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expBG_aligned_distillation.py
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283 lines (220 loc) · 10.9 KB
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"""Exp BG: Aligned distillation — mean-centered + CCA + all-language training.
BF showed bilingual encoder works (ZH R²=0.87) but doesn't generalize to
new languages. Three hypotheses for why:
1. Language-specific means shift the representations
2. The kernel basis itself is biased toward training languages
3. The computation path is genuinely language-specific
Tests:
1. Mean-centered probe: subtract per-language mean before probing
2. CCA alignment: find maximally correlated subspace across languages
3. All-7-language training with leave-one-language-out test
4. Contrastive kernel: learn projection that maximizes same-problem
cross-lingual similarity (Siamese-style triplet loss)
"""
import json
import numpy as np
from sklearn.linear_model import Ridge, LogisticRegression
from sklearn.decomposition import PCA
from sklearn.metrics import r2_score, accuracy_score
from sklearn.cross_decomposition import CCA
from sklearn.preprocessing import StandardScaler
from sklearn.neural_network import MLPRegressor
from pathlib import Path
OUT = Path("output")
np.random.seed(42)
print("=" * 60)
print(" Exp BG: Aligned distillation")
print("=" * 60)
# ── 1. Load data ────────────────────────────────────────────────────
print("\n[1/5] Loading...")
lasttok = np.load(OUT / "all_layers_lasttok.npz")
multi = np.load(OUT / "multilingual_all_layers.npz")
categories = lasttok["categories"]
N_PROB = 200
ALL_LANGS = [l for l in ["en", "zh", "es", "ar", "ja", "ko", "sw"] if f"{l}_L32" in multi]
print(f" Languages: {ALL_LANGS}")
def get_acts(lang, layer):
key = f"{lang}_L{layer}"
return multi[key] if key in multi else lasttok[key]
# Build kernel basis from all 7 languages
stacked_32 = np.stack([get_acts(l, 32) for l in ALL_LANGS], axis=0)
prob_means = stacked_32.mean(axis=0, keepdims=True)
deviations = (stacked_32 - prob_means).reshape(-1, 2048)
_, _, Vt = np.linalg.svd(deviations, full_matrices=False)
lang_basis = Vt[:10]
K = 50
pooled = stacked_32.reshape(-1, 2048)
pooled_clean = pooled - (pooled @ lang_basis.T) @ lang_basis
pca = PCA(n_components=K)
pca.fit(pooled_clean)
kernel_basis = pca.components_
def to_kernel(acts):
clean = acts - (acts @ lang_basis.T) @ lang_basis
return clean @ kernel_basis.T
idx = np.random.permutation(N_PROB)
train_prob, test_prob = idx[:160], idx[160:]
# ── 2. Mean-centered probe ──────────────────────────────────────────
print("\n[2/5] Mean-centered probe: remove language mean, then probe")
mc_results = {}
for source_layer in [0, 8, 16, 24, 28]:
# Compute per-language mean at source and target layer
lang_means_source = {}
lang_means_target = {}
for lang in ALL_LANGS:
s = to_kernel(get_acts(lang, source_layer))
t = to_kernel(get_acts(lang, 32))
lang_means_source[lang] = s.mean(axis=0)
lang_means_target[lang] = t.mean(axis=0)
# Train on EN+ZH (mean-centered)
X_tr, Y_tr = [], []
for lang in ["en", "zh"]:
s = to_kernel(get_acts(lang, source_layer)) - lang_means_source[lang]
t = to_kernel(get_acts(lang, 32)) - lang_means_target[lang]
X_tr.append(s[train_prob])
Y_tr.append(t[train_prob])
X_tr, Y_tr = np.vstack(X_tr), np.vstack(Y_tr)
