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synced 2026-07-13 15:56:57 +08:00
Allow enhanced indexing to generate portfolio without industry related restriction.
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@@ -291,7 +291,7 @@ class EnhancedIndexingOptimizer(BaseOptimizer):
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lamb: float = 10,
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lamb: float = 10,
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delta: float = 0.4,
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delta: float = 0.4,
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bench_dev: float = 0.01,
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bench_dev: float = 0.01,
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inds_dev: float = 0.01,
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inds_dev: float = None,
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scale_alpha: bool = True,
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scale_alpha: bool = True,
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verbose: bool = False,
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verbose: bool = False,
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warm_start: str = DO_NOT_START_FROM,
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warm_start: str = DO_NOT_START_FROM,
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@@ -302,7 +302,8 @@ class EnhancedIndexingOptimizer(BaseOptimizer):
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lamb (float): risk aversion parameter (larger `lamb` means less focus on return)
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lamb (float): risk aversion parameter (larger `lamb` means less focus on return)
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delta (float): turnover rate limit
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delta (float): turnover rate limit
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bench_dev (float): benchmark deviation limit
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bench_dev (float): benchmark deviation limit
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inds_dev (float): industry deviation limit
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inds_dev (float/None): industry deviation limit, set `inds_dev` to None to ignore industry specific
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restriction
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scale_alpha (bool): if to scale alpha to match the volatility of the covariance matrix
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scale_alpha (bool): if to scale alpha to match the volatility of the covariance matrix
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verbose (bool): if print detailed information about the solver
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verbose (bool): if print detailed information about the solver
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warm_start (str): whether try to warm start (`w0`/`benchmark`/``)
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warm_start (str): whether try to warm start (`w0`/`benchmark`/``)
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@@ -341,7 +342,7 @@ class EnhancedIndexingOptimizer(BaseOptimizer):
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varU: np.ndarray,
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varU: np.ndarray,
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w0: np.ndarray,
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w0: np.ndarray,
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w_bench: np.ndarray,
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w_bench: np.ndarray,
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inds_onehot: np.ndarray,
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inds_onehot: np.ndarray = None,
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) -> Union[np.ndarray, pd.Series]:
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) -> Union[np.ndarray, pd.Series]:
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"""
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"""
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Args:
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Args:
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@@ -354,6 +355,8 @@ class EnhancedIndexingOptimizer(BaseOptimizer):
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Returns:
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Returns:
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np.ndarray or pd.Series: optimized portfolio allocation
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np.ndarray or pd.Series: optimized portfolio allocation
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"""
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"""
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assert inds_onehot is not None or self.inds_dev is None, "Industry onehot vector is required."
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# scale alpha to match volatility
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# scale alpha to match volatility
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if self.scale_alpha:
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if self.scale_alpha:
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u = u / u.std()
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u = u / u.std()
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@@ -366,15 +369,18 @@ class EnhancedIndexingOptimizer(BaseOptimizer):
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risk = cp.quad_form(v, covB) + cp.sum(cp.multiply(varU, w ** 2))
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risk = cp.quad_form(v, covB) + cp.sum(cp.multiply(varU, w ** 2))
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obj = cp.Maximize(ret - self.lamb * risk)
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obj = cp.Maximize(ret - self.lamb * risk)
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d_bench = w - w_bench
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d_bench = w - w_bench
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d_inds = d_bench @ inds_onehot
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cons = [
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cons = [
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w >= 0,
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w >= 0,
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cp.sum(w) == 1,
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cp.sum(w) == 1,
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d_bench >= -self.bench_dev,
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d_bench >= -self.bench_dev,
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d_bench <= self.bench_dev,
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d_bench <= self.bench_dev,
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d_inds >= -self.inds_dev,
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d_inds <= self.inds_dev,
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]
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]
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if self.inds_dev is not None:
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d_inds = d_bench @ inds_onehot
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cons.append(d_inds >= -self.inds_dev)
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cons.append(d_inds <= self.inds_dev)
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if w0 is not None:
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if w0 is not None:
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turnover = cp.sum(cp.abs(w - w0))
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turnover = cp.sum(cp.abs(w - w0))
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cons.append(turnover <= self.delta)
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cons.append(turnover <= self.delta)
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194
tests/test_enhanced_indexing.py
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194
tests/test_enhanced_indexing.py
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@@ -0,0 +1,194 @@
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# Copyright (c) Microsoft Corporation.
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# Licensed under the MIT License.
