3c7fcc010f
- Re-anchor inter-CPA coincidence-rate (ICCR) calibration on a normative non-Firm-A baseline (Firms B/C/D); Firm A held out as an out-of-sample target. Locked canonical numbers (codex-audited; Scripts 46/52/53): per-comparison HC 0.00014->0.000018, per-signature HC 0.0116, per-document HC+MC 0.34->0.1905; KDE crossover 0.837 retained corpus-wide. - Reposition as an operator-tunable, semi-automated screening/triage framework (title -> "Automated Screening..."): HC = high-specificity operating point; MC band demoted to low-specificity advisory; Firm A = demonstration that the screening surfaces a templated end, audit-quality implications deferred. - Apply codex prose-review fixes: triage-neutral five-way labels, soften mechanism/specificity wording, supersede MC claim-strength, update stale Appendix script references (40b/43/45 -> 46/52/53). - Trim pass: compress Sec. V discussion + Sec. III echoes (27.7k -> 26.8k words); no substantive content removed. - Add analysis scripts 45-53 (firm-year trends; BCD-only ICCR recompute; canonical-sampler locked numbers; Firm-A out-of-sample; BCD regression + cross-firm hit matrix). Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
105 lines
4.4 KiB
Python
105 lines
4.4 KiB
Python
#!/usr/bin/env python3
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"""Script 49: Firm A as out-of-sample target against a clean BCD baseline.
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(1) A signatures scored against a BCD-only candidate pool (true out-of-sample
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inter-firm coincidence).
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(2) Observed deployed rate on ACTUAL same-CPA pools, per firm (the real fired
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rate, from precomputed deployed descriptors), to juxtapose against the
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clean BCD inter-CPA coincidence floor. Read-only.
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"""
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import sqlite3
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from collections import defaultdict
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import numpy as np
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DB = '/Volumes/NV2/PDF-Processing/signature-analysis/signature_analysis.db'
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FIRM_A = '勤業眾信聯合'
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BIG4 = ('勤業眾信聯合', '安侯建業聯合', '資誠聯合', '安永聯合')
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ALIAS = {'勤業眾信聯合': 'A', '安侯建業聯合': 'B', '資誠聯合': 'C', '安永聯合': 'D'}
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SEED = 42
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POP = np.array([bin(i).count('1') for i in range(256)], dtype=np.uint8)
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def wilson(k, n, z=1.96):
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if n == 0:
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return (None, None)
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p = k/n; d = 1+z*z/n
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c = (p+z*z/(2*n))/d
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h = z*np.sqrt(p*(1-p)/n+z*z/(4*n*n))/d
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return (max(0.0, c-h), min(1.0, c+h))
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conn = sqlite3.connect(f'file:{DB}?mode=ro', uri=True)
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cur = conn.cursor()
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cur.execute("""
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SELECT s.assigned_accountant, a.firm, s.source_pdf, s.feature_vector,
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s.dhash_vector, s.max_similarity_to_same_accountant, s.min_dhash_independent
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FROM signatures s JOIN accountants a ON s.assigned_accountant=a.name
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WHERE s.assigned_accountant IS NOT NULL AND a.firm IN (?,?,?,?)
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AND s.feature_vector IS NOT NULL AND s.dhash_vector IS NOT NULL""", BIG4)
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rows = cur.fetchall()
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conn.close()
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# ---- (1) Firm A source vs BCD-only candidate pool ----
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print('=== (1) Firm A out-of-sample vs clean BCD candidate pool ===')
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A = [r for r in rows if r[1] == FIRM_A]
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BCD = [r for r in rows if r[1] in BIG4 and r[1] != FIRM_A]
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bcd_feat = np.stack([np.frombuffer(r[3], np.float32) for r in BCD]).astype(np.float32)
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bcd_feat /= np.clip(np.linalg.norm(bcd_feat, axis=1, keepdims=True), 1e-9, None)
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bcd_dh = np.stack([np.frombuffer(r[4], np.uint8) for r in BCD])
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nb = len(BCD)
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# A CPA pool sizes (their own same-CPA count - 1), to match negative-anchor construction
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a_cpa_idx = defaultdict(list)
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for i, r in enumerate(A):
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a_cpa_idx[r[0]].append(i)
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pool_size = {c: len(v)-1 for c, v in a_cpa_idx.items()}
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rng = np.random.default_rng(SEED)
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sig_hc = np.zeros(len(A), bool)
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doc_hcmc = defaultdict(bool)
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for i, r in enumerate(A):
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npool = max(pool_size[r[0]], 1)
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cand = rng.integers(0, nb, size=npool)
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sf = np.frombuffer(r[3], np.float32).astype(np.float32)
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sf /= max(np.linalg.norm(sf), 1e-9)
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cosv = bcd_feat[cand] @ sf
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cg = cosv > 0.95
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doc_hcmc.setdefault(r[2], False)
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if cg.any():
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dist = POP[bcd_dh[cand] ^ np.frombuffer(r[4], np.uint8)].sum(axis=1)
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sig_hc[i] = bool((cg & (dist <= 5)).any())
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if (cg & (dist <= 15)).any():
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doc_hcmc[r[2]] = True
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k = int(sig_hc.sum()); n = len(A); lo, hi = wilson(k, n)
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print(f' A-source vs BCD-pool per-SIGNATURE HC (cos>0.95 & dh<=5): '
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f'{k/n:.4f} ({k}/{n}) Wilson95% [{lo:.4f},{hi:.4f}]')
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dv = np.array(list(doc_hcmc.values())); dk = int(dv.sum()); dm = len(dv)
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dlo, dhi = wilson(dk, dm)
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print(f' A-source vs BCD-pool per-DOCUMENT HC+MC (cos>0.95 & dh<=15): '
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f'{dk/dm:.4f} ({dk}/{dm}) Wilson95% [{dlo:.4f},{dhi:.4f}]')
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# ---- (2) Observed deployed rate on ACTUAL same-CPA pools, per firm ----
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print('\n=== (2) Observed deployed rate on actual same-CPA pools (real fired rate) ===')
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print(' per-signature HC = max_sim>0.95 & min_dh<=5 ; per-doc HC+MC worst-case dh<=15')
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by_firm_sig = defaultdict(lambda: [0, 0])
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doc_obs = {}
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doc_firm = {}
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for r in rows:
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fm = ALIAS[r[1]]
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ms, md = r[5], r[6]
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if ms is None or md is None:
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continue
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hc = (ms > 0.95) and (md <= 5)
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hcmc = (ms > 0.95) and (md <= 15)
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by_firm_sig[fm][0] += int(hc); by_firm_sig[fm][1] += 1
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doc_firm.setdefault(r[2], fm)
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doc_obs[r[2]] = doc_obs.get(r[2], False) or hcmc
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for fm in sorted(by_firm_sig):
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k, n = by_firm_sig[fm]
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lo, hi = wilson(k, n)
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print(f' Firm {fm} per-SIGNATURE HC: {k/n:.4f} ({k}/{n}) [{lo:.4f},{hi:.4f}]')
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dd = defaultdict(lambda: [0, 0])
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for d, hit in doc_obs.items():
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fm = doc_firm[d]; dd[fm][0] += int(hit); dd[fm][1] += 1
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for fm in sorted(dd):
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k, n = dd[fm]
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print(f' Firm {fm} per-DOCUMENT HC+MC: {k/n:.4f} ({k}/{n})')
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print(f'\n Clean BCD inter-CPA coincidence FLOOR: per-sig HC=0.0048, per-doc HC+MC=0.1281')
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