A Better Way to Value Companies
Using this calculator
This calculator can be used for either private or public companies. While it can break at the edges (e.g., companies growing 5x year on year), it otherwise provides a normalized valuation for companies at any stage in their lifecycle, and any industry.
Input | Comments |
Annualized Revenue | For most businesses, last-twelve-months revenue is probably the easiest number to use. High-growth SaaS businesses can also use the latest monthly revenue * 12. |
Growth Rate | Current, annualized growth rate, adjusting for any "lumpiness" or seasonality. E.g., if a non-seasonal business grows 10% quarter-on-quarter, growth rate = (1.10^4) - 1 = 46%. But if the business is facing atypical growth or seasonality, use the most reasonable proxy for current growth rate. |
Gross Margin | Most people when evaluating companies donât take this into account, but this is a critical criterion. All revenue is not equal. |
Market Cycle | Mid-2022 through 2023, we're in a "tight" market, a big shift from "inflated" in early 2022. This is a big contributor to declining valuations across private & public markets. This is pre-set to the current market, but itâs an input field since toying with it may be interesting, to understand valuation in different market environments. |
âMultiple | This is a function of business quality. The market average is 6x. The major contributors are: - durability of the business (especially thanks to moat) - customer retention and sales efficiency - capital intensiveness - strength of balance sheet A useful proxy among SaaS businesses is net dollar retention. Businesses that generate similar revenue over time without high sales & marketing spend (NDR = 100%) receive a 6x; companies with 130% NDR might command an 8-10x multiple. †2x: Companies that are in trouble (sometimes worse, if on track for bankruptcy). ~ 4x: Companies that have non-recurring revenue, or have to spend a lot on sales / marketing just to keep revenue from declining. They also often have high CapEx. ~ 6x: Companies that have a solid, quality business. Usually top 3 in their category, and are efficient businesses. Stable revenue that is recurring or âlooksâ recurring. ~ 8x: Companies with a strong moat, an elite brand, and very high customer retention. Their net dollar retention is often >120%. ~ 10x: This is exceedingly rare. Less than 2-3% of companies justify this. They are basically impossible to rip out, and have near-unassailable moats. â„ 14x: Fewer than 1% of companies command a multiple outside the range of the slider. These are âN of 1â companies, where the market treats them as completely special, unlike any other. Apple, Tesla, and Nvidia enjoyed this status in 2023. While this multiple tends to be stable for a given company, fundamental shifts in the prospects of a business can cause a 14x to go to a 10x, or a 4x to rise to a 6x. |
Over the years, weâve used many valuation multiples â P/B, P/E, and P/S â that sometimes stop being useful, as market environments change.
In the last ~20 years, with the advent of high-growth, high-margin companies, these historical multiples have not really worked reliably to value and compare companies.
Below is a new methodology â the PCG multiple â as a more useful metric.
- A Better Way to Value Companies
- Using this calculator
- A Short-ish History of Valuation Multiples
- The Amazon Case Study
- Market commentators who focused on profits through 2015 missed the pointâŠ
- ⊠However, as weâve all seen, things played out very differently
- Amazonâs P/E has pretty much never been below 50 over the last 15 years
- A Better Multiple for Valuing Companies
- My Experience in Dealing with Valuations
- Reasoning that Gross Profit and Growth are Essential Inputs
- PCG = Price / Compounding Gross Profit
- The Actual Multiple Serves as a Proxy for "Quality" of a Company
- Places where the PCG approach breaks
- Why Gross Profit? Where PCG fits in when analyzing financial statements.
- Other Thoughts on the Benefits of PCG
A Short-ish History of Valuation Multiples
Every asset is only as valuable as its expected return. When comparing companies, investors are considering âhow much cash do I believe this company can generate long-term, to reward my investment todayâ?
This concept is known as long-term Free Cash Flow, and is basically the only thing that matters in predicting a companyâs âterminal valueâ. So, every valuation multiple is simply a way to go âupstreamâ on the predictors of FCF.