ridge = Ridge(alpha=1.0)
ridge.fit(X_tr, Y_tr)
layer_r = {}
for lang in ALL_LANGS:
s = to_kernel(get_acts(lang, source_layer)) - lang_means_source[lang]
t = to_kernel(get_acts(lang, 32)) - lang_means_target[lang]
pred = ridge.predict(s[test_prob])
r2 = r2_score(t[test_prob], pred, multioutput='uniform_average')
layer_r[lang] = float(r2)
mc_results[source_layer] = layer_r
en_r = layer_r["en"]
zh_r = layer_r["zh"]
es_r = layer_r.get("es", float("nan"))
ja_r = layer_r.get("ja", float("nan"))
print(f" L{source_layer:>2d}: EN={en_r:+.4f} ZH={zh_r:+.4f} ES={es_r:+.4f} JA={ja_r:+.4f}")
# ── 3. All-language training ─────────────────────────────────────────
print("\n[3/5] All-language training, leave-one-out test")
loo_results = {}
for source_layer in [0, 8, 16, 24, 28]:
for held_out in ALL_LANGS:
train_langs = [l for l in ALL_LANGS if l != held_out]
X_tr, Y_tr = [], []
for lang in train_langs:
s = to_kernel(get_acts(lang, source_layer))
t = to_kernel(get_acts(lang, 32))
X_tr.append(s[train_prob])
Y_tr.append(t[train_prob])
X_tr, Y_tr = np.vstack(X_tr), np.vstack(Y_tr)
ridge = Ridge(alpha=1.0)
ridge.fit(X_tr, Y_tr)
s_te = to_kernel(get_acts(held_out, source_layer))
t_te = to_kernel(get_acts(held_out, 32))
pred = ridge.predict(s_te[test_prob])
r2 = r2_score(t_te[test_prob], pred, multioutput='uniform_average')
if source_layer not in loo_results:
loo_results[source_layer] = {}
loo_results[source_layer][held_out] = float(r2)
parts = [f"{l}={loo_results[source_layer][l]:+.3f}" for l in ALL_LANGS]
print(f" L{source_layer:>2d}: {', '.join(parts)}")
# ── 4. CCA alignment then probe ─────────────────────────────────────
print("\n[4/5] CCA: find maximally correlated subspace between EN and ZH, test on others")
cca_results = {}
for source_layer in [8, 16, 24, 28]:
en_k = to_kernel(get_acts("en", source_layer))
zh_k = to_kernel(get_acts("zh", source_layer))
n_cca = min(20, K)
cca = CCA(n_components=n_cca, max_iter=1000)
cca.fit(en_k[train_prob], zh_k[train_prob])
# Transform all languages into CCA space
en_target = to_kernel(get_acts("en", 32))
# Train probe: CCA(source) → kernel(L32)
en_cca = cca.transform(en_k)
X_tr = en_cca[0][train_prob] if isinstance(en_cca, tuple) else en_cca[train_prob]
Y_tr = en_target[train_prob]
ridge = Ridge(alpha=1.0)
ridge.fit(X_tr, Y_tr)
layer_r = {}
for lang in ALL_LANGS:
lang_k = to_kernel(get_acts(lang, source_layer))
# Transform using the X-side of CCA (treats all langs as X)
lang_cca = cca.transform(lang_k)
lc = lang_cca[0] if isinstance(lang_cca, tuple) else lang_cca
t_te = to_kernel(get_acts(lang, 32))
pred = ridge.predict(lc[test_prob])
r2 = r2_score(t_te[test_prob], pred, multioutput='uniform_average')
layer_r[lang] = float(r2)
cca_results[source_layer] = layer_r
parts = [f"{l}={layer_r[l]:+.3f}" for l in ALL_LANGS]
print(f" L{source_layer:>2d}: {', '.join(parts)}")
# ── 5. Contrastive retrieval: learned metric ─────────────────────────
print("\n[5/5] Contrastive retrieval: train projection to maximize same-problem similarity")
# Simple approach: learn W such that ||W@en_i - W@zh_i||² is small
# and ||W@en_i - W@en_j||² is large (for i≠j)
# This is equivalent to learning a projection that clusters same-problem
# representations across languages
# Use a simple approach: fit W to minimize ||W@en - W@zh|| for same problems
# This is just W = argmin ||W(en - zh)||² subject to ||W|| = 1
# = PCA on (en - zh), then take NULL space = directions where en ≈ zh
en32 = to_kernel(get_acts("en", 32))[train_prob]
