| | --- |
| | dataset_info: |
| | features: |
| | - name: cik |
| | dtype: string |
| | - name: company |
| | dtype: string |
| | - name: year |
| | dtype: int64 |
| | - name: filing_date |
| | dtype: string |
| | - name: sic |
| | dtype: string |
| | - name: state_of_inc |
| | dtype: string |
| | - name: filing_html_index |
| | dtype: string |
| | - name: accession_number |
| | dtype: string |
| | - name: table_image |
| | dtype: image |
| | - name: table_body |
| | dtype: string |
| | - name: executives |
| | dtype: string |
| | - name: sct_probability |
| | dtype: float64 |
| | splits: |
| | - name: train |
| | num_examples: 12022 |
| | - name: year_2005 |
| | num_examples: 468 |
| | - name: year_2006 |
| | num_examples: 492 |
| | - name: year_2007 |
| | num_examples: 512 |
| | - name: year_2008 |
| | num_examples: 486 |
| | - name: year_2009 |
| | num_examples: 472 |
| | - name: year_2010 |
| | num_examples: 429 |
| | - name: year_2011 |
| | num_examples: 434 |
| | - name: year_2012 |
| | num_examples: 391 |
| | - name: year_2013 |
| | num_examples: 384 |
| | - name: year_2014 |
| | num_examples: 430 |
| | - name: year_2015 |
| | num_examples: 434 |
| | - name: year_2016 |
| | num_examples: 357 |
| | - name: year_2017 |
| | num_examples: 369 |
| | - name: year_2018 |
| | num_examples: 374 |
| | - name: year_2019 |
| | num_examples: 344 |
| | - name: year_2020 |
| | num_examples: 4867 |
| | - name: year_2021 |
| | num_examples: 393 |
| | - name: year_2022 |
| | num_examples: 386 |
| | configs: |
| | - config_name: default |
| | data_files: |
| | - split: train |
| | path: data/train-* |
| | - split: year_2005 |
| | path: data/year_2005-* |
| | - split: year_2006 |
| | path: data/year_2006-* |
| | - split: year_2007 |
| | path: data/year_2007-* |
| | - split: year_2008 |
| | path: data/year_2008-* |
| | - split: year_2009 |
| | path: data/year_2009-* |
| | - split: year_2010 |
| | path: data/year_2010-* |
| | - split: year_2011 |
| | path: data/year_2011-* |
| | - split: year_2012 |
| | path: data/year_2012-* |
| | - split: year_2013 |
| | path: data/year_2013-* |
| | - split: year_2014 |
| | path: data/year_2014-* |
| | - split: year_2015 |
| | path: data/year_2015-* |
| | - split: year_2016 |
| | path: data/year_2016-* |
| | - split: year_2017 |
| | path: data/year_2017-* |
| | - split: year_2018 |
| | path: data/year_2018-* |
| | - split: year_2019 |
| | path: data/year_2019-* |
| | - split: year_2020 |
| | path: data/year_2020-* |
| | - split: year_2021 |
| | path: data/year_2021-* |
| | - split: year_2022 |
| | path: data/year_2022-* |
| | license: mit |
| | task_categories: |
| | - table-to-text |
| | language: |
| | - en |
| | tags: |
| | - finance |
| | - sec |
| | - executive-compensation |
| | - def14a |
| | - proxy-statements |
| | pretty_name: SEC Executive Compensation |
| | size_categories: |
| | - 10K<n<100K |
| | --- |
| | |
| | # SEC Executive Compensation Dataset |
| |
|
| | > [!CAUTION] |
| | > ## π§ DATASET UNDER CONSTRUCTION π§ |
| | > |
| | > This dataset is actively being developed and expanded. The current version contains **~12,000 records** out of a target of **100,000+ SEC filings** (2005-2022). |
| | > |
| | > **What to expect:** |
| | > - Data may contain errors or inconsistencies |
| | > - Schema and fields may change |
| | > - More records will be added regularly |
