--- dataset_info: features: - name: id dtype: string - name: text dtype: string - name: entities struct: - name: start list: int32 - name: end list: int32 - name: label list: string splits: - name: train num_bytes: 433090 num_examples: 457 download_size: 285220 dataset_size: 433090 configs: - config_name: default data_files: - split: train path: data/train-* license: mit language: - en pretty_name: WallStreetBets NER Dataset size_categories: - n<1K task_categories: - token-classification tags: - ner - named-entity-recognition - wsb - reddit - financial-posts - finance - stocks - wallstreetbets - r/wallstreetbets --- # WallStreetBets NER Dataset A high-quality, human-annotated Named Entity Recognition (NER) dataset composed of **457 gold-standard samples** extracted from Reddit's `r/wallstreetbets`. This dataset is explicitly curated to train zero-shot and token-classification models (like GLiNER) to parse chaotic retail investor text, financial slang, and complex asset mentions. --- ## 📊 Dataset Overview * **Total Samples:** 457 curated posts and long-form "Due Diligence" (DD) manifestos. * **Target Domain:** Retail finance, options trading, and market commentary. * **Format:** Clean text paired with explicit absolute character offset annotations (`start`, `end`, `label`). ### Entity Schema | Label | Description | Examples | | :--- | :--- | :--- | | `ticker` | A market ticker symbol representing a tradable financial asset/option underlying. | `$AAPL`, `TSLA`, `AMD`, `GLD` | | `company` | The corporate body, business entity, brand, employer, or manufacturer. | `Microsoft`, `Melvin Capital`, `NVIDIA` | --- ## 🎯 Annotation Guidelines & Boundary Rules To ensure high precision and eliminate labeling noise, annotations strictly adhere to the following linguistic and data engineering boundaries: ### 1. The Context Disambiguation Rule (e.g., AMD / Tesla) Entities are classified based on **how they function in the sentence context**, not solely by the keyword itself: * **Labeled as `ticker`:** *"Long on AMD 180c options"* or *"Buying shares of TSLA"* (Functions as a transactional asset/market symbol). * **Labeled as `company`:** *"AMD released their new AI chips"* or *"I want to work at Tesla"* (Functions as a corporate entity, manufacturer, or employer). ### 2. Strict Currency Exclusions (Noise Mitigation) * **Fiat Currencies:** Monetary values, bills, and account units (e.g., `$2`, `$22`, `$10k`, `USD`, `EUR`) are **hard-excluded** and never annotated. * **Cryptocurrencies:** Digital protocol tokens (e.g., `BTC`, `ETH`, `SOL`) are excluded from this equity-centric release to prevent semantic drift. ### 3. Commodities Disambiguation * **Generic Commodities:** Words like `"gold"`, `"silver"`, or `"oil"` are treated as common nouns and left unlabelled. * **Commodity Instruments:** Asset-tracking ETFs (e.g., `GLD`, `SLV`) are strictly labeled as `ticker`. --- ## 🛠️ Quick Start You can load this dataset instantly using the Hugging Face `datasets` library: ```python from datasets import load_dataset # Load the dataset dataset = load_dataset("StephanAkkerman/wallstreetbets-ner") # Preview a sample record sample = dataset["train"][0] print(f"Text:\n{sample['text']}\n") print("Entities Found:") for start, end, label in zip(sample["entities"]["start"], sample["entities"]["end"], sample["entities"]["label"]): entity_text = sample["text"][start:end] print(f" - [{label}] {entity_text} ({start} -> {end})") ``` ## 🧬 Intended Use & Model Training This dataset is designed for training small-footprint sequence models and fine-tuning adapters (like LoRA models for GLiNER2). - Training Note: For long posts over 256 tokens, it is highly recommended to perform overlapping sliding-window chunking (e.g., 150-word chunks with a 40-word overlap) to fit attention windows and optimize VRAM allocation without chopping tokens on boundaries.