- BaseStrategy abstract class - MultiFactorStrategy with weighted factors - QualityStrategy with F-Score filtering - ValueMomentumStrategy combining value and momentum Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com>
120 lines
4.1 KiB
Python
120 lines
4.1 KiB
Python
"""
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Multi-factor strategy implementation.
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"""
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from datetime import date
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from decimal import Decimal
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from typing import List
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from sqlalchemy.orm import Session
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from app.services.strategy.base import BaseStrategy
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from app.schemas.strategy import (
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StockFactor, StrategyResult, UniverseFilter, FactorWeights,
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)
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class MultiFactorStrategy(BaseStrategy):
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"""Multi-factor strategy combining value, quality, and momentum."""
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strategy_name = "multi_factor"
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def run(
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self,
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universe_filter: UniverseFilter,
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top_n: int,
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base_date: date = None,
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weights: FactorWeights = None,
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) -> StrategyResult:
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if base_date is None:
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base_date = date.today()
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if weights is None:
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weights = FactorWeights()
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# Get universe
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stocks = self.get_universe(universe_filter)
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tickers = [s.ticker for s in stocks]
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stock_map = {s.ticker: s for s in stocks}
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if not tickers:
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return StrategyResult(
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strategy_name=self.strategy_name,
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base_date=base_date,
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universe_count=0,
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result_count=0,
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stocks=[],
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)
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# Get valuations and sectors
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valuations = self.factor_calc.get_valuations(tickers, base_date)
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sectors = self.factor_calc.get_sectors(tickers)
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# Calculate factor scores
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value_scores = self.factor_calc.calculate_value_scores(valuations)
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quality_scores = self.factor_calc.calculate_quality_scores(tickers, base_date)
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momentum = self.factor_calc.calculate_momentum(tickers, base_date)
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# Normalize momentum to z-scores
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if momentum:
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mom_values = list(momentum.values())
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mom_mean = sum(mom_values) / len(mom_values)
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mom_std = (sum((v - mom_mean) ** 2 for v in mom_values) / len(mom_values)) ** 0.5
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if mom_std > 0:
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momentum_scores = {
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t: Decimal(str((float(v) - float(mom_mean)) / float(mom_std)))
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for t, v in momentum.items()
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}
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else:
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momentum_scores = {t: Decimal("0") for t in momentum}
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else:
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momentum_scores = {}
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# Build result
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results = []
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for ticker in tickers:
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stock = stock_map[ticker]
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val = valuations.get(ticker)
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v_score = value_scores.get(ticker, Decimal("0"))
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q_score = quality_scores.get(ticker, Decimal("0"))
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m_score = momentum_scores.get(ticker, Decimal("0"))
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# Weighted composite
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total = (
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v_score * weights.value +
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q_score * weights.quality +
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m_score * weights.momentum
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)
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results.append(StockFactor(
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ticker=ticker,
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name=stock.name,
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market=stock.market,
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sector_name=sectors.get(ticker),
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market_cap=int(stock.market_cap / 100_000_000) if stock.market_cap else None,
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close_price=Decimal(str(stock.close_price)) if stock.close_price else None,
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per=Decimal(str(val.per)) if val and val.per else None,
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pbr=Decimal(str(val.pbr)) if val and val.pbr else None,
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psr=Decimal(str(val.psr)) if val and val.psr else None,
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pcr=Decimal(str(val.pcr)) if val and val.pcr else None,
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dividend_yield=Decimal(str(val.dividend_yield)) if val and val.dividend_yield else None,
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value_score=v_score,
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quality_score=q_score,
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momentum_score=m_score,
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total_score=total,
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))
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# Sort by total score descending
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results.sort(key=lambda x: x.total_score or Decimal("0"), reverse=True)
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# Assign ranks and limit
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for i, r in enumerate(results[:top_n], 1):
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r.rank = i
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return StrategyResult(
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strategy_name=self.strategy_name,
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base_date=base_date,
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universe_count=len(stocks),
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result_count=min(top_n, len(results)),
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stocks=results[:top_n],
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)
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