行业轮动周报:非银爆发虹吸红利防御资金,指数料将保持上行趋势持续挑战新高-20250818
China Post Securities·2025-08-18 05:41
- Model Name: Diffusion Index Model; Construction Idea: The model is based on the observation of industry diffusion indices to capture industry trends; Construction Process: The model tracks the weekly and monthly changes in diffusion indices for various industries, ranking them based on their diffusion index values. The formula used is not explicitly mentioned, but the ranking is based on the diffusion index values observed; Evaluation: The model has shown varying performance over the years, with notable returns in some years and significant drawdowns in others[4][24][25] - Model Name: GRU Factor Model; Construction Idea: The model utilizes GRU (Gated Recurrent Unit) neural networks to process minute-level volume and price data to generate industry factors; Construction Process: The model ranks industries based on GRU-generated factors, which are derived from deep learning on historical volume and price data. The specific formula is not provided, but the ranking is based on the GRU factor values; Evaluation: The model has shown strong performance in short cycles but struggles in longer cycles and extreme market conditions[5][30][31] Model Backtest Results - Diffusion Index Model, Average Weekly Return: 3.95%, Excess Return over Equal-weighted Index: 1.94%, August Excess Return: 1.51%, Year-to-date Excess Return: 1.75%[28] - GRU Factor Model, Average Weekly Return: -0.06%, Excess Return over Equal-weighted Index: -2.07%, August Excess Return: -1.78%, Year-to-date Excess Return: -6.66%[33] Factor Construction and Evaluation - Factor Name: Diffusion Index; Construction Idea: The factor is constructed by observing the weekly and monthly changes in industry diffusion indices; Construction Process: The factor ranks industries based on their diffusion index values, with higher values indicating stronger trends. The specific formula is not provided, but the ranking is based on the observed diffusion index values; Evaluation: The factor has shown varying performance, capturing industry trends effectively in some periods while underperforming in others[4][24][25] - Factor Name: GRU Industry Factor; Construction Idea: The factor is generated using GRU neural networks to process minute-level volume and price data; Construction Process: The factor ranks industries based on GRU-generated values, which are derived from deep learning on historical data. The specific formula is not provided, but the ranking is based on the GRU factor values; Evaluation: The factor performs well in short cycles but faces challenges in longer cycles and extreme market conditions[5][30][31] Factor Backtest Results - Diffusion Index Factor, Top Industries: Comprehensive Finance (1.0), Steel (1.0), Non-bank Finance (0.999), Comprehensive (0.998), Non-ferrous Metals (0.997), Communication (0.997)[25] - GRU Industry Factor, Top Industries: Non-ferrous Metals (5.67), Non-bank Finance (4.65), Building Materials (4.14), Real Estate (4.08), Steel (3.64), Basic Chemicals (2.71)[31][13]