bankruptcy / README.md
sovai's picture
Add bankruptcy.parquet and README.md
598982c
---
icon: seal-exclamation
description: >-
Chapter 7 and Chapter 11 bankruptcy predictions made easy for over 13,000 US
publicly traded stocks.
---
# Bankruptcy Predictions
> **Data Notice**: This dataset provides academic research access with a 6-month data lag.
> For real-time data access, please visit [sov.ai](https://sov.ai) to subscribe.
> For market insights and additional subscription options, check out our newsletter at [blog.sov.ai](https://blog.sov.ai).
```python
from datasets import load_dataset
df_bankrupt = load_dataset("sovai/bankruptcy", split="train").to_pandas().set_index(["ticker","date"])
```
Monthly corporate bankruptcy predictions arrive the **2nd of every month**_._
`Tutorials` are the best documentation — [<mark style="color:blue;">`Corporate Bankruptcy Tutorial`</mark>](https://colab.research.google.com/github/sovai-research/sovai-public/blob/main/notebooks/datasets/Bankruptcy%20Prediction.ipynb)
<table data-view="cards" data-full-width="false"><thead><tr><th></th><th></th></tr></thead><tbody><tr><td><strong>Input Datasets</strong></td><td>SEC Bankruptcies, Delistings, Market Data, Financial Statements</td></tr><tr><td><strong>Models Used</strong></td><td>CNN, LightGBM, RocketModel, AutoEncoder</td></tr><tr><td><strong>Model Outputs</strong></td><td>Calibrated Probabilities, Shapley Values</td></tr></tbody></table>
## Description
The model predicts the likelihood of bankruptcies in the next 6-months for US publicly listed companies using advanced machine learning models.
With an accuracy of around 89% and ROC-AUC of 85%, these models represent a large improvement over traditional methods of bankruptcy prediction for equity selection.
Advanced modeling techniques used in this dataset:
* **The Boosting Model**: Utilizes LightGBM technology, integrating both fundamental and market data for accurate predictions.
* **The Convolutional Model**: Employs a Convolutional Neural Network (CNN) for efficient pattern recognition in market trends.
* **The Rocket Model**: Specializes in time series data, using random convolutional kernels for effective classification and forecasting.
* **The Encoder Model**: Combines LightGBM with CNN autoencoders, enhancing feature engineering for more precise predictions.
* **The Fundamental Model**: Focuses solely on fundamental data via LightGBM, without extra architectural layers, for straightforward financial analysis.
## Data Access
### **Monthly Probabilities**
**Specific Tickers**
```python
import sovai as sov
df_bankrupt = sov.data('bankruptcy', tickers=["MSFT","TSLA","META"])
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_1 (2).png" alt=""><figcaption></figcaption></figure>
**Specific Dates**
```python
import sovai as sov
df_bankrupt = sov.data('bankruptcy', start_date="2017-01-03", tickers=["MSFT"])
```
**Latest Data**
```python
import sovai as sov
df_bankrupt = sov.data('bankruptcy')
```
**All Data**
```python
import sovai as sov
df_bankrupt = sov.data('bankruptcy', full_history=True)
```
### Daily Probabilities
```python
import sovai as sov
df_bankrupt = sov.data('bankruptcy/daily', tickers=["MSFT","TSLA","META"])
```
The daily probabilities are experimental, and have a very short history of just a couple of months.
### Feature Importance (Shapleys)
```python
import sovai as sov
df_importance = sov.data('bankruptcy/shapleys', tickers=["MSFT","TSLA","META"])
```
Feature Importance (Shapley Values) calculates the contribution of each input variable (features) such as Debt, Assets, and Revenue to predict bankruptcy risk.
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_2 (2).png" alt=""><figcaption></figcaption></figure>
## Reports
### Sorting and Filtering
```python
import sovai as sov
sov.report("bankruptcy", report_type="ranking")
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_3 (2).png" alt=""><figcaption></figcaption></figure>
Filter the outputs based on the top by **Sector**, **Marketcap**, and **Revenue** and bankruptcy risk. You can also change <mark style="color:blue;">`ranking`</mark> to <mark style="color:blue;">`change`</mark> to investigate the month on month change.
