Product Guides4 min read • Feb 06, 2026By Ava Thompson

Setting up effective LLM surveys for brand monitoring (Feb 2026 Update)

Abhord Quickstart Guide (2026 Refresh): From Setup to Action

Abhord Quickstart Guide (2026 Refresh): From Setup to Action

Who this is for

New Abhord users who want a fast, reliable way to see how leading LLMs describe your brand, competitors, and category—and to turn those findings into action.

What’s new since the last edition

  • Guided Setup Wizard with recommended defaults and model routing
  • Sentiment v2.1 with better neutrality handling and rationale snippets
  • Smarter deduping that merges near-duplicate mentions across models/sources
  • Confidence intervals and outlier suppression on share of voice (SOV)
  • Competitor Auto-Alias Finder and drift alerts
  • Webhooks v2, Slack/MS Teams alerts, and saved dashboard templates

1) Initial setup and configuration

  • Create a workspace

- Go to Settings → Workspace. Add your company name, primary domain, and time zone.

- Invite teammates. Assign roles: Admin (settings/billing), Analyst (runs/dashboards), Viewer (read-only).

  • Connect LLM providers

- Settings → Connections → LLM Providers. Add keys for the models you want to survey (you can use Abhord-managed credits or your own).

- Enable “Model routing” to automatically include a balanced panel across families (recommended).

  • Define entities and aliases

- Library → Entities. Add your brand, products, executives, and common misspellings.

- Add competitors and their known aliases. Turn on Auto-Alias Finder to capture emergent nicknames.

  • Configure topics and intents

- Library → Taxonomies. Import the “AEO Essentials” taxonomy to tag mentions by funnel stage (awareness, consideration, support) and by theme (pricing, features, trust).

  • Privacy and compliance

- Settings → Governance. Review data retention (default 180 days), PII scrubbing, and export controls. Enable SSO and SCIM if available.

  • Alerts and integrations

- Settings → Integrations. Connect Slack/Teams, Jira/Asana, and your BI tool.

- Create an alert rule: “Spike in negative sentiment >15 points day-over-day” to #abhord-war-room.

Pro tip: Run the Guided Setup Wizard. It will pre-load best-practice prompts, set safe rate limits, and schedule a weekly pulse.

2) Run your first survey across LLMs

Goal: Get a baseline of what LLMs currently say about you vs. top competitors.

  • Start a new run

- Runs → New → “Cross-Model Pulse.” Name it “Baseline Q1” and select your entity set (you + 3–5 competitors).

  • Choose your panel

- Keep the default Balanced Panel. This includes multiple model families to reduce single-model bias.

  • Select prompt pack

- Use “Brand Facts & Comparisons (2026)” prompt pack. It asks consistent, evaluative questions (e.g., “Best X for Y?”, “Top alternatives to Brand A?”, “Pros/cons of Product B?”).

- Turn on Auto-Translate if you operate in multiple regions; Abhord will normalize results back to your base language.

  • Sampling and controls

- Sample size: 50–100 responses per entity per question for a baseline.

- Randomization: On (varied phrasings to reduce prompt artifacts).

- Temperature: 0.2–0.4 for factual queries; 0.6 for qualitative insights.

- Safety: Enable citation request where supported; discard no-citation answers if high precision is required.

  • Dry run and launch

- Click “Preview 10.” Check for entity confusion and adjust aliases.

- Launch. Most baselines complete in 20–60 minutes depending on panel size.

New recommendation: Use “Cost Guard.” It caps spend and auto-pauses if marginal new mentions fall below your uniqueness threshold.

3) Interpreting results: mentions, sentiment, share of voice

  • Mentions

- What it is: Count of unique, deduped references to your entity.

- How it’s calculated: Abhord groups near-duplicates across models using semantic clustering and alias maps, then assigns each cluster to a canonical entity.

- What to look for: Top clusters, new themes, and cross-model consistency.

  • Sentiment (v2.1)

- Scale: -100 (very negative) to +100 (very positive), with a distinct “neutral/informational” band.

- What’s new: Rationale snippets show the sentence driving the label; neutrality detection is improved for how-to/support content.

- What to look for: Theme-level sentiment by funnel stage; sharp drops linked to pricing or reliability claims.

  • Share of Voice (SOV)

- Definition: Your mentions divided by total category mentions during the run.

- What’s new: Confidence intervals and outlier suppression for small-sample entities.

- What to look for: SOV by model family (are some models under-representing you?), by region/language

Ava Thompson

Growth & GEO Lead

Ava Thompson has 11+ years in growth marketing and SEO, specializing in AI visibility, conversion-focused content, and brand alignment.

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