| | > - Statistics will be updated as processing continues |
| | > |
| | > **Use at your own risk for research purposes only.** |
| |
|
| | π **Pipeline**: [github.com/pierpierpy/Execcomp-AI](https://github.com/pierpierpy/Execcomp-AI) |
| |
|
| | Structured executive compensation data extracted from SEC DEF 14A proxy statements using AI. |
| |
|
| |
|
| | ```python |
| | from datasets import load_dataset |
| | |
| | # Load all data |
| | ds = load_dataset("pierjoe/execcomp-ai-sample", split="train") |
| | |
| | # Load specific year only |
| | ds_2020 = load_dataset("pierjoe/execcomp-ai-sample", split="year_2020") |
| | ``` |
| |
|
| | <details> |
| | <summary><b># π Dataset Statistics</b> (click to expand)</summary> |
| |
|
| |  |
| |
|
| |  |
| |
|
| |  |
| |
|
| | </details> |
| |
|
| | --- |
| |
|
| | <details> |
| | <summary><b>π― SCT Probability & Quality</b> (click to expand)</summary> |
| |
|
| | ### Why `sct_probability`? |
| | |
| | The main VLM (Qwen3-32B) sometimes: |
| | 1. **False positives**: Classifies non-SCT tables as SCT (e.g., Director Compensation tables) |
| | 2. **Duplicates**: Some documents have multiple tables classified as SCT when only one is the real Summary Compensation Table |
| | |
| | A **fine-tuned binary classifier** (Qwen3-VL-4B) scores each table with a probability (0-1) to help filter these cases. |
| | |
| |  |
| | |
| |  |
| | |
| | > π‘ **Recommendation**: Filter by `sct_probability >= 0.7` to get high-confidence records only. |
| |
|
| | </details> |
| |
|
| | --- |
| |
|
| | <details> |
| | <summary><b>π° Compensation Statistics</b> (click to expand)</summary> |
| |
|
| |  |
| |
|
| |  |
| |
|
| | ### π Top 10 Highest Paid Executives |
| |
|
| |  |
| |
|
| | ### Compensation Distribution |
| |
|
| |  |
| |
|
| | ### Trends Over Time |
| |
|
| |  |
| |
|
| | </details> |
| |
|
| | --- |
| |
|
| | ## π Dataset Description |
| |
|
| | This dataset contains **Summary Compensation Tables** extracted from SEC filings, with: |
| | - Original table images |
| | - HTML table structure |
| | - Structured JSON with executive compensation details |
| | - **SCT probability score** from a fine-tuned binary classifier (to filter false positives) |
| |
|
| | > π‘ **Tip**: Filter by `sct_probability >= 0.7` to get high-confidence SCT records only. |
| | |
| | ## Fields |
| | |
| | | Field | Type | Description | |
| | |-------|------|-------------| |
| | | `cik` | string | SEC Central Index Key | |
| | | `company` | string | Company name | |
| | | `year` | int | Filing year | |
| | | `filing_date` | string | SEC filing date | |
| | | `sic` | string | Standard Industrial Classification code | |
| | | `state_of_inc` | string | State of incorporation | |
| | | `filing_html_index` | string | Link to SEC filing | |
| | | `accession_number` | string | SEC accession number | |
| | | `table_image` | image | Extracted table image | |
| | | `table_body` | string | HTML table content | |
| | | `executives` | string | JSON array of executive compensation | |
| | | `sct_probability` | float | Probability (0-1) that this is a real SCT (from fine-tuned classifier) | |
| |
|
| | ## Executive Schema |
| |
|
| | ```json |
| | { |
| | "name": "John Smith", |
| | "title": "CEO", |
| | "fiscal_year": 2023, |
| | "salary": 500000, |
| | "bonus": 100000, |
