Files
nuonuo/experiments/exp02f_discrimination_check.py
Fam Zheng d923aa1e31 NuoNuo: Hippocampal memory module prototype
Hopfield + Hebbian hybrid memory system for LLMs.
Two nights of experiments (16 iterations), validated on LongMemEval (ICLR 2025).

Architecture:
- Single-hop: Two-Stage Hopfield (NN top-20 → softmax settle)
- Multi-hop: Hebbian W matrix with WTA pattern separation
- 64% on LongMemEval (500 questions), retrieval-only, no LLM dependency
- 4ms latency @ 20K memories, ~1GB VRAM

Key findings:
- Hopfield attention solved noise tolerance (20% → 100% vs flat Hebbian)
- WTA pattern separation enables 20K+ capacity
- Multi-hop associative chains (6 hops, CosSim=1.0) — RAG can't do this
- MiniLM-L6 is optimal (discrimination gap > absolute similarity)
- Paraphrase cue augmentation: 55% → 100% on synthetic, 36% → 64% on benchmark
- SNN encoder viable (CosSim 0.99) but not needed for current architecture
2026-04-07 10:37:24 +01:00

255 lines
8.5 KiB
Python

"""Experiment 2f: Check discrimination for soft WTA + test learned separator.
Soft WTA temp=0.5 showed perfect noise tolerance but might have zero discrimination.
Need to check: can it tell correct target from wrong targets?
Then test: learned pattern separator (trained to be noise-robust via contrastive loss).
"""
import sys
import time
import json
from pathlib import Path
import torch
import torch.nn as nn
import torch.optim as optim
import numpy as np
DEVICE = "cuda"
RESULTS_DIR = Path(__file__).parent.parent / "doc"
def cosine(a, b):
if a.norm() == 0 or b.norm() == 0:
return 0.0
return nn.functional.cosine_similarity(a.unsqueeze(0), b.unsqueeze(0)).item()
def winner_take_all(x, k):
_, idx = x.topk(k, dim=-1)
out = torch.zeros_like(x)
out.scatter_(-1, idx, 1.0)
return out
class SoftWTAMemory(nn.Module):
def __init__(self, input_dim=768, code_dim=16384, temperature=0.5):
super().__init__()
self.temperature = temperature
proj = torch.randn(input_dim, code_dim) * (1.0 / input_dim**0.5)
self.register_buffer('proj', proj)
target_proj = torch.randn(input_dim, code_dim) * (1.0 / input_dim**0.5)
self.register_buffer('target_proj', target_proj)
self.W = nn.Parameter(torch.zeros(code_dim, code_dim), requires_grad=False)
def encode(self, x, proj):
return torch.softmax((x @ proj) / self.temperature, dim=-1)
def learn(self, cue, target):
cc = self.encode(cue, self.proj)
tc = self.encode(target, self.target_proj)
self.W.data += torch.outer(tc, cc)
def recall(self, cue):
cc = self.encode(cue, self.proj)
return self.W @ cc
def check_discrimination(temperature, num_pairs=100):
"""Check correct vs wrong similarity for soft WTA."""
mem = SoftWTAMemory(temperature=temperature).to(DEVICE)
cues = [nn.functional.normalize(torch.randn(768, device=DEVICE), dim=0)
for _ in range(num_pairs)]
targets = [nn.functional.normalize(torch.randn(768, device=DEVICE), dim=0)
for _ in range(num_pairs)]
for i in range(num_pairs):
mem.learn(cues[i], targets[i])
# Test with noise=0.1
for noise_std in [0.0, 0.1, 0.5]:
correct_sims = []
wrong_sims = []
for i in range(num_pairs):
noisy = nn.functional.normalize(
cues[i] + torch.randn_like(cues[i]) * noise_std, dim=0)
recalled = mem.recall(noisy)
tc = mem.encode(targets[i], mem.target_proj)
correct_sims.append(cosine(recalled, tc))
# Compare to random wrong targets
for j in range(min(20, num_pairs)):
if j != i:
wc = mem.encode(targets[j], mem.target_proj)
wrong_sims.append(cosine(recalled, wc))
mc = np.mean(correct_sims)
mw = np.mean(wrong_sims)
print(f" temp={temperature}, noise={noise_std:.1f}: "
f"Correct={mc:.4f}, Wrong={mw:.4f}, Disc={mc-mw:.4f}")
class LearnedSeparator(nn.Module):
"""Trained pattern separator: maps similar inputs to same code.
Architecture: MLP → sparse output (WTA)
Training: contrastive loss on (original, noisy) pairs
"""
def __init__(self, input_dim=768, code_dim=4096, k_active=50):
super().__init__()
self.k_active = k_active
self.code_dim = code_dim
self.net = nn.Sequential(
nn.Linear(input_dim, code_dim),
nn.ReLU(),
nn.Linear(code_dim, code_dim),
)
def forward(self, x):
h = self.net(x)
return winner_take_all(h, self.k_active)
def forward_soft(self, x, temperature=0.1):