The journey in a financial statement looks roughly something like this:
â Revenue
less: Cost of Goods Sold
â â Gross Profit less: Operating Costs (R&D, S&M, G&A)
â â â Operating Profit (EBIT) less: Interest & Taxes
â â â â Net Income less: Capital Expenditures, etc.
â â â â â Free Cash FlowAssets are used to produce Revenue.
Revenue net of the âcost of goods soldâ (e.g., raw material inputs) results in Gross Profit.
Gross Profit net of âoverhead/fixedâ costs (R&D, sales, HR, office costs) is Operating Income.
Operating Income after deducting taxes, interest, etc., is Net Income.
Net Income after deducting inflows / outflows of capital is Free Cash Flow.
âAssets of $X â FCF of $Y (and so Price of $Z).â
The Price to Book ratio worked, because for a long time almost every large, important company was a manufacturing concern: CapEx-heavy, localized, and depending on asset utilization and throughput. A companyâs value was derived from how it could turn its assets into profit.
Itâs a perfectly acceptable way to value something like an industrial goods company or utility company: an enterprise that is slow-growing, stable, and throws off cash (much like a bond or an income-generating rental property).
Then, we saw the rise of business models that relied more on go-to-market rather than production; a global, decentralized supply chain rather than a consolidated one. Assets didnât matter as much anymore. Did you know that Pabst Blue Ribbon doesnât make its own beer? And Red Bull doesnât have any production facilities? Those are extreme examples, but many companies donât own or direct the facilities that generate most of the âvalueâ that they sell; Apple, for example, outsources glass production to Corning, semiconductor chip production to TSMC, and assembly to Foxconn.
âNet Income of $X â FCF of $Y (and so Price of $Z).â
Hence, P/E became popular for several decades. Weâve also seen evolutions on this framework:
- EV/EBITDA (for more⊠creative financial managers)
- CAPE (cyclically-adjusted P/E ratio, part of the work for which Robert Shiller won the Nobel Prize) which normalized the P/E ratio for inflation (and hence for market cycles to a large extent)
- PEG (Price / Earnings Growth) ratio which projected earnings forward 12 months and used that as the denominator, to normalize for growing companies
P/E hence broke (often) over the last 20 years, because of companies that were high growth and unprofitable for a long time. Most of these were technology companies, because software business models were inherently âscalableâ (i.e., you could 10x or 100x the revenue of the company with minimal additional costs, on an incredibly fast timeframe) in a way that other non-physical business models just werenât.
Not all of these companies would end up being valuable. But itâs pretty clear that many such companies do become incredible profit-generating enterprises. This has come to a crescendo with âtechnologyâ companies taking over the top 4 spots by market cap in the US, all formed within the last ~40 years (Apple, Microsoft, Amazon, Alphabet), accounting for ~20% of the entire market cap of the S&P 500.
The Amazon Case Study
A stark example of this failure of P/E is that Amazon, which â for 20 years after its formation â didnât really generate any profits, despite massive revenue growth and obviously (in retrospect) strong fundamentals.
Market commentators who focused on profits through 2015 missed the pointâŠ
⊠However, as weâve all seen, things played out very differently
Amazonâs P/E has pretty much never been below 50 over the last 15 years
If itâs that disconnected from the median (20-30x), whatâs even the point of using the metric?
Take a look at the scale of the scale of the axis in the graph below! Itâs easy to miss. There were also long stretches of nonsensical multiples (200 to 1,000x+); and it just completely broke in 2013 and 2015 when Amazon had brief periods of unprofitability.
Importantly, this happened because the exclusive emphasis on current earnings, as represented by P/E. Hence, this metric has completely failed for several decades in Amazonâs history. To quote Ben Graham (can any post on valuations be complete without the godfather đ):
In the short run, the market is a voting machine but in the long run it is a weighing machine.
