skills/alphamoemoe/foci/sentiment-shift

sentiment-shift

SKILL.md

Sentiment Shift Detector

Identify stocks where blogger sentiment has changed significantly.

Triggers

  • "情绪变化最大的股票"
  • "谁转向了"
  • "sentiment shift"
  • "who changed their mind"
  • "态度转变"
  • /sentiment-shift

Instructions

When the user wants to find sentiment shifts, follow these steps:

  1. Get Multi-Day Summaries Call get_daily_summary for recent dates (today, yesterday, a few days ago) to compare sentiment over time.

  2. Identify Changed Tickers Compare the summaries to find:

    • Stocks that moved from bullish to bearish
    • Stocks that moved from bearish to bullish
    • Stocks with increased/decreased mentions
  3. Get Detailed Sentiment For tickers with notable changes, call get_ticker_sentiment to understand who changed their view.

  4. Search for Explanations Call search_viewpoints for changed tickers to find the reasoning behind sentiment shifts.

  5. Present Results Format the output as:

    ## 情绪转变追踪 🔄
    
    ### 转向看涨 📈
    
    #### TICKER1
    - **变化**: 看跌 → 看涨
    - **时间**: X天前开始转变
    - **关键转变博主**: 博主A, 博主B
    - **转变原因**: [摘要为什么改变看法]
    - **代表观点**: "[具体观点]" — 博主A
    
    ### 转向看跌 📉
    
    #### TICKER2
    - **变化**: 看涨 → 看跌
    - **时间**: X天前开始转变
    - **关键转变博主**: 博主C
    - **转变原因**: [摘要为什么改变看法]
    - **代表观点**: "[具体观点]" — 博主C
    
    ### 热度变化 🌡️
    
    | 股票 | 之前提及 | 现在提及 | 变化 |
    |------|----------|----------|------|
    | XXX | 5 | 25 | ⬆️ +400% |
    | YYY | 20 | 3 | ⬇️ -85% |
    
    ### 分析
    [总结市场情绪变化的整体趋势]
    

Tool Sequence

  1. get_daily_summary(date=today) + get_daily_summary(date=yesterday) + get_daily_summary(date=3_days_ago) → Compare over time
  2. Identify tickers with changed sentiment
  3. get_ticker_sentiment(changed_ticker) → For each changed ticker
  4. search_viewpoints(changed_ticker) → Find reasoning
  5. Compile shift analysis

Notes

  • Sentiment shifts can be leading indicators
  • A blogger changing their view is often more significant than new bloggers joining
  • Track both direction changes and intensity changes
  • Include context for why shifts happened (news, earnings, etc.)
Weekly Installs
28
GitHub Stars
6
First Seen
Jan 27, 2026
Installed on
gemini-cli21
openclaw19
codex19
opencode19
cursor18
amp17