A Smarter Way to Prioritize Website Traffic and Drive Action

Traditionally, account scoring focused solely on how well a company “fit” your Ideal Company Profile (ICP). But here’s the truth: fit alone doesn’t indicate interest. It’s just one piece of the puzzle.

That’s where first-party intent data comes in giving you direct insight into which companies are actively researching your solutions, not just who could be a good fit.

Let’s walk through how to use this behavioral data to build an account scoring model that actually works.

What Is First-Party Intent Data?

First party intent data is collected from your website and reflects real time buyer behavior, things like:

  • Pages viewed
  • Content downloaded
  • Forms filled out
  • Time spent on key sections

This data provides insight into interest and urgency, giving sales and marketing teams a way to focus on the right accounts at the right time.

The 3 Core Steps of First-Party Account Scoring

This model doesn’t replace traditional fit-based scoring, it enhances it with dynamic behavioral data.

Step 1: Define Intent Signals

Start by identifying key engagement behaviors that signal buyer interest. These might include:

  • Downloading a gated guide
  • Viewing a pricing page
  • Registering for a webinar
  • Submitting a contact form
  • Visiting multiple product pages

This step should be a collaboration between sales and marketing to ensure the signals you track actually align with deal readiness.

Step 2: Assign Value to Each Signal

Now you’ll build a weighted scoring system, assigning points to each intent signal based on its value.

For example:

  • Viewing a product page = 5 points
  • Downloading a whitepaper = 10 points
  • Filling out a contact form = 70 points

The idea is to elevate the signals that historically lead to conversions and downplay the ones that don’t.

Tip: Use historical deal data or multi-touch attribution insights to determine which actions matter most.

Step 3: Set a Threshold for Action

You’ll need at least two “green light” thresholds:

  • One for marketing activation (MQLs)
  • One for sales follow-up (SQLs)

For instance:

  • 45 points = ready for marketing nurture
  • 70 points = ready for a sales touch

Why the difference? A visitor may show some interest (enough for nurture), but not be ready to talk to a rep just yet. Setting clear thresholds avoids wasted effort and aligns your GTM teams.

Let’s See It in Action

Scenario: Scoring Website Activity

You’ve set up your scoring like this:

  • Page view = 5 points
  • Gated content download = 10 points
  • Contact form = 70 points
  • MQL threshold = 45 points
  • SQL threshold = 70 points

Now, three companies visit your site:

  • Company A: Views 5 pages → 25 points → No action yet
  • Company B: Views 5 pages + downloads 3 whitepapers → 55 points → Add to marketing nurture
  • Company C: Views 2 pages + fills out contact form → 80 points → Send to sales immediately

Company C hasn’t looked at as many pages, but they explicitly asked to talk and that scores highest.

Final Thoughts: Smarter Engagement Starts with Better Scoring

First-party data is one of the most underutilized assets in many sales and marketing teams. With the right scoring model in place, you can:

  • Uncover hidden intent
  • Prioritize outreach by interest
  • Route leads to the right team at the right time
  • Improve personalization and campaign relevance

Best of all? This data is already at your fingertips, it’s just a matter of organizing and acting on it.