frame-check-mcp
Enables structural framing analysis of documents, identifying perspectives, omissions, and reader positioning, with numerical claim verification against authoritative sources.
README
Frame Check
See what any document does not show you.
Frame Check is a structural framing analysis tool. It names which perspectives a document takes, which it omits, and how it positions the reader. Numerical claims are cross-checked against authoritative sources where coverage exists.
Quickstart (MCP server)
The PyPI package frame-check-mcp is the Model Context Protocol
server. It runs locally and gives any MCP-compatible AI client
(Claude Desktop, Cursor, Cline, Continue.dev, etc.) deterministic
structural framing analysis as a tool.
pip install frame-check-mcp
Then point your MCP client at the installed entry point. For
Claude Desktop, add to claude_desktop_config.json:
{
"mcpServers": {
"frame-check": {
"command": "frame-check-mcp"
}
}
}
Restart the client. Then in any conversation: "Can you frame-check
this document?" Full install + verification details in MCP_SERVER.md.
What it does
Pass a document and Frame Check returns:
- A structural framing profile: which of five analytical perspectives (causes, risks, stakeholders, trends, uncertainty) the document covers, which it omits, and the density of each.
- Voice and epistemic posture: how the document positions the reader, and what share of claims are attributed to sources.
- Temporal orientation: whether the document grounds its conclusions in historical data, present state, or projections.
- Frame Vocabulary Standard candidate matches: named frame patterns whose rule-based signals fire on the text, each with identification cues and worked examples. Matches are candidate-level; precision against multi-source labeling is an active research question.
- Source-network verification: numeric claims checked against SEC EDGAR, FRED, World Bank, REST Countries, Alpha Vantage, and Wolfram Alpha where those providers have coverage.
- An optional AI narrative interpreting framing at prose level. Labelled distinctly so readers do not conflate language-model interpretation with deterministic measurement.
Approach
Structural measurement is the floor. Every framing claim the tool makes is computed from deterministic pattern matchers and always returns the same result for the same input. AI-assisted interpretation is available as enrichment where an API key is configured, but is labelled as such and never hidden behind the structural layer.
Verification is bounded. The tool only verifies numeric claims against providers with genuine coverage for the claim type, and it surfaces its own calibration results (precision, recall, F1 per provider) rather than asserting verdicts without evidence.
Named-pattern detection is a separate reliability layer from the structural profile. Detector F1 = 0.36 against expert labelers in a pre-registered validation, below the useful threshold of 0.4. The pivot to construct-honesty surfacing (under-detection markers, density caveats, confidence states) rather than confident labels is the load-bearing claim at v0; a reader-aid study (Track B, pre-registered) tests whether this surfacing actually helps a reader see framing they would otherwise miss.
Honest limits and anticipated adversarial readings are catalogued in
ANTICIPATED_CRITIQUES.md.
Documentation
METHODOLOGY.md: full methodology paper (v0.2 draft)MCP_SERVER.md: MCP server reference (tools, resources, prompts)MCP_CLIENT_CONFORMANCE_v1.md: 32/32 conformance round-trips against the installed wheelFRAME_DIVERGENCE_v1.mdandFRAME_DIVERGENCE_v2.md: divergence architecturedata/frame_library/: 20-entry FVS catalog with worked examplesANTICIPATED_CRITIQUES.md: self-enumerated adversarial readingsVALIDATION_PROGRAM.md: observational + formal validation plans
Running tests
pip install -r requirements.txt
python3 run_tests.py
49 test suites, ~3 minutes. Includes 63 adversarial dispatcher tests
in test_mcp_adversarial.py plus the V4.2 engine + classifier coverage.
License
Apache-2.0 for code; CC-BY-4.0 for the FVS library and worked examples
(see NOTICE for the per-directory enumeration).
Citation
If Frame Check is useful in your work, see CITATION.cff for the
citable form. Frame Check is authored by Lovro Lucic; named authorship
is the project's primary credibility asset per the construct-honesty
discipline.
Contributing
Sign-off-by-DCO required per CONTRIBUTING.md. Governance per
GOVERNANCE.md (BDFL model with named forcing functions for
canon-promotion decisions). External reviewer engagement per
REVIEWERS.md.
Issues
https://github.com/lluvr/frame-check-mcp/issues
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