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Implements statistical arbitrage strategy for Elon Musk tweet count markets on Polymarket. Strategy logic: - Calculate average daily tweets from historical data - Project final count: current + (avg_daily × days_remaining) - Identify profitable ranges around projection - Buy ranges with positive expected value (>70% probability coverage) Based on analysis from @noovd trader strategy. Source: https://x.com/0xMovez/status/2005002806722203657 Features: - Auto-discovery of Elon tweets markets - Range parsing from outcome strings - Expected value calculation - Configurable probability targets and order sizes - Comprehensive CLI with usage examples Files: - examples/elon_tweets_strategy.py: Strategy implementation - examples/README.md: Updated with strategy documentation Co-authored-by: inhacho <inhacho@users.noreply.github.com>
PR Review: Elon Tweets Volume Betting StrategyOverviewThis PR implements a statistical arbitrage strategy for Elon Musk tweet count markets on Polymarket. The implementation follows the repository's architecture well and builds appropriately on the existing Strategy base class. Code Quality & Best Practices✅ Strengths
🔧 Suggestions1. CLAUDE.md Violations (Critical per project instructions)The code violates instruction #1: "Avoid emojis and other non-essential characters"
2. Simplify Range Selection Logic (
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Implements statistical arbitrage strategy for Elon Musk tweet count markets on Polymarket.
Strategy Logic
Based on analysis from @noovd trader strategy.
Source: https://x.com/0xMovez/status/2005002806722203657
Features
Files
examples/elon_tweets_strategy.py: Strategy implementationexamples/README.md: Updated with strategy documentationCloses #40
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