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Extract affiliation and local designation from labor union names

Project description

Labor Union Parser

Match labor union name text to Office of Labor-Management Standards filing numbers.

Installation

pip install labor-union-parser

Usage

Python API

from labor_union_parser import Extractor

extractor = Extractor()
result = extractor.extract("SEIU Local 1199")
print(result)
# {'f_num': 31847,
#  'f_num_score': 0.9500725865364075,
#  'is_union': True,
#  'is_union_score': 0.9268560409545898,
#  'union_name': 'SERVICE EMPLOYEES',
#  'union_name_score': 0.9972871541976929}

For batch processing, use extract_batch which processes texts in parallel for better throughput:

from labor_union_parser import Extractor

extractor = Extractor()
results = extractor.extract_batch([
    "SEIU Local 1199",
    "Teamsters Local 705",
    "UAW Local 600",
])
# {'f_num': 31847,
#  'f_num_score': 0.950072705745697,
#  'is_union': True,
#  'is_union_score': 0.9268560409545898,
#  'union_name': 'SERVICE EMPLOYEES',
#  'union_name_score': 0.9972871541976929}
# {'f_num': 43508,
#  'f_num_score': 0.9926707744598389,
#  'is_union': True,
#  'is_union_score': 0.9246779680252075,
#  'union_name': 'TEAMSTERS',
#  'union_name_score': 0.9981544613838196}
# {'f_num': 13030,
#  'f_num_score': 0.993687093257904,
#  'is_union': True,
#  'is_union_score': 0.8813596367835999,
#  'union_name': 'AUTO WORKERS AFL-CIO',
#  'union_name_score': 0.99698406457901}

The batch_size parameter controls how many texts are processed at once (default: 256). Larger batches are faster but use more memory:

# Process 512 texts at a time
results = extractor.extract_batch(texts, batch_size=512)

For very large datasets, combine extract_batch with itertools.batched to process in chunks and avoid loading everything into memory:

import itertools
from labor_union_parser import Extractor

extractor = Extractor()

# Stream through a large file, processing 1000 at a time
with open("union_names.txt") as f:
    for chunk in itertools.batched(f, 1000):
        texts = [line.strip() for line in chunk]
        for result in extractor.extract_batch(texts):
            print(result["f_num"], result["union_name"])

Command Line

# Process CSV file
labor-union-parser unions.csv -c union_name -o results.csv

# Process from stdin
echo "SEIU Local 1199" | labor-union-parser --no-header

Output Fields

Field Description
is_union Whether the text is detected as a union name
is_union_score Calibrated probability of being a union (0-1, Platt-scaled)
union_name Predicted parent union name from the shared classification head
union_name_score Softmax probability of the predicted union_name (0-1)
f_num OLMS filing number of the best-matching gazetteer record
f_num_score Softmax probability of best gazetteer match (0-1)

Training

Training data and scripts are in training/. The pipeline is orchestrated by the root Makefile:

pip install -e ".[train]"   # Install training dependencies

make data                   # Download opdr.db, generate gazetteer and training data
make train                  # Train ArcFace classifier and union detector
make evaluate               # Run evaluation
make all                    # Full pipeline (data + train)

Checked-in Data

  • training/data/labeled_data.csv — labeled union name examples
  • training/data/nonunion_examples.csv — non-union text examples
  • training/data/acronym_to_fullname.csv — union acronym mappings

Model Architecture

The model uses a two-stage pipeline:

Input: "SEIU Local 1199"
              │
              ▼
┌───────────────────────────────────────────────────┐
│  Tokenizer                                        │
│  tokens: ["seiu", "local", "1199"]                │
│  is_num: [False, False, True]                     │
│  + FastText char n-gram hashes + Bloom number IDs │
└───────────────────────────────────────────────────┘
              │
              ▼
┌───────────────────────────────────────────────────┐
│  Stage 1: Union Detection (Contrastive)           │
│                                                   │
│  FastText + Bloom + RoPE Transformer (2 layers)   │
│  → Mean pool → Projection → L2 normalize          │
│  → Cosine similarity to learned union prototype   │
│  → Platt scaling: sigmoid(a·sim + b)              │
│                                                   │
│  is_union_score = 0.99 → is_union = True          │
└───────────────────────────────────────────────────┘
              │
              ▼ (always runs)
┌───────────────────────────────────────────────────┐
│  Stage 2: Factored ArcFace Classifier             │
│                                                   │
│  FastText + Bloom + RoPE Transformer (3 layers)   │
│  → Mean pool → L2 normalize                       │
│                                                   │
│  Score against ~38K factored prototypes:          │
│  prototype = W_union + W_desig + bloom(num)       │
│            + W_prefix + W_suffix + W_fnum         │
│  (~17K trained + ~18K zero-shot from gazetteer)   │
│                                                   │
│  Match: SERVICE EMPLOYEES LU 1199 → f_num=31847   │
└───────────────────────────────────────────────────┘
              │
              ▼
Output: {is_union: True, union_name: "SERVICE EMPLOYEES",
         f_num: 31847, f_num_score: 0.96, ...}

Factored Prototypes:

Each f_num's prototype is the sum of learned field embeddings:

prototype = W_union[u] + W_desig_name[d] + bloom(desig_num)
          + W_prefix[p] + W_suffix[s] + W_fnum[f]

This additive structure means the model learns separate representations for each field. At inference, scoring is a single matrix multiply against ~38K pre-computed prototype vectors covering ~35K f_nums (~17K trained classes + ~18K zero-shot from gazetteer with W_fnum = 0; some f_nums have multiple record variants).

Zero-shot prototypes: For gazetteer f_nums without training data, prototypes are built from field embeddings alone. During training, these are included as frozen distractors in the ArcFace softmax, teaching the model to distinguish trained classes from similar zero-shot prototypes. W_fnum is L2-regularized to keep trained prototypes close to their zero-shot versions.

Performance

End-to-end on held-out test data (4,437 examples scored against the full ~35K-f_num gazetteer):

Metric Score
Accuracy 97.8%
is_union accuracy 99.2% (4402/4437)
f_num accuracy (union examples) 98.3% (3804/3868)
f_num accuracy (in-vocab only) 98.3%
union_name accuracy 97.8% (4665/4771)
Wrong match (union, wrong f_num) 64
False negatives (union missed) 8
False positives (non-union matched) 27

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