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"""
tools.py
--------
Topic-modelling pipeline: SPECTER-2 → UMAP → HDBSCAN
with multi-objective Bayesian optimisation over UMAP + HDBSCAN
parameters (§3.1–§3.6 of the methodology guide).

No BERTopic wrapper — bare UMAP + HDBSCAN on SPECTER-2 embeddings.
"""

import re
import logging
import pandas as pd
import numpy as np
from typing import Optional
from collections import Counter, defaultdict

from sentence_transformers import SentenceTransformer
from umap import UMAP
from hdbscan import HDBSCAN
from sklearn.metrics import adjusted_rand_score
from sklearn.metrics.pairwise import cosine_similarity
import optuna

# ---------------------------------------------------------------------------
# Logging
# ---------------------------------------------------------------------------
logging.basicConfig(level=logging.INFO, format="%(levelname)s | %(message)s")
logger = logging.getLogger(__name__)
optuna.logging.set_verbosity(optuna.logging.WARNING)


# ---------------------------------------------------------------------------
# Data Loading (unchanged)
# ---------------------------------------------------------------------------
def load_csv(filepath: str) -> pd.DataFrame:
    df = pd.read_csv(filepath)
    df.columns = df.columns.str.lower()
    required = {"title", "abstract"}
    missing = required - set(df.columns)
    if missing:
        raise ValueError(f"CSV missing column(s): {missing}")
    logger.info("Loaded %d rows from '%s'.", len(df), filepath)
    return df


# ---------------------------------------------------------------------------
# §3.1 — Input unit: title + abstract concatenation
# ---------------------------------------------------------------------------
def prepare_documents(df: pd.DataFrame) -> list[str]:
    """One string per paper: title + abstract (§3.1 input unit)."""
    docs = (df["title"].fillna("") + ". " + df["abstract"].fillna("")).tolist()
    logger.info("Prepared %d title+abstract documents.", len(docs))
    return docs


# ---------------------------------------------------------------------------
# §3.1 — Embed with SPECTER-2 (cached model for speed)
# ---------------------------------------------------------------------------
_MODEL_CACHE = {}

def embed_documents(
    docs: list[str],
    model_name: str = "allenai/specter2_base",
) -> np.ndarray:
    """Embed with SPECTER-2. Deterministic — no tuning (§3.3)."""
    if model_name not in _MODEL_CACHE:
        logger.info("Loading %s (first time, will be cached)…", model_name)
        _MODEL_CACHE[model_name] = SentenceTransformer(model_name)
    model = _MODEL_CACHE[model_name]
    embeddings = model.encode(docs, show_progress_bar=True, batch_size=64)
    logger.info("Embedded %d docs → %s", len(docs), embeddings.shape)
    return embeddings


# ---------------------------------------------------------------------------
# §3.2 — Cluster discipline checks
# ---------------------------------------------------------------------------
def check_discipline(labels: np.ndarray, n_docs: int) -> dict:
    """Two hard constraints: max-mass ≤ 25 %, min-size ≥ 5."""
    counts = Counter(int(l) for l in labels)
    unique = [l for l in counts if l != -1]

    if not unique:
        return dict(max_mass_pct=0, max_mass_ok=False,
                    min_size=0, min_size_ok=False,
                    n_clusters=0, n_noise=counts.get(-1, 0))

    max_mass_pct = max(counts[l] / n_docs for l in unique)
    min_size     = min(counts[l] for l in unique)

    return dict(
        max_mass_pct=round(max_mass_pct, 4),
        max_mass_ok=max_mass_pct <= 0.25,
        min_size=int(min_size),
        min_size_ok=min_size >= 5,
        n_clusters=len(unique),
        n_noise=counts.get(-1, 0),
        cluster_sizes={l: counts[l] for l in sorted(unique)},
    )


# ---------------------------------------------------------------------------
# §3.4 — Quality metrics
# ---------------------------------------------------------------------------
def compute_persistence(clusterer: HDBSCAN) -> float:
    """Average cluster persistence from the condensed tree."""
    try:
        p = getattr(clusterer, "cluster_persistence_", None)
        if p is not None and len(p) > 0:
            return float(np.mean(p))
    except Exception:
        pass
    return 0.0


def per_cluster_persistence(clusterer: HDBSCAN, labels: np.ndarray) -> dict:
    """Map each cluster ID to its persistence score (§8)."""
    try:
        p = getattr(clusterer, "cluster_persistence_", None)
        if p is None or len(p) == 0:
            return {}
        unique = sorted(set(int(l) for l in labels if l != -1))
        return {cid: float(p[i]) if i < len(p) else 0.0
                for i, cid in enumerate(unique)}
    except Exception:
        return {}