| | "stock_awards": 2000000, |
| | "option_awards": 500000, |
| | "non_equity_incentive": 300000, |
| | "change_in_pension": 50000, |
| | "other_compensation": 25000, |
| | "total": 3475000 |
| | } |
| | ``` |
| |
|
| | --- |
| |
|
| | ## π Quick Start |
| |
|
| | ```python |
| | from datasets import load_dataset |
| | import json |
| | |
| | # Load full dataset |
| | ds = load_dataset("pierjoe/execcomp-ai-sample", split="train") |
| | |
| | # Or load a specific year |
| | ds_2020 = load_dataset("pierjoe/execcomp-ai-sample", split="year_2020") |
| | |
| | # Filter by SCT probability (recommended to reduce false positives) |
| | ds_filtered = ds.filter(lambda x: x["sct_probability"] >= 0.7) |
| | |
| | # View a record |
| | rec = ds_filtered[0] |
| | print(rec["filing_html_index"]) |
| | display(rec['table_image']) # PIL Image |
| | print(json.dumps(json.loads(rec['executives']), indent=2)) |
| | ``` |
| |
|
| | ### Analyze with Pandas |
| |
|
| | ```python |
| | import pandas as pd |
| | import json |
| | |
| | # Convert to DataFrame |
| | df = ds_filtered.to_pandas() |
| | |
| | # Parse all executives |
| | all_execs = [] |
| | for _, row in df.iterrows(): |
| | for exec_data in json.loads(row['executives']): |
| | exec_data['company'] = row['company'] |
| | exec_data['year'] = row['year'] |
| | all_execs.append(exec_data) |
| | |
| | exec_df = pd.DataFrame(all_execs) |
| | |
| | # Average compensation by year |
| | print(exec_df.groupby('year')['total'].mean()) |
| | |
| | # Top 10 highest paid |
| | print(exec_df.nlargest(10, 'total')[['name', 'company', 'year', 'total']]) |
| | ``` |
| |
|
| | ### View Table Image |
| |
|
| | ```python |
| | # Display table image |
| | record = ds["train"][0] |
| | record["table_image"] # PIL Image object |
| | ``` |
| |
|
| | --- |
| |
|
| | ## π§ Source & Methodology |
| |
|
| | Data extracted from [SEC EDGAR](https://www.sec.gov/edgar) DEF 14A filings using: |
| | - **[MinerU](https://github.com/opendatalab/MinerU)** for PDF table extraction |
| | - **[Qwen3-VL-32B](https://huggingface.co/Qwen/Qwen3-VL-32B-Instruct)** for classification and extraction |
| |
|
| | ### Pipeline Steps |
| | 1. Download DEF 14A PDFs from SEC EDGAR |
| | 2. Extract tables with MinerU (VLM-based) |
| | 3. Classify tables to identify Summary Compensation Tables |
| | 4. Merge tables split across pages |
| | 5. Extract structured compensation data with VLM |
| |
|
| | --- |
| |
|
| | ## π License |
| |
|
| | MIT License |
| |
|
| | --- |
| |
|
| | ## π Citation |
| |
|
| | If you use this dataset in your research, please cite: |
| |
|
| | ```bibtex |
| | @dataset{execcomp_ai_2026, |
| | author = {Di Pasquale, Piergiorgio}, |
| | title = {SEC Executive Compensation Dataset}, |
| | year = {2026}, |
| | publisher = {Hugging Face}, |
| | url = {https://huggingface.co/datasets/pierjoe/execcomp-ai-sample}, |
| | note = {AI-extracted executive compensation data from SEC DEF 14A filings (2005-2022)} |
| | } |
| | ``` |
| |
|
| | Or in text format: |
| |
|
| | > Di Pasquale, P. (2026). *SEC Executive Compensation Dataset*. Hugging Face. https://huggingface.co/datasets/pierjoe/execcomp-ai |
| |
|
| | ## π Links |
| |
|
| | - **GitHub**: [github.com/pierpierpy/Execcomp-AI](https://github.com/pierpierpy/Execcomp-AI) |
| | - **SEC EDGAR**: [sec.gov/edgar](https://www.sec.gov/edgar) |
| |
|