig(
... dt_range=['2020-01-01', '2023-12-31'],
... feature_path='/data/parquet/stock_1min_alpha158',
... kline_path='/data/parquet/stock_1min_kline'
... )
>>> model, metrics = train_model(config, output_dir='results/exp01')
"""
# Re-export all public APIs from src submodules
from .src import Stock15mLoader
try:
from .src import train_model, TrainConfig
__all__ = ['Stock15mLoader', 'train_model', 'TrainConfig']
except ImportError:
# xgboost or sklearn not installed
__all__ = ['Stock15mLoader']