def compute_dbcv(reduced: np.ndarray, labels: np.ndarray) -> float:
    """Density-Based Cluster Validity index."""
    try:
        from hdbscan.validity import validity_index
        ul = set(labels); ul.discard(-1)
        if len(ul) < 2:
            return -1.0
        return float(validity_index(reduced.astype(np.float64), labels))
    except Exception as e:
        logger.warning("DBCV failed: %s", e)
        return -1.0


def compute_stability(embeddings: np.ndarray, params: dict,
                      n_seeds: int = 3) -> float:
    """Cluster-recurrence stability via pairwise ARI across seeds (§3.4).
    Uses 3 seeds by default for speed (spec allows 3–5)."""
    all_labels = []
    for s in range(n_seeds):
        u = UMAP(n_neighbors=params["n_neighbors"],
                 n_components=params["n_components"],
                 min_dist=0.0, metric="cosine",
                 random_state=s * 7 + 1, low_memory=True)
        red = u.fit_transform(embeddings)
        h = HDBSCAN(min_cluster_size=params["min_cluster_size"],
                    min_samples=params["min_samples"],
                    metric="euclidean",
                    cluster_selection_method=params["csm"],
                    cluster_selection_epsilon=params["cse"])
        all_labels.append(h.fit_predict(red))

    aris = []
    for i in range(len(all_labels)):
        for j in range(i + 1, len(all_labels)):
            aris.append(adjusted_rand_score(all_labels[i], all_labels[j]))
    return float(np.mean(aris)) if aris else 0.0


# ---------------------------------------------------------------------------
# §3.4 — Bayesian optimisation objective
# ---------------------------------------------------------------------------
def _objective(trial, embeddings, n_docs):
    """Single Optuna trial — returns (persistence, dbcv, stability_placeholder)."""
    n_neighbors = trial.suggest_categorical("n_neighbors", [5, 10, 15, 30, 50])
    n_components = trial.suggest_int("n_components", 5, 10)
    mcs = trial.suggest_int(
        "min_cluster_size",
        max(5, int(0.01 * n_docs)),
        max(20, int(0.05 * n_docs)),
    )
    ms = trial.suggest_int("min_samples", 1, mcs)
    csm = trial.suggest_categorical("csm", ["eom", "leaf"])
    cse = trial.suggest_float("cse", 0.0, 0.3, step=0.05)

    params = dict(n_neighbors=n_neighbors, n_components=n_components,
                  min_cluster_size=mcs, min_samples=ms, csm=csm, cse=cse)

    u = UMAP(n_neighbors=n_neighbors, n_components=n_components,
             min_dist=0.0, metric="cosine", random_state=42,
             low_memory=True)
    red = u.fit_transform(embeddings)

    h = HDBSCAN(min_cluster_size=mcs, min_samples=ms, metric="euclidean",
                cluster_selection_method=csm,
                cluster_selection_epsilon=cse,
                allow_single_cluster=False, gen_min_span_tree=True)
    labels = h.fit_predict(red)

    disc = check_discipline(labels, n_docs)
    trial.set_user_attr("params", params)
    trial.set_user_attr("discipline", disc)
    trial.set_user_attr("labels", labels.tolist())

    # Hard-constraint violation → worst scores
    if not disc["max_mass_ok"] or not disc["min_size_ok"]:
        trial.set_user_attr("pass", False)
        return 0.0, -1.0, 0.0

    trial.set_user_attr("pass", True)
    pers = compute_persistence(h)
    dbcv = compute_dbcv(red, labels)
    trial.set_user_attr("persistence", pers)
    trial.set_user_attr("dbcv", dbcv)
    return pers, dbcv, 0.5          # stability computed only for winner


# ---------------------------------------------------------------------------
# §3.4 — Run the full Bayesian loop
# ---------------------------------------------------------------------------
def run_bayesian_optimisation(
    embeddings: np.ndarray,
    n_trials: int = 50,
    progress_callback=None,
) -> dict:
    n_docs = len(embeddings)
    study = optuna.create_study(
        directions=["maximize", "maximize", "maximize"],
        sampler=optuna.samplers.TPESampler(seed=42, multivariate=True),
        study_name="specter2_umap_hdbscan",
    )
    trial_log = []

    def _cb(study, trial):
        d = trial.user_attrs.get("discipline", {})
        entry = dict(
            trial=trial.number,
            params=trial.user_attrs.get("params", {}),
            discipline_pass=trial.user_attrs.get("pass", False),
            persistence=trial.user_attrs.get("persistence", 0.0),
            dbcv=trial.user_attrs.get("dbcv", -1.0),
            n_clusters=d.get("n_clusters", 0),
            max_mass_pct=d.get("max_mass_pct", 0.0),
            min_size=d.get("min_size", 0),
            n_noise=d.get("n_noise", 0),
            values=list(trial.values) if trial.values else [],
        )
        trial_log.append(entry)
        if progress_callback:
            progress_callback(trial.number + 1, n_trials, entry)

