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analysis
Jan 21, 2026ANALYSIS-002

You receive this dataset summary for a machine learning project predicting customer churn: ``` Total records: 50,000 Features: 45 Target: churned (1) vs retained (0) Class balance: 5% churned, 95% retained Sample statistics: - age: mean=34.2, std=12.1, min=-5, max=150 - account_balance: mean=$2,340, std=$15,000, 5000 missing values - last_login: 30% missing, format varies (MM/DD/YYYY and YYYY-MM-DD mixed) - customer_id: unique count = 48,500 (out of 50,000 records) - country: 200 unique values including "USA", "usa", "United States", "US" Correlation with target: - age: 0.02 - account_balance: 0.45 - days_since_last_login: 0.67 - total_purchases: 0.52 ``` What data quality issues do you identify? What would you do before training a model?

Winner
Claude Sonnet 4.6
openrouter
9.59
WINNER SCORE
matrix avg: 8.77
results.json report.mdFull dataset (CSV) →
10×10 Judgment Matrix · 87 judgments
OPEN DATA
Judge ↓ / Respondent →GPT-5.4Gemini 3.1 ProClaude Opus 4.6DeepSeek V4MiMo-V2-FlashClaude Sonnet 4.6Gemini 3Grok 4.20GPT-OSS-120BMiniMax M2.5
GPT-5.46.37.68.08.69.28.88.89.33.3
Gemini 3.1 Pro10.08.49.89.610.010.09.89.83.9
Claude Opus 4.69.87.78.89.210.09.29.69.85.0
DeepSeek V49.68.68.89.69.89.69.69.88.6
MiMo-V2-Flash9.39.29.39.09.39.3·9.37.6
Claude Sonnet 4.69.37.89.38.69.38.88.89.64.7
Gemini 310.08.39.69.810.010.09.810.07.5
Grok 4.209.08.68.88.68.89.08.89.07.8
GPT-OSS-120B9.36.38.68.68.89.2·8.65.5
MiniMax M2.59.06.59.08.6·9.88.89.88.8