feat(question_gen): stratified_sample — 分层采样 + 题型保底
算法 100% 保真 TRM4: task_types 过滤、correctness.get(id, False) 语义、 对题在前返回顺序、min_per_class 遍历 pool 全部题型(含稀疏类)。 所有参数显式传入,无默认值。 Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
This commit is contained in:
@@ -7,6 +7,7 @@
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from __future__ import annotations
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import json
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import random
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from typing import TYPE_CHECKING
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from core.types import GeneratedQuestion
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@@ -48,3 +49,119 @@ def load_benchmark(questions_dir: Path) -> list[GeneratedQuestion]:
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)
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)
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return results
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def stratified_sample(
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questions: list[GeneratedQuestion],
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correctness: dict[str, bool],
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size: int,
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correct_ratio: float | None,
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task_types: list[str] | None,
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seed: int,
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min_per_class: int | None,
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) -> list[GeneratedQuestion]:
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"""按题型过滤后采样 size 道题,可选按对错比例分层并按题型保底。
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参数:
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questions: 候选题目全集。
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correctness: question_id -> 基线是否答对。
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size: 采样总量。
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correct_ratio: 采样中"基线答对"题的占比;None 表示自然分布。
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task_types: 限定题型;None 表示不限。
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seed: 随机种子,保证可复现。
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min_per_class: 每个题型补足到的下限;None 表示不补足。
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返回:
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采样后的题目列表。
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异常:
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ValueError: 自然分布时池不足 size,或分层时某层题目不足。
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"""
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rng = random.Random(seed)
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pool = [q for q in questions if task_types is None or q.task_type in task_types]
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if correct_ratio is None:
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if len(pool) < size:
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raise ValueError(f"自然分布采样不足: 需 {size} 道, 实有 {len(pool)} 道")
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sampled = rng.sample(pool, size)
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else:
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sampled = _ratio_stratified_sample(pool, correctness, size, correct_ratio, rng)
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if min_per_class is not None:
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sampled = _backfill_per_class(sampled, pool, min_per_class, rng)
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return sampled
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def _ratio_stratified_sample(
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pool: list[GeneratedQuestion],
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correctness: dict[str, bool],
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size: int,
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correct_ratio: float,
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rng: random.Random,
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) -> list[GeneratedQuestion]:
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"""按对错比例分层采样:对题占 correct_ratio,其余为错题。
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参数:
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pool: 题型过滤后的候选题。
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correctness: question_id -> 基线是否答对。
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size: 采样总量。
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correct_ratio: 对题占比。
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rng: 随机数发生器。
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返回:
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采样后的题目列表(对题在前、错题在后)。
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异常:
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ValueError: 对题或错题层不足。
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"""
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correct = [q for q in pool if correctness.get(q.question_id, False)]
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wrong = [q for q in pool if not correctness.get(q.question_id, False)]
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n_correct = round(size * correct_ratio)
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n_wrong = size - n_correct
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if len(correct) < n_correct or len(wrong) < n_wrong:
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raise ValueError(
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f"分层不足: 需对{n_correct}/错{n_wrong}, 实有对{len(correct)}/错{len(wrong)}"
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)
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return rng.sample(correct, n_correct) + rng.sample(wrong, n_wrong)
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def _backfill_per_class(
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sampled: list[GeneratedQuestion],
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pool: list[GeneratedQuestion],
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min_per_class: int,
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rng: random.Random,
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) -> list[GeneratedQuestion]:
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"""对候选池中出现的每个题型,将采样结果补足到 min_per_class 道。
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遍历对象是候选池 pool 里出现的全部题型(非仅 sampled 命中的),
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保证任意稀疏题型都能拿到足额样本。
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参数:
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sampled: 主采样结果(不修改,返回新列表)。
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pool: 候选题全集(补足来源 + 题型枚举来源)。
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min_per_class: 每个题型的下限。
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rng: 随机数发生器。
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返回:
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补足后的题目列表。
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"""
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selected_ids = {q.question_id for q in sampled}
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result = list(sampled)
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counts: dict[str, int] = {}
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for q in sampled:
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counts[q.task_type] = counts.get(q.task_type, 0) + 1
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ordered_task_types: dict[str, None] = {}
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for q in pool:
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ordered_task_types.setdefault(q.task_type, None)
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for task_type in ordered_task_types:
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deficit = min_per_class - counts.get(task_type, 0)
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if deficit <= 0:
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continue
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candidates = [
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q for q in pool if q.task_type == task_type and q.question_id not in selected_ids
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]
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take = rng.sample(candidates, min(deficit, len(candidates)))
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for q in take:
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selected_ids.add(q.question_id)
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result.append(q)