    for i in range(n_trials):
        study.optimize(
            lambda t: _objective(t, embeddings, n_docs),
            n_trials=1, callbacks=[_cb], show_progress_bar=False,
        )
        # §3.6 convergence: 3 consecutive passing within 5 % of best
        passing = [e for e in trial_log if e["discipline_pass"]]
        if len(passing) >= 3 and i >= 9:   # allow early stop after 10 trials
            best_p = max(e["persistence"] for e in passing)
            if best_p > 0:
                last3 = passing[-3:]
                if all(abs(e["persistence"] - best_p) / best_p < 0.05
                       for e in last3):
                    logger.info("Converged at trial %d.", i + 1)
                    break

    # Select best passing trial (max persistence, then DBCV)
    passing_trials = [t for t in study.trials
                      if t.user_attrs.get("pass", False)]
    if passing_trials:
        best = max(passing_trials, key=lambda t: (t.values[0], t.values[1]))
    else:
        logger.warning("No trial passed discipline — using last trial.")
        best = study.trials[-1]

    bp = best.user_attrs["params"]
    labels = np.array(best.user_attrs["labels"])
    stability = compute_stability(embeddings, bp, n_seeds=3)

    return dict(
        best_params=bp, best_labels=labels,
        best_trial=best.number,
        persistence=best.user_attrs.get("persistence", 0.0),
        dbcv=best.user_attrs.get("dbcv", -1.0),
        stability=stability,
        discipline=best.user_attrs.get("discipline", {}),
        trial_log=trial_log,
        n_trials_run=len(trial_log),
    )


# ---------------------------------------------------------------------------
# §3.1 — 2-D UMAP for visualisation
# ---------------------------------------------------------------------------
def compute_2d_umap(embeddings: np.ndarray, seed: int = 42) -> np.ndarray:
    return UMAP(n_neighbors=15, n_components=2, min_dist=0.1,
                metric="cosine", random_state=seed,
                low_memory=True).fit_transform(embeddings)


# ---------------------------------------------------------------------------
# §3.1 — TF-IDF keyphrase extraction per cluster (3–5 phrases)
#         Fast alternative to KeyBERT — no extra model download needed.
# ---------------------------------------------------------------------------
def extract_keyphrases(docs: list[str], labels: np.ndarray,
                       top_n: int = 5) -> dict:
    from sklearn.feature_extraction.text import TfidfVectorizer
    cluster_docs = defaultdict(list)
    for doc, lab in zip(docs, labels):
        if lab != -1:
            cluster_docs[int(lab)].append(doc)
    out = {}
    for cid, cdocs in cluster_docs.items():
        if len(cdocs) < 2:
            out[cid] = []
            continue
        try:
            tfidf = TfidfVectorizer(
                stop_words="english", max_features=200,
                ngram_range=(1, 3), max_df=0.9, min_df=1)
            X = tfidf.fit_transform(cdocs)
            terms = tfidf.get_feature_names_out()
            scores = X.sum(axis=0).A1
            top_idx = scores.argsort()[::-1][:top_n]
            out[cid] = [(terms[i], float(scores[i])) for i in top_idx]
        except Exception as e:
            logger.warning("Keyphrase extraction cluster %d: %s", cid, e)
            out[cid] = []
    return out


# ---------------------------------------------------------------------------
# §3.1 — Strong / weak member counts via HDBSCAN probabilities
# ---------------------------------------------------------------------------
def strong_weak_members(labels: np.ndarray,
                        probabilities: np.ndarray) -> dict:
    mem = defaultdict(lambda: {"strong": 0, "weak": 0})
    for lab, prob in zip(labels, probabilities):
        if lab == -1:
            continue
        cid = int(lab)
        if prob >= 0.5:
            mem[cid]["strong"] += 1
        else:
            mem[cid]["weak"] += 1
    return dict(mem)


# ---------------------------------------------------------------------------
# §3.2 — Outlier reduction: reassign noise to nearest cluster (≤ 25 %)
# ---------------------------------------------------------------------------
def outlier_reduction(labels: np.ndarray, reduced: np.ndarray,
                      n_docs: int) -> np.ndarray:
    labels = labels.copy()
    cap = int(0.25 * n_docs)
    cdocs = defaultdict(list)
    for i, l in enumerate(labels):
        if l != -1:
            cdocs[int(l)].append(i)
    if not cdocs:
        return labels
    cids = list(cdocs.keys())
    centroids = np.vstack([reduced[cdocs[c]].mean(axis=0) for c in cids])
    noise = [i for i, l in enumerate(labels) if l == -1]
    moved = 0
    for idx in noise:
        dists = np.linalg.norm(centroids - reduced[idx], axis=1)
        for best in np.argsort(dists):
            tgt = cids[best]
            if len(cdocs[tgt]) < cap:
                labels[idx] = tgt
                cdocs[tgt].append(idx)
                moved += 1
                break
    logger.info("Outlier reduction: %d / %d noise reassigned.", moved, len(noise))
    return labels