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import sys
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import shutil
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import unittest
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from pathlib import Path
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import numpy as np
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import pandas as pd
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import qlib
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from qlib.config import REG_CN, C
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from qlib.utils import drop_nan_by_y_index
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from qlib.contrib.model.gbdt import LGBModel
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from qlib.contrib.data.handler import Alpha158
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from qlib.contrib.strategy.strategy import TopkDropoutStrategy
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from qlib.contrib.evaluate import (
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backtest as normal_backtest,
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risk_analysis,
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)
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from qlib.utils import exists_qlib_data, init_instance_by_config, flatten_dict
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from qlib.workflow import R
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from qlib.workflow.record_temp import SignalRecord, SigAnaRecord, PortAnaRecord
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from qlib.tests.data import GetData
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from qlib.tests import TestAutoData
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market = "csi300"
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benchmark = "SH000300"
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###################################
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# train model
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###################################
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data_handler_config = {
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"start_time": "2008-01-01",
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"end_time": "2020-08-01",
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"fit_start_time": "2008-01-01",
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"fit_end_time": "2014-12-31",
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"instruments": market,
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}
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task = {
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"model": {
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"class": "LGBModel",
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"module_path": "qlib.contrib.model.gbdt",
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"kwargs": {
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"loss": "mse",
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"colsample_bytree": 0.8879,
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"learning_rate": 0.0421,
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"subsample": 0.8789,
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"lambda_l1": 205.6999,
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"lambda_l2": 580.9768,
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"max_depth": 8,
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"num_leaves": 210,
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"num_threads": 20,
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},
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},
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"dataset": {
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"class": "DatasetH",
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"module_path": "qlib.data.dataset",
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"kwargs": {
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"handler": {
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"class": "Alpha158",
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"module_path": "qlib.contrib.data.handler",
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"kwargs": data_handler_config,
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},
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"segments": {
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"train": ("2008-01-01", "2014-12-31"),
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"valid": ("2015-01-01", "2016-12-31"),
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"test": ("2017-01-01", "2020-08-01"),
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},
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},
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},
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}
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port_analysis_config = {
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"strategy": {
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"class": "TopkDropoutStrategy",
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"module_path": "qlib.contrib.strategy.strategy",
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"kwargs": {
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"topk": 50,
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"n_drop": 5,
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},
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},
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"backtest": {
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"verbose": False,
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"limit_threshold": 0.095,
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"account": 100000000,
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"benchmark": benchmark,
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"deal_price": "close",
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"open_cost": 0.0005,
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"close_cost": 0.0015,
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"min_cost": 5,
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},
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}
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# train
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def train():
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"""train model
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Returns
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-------
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pred_score: pandas.DataFrame
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predict scores
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performance: dict
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model performance
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"""
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# model initiaiton
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model = init_instance_by_config(task["model"])
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dataset = init_instance_by_config(task["dataset"])
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# start exp
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with R.start(experiment_name="workflow"):
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R.log_params(**flatten_dict(task))
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model.fit(dataset)
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# prediction
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recorder = R.get_recorder()
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rid = recorder.id
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sr = SignalRecord(model, dataset, recorder)
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sr.generate()
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pred_score = sr.load()
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# calculate ic and ric
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sar = SigAnaRecord(recorder)
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sar.generate()
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ic = sar.load(sar.get_path("ic.pkl"))
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ric = sar.load(sar.get_path("ric.pkl"))
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return pred_score, {"ic": ic, "ric": ric}, rid
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def backtest_analysis(pred, rid):
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"""backtest and analysis
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Parameters
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----------
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pred : pandas.DataFrame
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predict scores
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rid : str
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the id of the recorder to be used in this function
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Returns
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-------
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analysis : pandas.DataFrame
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the analysis result
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"""
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recorder = R.get_recorder(experiment_name="workflow", recorder_id=rid)
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# backtest
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par = PortAnaRecord(recorder, port_analysis_config)
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par.generate()
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analysis_df = par.load(par.get_path("port_analysis.pkl"))
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print(analysis_df)
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return analysis_df
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class TestAllFlow(TestAutoData):
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PRED_SCORE = None
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REPORT_NORMAL = None
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POSITIONS = None
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RID = None
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@classmethod
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def tearDownClass(cls) -> None:
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shutil.rmtree(str(Path(C["exp_manager"]["kwargs"]["uri"].strip("file:")).resolve()))
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def test_0_train(self):
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TestAllFlow.PRED_SCORE, ic_ric, TestAllFlow.RID = train()
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self.assertGreaterEqual(ic_ric["ic"].all(), 0, "train failed")
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self.assertGreaterEqual(ic_ric["ric"].all(), 0, "train failed")
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def test_1_backtest(self):
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analyze_df = backtest_analysis(TestAllFlow.PRED_SCORE, TestAllFlow.RID)
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self.assertGreaterEqual(
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analyze_df.loc(axis=0)["excess_return_with_cost", "annualized_return"].values[0],
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0.10,
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"backtest failed",
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)
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def suite():
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_suite = unittest.TestSuite()
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_suite.addTest(TestAllFlow("test_0_train"))
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_suite.addTest(TestAllFlow("test_1_backtest"))
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return _suite
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if __name__ == "__main__":
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runner = unittest.TextTestRunner()
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runner.run(suite())
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