zh32 = to_kernel(get_acts("zh", 32))[train_prob]
# Directions where en ≈ zh: null space of (en - zh)
diffs = en32 - zh32
U_d, S_d, Vt_d = np.linalg.svd(diffs, full_matrices=False)
# Low singular values = directions where en-zh diff is small = shared
# Take bottom 30 directions (shared subspace)
n_shared = 30
shared_proj = Vt_d[-n_shared:] # (30, K)
# Project and test retrieval
en_all = to_kernel(get_acts("en", 32)) @ shared_proj.T
en_n = en_all / (np.linalg.norm(en_all, axis=1, keepdims=True) + 1e-8)
contrastive_retrieval = {}
for lang in ALL_LANGS:
if lang == "en":
continue
lang_all = to_kernel(get_acts(lang, 32)) @ shared_proj.T
lang_n = lang_all / (np.linalg.norm(lang_all, axis=1, keepdims=True) + 1e-8)
sim = lang_n @ en_n.T
ranks = np.array([np.where(np.argsort(-sim[i]) == i)[0][0] for i in range(N_PROB)])
t1 = float((ranks == 0).mean())
t5 = float((ranks < 5).mean())
mr = float(ranks.mean())
contrastive_retrieval[lang] = {"top1": t1, "top5": t5, "mean_rank": mr}
print(f" {lang}→EN (shared-30D): Top-1={t1:.3f} Top-5={t5:.3f} Mean rank={mr:.1f}")
# Compare to full kernel retrieval from BF
print("\n Comparison to full kernel (BF):")
en_full = to_kernel(get_acts("en", 32))
en_fn = en_full / (np.linalg.norm(en_full, axis=1, keepdims=True) + 1e-8)
for lang in ["zh", "es", "ja"]:
lang_full = to_kernel(get_acts(lang, 32))
lang_fn = lang_full / (np.linalg.norm(lang_full, axis=1, keepdims=True) + 1e-8)
sim = lang_fn @ en_fn.T
ranks = np.array([np.where(np.argsort(-sim[i]) == i)[0][0] for i in range(N_PROB)])
print(f" {lang}→EN (full-{K}D): Top-1={(ranks==0).mean():.3f} "
f"Top-5={(ranks<5).mean():.3f} Mean rank={ranks.mean():.1f}")
# ── Summary ──────────────────────────────────────────────────────────
print("\n" + "=" * 60)
print(" SUMMARY")
print("=" * 60)
print(f"\n MEAN-CENTERED PROBE (train EN+ZH centered, test all):")
for L in sorted(mc_results.keys()):
parts = [f"{l}={mc_results[L][l]:+.3f}" for l in ALL_LANGS]
print(f" L{L:>2d}: {', '.join(parts)}")
print(f"\n LEAVE-ONE-OUT (train 6 langs, test held-out):")
for L in sorted(loo_results.keys()):
parts = [f"{l}={loo_results[L][l]:+.3f}" for l in ALL_LANGS]
print(f" L{L:>2d}: {', '.join(parts)}")
print(f"\n CCA PROBE (CCA on EN+ZH, probe all):")
for L in sorted(cca_results.keys()):
parts = [f"{l}={cca_results[L][l]:+.3f}" for l in ALL_LANGS]
print(f" L{L:>2d}: {', '.join(parts)}")
print(f"\n CONTRASTIVE RETRIEVAL (shared null-space, 30D):")
for lang, v in sorted(contrastive_retrieval.items()):
print(f" {lang}→EN: Top-1={v['top1']:.3f} Top-5={v['top5']:.3f} Mean rank={v['mean_rank']:.1f}")
# ── Save ─────────────────────────────────────────────────────────────
output = {
"experiment": "BG",
"title": "Aligned distillation — mean-centered, CCA, all-language, contrastive",
"mean_centered": {str(k): v for k, v in mc_results.items()},
"leave_one_out": {str(k): v for k, v in loo_results.items()},
"cca": {str(k): v for k, v in cca_results.items()},
"contrastive_retrieval": contrastive_retrieval,
}
with open(OUT / "expBG_aligned_distillation.json", "w") as f:
json.dump(output, f, indent=2)
print(f"\n Saved to output/expBG_aligned_distillation.json")