# ---------------------------------------------------------------------------
# Representative docs (top-3 by centroid proximity)
# ---------------------------------------------------------------------------
def get_representative_docs(labels, embeddings, docs, top_n=3):
    cdocs = defaultdict(list)
    for i, l in enumerate(labels):
        if l != -1:
            cdocs[int(l)].append(i)
    out = {}
    for cid, idxs in cdocs.items():
        ce = embeddings[idxs].mean(axis=0).reshape(1, -1)
        sims = cosine_similarity(ce, embeddings[idxs])[0]
        top = np.argsort(sims)[-top_n:][::-1]
        out[cid] = [docs[idxs[t]] for t in top]
    return out


# ---------------------------------------------------------------------------
# §9 — RQ2 / RQ3 mismatch table
# ---------------------------------------------------------------------------
def build_mismatch_table(keyphrases: dict, cluster_labels: dict) -> list:
    """Compare cluster keyphrases against assigned labels to flag mismatches.
    Returns rows for a mismatch table (§9)."""
    rows = []
    for cid in sorted(keyphrases.keys()):
        kps = keyphrases.get(cid, [])
        kp_terms = [k[0] if isinstance(k, tuple) else k for k in kps[:5]]
        label = cluster_labels.get(cid, "")
        # Check overlap between label words and keyphrase terms
        label_words = set(label.lower().split())
        kp_words = set(" ".join(kp_terms).lower().split())
        overlap = label_words & kp_words
        noise = {"the","and","for","with","using","based","from","in","of","a","to"}
        overlap -= noise
        match_pct = len(overlap) / max(len(label_words - noise), 1)
        status = "MATCH" if match_pct >= 0.3 else "MISMATCH"
        rows.append(dict(
            cluster=cid, label=label,
            keyphrases=", ".join(kp_terms),
            overlap=", ".join(overlap) if overlap else "—",
            match_pct=round(match_pct * 100),
            status=status,
        ))
    return rows


# ---------------------------------------------------------------------------
# High-level pipeline entry point
# ---------------------------------------------------------------------------
def run_topic_modeling(filepath: str, n_trials: int = 50,
                       progress_callback=None) -> dict:
    # 1. Load
    df = load_csv(filepath)
    docs = prepare_documents(df)
    n_docs = len(docs)

    # 2. Embed (deterministic)
    embeddings = embed_documents(docs)

    # 3. Bayesian optimisation (§3.4)
    opt = run_bayesian_optimisation(embeddings, n_trials, progress_callback)
    bp = opt["best_params"]
    labels = opt["best_labels"]

    # 4. Re-run winner for clusterer object (probabilities)
    u = UMAP(n_neighbors=bp["n_neighbors"], n_components=bp["n_components"],
             min_dist=0.0, metric="cosine", random_state=42)
    red = u.fit_transform(embeddings)
    h = HDBSCAN(min_cluster_size=bp["min_cluster_size"],
                min_samples=bp["min_samples"], metric="euclidean",
                cluster_selection_method=bp["csm"],
                cluster_selection_epsilon=bp["cse"],
                allow_single_cluster=False,
                gen_min_span_tree=True)
    h.fit(red)

    # Per-cluster persistence (§8)
    cluster_pers = per_cluster_persistence(h, labels)

    # 5. Outlier reduction (§3.2 — clusters < 5 reassigned)
    labels = outlier_reduction(labels, red, n_docs)

    # 6. Strong / weak (§3.1)
    sw = strong_weak_members(labels, h.probabilities_)

    # 7. 2-D UMAP (§3.1)
    umap_2d = compute_2d_umap(embeddings)

    # 8. KeyBERT keyphrases (§3.1)
    keyphrases = extract_keyphrases(docs, labels)

    # 9. Rep docs
    rep_docs = get_representative_docs(labels, embeddings, docs)

    # 10. Final discipline
    disc = check_discipline(labels, n_docs)

    return dict(
        documents=docs, labels=labels.tolist(),
        keyphrases=keyphrases, representative_docs=rep_docs,
        membership=sw, umap_2d=umap_2d.tolist(),
        discipline=disc, best_params=bp,
        cluster_persistence=cluster_pers,
        metrics=dict(persistence=opt["persistence"],
                     dbcv=opt["dbcv"],
                     stability=opt["stability"]),
        trial_log=opt["trial_log"],
        n_trials_run=opt["n_trials_run"],
        best_trial=opt["best_trial"],
        n_docs=n_docs,
        embeddings=embeddings,
    )