| from dataclasses import dataclass |
| from typing import Dict, Any, List |
| import re |
|
|
| REQ = [ |
| "pure_pharmacological_effect", |
| "contextual_amplification_factor", |
| "nocebo_risk_index", |
| "signal_separation_confidence", |
| "effect_stability_score", |
| ] |
|
|
| @dataclass |
| class ScoreResult: |
| score: float |
| details: Dict[str, Any] |
|
|
| def _float01(p: str, key: str) -> bool: |
| return bool(re.search(rf"{key}\s*[:=]\s*(0\.\d+|1\.0)\b", p)) |
|
|
| def score(sample: Dict[str, Any], prediction: str) -> ScoreResult: |
| p = (prediction or "").lower() |
| words_ok = len(p.split()) <= 900 |
|
|
| hits = sum(1 for k in REQ if k in p) |
| floats_ok = sum(1 for k in REQ if _float01(p, k)) |
|
|
| has_split_logic = ("drug" in p and "placebo" in p) or "separation" in p |
| has_nocebo_logic = "nocebo" in p or "adverse" in p or "expect" in p |
|
|
| raw = ( |
| 0.25 * int(words_ok) + |
| 0.40 * (hits / len(REQ)) + |
| 0.25 * (floats_ok / len(REQ)) + |
| 0.05 * int(has_split_logic) + |
| 0.05 * int(has_nocebo_logic) |
| ) |
|
|
| return ScoreResult(score=min(1.0, raw), details={"id": sample.get("id"), "hits": hits, "floats_ok": floats_ok}) |
|
|
| def aggregate(results: List[ScoreResult]) -> Dict[str, Any]: |
| if not results: |
| return {"mean": 0.0, "n": 0} |
| return {"mean": sum(r.score for r in results)/len(results), "n": len(results)} |
|
|