14 KiB
citegeist
citegeist is a research-oriented bibliography workbench for building, expanding, and auditing BibTeX libraries.
The aim is not just to store citations. The aim is to help with the harder problem: finding, improving, connecting, and checking the literature around a topic while keeping BibTeX as a first-class output format.
Repo Description
citegeist is a BibTeX-native research tool for citation extraction, metadata enrichment, citation-graph expansion, and semantic search over scholarly sources.
Scope
The project is intended to support a workflow like this:
- Start from rough references extracted from papers, notes, syllabi, or dissertations.
- Convert them into draft BibTeX entries.
- Enrich and correct those entries using external scholarly metadata sources.
- Persist entries, identifiers, abstracts, and citation edges in a local database.
- Traverse the citation graph outward to discover additional relevant works.
- Search the local corpus semantically using abstracts and extracted full text.
- Export verified results back into BibTeX for LaTeX use.
Why A New Codebase
This repository starts cleanly rather than extending the older bib/ toolkit directly.
The older toolkit is useful as prior art:
- it demonstrates identifier-driven metadata augmentation;
- it caches PDFs and extracted plaintext;
- it shows one workable model for bibliography growth.
But it is not the right long-term base:
- it is Python 2-era code;
- it is shell-script centric;
- it does not provide a normalized database for graph workflows;
- it is not structured as a reusable Python 3 library.
citegeist keeps the useful ideas and rebuilds the foundation around a cleaner Python 3 package boundary.
Current Status
The initial repo includes:
pybtex-backed BibTeX parsing and export in a repo-local virtual environment;- a SQLite-backed bibliography store;
- a small CLI for ingest, search, inspection, and export;
- review-state tracking on entries, per-field ingest provenance, and field-level conflict review;
- plaintext reference extraction into draft BibTeX for numbered, APA-like, wrapped-line, and simple book-style references;
- identifier-first metadata resolution for DOI, OpenAlex, DBLP, arXiv, and DataCite-backed entries, with OpenAlex/DataCite title-search fallback;
- local citation-graph traversal over stored
cites,cited_by, andcrossrefedges; - Crossref- and OpenAlex-backed graph expansion that materializes draft related works and edge provenance;
- a dedicated source-client layer with fixture/cache support for live-source development;
- OAI-PMH Dublin Core harvesting for institutional repositories and thesis/dissertation sources;
- OAI-PMH repository discovery via
Identify,ListSets, andListMetadataFormatsto target harvests more precisely; - bibliography bootstrap workflows that can start from a seed
.bib, a topic phrase, or both; - batch bootstrap orchestration from JSON job files containing seed BibTeX paths, topic phrases, or both;
- normalized tables for entries, creators, identifiers, and citation relations;
- full-text-search-ready indexing over title, abstract, and fulltext when SQLite FTS5 is available;
- tests covering parsing, ingestion, relation storage, and search.
Example applications live alongside the core package rather than defining it. Current examples include:
- a comprehensive CLI cookbook in examples/cli/README.md;
- a topic-only bootstrap workflow for
artificial lifein examples/artificial-life/README.md; - the TalkOrigins bibliography pipeline under
citegeist.examples.talkoriginswith a usage guide in examples/talkorigins/README.md.
The prioritized execution plan lives in ROADMAP.md.
Layout
citegeist/
src/citegeist/
bibtex.py
examples/
storage.py
tests/
test_storage.py
pyproject.toml
Quick Start
cd citegeist
python3 -m virtualenv --always-copy .venv
.venv/bin/pip install -e .
.venv/bin/pip install pytest
mkdir -p .cache/citegeist
PYTHONPATH=src .venv/bin/python - <<'PY'
from citegeist import BibliographyStore
bib = """
@article{smith2024graphs,
author = {Smith, Jane and Doe, Alex},
title = {Graph-first bibliography augmentation},
year = {2024},
abstract = {We study citation graphs for literature discovery.},
references = {miller2023search}
}
@inproceedings{miller2023search,
author = {Miller, Sam},
title = {Semantic search for research corpora},
year = {2023},
abstract = {Dense retrieval improves recall for academic search.}
}
"""
store = BibliographyStore("library.sqlite3")
store.ingest_bibtex(bib)
print(store.get_relations("smith2024graphs"))
print(store.search_text("semantic"))
store.close()
PY
.venv/bin/python -m pytest -q
Or use the CLI directly:
cd citegeist
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 ingest references.bib
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 search "semantic search"
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 search "origin" --topic abiogenesis
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 show --provenance --conflicts smith2024graphs
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 set-status smith2024graphs reviewed
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 resolve-conflicts smith2024graphs title accepted
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 apply-conflict smith2024graphs title
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 bootstrap --seed-bib seed.bib --topic "bayesian nonparametrics"
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 bootstrap --topic "bayesian nonparametrics" --preview --topic-commit-limit 5
PYTHONPATH=src .venv/bin/python -m citegeist extract references.txt --output draft.bib
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 resolve smith2024graphs
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 resolve-stubs --doi-only --preview --limit 25
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 topics
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 topic-entries abiogenesis
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 export-topic abiogenesis --output abiogenesis.bib
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 graph smith2024graphs --relation cites --depth 2 --missing-only
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 graph smith2024graphs --relation cites --depth 2 --format json-graph
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 graph smith2024graphs --relation cites --depth 2 --format dot
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 graph smith2024graphs --relation cites --depth 2 --format dot --output graph.dot
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 graph smith2024graphs --relation cites --depth 2 --format json-graph --output graph.json
PYTHONPATH=src .venv/bin/python -m citegeist graph-view graph.json --output graph.html --title "CiteGeist Graph"
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 expand smith2024graphs --source crossref
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 expand smith2024graphs --source openalex --relation cited_by --limit 10
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 expand-topic abiogenesis --topic-phrase "abiogenesis origin chemistry" --source openalex --relation cites --seed-key seed2024 --min-relevance 0.3 --preview
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 set-topic-phrase abiogenesis "abiogenesis origin chemistry prebiotic"
PYTHONPATH=src .venv/bin/python -m citegeist discover-oai https://example.edu/oai
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 harvest-oai https://example.edu/oai --metadata-prefix mods --from 2024-01-01 --until 2024-12-31 --limit 10
PYTHONPATH=src .venv/bin/python -m citegeist --db library.sqlite3 export --output reviewed.bib
For a fuller option-by-option CLI cookbook, see examples/cli/README.md.
