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Comparative corpus analysis for Python: keyness, collocations, semantic shift, temporal trajectories with changepoints + causal inference.

Project description

pycorpdiff

PyPI Python versions CI License: MIT

Comparative corpus analysis for modern Python workflows.

pycorpdiff is the missing comparative layer between R's quanteda, the closed-source SketchEngine platform, and the fragmented Python NLP stack (nltk/spaCy/gensim/sentence-transformers). Three public verbs — compare(a, b), track(c, term), compare.before_after(c, event) — consolidate keyness, collocations, dispersion, temporal trajectories, changepoint detection, interrupted time series, causal-impact analysis, forecasting, online changepoint detection, and embedding-based semantic shift under a single notebook-native API. Keyness and collocation results carry their own KWIC evidence: .explain(term) returns the source-text concordances behind any ranked term.

The package answers the questions corpus linguistics, digital humanities, and computational social science routinely have:

  • How does corpus A differ from corpus B?compare(a, b).keyness()
  • How has discourse around X evolved over time?track(c, "x").over_time()
  • What did "migrant" mean in 2005 vs 2023?compare(...).semantic_shift("migrant", embedder=...)
  • Did this event actually shift the conversation?track(...).causal_impact(event_date=...)
  • Where is the discourse heading?track(...).forecast(horizon=4)

pycorpdiff is positioned as orchestration, not reinvention. Tokenizers (spaCy, Stanza, jieba, fugashi) and embedders (any SBERT-compatible model) plug in via two typing.Protocol extension points — one-line adapters, no plugin registry. The base install's direct runtime dependencies are numpy, pandas, scipy, and pyarrow; everything else is opt-in via extras.

Status: alpha (0.1.0a25). Public API is stable for the features described below; on PyPI as pip install pycorpdiff.

The three-layer architecture

Layer Purpose Key surface
1 — Ingestion + Corpus get text in, slice it, hash it from_dataframe, read_csv, read_parquet, read_txt, read_duckdb, from_huggingface, fetch_hansard, Corpus.slice/by_time/__hash__/doc_term_counts(_sparse)/to_polars
2 — Pure math statistics with no I/O keyness.{log_likelihood,chi_squared,log_ratio,percent_diff,bayes_factor,permutation_pvalues,keyness_multi,juilland_d,benjamini_hochberg}; collocation.{logdice,pmi,t_score,mi_three,collocation_shift,cooccurrence_network}; semantic.{HashEmbedder,SBERTEmbedder,semantic_trajectory,neighborhood_drift}; temporal.{changepoints,interrupted_time_series,forecast,causal_impact,bocpd}
3 — Verbs + Results public API compare, track, compare.before_after, keyness_multi, plus 9 frozen-dataclass Result types each implementing the relevant subset of .to_df() / .plot() / .explain() / .summary() / .to_html() / .to_json()

Quick start

pip install "pycorpdiff[viz]"
import pycorpdiff as pcd

# Bundled synthetic Hansard-style sample — runs offline, no data download.
corpus = pcd.load_hansard_sample()
immigration = corpus.slice(topic="immigration")

# Which words separate the humanising and criminalising frames?
keyness = pcd.compare(
    immigration.slice(frame="humanising"),
    immigration.slice(frame="criminalising"),
).keyness(min_count=3)

keyness.plot()                # volcano plot — picture the result
# keyness.table.head(10)      # or look at the ranked table directly
# keyness.explain("criminal") # KWIC concordances showing the textual evidence

That's the entire surface in five lines: load a corpus, slice it, compare two slices, plot the result. Every other analytical method — collocation shifts, semantic drift, temporal trajectories, changepoint detection, causal-impact analysis, forecasting, co-occurrence networks, N-way keyness — follows the same shape. See the showcase notebook for the full feature tour, or the cheat sheet below for one-line API previews.

Cheat sheet — every analytical surface in one block

# Compare verbs (returns Result objects; methods exposed vary by Result)
pcd.compare(a, b).keyness()                                                   # default formula="rayson" (LL Wizard)
pcd.compare(a, b).keyness(formula="dunning")                                  # full 4-cell G² (matches quanteda / NLTK)
pcd.compare(a, b).keyness(ci="bootstrap", n_boot=999)                         # adds g2_ci_lower / g2_ci_upper columns
pcd.compare(a, b).collocation_shift("immigrant")
pcd.compare(a, b).semantic_shift("immigrant", embedder=pcd.SBERTEmbedder())   # [semantic]
# SBERTEmbedder downloads a sentence-transformers model on first call;
# use pcd.HashEmbedder() for offline / deterministic-test settings.