30 years is a pretty âlong runâ. Itâs probably not that the market and analysts have been wrong for decades and the ratio has been right⊠itâs probably the other way around. You could write similar case studies for many, many other companies.
âRevenue of $X â FCF of $Y (and so Price of $Z).â
But, as youâll see below, this multiple always had intrinsic issues with it.
At first glance, P/S solves for this issue! Itâs been consistently in the ~2-4x range, which makes it much more reasonable, much less wild.
- It didnât solve the issue of signal to noise in multiples, and arguably was worse than P/E when considering the entire market
- It didnât account for growth rate at all, which is one of the biggest contributors to the crazy divergence in P/E ratios we were seeing
- It didnât account for â in fact, it might even have encouraged bad behavior by â a crop of companies that looked like good businesses based on their revenue and growth, but had terrible unit economics and no clear path to profitability⊠even in a multi-year or decade-long horizon. The ability to generate and grow revenue is a necessary but insufficient condition for a sustainable business foundation (one that leads to long-term cash flows).
A Better Multiple for Valuing Companies
My Experience in Dealing with Valuations
During my time in consulting I built many, many DCF models and perused hundreds of financial statements and 10-Ks for (mostly profitable) Fortune 500 companies. Subsequently, I moved to Silicon Valley, and spent a lot of time thinking about valuations for high-growth unprofitable companies. Iâve overseen or directly closed nearly $1 billion in secondary transactions in a range of unicorns, and handled dealflow more than an order of magnitude greater than that (when I was COO at the pre-eminent secondary marketplace, Forge). I also invested in 100+ late-stage and early-stage startups personally.
During that time, the talk of valuations and multiples helped click something into place for me. Because these were all unprofitable companies (pre-IPO unicorns), investors exclusively discussed P/S, but it varied wildly⊠some public companies (Nutanix, Box, etc.) were trading at 3-4x sales⊠but many public and private companies were at 50x+. With early stage companies, some of these multiples got even crazier⊠100x, 300x revenues, sometimes more!
Reasoning that Gross Profit and Growth are Essential Inputs
This obviously doesnât seem like a reliable metric, but people were comfortable relying on it all the same. When you asked these (smart) investors and observers âwhy does company A trade at 10x sales and company B trade at 60x sales?â, the answer fell into one of two buckets:
- B is growing so much faster than A!
- B has much better unit economics / fundamentals than A!
It struck me as very odd that both of these were quantitative metrics, but somehow were treated as black box, abstract concepts that couldnât fit into a formula. Instead, they did have mental heuristics which exist for a reason, which would allow you to justify:
- two different SaaS companies, A growing at 30% and B growing at 200% being valued at 10x vs. 60x
- two different companies of identical growth rate (letâs say 100% growth rate): A in a brutal, 15% margin business, and B being a great business with 90% margins being valued at 10x vs. 60x
And when you account for that, you end up with the PCG multiple.
Most importantly, by accounting for these factors, the PCG multiple allows a market observer to compare
- across any industry
- across any stage or growth rate
- across stages in the economic cycle
- with a tight multiple ranging from ~2 to ~12 (>>> than comparing 10x vs. 1,000x!)
PCG = Price / Compounding Gross Profit
Price = Enterprise Value of the company (i.e., Market Cap - Net Cash on the balance sheet)
Compounding Gross Profit = Gross Profit * (1 + Growth Rate)áŽș
Company A | Company B | |
Market Cap | $1.5B | $1.5B |
Annualized Revenue | $100M | $1B |
Gross Margin | 90% | 25% |
Growth Rate | 50% | 5% |
Net Income | $5M | $75M |
P/E Multiple | 300x (!) | 20x |
P/S Multiple | 15x | 1.6x |
PCG Multiple | 4.9 | 5.5x |
Where N varies based on the market environment. This is the equivalent to the adjustment provided by the the Shiller P/E ratio (i.e., this factor acts as a cyclical adjustment).