Broad BibTeX exports skip DOI-only placeholder records such as Referenced work N by default. Use --include-stubs on export or export-topic if you want those entries included anyway.
For live-source development, prefer fixture-backed or cache-backed source clients so resolver and expansion work can be exercised repeatedly without re-hitting upstream APIs on every run.
Example Application
-
Use
stage-topic-phrasesto load those suggestions into the database as review items. Staging stores the candidate insuggested_phraseand marks the topicpendingwithout changing the activeexpansion_phrase. -
Use
export-topic-phrase-reviewsto write an editable JSON template directly from the database for the currently staged suggestions. That gives you a round-trip path from DB review queue to file edits and back intoreview-topic-phrases. -
Use
review-topic-phraseto accept or reject one staged suggestion in place. Accepting a suggestion copies it intoexpansion_phraseand clears it from the staged review queue; rejecting it preserves the staged suggestion together with its review state. -
Use
review-topic-phraseswhen you want to apply many accept/reject decisions from one JSON file. Each item should carryslug,status, and optionalphrase/review_notes. -
Use
apply-topic-phraseswhen you want a direct patch path instead of the staged review flow. It accepts either the raw suggestion list or an object with atopicslist, and will applysuggested_phraseorphraseto matching topic slugs immediately. -
Use
topic-phrase-reviews --phrase-review-status pendingwhen you want a compact audit view of unresolved staged suggestions, including both the current live phrase and the pending replacement. -
Use
enrich-talkoriginswhen you want to target those weak canonical entries for resolver-based metadata upgrades before retrying graph expansion on imported topic slices. -
Use
review-talkoriginswhen you want one JSON review artifact that combines weak canonical clusters with dry-run enrichment outcomes for manual cleanup. -
Use
expand-topicwhen you already have both a topic phrase and a curated topic seed set in the database: it expands outward from the topic’s existing entries, then only assigns discovered works back to that topic if they clear a topic-relevance threshold. Write-enabled assignment is stricter than preview ranking: a candidate must clear the score threshold and show a non-generic title anchor to the topic phrase, so broad methods papers do not get attached just because their abstracts or related terms overlap. On large noisy topics, prefer--seed-keyto restrict the run to just the trusted seed entries you want to expand from, and use--previewfirst to inspect discovered candidates and relevance scores before writing anything. -
Use
set-topic-phraseto store a curated expansion phrase on the topic itself. When a stored phrase exists,expand-topicwill use it automatically if you do not pass--topic-phrase. Batch bootstrap jobs can also settopic_slug,topic_name, andtopic_phraseso curated topic metadata is created as part of the run. -
Use
topics --phrase-review-status pendingwhen you want to audit only topics whose staged phrase suggestions still need review. -
--allow-unsafe-search-matchesexists only for bounded experiments on copied databases when you explicitly want to relax trust to exercise downstream expansion behavior.
The TalkOrigins corpus pipeline remains in the repository as an example application rather than a core package surface. Use the example-scoped Python namespace:
from citegeist.examples.talkorigins import TalkOriginsScraper
and the example-scoped CLI commands:
PYTHONPATH=src .venv/bin/python -m citegeist example-talkorigins-scrape talkorigins-out --limit-topics 5 --limit-entries-per-topic 20
PYTHONPATH=src .venv/bin/python -m citegeist example-talkorigins-validate talkorigins-out/talkorigins_manifest.json
PYTHONPATH=src .venv/bin/python -m citegeist example-talkorigins-duplicates talkorigins-out/talkorigins_manifest.json --limit 20 --preview --weak-only
The older scrape-talkorigins-style command names remain available as compatibility aliases. The full example workflow and reconstruction notes live in examples/talkorigins/README.md.
For a smaller example that starts from a topic phrase alone, see examples/artificial-life/README.md.
Correction files are simple JSON:
{
"corrections": [
{
"key": "smith jane|1999|weak duplicate",
"entry_type": "article",
"review_status": "reviewed",
"fields": {
"journal": "Journal of Better Metadata",
"doi": "10.1000/weak",
"note": null
}
}
]
}
fields values overwrite the canonical entry for that duplicate-cluster key. Set a field to null to remove it.
Live-source workflow:
cd citegeist
export CITEGEIST_SOURCE_CACHE=.cache/citegeist
export CITEGEIST_LIVE_TESTS=1
PYTHONPATH=src .venv/bin/python -m pytest -m live -q
PYTHONPATH=src .venv/bin/python scripts/live_smoke.py
By default, live tests are skipped. They only run when CITEGEIST_LIVE_TESTS=1 is set.
Convenience targets:
make test
make test-live
make live-smoke
Near-Term Priorities
- source adapters beyond OAI-PMH for additional non-DOI scholarly ecosystems.
See ROADMAP.md for the prioritized phase plan and rationale.
Naming
The name is intended to be short, distinct, and memorable:
citefor citation work;geistfor the organizing intelligence around the literature.