```python
sov.report("bankruptcy", report_type="sector-change")
```
## Plots
### Bankruptcy Comparison
```python
import sovai as sov
sov.plot('bankruptcy', chart_type='compare')
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_4 (2).png" alt=""><figcaption></figcaption></figure>
### Timed Feature Importance
```python
import sovai as sov
df = sov.plot("bankruptcy", chart_type="shapley", tickers=["TSLA"])
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_5 (2).png" alt=""><figcaption></figcaption></figure>
### Total Feature Importance
```python
import sovai as sov
sov.plot("bankruptcy", chart_type="stack", tickers=["DDD"])
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_6 (2).png" alt=""><figcaption></figcaption></figure>
### Bankruptcy and Returns
```python
import sovai as sov
df= sov.plot("bankruptcy", chart_type="line", tickers=["DDD"])
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_7 (2).png" alt=""><figcaption></figcaption></figure>
### **PCA Statistical Similarity**
```python
import sovai as sov
df= sov.plot("bankruptcy", chart_type="line", tickers=["DDD"])
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_8 (2).png" alt=""><figcaption></figcaption></figure>
### Correlation Similarity
```python
import sovai as sov
sov.plot("bankruptcy", chart_type="similar", tickers=["DDD"])
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_9 (2).png" alt=""><figcaption></figcaption></figure>
### Trend Similarity
```python
import sovai as sov
sov.plot("bankruptcy", chart_type="facet", tickers=["DDD"])
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_10 (2).png" alt=""><figcaption></figcaption></figure>
## Model Performance
### **Confusion Matrix**
```python
import sovai as sov
sov.plot("bankruptcy", chart_type="confusion_global")
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_11 (2).png" alt=""><figcaption></figcaption></figure>
### **Threshold Plots**
```python
import sovai as sov
sov.plot("bankruptcy", chart_type="classification_global")
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_12 (3).png" alt=""><figcaption></figcaption></figure>
### **Lift Curve**
```python
import sovai as sov
sov.plot("bankruptcy", chart_type="lift_global")
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_13 (2).png" alt=""><figcaption></figcaption></figure>
### Global Explainability
```python
import sovai as sov
sov.plot("bankruptcy", chart_type="time_global")
```
<figure><img src="https://raw.githubusercontent.com/sovai-research/sovai-documentation/main/.gitbook/assets/bankruptcy_predictions_14 (2).png" alt=""><figcaption></figcaption></figure>
## Computations
Leverage advanced computational tools for deeper analysis:
* **Distance Matrix:**
```python
sov.compute('distance-matrix', on="attribute", df=dataframe)
```
Assess the similarity between entities based on selected attributes.
* **Percentile Calculation:**
```python
sov.compute('percentile', on="attribute", df=dataframe)
```
Calculate the relative standing of values within a dataset.
* **Feature Mapping:**
```python
sov.compute('map-accounting-features', df=dataframe)
```
Map accounting features to standardized metrics.
* **PCA Calculation:**
```python
sov.compute('pca', df=dataframe)
```
Perform principal component analysis for dimensionality reduction.
**For more advanced applications, see the tutotrial.**
## Data Dictionary
<table><thead><tr><th width="293">Name</th><th width="246">Description</th><th width="89">Type</th><th>Example</th></tr></thead><tbody><tr><td><code>ticker</code></td><td>Stock ticker symbol.</td><td>TEXT</td><td>"TSLA"</td></tr><tr><td><code>date</code></td><td>Record date.</td><td>DATE</td><td>2023-09-30</td></tr><tr><td><code>probability_light</code></td><td>LightGBM Boosting Model prediction.</td><td>FLOAT</td><td>1.46636</td></tr><tr><td><code>probability_convolution</code></td><td>CNN Model prediction for bankruptcies</td><td>FLOAT</td><td>0.135975</td></tr><tr><td><code>probability_rocket</code></td><td>Rocket Model prediction for time series classification</td><td>FLOAT</td><td>0.02514</td></tr><tr><td><code>probability_encoder</code></td><td>LightGBM and CNN autoencoders Model prediction.</td><td>FLOAT</td><td>0.587817</td></tr><tr><td><code>probability_fundamental</code></td><td>Prediction using accounting data only.</td><td>FLOAT</td><td>1.26148</td></tr><tr><td><code>probability</code></td><td>Average probability across models.</td><td>FLOAT</td><td>0.553823</td></tr><tr><td><code>sans_market</code></td><td>Fundamental prediction adjusted for market predictions.</td><td>FLOAT</td><td>-0.20488</td></tr><tr><td><code>volatility</code></td><td>Variability of model predictions.</td><td>FLOAT</td><td>0.62934</td></tr><tr><td><code>multiplier</code></td><td>Coefficient for model prediction calibration.</td><td>FLOAT</td><td>1.951868</td></tr><tr><td><code>version</code></td><td>Model/data record version.</td><td>INT</td><td>20240201</td></tr></tbody></table>
When `sans_market` is <mark style="color:green;">positive</mark>, it means that the fundamentals show a larger predicted bankruptcy than what the market predicts **(stock might go down in medium term)** , when `sans_market` is <mark style="color:red;">negative</mark>, the market might have overreacted, and predict a larger probability of bankruptcy than what the fundamentals suggest **(stock might go up in medium term)**.
## Use Cases
1. **Bankruptcy Prediction Analysis**: Offer insights into predicted corporate bankruptcies and identify key factors, clarifying main drivers across different cycles.
2. **Variable Impact Breakdown**: Analyze how each individual variable affects bankruptcy predictions, providing in-depth feature contribution insights.
3. **Temporal Feature Distribution Analysis**: Reveal how variables contribute to predictions over time, emphasizing key features in forecasting models.
4. **Correlation Discovery**: Identify stocks with similar bankruptcy probability trends, revealing correlated market behaviors.
5. **Probability Shift Overview**: Showcase changes in bankruptcy probabilities among correlated stocks, providing a comprehensive market perspective.
6. **Sentiment Inversion Analysis**: Convert bankruptcy predictions into positive sentiment indicators to gauge potential impacts on stock returns.
7. **Behavioral Similarity Mapping**: Locate stocks with similar behaviors to a selected reference, based on bankruptcy trends and PCA feature analysis.