"""Soft version for training (differentiable)."""
h = self.net(x)
return torch.softmax(h / temperature, dim=-1)
def train_learned_separator(input_dim=768, code_dim=4096, k_active=50,
epochs=100, batch_size=128, noise_std=0.3):
"""Train separator to produce same codes for original and noisy versions."""
sep = LearnedSeparator(input_dim, code_dim, k_active).to(DEVICE)
optimizer = optim.Adam(sep.parameters(), lr=1e-3)
print(f"\nTraining learned separator (code_dim={code_dim}, k={k_active}, "
f"noise={noise_std})")
for epoch in range(epochs):
# Generate batch of normalized vectors
x = nn.functional.normalize(torch.randn(batch_size, input_dim, device=DEVICE), dim=1)
# Noisy version
x_noisy = nn.functional.normalize(x + torch.randn_like(x) * noise_std, dim=1)
# Different vector (negative)
x_neg = nn.functional.normalize(torch.randn(batch_size, input_dim, device=DEVICE), dim=1)
# Soft codes
code = sep.forward_soft(x)
code_noisy = sep.forward_soft(x_noisy)
code_neg = sep.forward_soft(x_neg)
# Contrastive loss: same input → same code, diff input → diff code
pos_sim = nn.functional.cosine_similarity(code, code_noisy, dim=1).mean()
neg_sim = nn.functional.cosine_similarity(code, code_neg, dim=1).mean()
loss = -pos_sim + 0.5 * torch.relu(neg_sim - 0.1)
# Sparsity regularization
entropy = -(code * (code + 1e-10).log()).sum(dim=1).mean()
loss += 0.01 * entropy
optimizer.zero_grad()
loss.backward()
optimizer.step()
if (epoch + 1) % 20 == 0:
with torch.no_grad():
hard_code = sep(x)
hard_noisy = sep(x_noisy)
hard_neg = sep(x_neg)
# Exact match rate (same WTA pattern)
match_rate = (hard_code * hard_noisy).sum(dim=1).mean() / k_active
neg_match = (hard_code * hard_neg).sum(dim=1).mean() / k_active
print(f" Epoch {epoch+1}: loss={loss.item():.4f}, "
f"pos_match={match_rate:.4f}, neg_match={neg_match:.4f}")
return sep
def test_learned_memory(sep, num_pairs=100, noise_levels=None):
"""Test Hebbian memory using learned separator."""
if noise_levels is None:
noise_levels = [0.0, 0.1, 0.2, 0.5, 1.0]
code_dim = sep.code_dim
k = sep.k_active
W = torch.zeros(code_dim, code_dim, device=DEVICE)
cues = [nn.functional.normalize(torch.randn(768, device=DEVICE), dim=0)
for _ in range(num_pairs)]
targets = [nn.functional.normalize(torch.randn(768, device=DEVICE), dim=0)
for _ in range(num_pairs)]
# Learn
with torch.no_grad():
cue_codes = [sep(c.unsqueeze(0)).squeeze() for c in cues]
target_codes = [sep(t.unsqueeze(0)).squeeze() for t in targets]
for i in range(num_pairs):
W += torch.outer(target_codes[i], cue_codes[i])
# Test
for ns in noise_levels:
correct_sims = []
wrong_sims = []
for i in range(num_pairs):
noisy = nn.functional.normalize(
cues[i] + torch.randn_like(cues[i]) * ns, dim=0)
with torch.no_grad():
nc = sep(noisy.unsqueeze(0)).squeeze()
recalled_raw = W @ nc
recalled = winner_take_all(recalled_raw, k)
cs = cosine(recalled, target_codes[i])
correct_sims.append(cs)
for j in range(min(20, num_pairs)):
if j != i:
wrong_sims.append(cosine(recalled, target_codes[j]))
mc = np.mean(correct_sims)
mw = np.mean(wrong_sims)
exact = np.mean([s > 0.99 for s in correct_sims])
print(f" noise={ns:.2f}: Correct={mc:.4f}, Wrong={mw:.4f}, "
f"Disc={mc-mw:.4f}, Exact={exact:.2%}")
def main():
print("=" * 60)
print("Experiment 2f: Discrimination Check + Learned Separator")
print("=" * 60)
# Part 1: Check discrimination for soft WTA
print("\n=== Part 1: Soft WTA Discrimination ===")
for temp in [0.01, 0.05, 0.1, 0.5, 1.0]:
check_discrimination(temp)
print()
# Part 2: Learned separator
print("\n=== Part 2: Learned Separator ===")
# Train with different noise levels
for train_noise in [0.1, 0.3, 0.5]:
sep = train_learned_separator(
code_dim=4096, k_active=50,
epochs=200, noise_std=train_noise)
print(f"\n Testing (trained with noise={train_noise}):")
test_learned_memory(sep, num_pairs=100)
print()
# Part 3: Larger learned separator
print("\n=== Part 3: Larger Learned Separator (code=8192, k=20) ===")
sep = train_learned_separator(
code_dim=8192, k_active=20,
epochs=300, noise_std=0.3)
print("\n Testing:")
test_learned_memory(sep, num_pairs=200)
if __name__ == "__main__":
main()