Revenue Forecasting: Top-Down & Bottom-Up

Revenue Forecasting Top-Down & Bottom-Up

Why revenue forecasting matters

Revenue is the engine of every financial model. Get the top line right (or at least reasonable) and everything else—margins, cash flow, valuation—has a chance to be right. This guide explains the main approaches you’ll see analysts use, when to use each one, and how to combine them.

The four big approaches (and how they fit together)

  1. Historical results – extend recent trends (best for mature, non-cyclical firms).
  2. Historical base-rate convergence – fade growth/margins toward a long-run industry average.
  3. Management guidance – use the ranges management provides (carefully, not blindly).
  4. Analyst discretionary (judgment) – build scenarios when the other three don’t fit (cyclical companies, big transitions, regulation).

You’ll usually blend these. For example: use history to anchor levels, fade toward the industry base rate over time, overlay near-term guidance, and add discretionary scenario adjustments for one-offs or structural changes.

Top-Down Revenue Forecasts

Idea: Start with the big picture (economy or industry), then work down to the company.

1) GDP-linked method

Example: This year’s sales = $100m → next year = $100m × 1.06 = $106m.

When it helps: mature firms that broadly track the economy; less useful for niche or fast-changing businesses.

2) Industry size × market share

Example: Industry will be £104m next year. You expect the company’s share to rise from 12% → 13%.
Revenue = 13% × £104m = £13.52m (about +12.7% growth from £12m).

Why it’s good: Macro-consistent and quick. Cross-check your bottom-up model against this.

Bottom-Up Revenue Forecasts

Idea: Build from company drivers—the stuff managers control—and add them up.

  1. Price × Volume (P × Q)
    • Forecast average selling price and units separately, then multiply.
    • Example: 1.2m phones × $250 ASP = $300m.
  2. By product/segment/region
    • Forecast each line (phones, tablets, services; or Americas, EMEA, APAC), then sum.
  3. Capacity-based
    • Manufacturing: Units = Capacity × Utilization; Revenue = Units × Price.
    • Retail: #Stores × Sales per store (separate mature vs new stores).
    • Hotels: Rooms × Occupancy × ADR.
  4. Yield-based (financials)
    • Banks: Average loans × Yield = interest income; Deposits × Cost = interest expense.
    • Asset managers: AUM × Fee rate.

A step-by-step bottom-up build

Bottom-up mini-example (retail)

Top-down check: if industry grows 4%, your 9% is believable because you’re adding stores (market share up).

Recurring vs Nonrecurring Items

Recurring = normal, repeatable revenue likely to continue (subscriptions, everyday sales).
Nonrecurring = one-off spikes (special bulk order, FX windfall, litigation settlement, temporary COVID surge).

Golden rule: Don’t bake one-offs into your run-rate. Model them on a separate line.

Example: Last year’s $200m includes a $20m one-time deal.

If management labels something “nonrecurring” every year, assume it’s recurring and treat it in the base.

Historical Results, Base-Rate Convergence, Guidance & Judgment

1) Historical results

2) Historical base-rate convergence (mean reversion)

Example: Company margin 18%, industry median 10% → fade to 16% → 13% → 10% over 3 years.

3) Management guidance

4) Analyst discretionary (judgment)

Handling risk: scenarios that change drivers (not just a plug)

Risks to consider:

Common mistakes (and how to avoid them)

Key takeaways

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