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return result
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@@ -7,7 +7,7 @@ from pathlib import Path
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import pytest
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from app.question_gen.loader import load_benchmark
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from app.question_gen.loader import load_benchmark, stratified_sample
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from core.types import GeneratedQuestion
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@@ -127,3 +127,235 @@ class TestLoadBenchmark:
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(tmp_path / "vid.json").write_text(json.dumps(data), encoding="utf-8")
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with pytest.raises(KeyError):
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load_benchmark(tmp_path)
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def _make_questions(n: int, task_type: str = "T") -> list[GeneratedQuestion]:
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"""辅助函数:批量构造题目。"""
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return [
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GeneratedQuestion(
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question_id=f"{task_type}-{i}",
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video_id="v1",
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task_type=task_type,
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question=f"Q{i}?",
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options=("A", "B", "C", "D"),
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answer="A",
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source_nodes=(),
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difficulty="medium",
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)
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for i in range(n)
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]
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class TestStratifiedSample:
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def test_natural_distribution(self) -> None:
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questions = _make_questions(20)
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result = stratified_sample(
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questions=questions,
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correctness={},
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size=10,
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correct_ratio=None,
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task_types=None,
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seed=42,
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min_per_class=None,
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)
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assert len(result) == 10
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def test_natural_distribution_pool_insufficient(self) -> None:
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questions = _make_questions(5)
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with pytest.raises(ValueError, match="自然分布采样不足"):
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stratified_sample(
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questions=questions,
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correctness={},
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size=10,
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correct_ratio=None,
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task_types=None,
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seed=42,
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min_per_class=None,
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)
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def test_ratio_stratified(self) -> None:
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questions = _make_questions(20)
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correctness = {f"T-{i}": i < 10 for i in range(20)}
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result = stratified_sample(
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questions=questions,
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correctness=correctness,
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size=10,
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correct_ratio=0.6,
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task_types=None,
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seed=42,
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min_per_class=None,
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)
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assert len(result) == 10
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correct_count = sum(1 for q in result if correctness.get(q.question_id, False))
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assert correct_count == 6
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def test_ratio_stratified_correct_first(self) -> None:
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questions = _make_questions(20)
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correctness = {f"T-{i}": i < 10 for i in range(20)}
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result = stratified_sample(
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questions=questions,
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correctness=correctness,
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size=10,
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correct_ratio=0.5,
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task_types=None,
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seed=42,
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min_per_class=None,
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)
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n_correct = round(10 * 0.5)
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for q in result[:n_correct]:
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assert correctness.get(q.question_id, False) is True
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for q in result[n_correct:]:
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assert correctness.get(q.question_id, False) is False
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def test_ratio_stratified_pool_insufficient(self) -> None:
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questions = _make_questions(10)
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correctness = {f"T-{i}": True for i in range(10)}
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with pytest.raises(ValueError, match="分层不足"):
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stratified_sample(
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questions=questions,
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correctness=correctness,
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size=10,
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correct_ratio=0.5,
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task_types=None,
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seed=42,
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min_per_class=None,
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)
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def test_task_types_filter(self) -> None:
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q_a = _make_questions(10, task_type="TypeA")
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q_b = _make_questions(10, task_type="TypeB")
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result = stratified_sample(
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questions=q_a + q_b,
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correctness={},
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size=5,
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correct_ratio=None,
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task_types=["TypeA"],
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seed=42,
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min_per_class=None,
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)
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assert all(q.task_type == "TypeA" for q in result)
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def test_unknown_correctness_treated_as_wrong(self) -> None:
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questions = _make_questions(20)
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correctness = {f"T-{i}": True for i in range(10)}