# Reference-baseline keyness (bundled or user-built)
pcd.against_baseline(corpus, "gutenberg_fiction")                             # vs bundled 19th-c. fiction baseline
pcd.against_baseline(corpus, pcd.baseline_from_corpus(reference_corpus))      # vs your own reference

# Sub-corpus balancing — Coarsened Exact Matching before keyness
m = pcd.match(a, b, on=["year", "party"], seed=0)                             # balances A and B on covariates
pcd.compare(m.a_matched, m.b_matched).keyness()                               # like-for-like comparison

# Lexical diversity (TTR, MATTR, MTLD, HD-D) — pooled and over time
pcd.lexical_diversity(corpus)                                                 # pooled corpus-level values
pcd.lexical_diversity(corpus, freq="Y", ci="bootstrap", n_boot=199)           # per-year trajectory + CIs

# Track over time (requires [temporal] for the changepoint + ITS + forecast + causal_impact methods)
tr = pcd.track(corpus, "immigrant").over_time(freq="Y")
tr.changepoints()                                  # offline PELT
tr.changepoints_online(hazard=1/24)                # Bayesian online (Adams & MacKay 2007)
tr.burstiness()                                    # Kleinberg 1999 multi-state HMM — burst-intensity states
tr.interrupted_time_series(event_date="2016")      # segmented OLS
tr.causal_impact(event_date="2016")                # Bayesian counterfactual (Brodersen 2015)
tr.forecast(horizon=4)                             # 4 periods at the over_time freq (state-space ETS)

# Before / after a known event
pcd.compare.before_after(corpus, event_date="2016-06-23").keyness()

# N-way (≥ 2 corpora)
pcd.keyness_multi([a, b, c, d], labels=["A", "B", "C", "D"])

# The discourse as a graph
pcd.cooccurrence_network(corpus, top_n=30).plot()

See examples/pycorpdiff_showcase.ipynb for a walkthrough on the synthetic Hansard-style corpus exercising every analytical surface.

Installation

pip install pycorpdiff                       # lexical-comparative core (MIT)
pip install "pycorpdiff[viz]"                # + altair / matplotlib / networkx
pip install "pycorpdiff[semantic]"           # + sentence-transformers
pip install "pycorpdiff[temporal]"           # + ruptures / statsmodels
pip install "pycorpdiff[notebooks]"          # + jupyter / vl-convert
pip install "pycorpdiff[all]"                # everything MIT-compatible
pip install "pycorpdiff[all,showcase]"       # + pysofra (GPL-3.0-or-later) for the JAMA-style showcase

The base install's direct runtime dependencies are numpy, pandas, scipy, and pyarrow; optional extras land per analytical layer so you only pay for what you use. [showcase] is broken out separately because pysofra is GPL-3.0-or-later — pure pycorpdiff use without that extra remains MIT-only.

To work from source:

git clone https://github.com/jturner-uofl/pycorpdiff
cd pycorpdiff
pip install -e ".[dev]"
pytest -q

Cross-validation receipts

The math is checked against standard tools by automated test. The fast tier runs on every push (matrix CI); the slow tier needs heavy optional dependencies (NLTK, Scattertext, Stanford SNAP downloads) and runs on main pushes only.

Fast tier:

Slow tier:

  • NLTK BigramAssocMeasures — PMI + t-score agreement to ≤ 1e-12 on every adjacent bigram
  • Scattertext (Kessler 2017) — behavioural agreement on the 2012 US Conventions corpus
  • HistWords (Hamilton et al. 2016) — known-shifter / stable-word sanity check on Stanford SNAP COHA decade embeddings (skips gracefully if the archive isn't reachable)

Citation

If you use pycorpdiff in academic work, please cite the software via the CITATION.cff file in this repository — GitHub renders a "Cite this repository" widget directly from it.

License

MIT — see LICENSE.

Further reading

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