chanalyse πŸ• snapshot 2026-06-18 13:34 UTC Β· refreshes ~3h

πŸ“Š Data analysis

πŸ“Š Analysis πŸ”¬ Analysis Lab new
What this page shows & how it works

chanalyse scrapes 4chan board catalogues and the full posts of active threads, then an LLM groups each thread into a story (a specific, news-like development) under a theme (a durable bucket), extracting named entities, a one-line claim, a stance word, and a novelty score (0=evergreen chatter, 1=breaking).

  • Story volume = how many threads mention a story per hour. A sharp rise vs its own baseline is what triggers an "article trigger".
  • Sentiment = VADER compound score (βˆ’1…+1) averaged over posts; the LLM stance word adds nuance VADER misses.
  • Novelty distinguishes a fresh development from a daily "general" thread.
  • Velocity = total threads seen per hour on the board.
  • Click any bar, pie slice, theme or story to see the underlying threads.

Recording window loading…

Window: Last 24h Last 7 days Last 30 days
πŸ“… Custom range & comparison β€” pick exact dates, or compare two periods (e.g. now vs 6 months ago)
β†’

Story volume over time

What this tells you: how much story-tagged discussion each board carries per day β€” the overall "how loud is the board" baseline.

Thread velocity

What this tells you: new threads appearing per day, per board β€” a leading indicator of attention before it shows up as story volume.

Topic velocity (which topics are heating up)

Posts/hour for each top topic in the recent part of the window vs earlier β€” a concrete per-TOPIC heat signal. β–² accelerating, β–Ό cooling.

TrendTopicBoardNow (posts/hr)AccelTotal

Average sentiment over time

What this tells you: mood (βˆ’1 bearish … +1 bullish) of the conversation per board over time. Watch for boards diverging or a sharp mood flip.

Theme share (click a slice)

What this tells you: what proportion of conversation each broad theme occupies right now. Click a slice to read the underlying threads.

Story mentions over time (top stories)

What this tells you: which specific stories are driving volume and how they rise and fall against each other β€” the granular view under the theme share.

Novelty distribution

What this tells you: how breaking vs evergreen the conversation is. A right-shift (toward 1.0) means fresh developments are dominating.

Stance words (LLM tone)

What this tells you: the LLM's one-word read on how posters frame stories β€” nuance VADER sentiment misses (e.g. "skeptical", "hyped").

Top themes (click β†’ threads)

What this tells you: the most-discussed durable themes by thread count. Click a bar to open its threads.

Top stories (click a row β†’ open the story page Β· shows first seen β†’ last seen)

StoryBoardMentionsNoveltySentimentFirst seenLast seen

Board comparison

BoardThreadsStoriesAvg sentimentAvg noveltyDeletions

πŸ“° Article threshold β€” why a topic becomes an article

Every detected spike (story that broke out above its own baseline) gets an article_score from 0 to 1. When that score reaches the 0.55 threshold, chanalyse auto-writes an article about it. Each story below is a point on the score axis; the red line is the article threshold. Points on/right of the line cleared the bar (β–  article written / β–  eligible β€” pending); points left of it did not (β–  below threshold). Click a point or row to see its score breakdown β€” and, if an article exists, to read it.

Scoring formula loading…

All scored stories (click a row for the breakdown)

StoryBoardScorezNoveltyEntitiesStatusArticle

πŸš€ Movers & Shakers β€” what suddenly changed

Entities whose mention rate accelerated most recently vs their own baseline β€” like a "what's breaking out" index. Brand-new entities are listed separately. Click any row to see the underlying threads.

⬇ CSV

πŸ“ˆ Rising (accelerating)

EntityCatNowWasAccel

✨ Newcomers (first appeared)

EntityCatMentionsBoards
πŸ“Š Trend Index β€” compare entities over time (0–100)

Mentions per day, normalised to 0–100 (100 = the busiest bucket across the selected entities), the same relative scale Google Trends uses. Add up to 6 entities to overlay them.

window ⬇ CSV
EntityCatTotalBoardsMomentum
πŸ”Ž Entity Explorer β€” search companies, cryptos, tickers, political mentions

Every named thing the LLM has tagged. Search by name, filter by category, click a row to chart it in the Trend Index above or open its threads.

EntityCategoryMentionsBoardsLast seen