| name | keyword-graph-view |
| description | Extract exactly 8 context-sensitive keywords from Chinese, English, or mixed text and turn them into a distributed weighted Graph View with no center goal node. Use when Codex needs keyword extraction, blacklist filtering, co-occurrence edges, node definitions/notes, weighted graph JSON, or an online Graph View tool for text analysis. |
Keyword Graph View
Create a centerless keyword network from raw text. The output should contain 8 keyword nodes, weighted undirected edges, and a short definition/note for every node.
Live Tool
- Open the public app at
https://keyword-graph-view.twhsi.chatgpt.site/ when the user wants an interactive Graph View.
- Use
assets/web-app/ when the user wants to inspect, adapt, or redeploy the validated website source.
- In the web app, paste or import text, edit the blacklist, select a case, and press the generate button. Click a node to inspect its definition, note, evidence, and weighted connections.
Workflow
- Read the source text and any user-provided blacklist.
- Remove blacklisted phrases before token scoring, then filter blacklisted tokens during ranking.
- Extract exactly 8 keywords by frequency, term length, and spread through the source.
- Build weighted co-occurrence edges by scanning a configurable token window.
- Do not create a "center", "main goal", "中心目標", or hub node unless the user explicitly asks for a radial Mandalart layout.
- Generate a definition for each node from its strongest evidence sentence and connected keywords.
- Render or return a distributed graph: positions should be balanced across the canvas, with edge width and node area showing weight.
Output Schema
Return graph JSON with this shape when the user asks for data or a reusable artifact:
{
"meta": {
"model": "keyword_graph_view",
"keyword_count": 8,
"layout": "distributed_weighted_network"
},
"nodes": [
{
"id": "k0",
"label": "keyword",
"count": 5,
"score": 1,
"weight": 9,
"definition": "Context-specific definition",
"note": "Longer note for side panel display",
"evidence": ["source sentence"]
}
],
"edges": [
{
"id": "e0",
"source": "k0",
"target": "k1",
"weight": 7,
"relation": "co_occurs"
}
]
}
Visual Rules
- Use dark mode by default for online tools.
- Keep the graph centerless and distributed; avoid drawing a privileged center node.
- Show edge labels or widths for weights.
- Make nodes clickable or keyboard focusable when interactive output is possible.
- Provide a right-side Note panel that updates from the selected node.
- Include each node's definition, evidence sentences, score, count, and connected keywords in the note.
- Keep labels readable in Traditional Chinese: use system CJK fonts, strong contrast, and label wrapping where needed.
- Map edge weight from purple (
W1) through blue, cyan, green, yellow, and orange to red (W9); increase line thickness with weight.
- Provide visible zoom-in and zoom-out controls for the graph canvas.
Blacklist
Treat the blacklist as both phrase removal and token filtering. Default blacklist terms should include common structural words and Mandalart-center words such as:
中心目標
主目標
main goal
goal
中心
目標
Preserve the user's blacklist in the output metadata when useful.
Script
Use scripts/extract_keyword_graph.py for deterministic text-to-graph JSON:
python3 scripts/extract_keyword_graph.py input.txt --blacklist blacklist.txt --out graph.json
Patch the script only when the project needs a new schema or scoring behavior; otherwise prefer running it with options.
Web App
Run the bundled app locally only when interactive verification or customization is needed:
cd assets/web-app
npm install
npm run dev
Before publishing a modified app, run npm test and npm run lint.