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10_Wiki/Topics 대규모 정리: - 오류 캡처/미완성 stub 문서 227개 제거 - 교차폴더 중복 43클러스터 병합 (63파일 → redirect) - 링크명 정규화: 깨진 링크 수정·redirect 직결·개념 매핑 ~2,400건 - 카테고리 MOC 6개 신규 생성 - Graph 섹션 미해결 related-keyword 링크 10,058건 제거 Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
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id, title, category, status, canonical_id, aliases, duplicate_of, source_trust_level, confidence_score, verification_status, tags, raw_sources, last_reinforced, github_commit, tech_stack
| id | title | category | status | canonical_id | aliases | duplicate_of | source_trust_level | confidence_score | verification_status | tags | raw_sources | last_reinforced | github_commit | tech_stack | ||||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| wiki-2026-0508-dynamic-creative-optimization | Dynamic Creative Optimization (DCO) | 10_Wiki/Topics | verified | self |
|
none | A | 0.94 | applied |
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2026-05-10 | pending |
|
Dynamic Creative Optimization (DCO)
매 한 줄
"매 ad creative 의 user / context 의 real-time 의 assemble". 매 static ad → 매 millions of variant. 매 element-level (image + headline + CTA + offer). 매 modern: 매 LLM + diffusion 의 generate, 매 RL bandit 의 select.
매 핵심
매 motivation
- Static ad: 매 single creative.
- DCO: 매 user 의 context 의 best variant.
- Result: 매 CTR 30-200% ↑ (typical).
매 element
- Hero image / video: 매 product, lifestyle.
- Headline: 매 hook.
- Body: 매 detail.
- CTA: "Buy", "Learn", "Sign Up".
- Offer: 매 discount, urgency.
- Logo / brand color.
매 method
- Rules-based: 매 segment → variant.
- MAB / contextual bandit: 매 explore-exploit.
- RL: 매 long-term reward.
- Generative: 매 LLM headline + diffusion image.
- Predictive CTR: 매 model 의 score.
매 modern AI
- Generative DCO: 매 millions of unique creative.
- Persona-based: 매 LLM 의 segment 의 voice.
- A/B at scale: 매 thousands variant.
- Brand safety: 매 LLM filter.
매 응용
- E-commerce: 매 product feed-driven.
- Travel: 매 destination + season.
- Finance: 매 demographic.
- Gaming: 매 acquired-similar.
- B2B SaaS: 매 industry.
💻 패턴
Element-level template
interface CreativeTemplate {
layout: 'hero' | 'carousel' | 'video';
slots: {
image: string; // 매 URL
headline: string;
cta: string;
body: string;
logo: string;
};
brand_color: string;
}
function assemble(user: User, context: Context): CreativeTemplate {
return {
layout: pickLayout(user, context),
slots: {
image: pickImage(user.interests, context.season),
headline: pickHeadline(user.intent, context.event),
cta: pickCTA(user.funnel_stage),
body: pickBody(user.lang),
logo: BRAND_LOGO,
},
brand_color: BRAND_COLOR,
};
}
Contextual bandit (LinUCB)
import numpy as np
class LinUCB:
def __init__(self, n_arms, n_features, alpha=1.0):
self.alpha = alpha
self.A = [np.eye(n_features) for _ in range(n_arms)]
self.b = [np.zeros(n_features) for _ in range(n_arms)]
def select(self, context):
scores = []
for a in range(len(self.A)):
theta = np.linalg.solve(self.A[a], self.b[a])
ucb = theta @ context + self.alpha * np.sqrt(
context @ np.linalg.solve(self.A[a], context)
)
scores.append(ucb)
return int(np.argmax(scores))
def update(self, arm, context, reward):
self.A[arm] += np.outer(context, context)
self.b[arm] += reward * context
# 매 each "arm" = 매 creative variant
Generative ad (LLM headline)
def generate_headlines(product, user_segment, n=10):
prompt = f"""Generate {n} ad headlines for "{product}" targeting {user_segment}.
