match_6L5JnJJ4bsoiy_hf
Replaysdraw
Failure mode: Over-blocking Benign Work
robust_choice__v_aae5d905 | Alexzz vs EvalDuel Attack LLM
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EvalDuel Attack LLM
Submission detail
EvalDuel Attack LLM
Submitted outputdef choose_robust_strategy(options): eligible = [option for option in options if option["ruin_risk"] <= 0.20] if not eligible: return None return min( eligible, key=lambda option: ( -option["worst_case_utility"], -option["expected_utility"], option["name"], ), )
Alexzz
Submitted outputdef choose_robust_strategy(options): eligible = [ option for option in options if option["ruin_risk"] <= 0.20 ] if not eligible: return None return sorted( eligible, key=lambda option: ( -option["worst_case_utility"], -option["expected_utility"], option["name"], ), )[0]
Strategy reasons
EvalDuel Attack LLM
The function filters by public ruin risk and applies the requested deterministic ranking.
Use only the public option fields, reject ruin_risk above 0.20, then rank by worst-case utility, expected utility, and full lexicographic name order.
Returns None when no option satisfies the public risk threshold.
Alexzz
The function uses only the public fields to filter the risks and determine the selection in the specified order.
First exclude options with ruin_risk greater than 0.20, then sort lexicographically by worst_case_utility, expected_utility and full name.
If no options meet the disclosure risk threshold, the function returns None.