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result = stratified_sample(
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questions=questions,
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correctness=correctness,
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size=10,
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correct_ratio=0.5,
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task_types=None,
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seed=42,
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min_per_class=None,
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)
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n_correct = round(10 * 0.5)
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for q in result[:n_correct]:
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assert q.question_id in correctness
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def test_seed_reproducibility(self) -> None:
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questions = _make_questions(20)
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r1 = stratified_sample(
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questions=questions,
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correctness={},
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size=10,
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correct_ratio=None,
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task_types=None,
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seed=123,
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min_per_class=None,
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)
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r2 = stratified_sample(
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questions=questions,
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correctness={},
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size=10,
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correct_ratio=None,
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task_types=None,
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seed=123,
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min_per_class=None,
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)
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assert [q.question_id for q in r1] == [q.question_id for q in r2]
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def test_different_seeds_differ(self) -> None:
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questions = _make_questions(20)
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r1 = stratified_sample(
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questions=questions,
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correctness={},
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size=10,
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correct_ratio=None,
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task_types=None,
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seed=1,
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min_per_class=None,
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)
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r2 = stratified_sample(
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questions=questions,
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correctness={},
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size=10,
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correct_ratio=None,
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task_types=None,
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seed=2,
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min_per_class=None,
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)
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assert [q.question_id for q in r1] != [q.question_id for q in r2]
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def test_min_per_class_backfill(self) -> None:
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q_a = _make_questions(10, task_type="TypeA")
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q_b = _make_questions(10, task_type="TypeB")
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all_q = q_a + q_b
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correctness = {q.question_id: True for q in q_a[:5]}
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result = stratified_sample(
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questions=all_q,
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correctness=correctness,
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size=3,
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correct_ratio=None,
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task_types=None,
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seed=42,
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min_per_class=2,
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)
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type_counts: dict[str, int] = {}
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for q in result:
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type_counts[q.task_type] = type_counts.get(q.task_type, 0) + 1
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assert type_counts.get("TypeA", 0) >= 2
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assert type_counts.get("TypeB", 0) >= 2
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def test_min_per_class_partial_backfill(self) -> None:
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q_sparse = _make_questions(1, task_type="Sparse")
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q_main = _make_questions(10, task_type="Main")
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result = stratified_sample(
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questions=q_sparse + q_main,
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correctness={},
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size=5,
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correct_ratio=None,
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task_types=None,
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seed=42,
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min_per_class=3,
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)
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sparse_in_result = [q for q in result if q.task_type == "Sparse"]
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assert len(sparse_in_result) == 1
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def test_min_per_class_no_duplicates(self) -> None:
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q_a = _make_questions(5, task_type="TypeA")
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q_b = _make_questions(5, task_type="TypeB")
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result = stratified_sample(
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questions=q_a + q_b,
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correctness={},
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size=3,
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correct_ratio=None,
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task_types=None,
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seed=42,
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min_per_class=2,
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)
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ids = [q.question_id for q in result]
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assert len(ids) == len(set(ids))
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def test_backfill_enumerates_all_pool_types(self) -> None:
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q_main = _make_questions(10, task_type="Main")
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q_rare = _make_questions(3, task_type="Rare")
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result = stratified_sample(
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questions=q_main + q_rare,
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correctness={},
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size=2,
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correct_ratio=None,
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task_types=None,
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seed=0,
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min_per_class=1,
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)
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types_in_result = {q.task_type for q in result}
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assert "Rare" in types_in_result
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