cs3319-project2 / code /generate_content_rich_submission.py
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CS3319 Project 2 final deliverable (public F1 = 0.96626)
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"""Generate submissions for content+BPR-MF stack with rich feature.pkl features."""
from __future__ import annotations
import argparse
import importlib.util
from pathlib import Path
import lightgbm as lgb
import numpy as np
import pandas as pd
def load_module(name: str, path: Path):
spec = importlib.util.spec_from_file_location(name, path)
module = importlib.util.module_from_spec(spec)
assert spec.loader is not None
spec.loader.exec_module(module)
return module
def make_subs(root: Path, out_dir: Path, score: np.ndarray, ratios: list[float]) -> None:
known = np.load(root / "cached_scores" / "test_known_mask.npy").astype(bool)
for ratio in ratios:
pred = np.zeros(len(score), dtype=np.int8)
pred[np.argsort(score)[-int(round(len(score) * ratio)):]] = 1
pred[known] = 1
path = out_dir / f"submission_content_rich_mf_lgb_r{ratio:.3f}.csv"
pd.DataFrame({"Index": np.arange(len(pred), dtype=np.int64), "Predicted": pred}).to_csv(path, index=False)
print(path, int(pred.sum()), float(pred.mean()))
pred = (score >= 0.5).astype(np.int8)
pred[known] = 1
path = out_dir / "submission_content_rich_mf_lgb_score_ge0.500.csv"
pd.DataFrame({"Index": np.arange(len(pred), dtype=np.int64), "Predicted": pred}).to_csv(path, index=False)
print(path, int(pred.sum()), float(pred.mean()))
def main() -> None:
parser = argparse.ArgumentParser()
parser.add_argument("--package-root", type=Path, default=Path(__file__).resolve().parents[1])
parser.add_argument("--split-seed", type=int, default=202)
parser.add_argument("--main-val-score-file", type=Path, required=True)
parser.add_argument("--seed", type=int, default=202)
parser.add_argument("--ratios", nargs="*", type=float, default=[0.498, 0.500, 0.502, 0.504, 0.505])
args = parser.parse_args()
root = args.package_root
stack = load_module("stack", root / "code" / "stack_rank_calibration.py")
lgcn = load_module("lgcn", root / "code" / "train_val_lgcn_ensemble.py")
post = load_module("post", root / "code" / "post95_ablation.py")
gen = load_module("gen", root / "code" / "generate_post95_submission.py")
extra = load_module("extra", root / "code" / "extra_score_sources_ablation.py")
rich = load_module("rich", root / "code" / "content_rich_ablation.py")
out_dir = root / "validation_runs" / f"dynamic_seed{args.split_seed}" / "content_rich_submission"
out_dir.mkdir(parents=True, exist_ok=True)
train_refs, val_pairs = lgcn.make_notebook_style_split(root, args.split_seed, 0.9)
val_pairs_arr = val_pairs[["source", "target"]].to_numpy(np.int64)
y = val_pairs["label"].to_numpy(np.int8)
main_val = np.load(args.main_val_score_file).astype(np.float32)
val_builder = stack.ExplicitGraphFeatures(root, train_refs)
Xh = val_builder.transform(val_pairs_arr)
X_val = np.column_stack(
[
stack.add_rank_features(val_pairs_arr, main_val),
Xh,
post.negative_evidence_features(Xh, main_val),
gen.topk_content_similarity_fast(root, val_pairs_arr, val_builder),
]
).astype(np.float32)
selected = [Path(x.strip()) for x in (root / "validation_runs" / f"dynamic_seed{args.split_seed}" / "post95_submission" / "selected_variant_val_scores.txt").read_text().splitlines() if x.strip()]
X_val = np.column_stack([X_val, gen.variant_feature_matrix(post, [np.load(p).astype(np.float32) for p in selected])]).astype(np.float32)
content_val = extra.content_mean_score(root, val_pairs_arr, val_builder)
mf_val = np.load(root / "validation_runs" / f"dynamic_seed{args.split_seed}" / "extra_score_sources" / f"val_mf_bpr_s{args.seed}_d256.npy").astype(np.float32)
Xc, _ = extra.score_to_features(content_val, "content_mean_cos", val_pairs_arr)
Xm, _ = extra.score_to_features(mf_val, "mf_bpr", val_pairs_arr)
Xrich_val = rich.content_rich_features(root, val_pairs_arr, val_builder)
X_val = np.column_stack([X_val, Xc, Xm, Xrich_val]).astype(np.float32)
print("fit", X_val.shape)
clf = lgb.LGBMClassifier(
n_estimators=1200,
learning_rate=0.025,
num_leaves=31,
subsample=0.9,
colsample_bytree=0.9,
reg_lambda=5.0,
min_child_samples=80,
objective="binary",
verbose=-1,
random_state=args.seed,
)
clf.fit(X_val, y)
test_pairs = np.array(gen.read_txt(root / "data_and_docs" / "bipartite_test_ann.txt"), dtype=np.int64)
main_test = np.load(root / "validation_runs" / f"dynamic_seed{args.split_seed}" / "post95_test_scores" / "dyn202_l2d512_bpr_bigbatch_more" / "scores" / "test_vanilla_ensemble_mean.npy").astype(np.float32)
full_refs = pd.DataFrame(gen.read_txt(root / "data_and_docs" / "bipartite_train_ann.txt"), columns=["source", "target"])
test_builder = stack.ExplicitGraphFeatures(root, full_refs)
Xht = test_builder.transform(test_pairs)
X_test = np.column_stack(
[
stack.add_rank_features(test_pairs, main_test),
Xht,
post.negative_evidence_features(Xht, main_test),
gen.topk_content_similarity_fast(root, test_pairs, test_builder),
]
).astype(np.float32)
test_scores = []
for p in selected:
rel = p.resolve().relative_to(root / "validation_runs" / f"dynamic_seed{args.split_seed}")
tp = root / "validation_runs" / f"dynamic_seed{args.split_seed}" / "post95_test_scores" / rel.parent / rel.name.replace("val_", "test_", 1)
test_scores.append(np.load(tp).astype(np.float32))
X_test = np.column_stack([X_test, gen.variant_feature_matrix(post, test_scores)]).astype(np.float32)
content_test = extra.content_mean_score(root, test_pairs, test_builder)
mf_test = np.load(root / "validation_runs" / f"dynamic_seed{args.split_seed}" / "extra_bprmf_submission" / "test_mf_bpr_dynamic_s202_d256_e220.npy").astype(np.float32)
Xct, _ = extra.score_to_features(content_test, "content_mean_cos", test_pairs)
Xmt, _ = extra.score_to_features(mf_test, "mf_bpr", test_pairs)
Xrich_test = rich.content_rich_features(root, test_pairs, test_builder)
X_test = np.column_stack([X_test, Xct, Xmt, Xrich_test]).astype(np.float32)
print("predict", X_test.shape)
score = clf.predict_proba(X_test)[:, 1].astype(np.float32)
np.save(out_dir / "test_content_rich_mf_lgb_pred.npy", score)
make_subs(root, out_dir, score, args.ratios)
if __name__ == "__main__":
main()