# Audience Targeting Reference Detailed targeting strategies for each major ad platform. ## Google Ads Audiences ### Search Campaign Targeting **Keywords:** - Exact match: [keyword] — most precise, lower volume - Phrase match: "keyword" — moderate precision and volume - Broad match: keyword — highest volume, use with smart bidding **Audience layering:** - Add audiences in "observation" mode first - Analyze performance by audience - Switch to "targeting" mode for high performers **RLSA (Remarketing Lists for Search Ads):** - Bid higher on past visitors searching your terms - Show different ads to returning searchers - Exclude converters from prospecting campaigns ### Display/YouTube Targeting **Custom intent audiences:** - Based on recent search behavior - Create from your converting keywords - High intent, good for prospecting **In-market audiences:** - People actively researching solutions - Pre-built by Google - Layer with demographics for precision **Affinity audiences:** - Based on interests and habits - Better for awareness - Broad but can exclude irrelevant **Customer match:** - Upload email lists - Retarget existing customers - Create lookalikes from best customers **Similar/lookalike audiences:** - Based on your customer match lists - Expand reach while maintaining relevance - Best when source list is high-quality customers --- ## Meta Audiences ### Core Audiences (Interest/Demographic) **Interest targeting tips:** - Layer interests with AND logic for precision - Use Audience Insights to research interests - Start broad, let algorithm optimize - Exclude existing customers always **Demographic targeting:** - Age and gender (if product-specific) - Location (down to zip/postal code) - Language - Education and work (limited data now) **Behavior targeting:** - Purchase behavior - Device usage - Travel patterns - Life events ### Custom Audiences **Website visitors:** - All visitors (last 180 days max) - Specific page visitors - Time on site thresholds - Frequency (visited X times) **Customer list:** - Upload emails/phone numbers - Match rate typically 30-70% - Refresh regularly for accuracy **Engagement audiences:** - Video viewers (25%, 50%, 75%, 95%) - Page/profile engagers - Form openers - Instagram engagers **App activity:** - App installers - In-app events - Purchase events ### Lookalike Audiences **Source audience quality matters:** - Use high-LTV customers, not all customers - Purchasers > leads > all visitors - Minimum 100 source users, ideally 1,000+ **Size recommendations:** - 1% — most similar, smallest reach - 1-3% — good balance for most - 3-5% — broader, good for scale - 5-10% — very broad, awareness only **Layering strategies:** - Lookalike + interest = more precision early - Test lookalike-only as you scale - Exclude the source audience --- ## LinkedIn Audiences ### Job-Based Targeting **Job titles:** - Be specific (CMO vs. "Marketing") - LinkedIn normalizes titles, but verify - Stack related titles - Exclude irrelevant titles **Job functions:** - Broader than titles - Combine with seniority level - Good for awareness campaigns **Seniority levels:** - Entry, Senior, Manager, Director, VP, CXO, Partner - Layer with function for precision **Skills:** - Self-reported, less reliable - Good for technical roles - Use as expansion layer ### Company-Based Targeting **Company size:** - 1-10, 11-50, 51-200, 201-500, 501-1000, 1001-5000, 5000+ - Key filter for B2B **Industry:** - Based on company classification - Can be broad, layer with other criteria **Company names (ABM):** - Upload target account list - Minimum 300 companies recommended - Match rate varies **Company growth rate:** - Hiring rapidly = budget available - Good signal for timing ### High-Performing Combinations | Use Case | Targeting Combination | |----------|----------------------| | Enterprise sales | Company size 1000+ + VP/CXO + Industry | | SMB sales | Company size 11-200 + Manager/Director + Function | | Developer tools | Skills + Job function + Company type | | ABM campaigns | Company list + Decision-maker titles | | Broad awareness | Industry + Seniority + Geography | --- ## Twitter/X Audiences ### Targeting options: - Follower lookalikes (accounts similar to followers of X) - Interest categories - Keywords (in tweets) - Conversation topics - Events - Tailored audiences (your lists) ### Best practices: - Follower lookalikes of relevant accounts work well - Keyword targeting catches active conversations - Lower CPMs than LinkedIn/Meta - Less precise, better for awareness --- ## TikTok Audiences ### Targeting options: - Demographics (age, gender, location) - Interests (TikTok's categories) - Behaviors (video interactions) - Device (iOS/Android, connection type) - Custom audiences (pixel, customer file) - Lookalike audiences ### Best practices: - Younger skew (18-34 primarily) - Interest targeting is broad - Creative matters more than targeting - Let algorithm optimize with broad targeting --- ## Audience Size Guidelines | Platform | Minimum Recommended | Ideal Range | |----------|-------------------|-------------| | Google Search | 1,000+ searches/mo | 5,000-50,000 | | Google Display | 100,000+ | 500K-5M | | Meta | 100,000+ | 500K-10M | | LinkedIn | 50,000+ | 100K-500K | | Twitter/X | 50,000+ | 100K-1M | | TikTok | 100,000+ | 1M+ | Too narrow = expensive, slow learning Too broad = wasted spend, poor relevance --- ## Exclusion Strategy Always exclude: - Existing customers (unless upsell) - Recent converters (7-14 days) - Bounced visitors (<10 sec) - Employees (by company or email list) - Irrelevant page visitors (careers, support) - Competitors (if identifiable)