Extract structured statements from text using T5-Gemma 2 and Diverse Beam Search
Project description
Corp Extractor
Extract structured subject-predicate-object statements from unstructured text using the T5-Gemma 2 model.
Features
- Structured Extraction: Converts unstructured text into subject-predicate-object triples
- Entity Type Recognition: Identifies 12 entity types (ORG, PERSON, GPE, LOC, PRODUCT, EVENT, etc.)
- Quality Scoring (v0.2.0): Each triple scored for groundedness (0-1) based on source text
- Beam Merging (v0.2.0): Combines top beams for better coverage instead of picking one
- Embedding-based Dedup (v0.2.0): Uses semantic similarity to detect near-duplicate predicates
- Predicate Taxonomies (v0.2.0): Normalize predicates to canonical forms via embeddings
- Contextualized Matching (v0.2.2): Compares full "Subject Predicate Object" against source text for better accuracy
- Entity Type Merging (v0.2.3): Automatically merges UNKNOWN entity types with specific types during deduplication
- Reversal Detection (v0.2.3): Detects and corrects subject-object reversals using embedding comparison
- Command Line Interface (v0.2.4): Full-featured CLI for terminal usage
- Multiple Output Formats: Get results as Pydantic models, JSON, XML, or dictionaries
Installation
# Recommended: include embedding support for smart deduplication
pip install "corp-extractor[embeddings]"
# Minimal installation (no embedding features)
pip install corp-extractor
Note: This package requires transformers>=5.0.0 (pre-release) for T5-Gemma2 model support. Install with --pre flag if needed:
pip install --pre "corp-extractor[embeddings]"
For GPU support, install PyTorch with CUDA first:
pip install torch --index-url https://download.pytorch.org/whl/cu121
pip install "corp-extractor[embeddings]"
Quick Start
from statement_extractor import extract_statements
result = extract_statements("""
Apple Inc. announced the iPhone 15 at their September event.
Tim Cook presented the new features to customers worldwide.
""")
for stmt in result:
print(f"{stmt.subject.text} ({stmt.subject.type})")
print(f" --[{stmt.predicate}]--> {stmt.object.text}")
print(f" Confidence: {stmt.confidence_score:.2f}") # NEW in v0.2.0
Command Line Interface
The library includes a CLI for quick extraction from the terminal.
Install Globally (Recommended)
For best results, install globally first:
# Using uv (recommended)
uv tool install "corp-extractor[embeddings]"
# Using pipx
pipx install "corp-extractor[embeddings]"
# Using pip
pip install "corp-extractor[embeddings]"
# Then use anywhere
corp-extractor "Your text here"
Quick Run with uvx
Run directly without installing using uv:
uvx corp-extractor "Apple announced a new iPhone."
Note: First run downloads the model (~1.5GB) which may take a few minutes.
Usage Examples
# Extract from text argument
corp-extractor "Apple Inc. announced the iPhone 15 at their September event."
# Extract from file
corp-extractor -f article.txt
# Pipe from stdin
cat article.txt | corp-extractor -
# Output as JSON
corp-extractor "Tim Cook is CEO of Apple." --json
# Output as XML
corp-extractor -f article.txt --xml
# Verbose output with confidence scores
corp-extractor -f article.txt --verbose
# Use more beams for better quality
corp-extractor -f article.txt --beams 8
# Use custom predicate taxonomy
corp-extractor -f article.txt --taxonomy predicates.txt
# Use GPU explicitly
corp-extractor -f article.txt --device cuda
CLI Options
Usage: corp-extractor [OPTIONS] [TEXT]
Options:
-f, --file PATH Read input from file
-o, --output [table|json|xml] Output format (default: table)
--json Output as JSON (shortcut)
--xml Output as XML (shortcut)
-b, --beams INTEGER Number of beams (default: 4)
--diversity FLOAT Diversity penalty (default: 1.0)
--max-tokens INTEGER Max tokens to generate (default: 2048)
--no-dedup Disable deduplication
--no-embeddings Disable embedding-based dedup (faster)
--no-merge Disable beam merging
--dedup-threshold FLOAT Deduplication threshold (default: 0.65)
--min-confidence FLOAT Min confidence filter (default: 0)
--taxonomy PATH Load predicate taxonomy from file
--taxonomy-threshold FLOAT Taxonomy matching threshold (default: 0.5)
--device [auto|cuda|cpu] Device to use (default: auto)
-v, --verbose Show confidence scores and metadata
-q, --quiet Suppress progress messages
--version Show version
--help Show this message
New in v0.2.0: Quality Scoring & Beam Merging
By default, the library now:
- Scores each triple for groundedness based on whether entities appear in source text
- Merges top beams instead of selecting one, improving coverage
- Uses embeddings to detect semantically similar predicates ("bought" ≈ "acquired")
from statement_extractor import ExtractionOptions, ScoringConfig
# Precision mode - filter low-confidence triples
scoring = ScoringConfig(min_confidence=0.7)
options = ExtractionOptions(scoring_config=scoring)
result = extract_statements(text, options)
# Access confidence scores
for stmt in result:
print(f"{stmt} (confidence: {stmt.confidence_score:.2f})")
New in v0.2.0: Predicate Taxonomies
Normalize predicates to canonical forms using embedding similarity:
from statement_extractor import PredicateTaxonomy, ExtractionOptions
taxonomy = PredicateTaxonomy(predicates=[
"acquired", "founded", "works_for", "announced",
"invested_in", "partnered_with"
])
options = ExtractionOptions(predicate_taxonomy=taxonomy)
result = extract_statements(text, options)
# "bought" -> "acquired" via embedding similarity
for stmt in result:
if stmt.canonical_predicate:
print(f"{stmt.predicate} -> {stmt.canonical_predicate}")
New in v0.2.2: Contextualized Matching
Predicate canonicalization and deduplication now use contextualized matching:
- Compares full "Subject Predicate Object" strings against source text
- Better accuracy because predicates are evaluated in context
- When duplicates are found, keeps the statement with the best match to source text
This means "Apple bought Beats" vs "Apple acquired Beats" are compared holistically, not just "bought" vs "acquired".