Tone: persuasive, concise (≤7 words). One per line."""
return llm.generate(prompt).split('\n')
# 매 brand safety filter
def is_safe(headline):
return classifier.predict(headline)['toxic'] < 0.1
Diffusion image (variant)
import torch
from diffusers import StableDiffusionPipeline
pipe = StableDiffusionPipeline.from_pretrained('stabilityai/sdxl-turbo').to('cuda')
def generate_hero(product, lifestyle, brand_style):
prompt = f"{product} in {lifestyle}, {brand_style}, professional photography"
return pipe(prompt, num_inference_steps=4).images[0]
CTR predictor (Wide & Deep)
class WideDeepCTR(nn.Module):
def __init__(self, n_cat, embed_dim=8, hidden=64):
super().__init__()
self.embeds = nn.ModuleList([nn.Embedding(c, embed_dim) for c in n_cat])
self.deep = nn.Sequential(
nn.Linear(len(n_cat) * embed_dim, hidden),
nn.ReLU(),
nn.Linear(hidden, 1),
)
self.wide = nn.Linear(sum(n_cat), 1)
def forward(self, sparse_feats, deep_idx):
deep = torch.cat([e(deep_idx[:, i]) for i, e in enumerate(self.embeds)], dim=1)
return torch.sigmoid(self.wide(sparse_feats) + self.deep(deep))
Multi-armed Thompson Sampling
class ThompsonDCO:
def __init__(self, n_arms):
self.alpha = np.ones(n_arms)
self.beta = np.ones(n_arms)
def select(self):
samples = np.random.beta(self.alpha, self.beta)
return int(np.argmax(samples))
def update(self, arm, click):
if click: self.alpha[arm] += 1
else: self.beta[arm] += 1
Real-time decisioning (DSP integration)
// OpenRTB bid request
async function decideAd(bidReq: BidRequest): Promise<AdResponse> {
const userVec = await fetchUserEmbed(bidReq.user.id);
const ctxVec = encodeContext(bidReq.imp[0]);
const variantId = bandit.select(concat(userVec, ctxVec));
const creative = assemble(variantId);
return {
bid: predictedCTR * cpc * 1000, // 매 CPM
creative,
};
}
Brand safety guard
def brand_safe(creative, context):
"""매 placement adjacency check."""
if context.publisher_category in BLOCKED_CATEGORIES:
return False
if classifier.predict(creative.headline)['toxic'] > 0.05:
return False
if has_competitor_logo(creative.image):
return False
return True
Frequency cap
class FreqCap:
def __init__(self, redis, limit_per_day=5):
self.redis = redis
self.limit = limit_per_day
def can_show(self, user_id, campaign_id):
key = f'fc:{user_id}:{campaign_id}:{today()}'
count = int(self.redis.get(key) or 0)
return count < self.limit
def record(self, user_id, campaign_id):
key = f'fc:{user_id}:{campaign_id}:{today()}'
self.redis.incr(key)
self.redis.expire(key, 86400)
Eval metric
def evaluate(impressions):
return {
'CTR': sum(i.click for i in impressions) / len(impressions),
'CVR': sum(i.convert for i in impressions if i.click) / max(1, sum(i.click for i in impressions)),
'CPA': sum(i.spend for i in impressions) / max(1, sum(i.convert for i in impressions)),
'ROAS': sum(i.revenue for i in impressions) / sum(i.spend for i in impressions),
}
매 결정 기준
| 상황 | Approach |
|---|---|
| Few variants | A/B test |
| Many segments | Rules + bandit |
| Many variants | Contextual bandit |
| Long-term reward | RL |
| Need fresh creative | Generative + brand-safe |
| High-stakes | CTR predictor + rules |
기본값: 매 element-level template + 매 contextual bandit + 매 generative refresh + 매 brand safety + 매 freq cap.
🔗 Graph
- 부모: Personalization
- 응용: Multi-Armed-Bandit
- Adjacent: Recommender-Systems · Diffusion-Models
🤖 LLM 활용
언제: 매 ad campaign. 매 personalization. 매 generative creative. 언제 X: 매 brand-safety-strict (LLM 의 risk).
❌ 안티패턴
- No frequency cap: 매 user fatigue.
- Pure generative no filter: 매 brand safety 의 violate.
- Static creative: 매 fatigue 의 quickly.
- Bandit without features: 매 personalization X.
- No measurement loop: 매 optimization 의 stale.
🧪 검증 / 중복
- Verified (Google Ads DCO, Meta Advantage+, AdTech industry).
- 신뢰도 A.
🕓 Changelog
| 날짜 | 변경 |
|---|---|
| 2026-04-20 | Auto-reinforced |
| 2026-05-08 | Phase 1 |
| 2026-05-10 | Manual cleanup — DCO element + 매 LinUCB / Thompson / generative / CTR / brand-safety code |