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Aplicación de análisis topológico de datos a carteras financieras.

Project description

TDA Finance Mapper

tda-finance-mapper is a Python package developed as part of an academic project on the application of Topological Data Analysis (TDA) to financial data.

The package provides tools to build Mapper-based portfolio strategies, compute persistent-homology regime signals and evaluate the resulting portfolios through causal backtesting.

Overview

The project studies whether topological information extracted from financial return windows can be used for:

  1. market-structure analysis;
  2. regime detection;
  3. portfolio construction;
  4. comparison against a simple equal-weight benchmark.

The main implemented models are:

  • Mapper portfolio: assets are represented by recent return vectors, a Mapper graph is built, and the graph structure is transformed into portfolio weights.
  • Mapper + persistent homology: Mapper remains the main portfolio construction method, while persistent homology acts as a regime-control signal.
  • Equal-weight benchmark: all available assets receive the same weight and are evaluated with the same backtesting protocol.

Disclaimer

This project is for academic and research purposes only. It is not financial advice, investment advice or a production trading system. The results are intended to illustrate and evaluate a methodological pipeline, not to recommend real investment decisions.

Installation

There are two ways to install the package.

Install from PyPI

This is the recommended option if you only want to use the package.

python -m venv .venv
source .venv/bin/activate
pip install tda-finance-mapper

On Windows:

python -m venv .venv
.venv\Scripts\activate
pip install tda-finance-mapper

Install from the repository

This option is recommended if you want to reproduce the experiments, inspect the source code, modify the package or build the documentation.

git clone https://github.com/jaimecrz3/tda-finance-mapper.git
cd tda-finance-mapper
python -m venv .venv
source .venv/bin/activate
pip install -r requirements.txt

On Windows:

git clone https://github.com/jaimecrz3/tda-finance-mapper.git
cd tda-finance-mapper
python -m venv .venv
.venv\Scripts\activate
pip install -r requirements.txt

The requirements.txt file installs the project in editable mode with:

-e .

This means that changes made in the source code are immediately available without reinstalling the package.

For development tools such as flake8, pytest, sphinx, build and twine, install the optional development dependencies:

pip install -e .[dev]

Project structure

tda-finance-mapper/
├── data/
├── docs/
├── results_49_Industry_Portfolios/
├── results_SP500_CRSP/
├── scripts/
├── src/
│   └── tda_finance/
│       ├── data_preprocessing/
│       ├── experiments/
│       ├── portfolio/
│       └── tda/
├── pyproject.toml
├── requirements.txt
├── LICENSE
└── README.md

The main package is located under src/tda_finance.

The scripts/ folder contains auxiliary scripts used during data preparation. These scripts are not part of the main package API.

Main modules

tda_finance.tda.mapper_clustering

Builds Mapper graphs from financial price windows and converts Mapper clusters into portfolio weights.

tda_finance.tda.persistence_diagrams

Computes correlation-based distance matrices and persistent-homology diagrams.

tda_finance.tda.persistence_features

Extracts summary features from persistence diagrams.

tda_finance.tda.regime_detection

Computes persistence-landscape norms and detects topological anomalies.

tda_finance.portfolio.backtest_engine

Runs causal long-only backtests, computes portfolio returns, turnover and performance metrics.

tda_finance.data_preprocessing

Contains utilities to preprocess Kenneth French 49 Industry Portfolios and S&P 500 CRSP monthly data.

Minimal API example

The following example shows the basic use of the package API with a generic price matrix.

import pandas as pd

from tda_finance.portfolio.backtest_engine import backtest_tda, perf_summary
from tda_finance.tda.mapper_clustering import MapperParams

prices = pd.read_csv(
    "data/prices.csv",
    index_col=0,
    parse_dates=True,
)

params = MapperParams(
    pca_var=0.80,
    umap_dim=1,
    n_cubes=12,
    perc_overlap=0.25,
    clusterer="haca",
    haca_distance_threshold=0.6,
    haca_linkage="average",
    random_state=1,
)

result = backtest_tda(
    prices=prices,
    lookback_days=60,
    rebalance_days=3,
    params=params,
    tc_bps=5.0,
    use_ph_control=False,
)

metrics = perf_summary(
    result["port_ret"],
    periods_per_year=12,
)

print(metrics)

This is only a minimal usage example. The full experimental protocol is implemented in the experiment script described below.

Running the final experiments

The final experiments can be run from the project root with:

python -m tda_finance.experiments.run_mapper_ph_experiments

The script compares:

  1. Mapper;
  2. Mapper with persistent-homology regime control;
  3. equal-weight benchmark.

The selected dataset is configured inside the script.

Data preparation

Auxiliary scripts used to prepare the S&P 500 CRSP data are located in:

scripts/data_preparation/

Example:

python scripts/data_preparation/prepare_prices_sp500.py
python scripts/data_preparation/make_monthly_sp500.py

These scripts are included to make the data preparation process more transparent, but they are not part of the main package API.

Results

The complete experimental results are discussed in the accompanying TFG report.

The repository also stores generated CSV outputs in:

results_49_Industry_Portfolios/
results_SP500_CRSP/

These files include summary metrics, diagnostic outputs and NAV curves used in the experimental analysis.

Reproducibility

The experiments use fixed random seeds where stochastic methods are involved, especially in dimensionality reduction.

For exact reproducibility of the Python environment used to run the experiments, a lock file can be generated with:

pip freeze > requirements-lock.txt

This file records the exact package versions installed in the environment. It is mainly useful for reproducing the results of the TFG, not for publishing the package to PyPI.

Development and packaging checks

The following commands are useful during development. They require the optional development dependencies:

pip install -e .[dev]

Run style checks:

python -m flake8 src scripts

Run a basic import check:

python -c "from tda_finance.tda.mapper_clustering import MapperParams; print(MapperParams())"

Build the package locally:

python -m build

Check the distribution before uploading to PyPI:

python -m twine check dist/*

License

This project is released under the MIT License. See the LICENSE file for details.

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