New in v0.2.3: Entity Type Merging & Reversal Detection
Entity Type Merging
When deduplicating statements, entity types are now automatically merged. If one statement has UNKNOWN type and a duplicate has a specific type (like ORG or PERSON), the specific type is preserved:
# Before deduplication:
# Statement 1: AtlasBio Labs (UNKNOWN) --sued by--> CuraPharm (ORG)
# Statement 2: AtlasBio Labs (ORG) --sued by--> CuraPharm (ORG)
# After deduplication:
# Single statement: AtlasBio Labs (ORG) --sued by--> CuraPharm (ORG)
Subject-Object Reversal Detection
The library now detects when subject and object may have been extracted in the wrong order by comparing embeddings against source text:
from statement_extractor import PredicateComparer
comparer = PredicateComparer()
# Automatically detect and fix reversals
fixed_statements = comparer.detect_and_fix_reversals(statements)
for stmt in fixed_statements:
if stmt.was_reversed:
print(f"Fixed reversal: {stmt}")
How it works:
- For each statement with source text, compares:
- "Subject Predicate Object" embedding vs source text
- "Object Predicate Subject" embedding vs source text
- If the reversed form has higher similarity, swaps subject and object
- Sets
was_reversed=Trueto indicate the correction
During deduplication, reversed duplicates (e.g., "A -> P -> B" and "B -> P -> A") are now detected and merged, with the correct orientation determined by source text similarity.
Disable Embeddings (Faster, No Extra Dependencies)
options = ExtractionOptions(
embedding_dedup=False, # Use exact text matching
merge_beams=False, # Select single best beam
)
result = extract_statements(text, options)
Output Formats
from statement_extractor import (
extract_statements,
extract_statements_as_json,
extract_statements_as_xml,
extract_statements_as_dict,
)
# Pydantic models (default)
result = extract_statements(text)
# JSON string
json_output = extract_statements_as_json(text)
# Raw XML (model's native format)
xml_output = extract_statements_as_xml(text)
# Python dictionary
dict_output = extract_statements_as_dict(text)
Batch Processing
from statement_extractor import StatementExtractor
extractor = StatementExtractor(device="cuda") # or "cpu"
texts = ["Text 1...", "Text 2...", "Text 3..."]
for text in texts:
result = extractor.extract(text)
print(f"Found {len(result)} statements")
Entity Types
| Type | Description | Example |
|---|---|---|
ORG |
Organizations | Apple Inc., United Nations |
PERSON |
People | Tim Cook, Elon Musk |
GPE |
Geopolitical entities | USA, California, Paris |
LOC |
Non-GPE locations | Mount Everest, Pacific Ocean |
PRODUCT |
Products | iPhone, Model S |
EVENT |
Events | World Cup, CES 2024 |
WORK_OF_ART |
Creative works | Mona Lisa, Game of Thrones |
LAW |
Legal documents | GDPR, Clean Air Act |
DATE |
Dates | 2024, January 15 |
MONEY |
Monetary values | $50 million, €100 |
PERCENT |
Percentages | 25%, 0.5% |
QUANTITY |
Quantities | 500 employees, 1.5 tons |
UNKNOWN |
Unrecognized | (fallback) |
How It Works
This library uses the T5-Gemma 2 statement extraction model with Diverse Beam Search (Vijayakumar et al., 2016):
- Diverse Beam Search: Generates 4+ candidate outputs using beam groups with diversity penalty
- Quality Scoring (v0.2.0): Each triple scored for groundedness in source text
- Beam Merging (v0.2.0): Top beams combined for better coverage
- Embedding Dedup (v0.2.0): Semantic similarity removes near-duplicate predicates
- Predicate Normalization (v0.2.0): Optional taxonomy matching via embeddings
- Contextualized Matching (v0.2.2): Full statement context used for canonicalization and dedup
- Entity Type Merging (v0.2.3): UNKNOWN types merged with specific types during dedup
- Reversal Detection (v0.2.3): Subject-object reversals detected and corrected via embedding comparison
Requirements
- Python 3.10+
- PyTorch 2.0+
- Transformers 4.35+
- Pydantic 2.0+
- sentence-transformers 2.2+ (optional, for embedding features)
- ~2GB VRAM (GPU) or ~4GB RAM (CPU)
Links
License
MIT License - see LICENSE file for details.
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