- In a steady state or typical market N = 3.
The Actual Multiple Serves as a Proxy for "Quality" of a Company
N has changed from 4 to 2, and since then the calculations have not been updated; but valuations have also fallen, so these should hold up relatively well; but some multiples may have shifted from a 6 to a 5, for example.Most companies trade at a multiple of ~6. For example, Nike, Oracle, Accenture, Google, Microsoft, all trade around here, fairly consistently.
However, they range from 2 to 10, based on the "quality" of the company. Some examples below.
Businesses with low switching costs, highly capital expenditures, or a weak moat often have an M of 4-5. For example, Box, Dropbox, Amazon, T-Mobile, AT&T, Autozone, Costco, IBM, WMT, etc.
- Note that this doesn't mean they're a bad company. Everyone would say that Amazon and Costco are incredible companies with a strong moat. However, they do face some structural disadvantages (specifically around how capital intensive they are). But they both have better multiples (~4.5-5) than WMT, which is at ~3.
- As you might predict, some companies in here are unexpected. Facebook has consistently traded in the 4-5x P/GG range for years now. It's been probably 6-7 years since it traded at 6-8. Is this because of public perception and/or regulatory scrutiny in recent years? Hard to say.
Businesses with strong moats, network effects, negative net churn, etc. often trade at an M of 8 or sometimes even 10. For example, 3M, Apple, Coca-Cola, etc.
- Unsurprisingly, these happen to overlap heavily with the kinds of businesses Warren Buffett likes. Interestingly Apple traded at ~7-8x P/GG multiples in 2016, then dipped and stayed at 5.5-6 between late 2016 and mid 2018, which was exactly Berkshire's buying window. In recent years it's been at 9-12, and he's been trimming his stake.
- And again, some businesses show up in this category when I didnât expected it. Adobe, ADP, and Waste Management, for example, trade at ~8-10. Sure, they're sticky business models, but is Adobe stickier than Oracle, for example? I'm not sure.
Places where the PCG approach breaks
- Hypergrowth companies. If a company is quadrupling year on year, squaring or cubing it (or more!) naturally results in absurd numbers (a 500x+ gross profit multiple).
- This is of course a challenge with any exponential function; at an extreme, it goes asymptotic.
- One workaround that appears to work is to cap the (1+Growth)^N value; itâs a clumsy but workable solution.
- The Valuation Calculator accounts for this cap.
- Fact of the matter is, companies that are growing at an insane pace are simply hard to value.
- Companies with dramatic fluctuations in gross profit. Tesla drives the model absolutely crazy, and so did Boeing during its rocky 737MAX recalls.
- Financial services companies. Gross Profit is often hard to calculate for these companies (indeed, it is often not even reported on financial statements), so other multiples such as P/E might still be the right way to evaluate them. Using revenue as a proxy for GP works sometimes but not always, in a pinch.
Why Gross Profit? Where PCG fits in when analyzing financial statements.
When assets were a reliable predictor of long-term cashflows, P/B made sense. It was an imprecise predictor, but investing methodologies were still rudimentary, and it was good enough for that era.
Assets â Revenue â Gross Profit â Operating Income â Net Income â Free Cash Flow
When companies proved you could generate value and profits in asset-light models, and investing became more sophisticated with things like DCF models, P/E became the go-to; investors ignored the antecedents of Assets & Revenue, and focused on Profits.
Assets â Revenue â Gross Profit â Operating Income â Net Income â Free Cash Flow
However, when it became clear that some companies reinvested profits, or built foundations for a long time based on strong fundamentals, then only looking at current profits seemed short-sighted⊠not long-enough horizon, and ignoring critical inputs. So we pulled back a bit.
Assets â Revenue â Gross Profit â Operating Income â Net Income â Free Cash Flow
And now we find ourselves in a situation where Revenue is a fuzzy, imprecise predictor, because Revenue often but not always leads to Profits; is still very high standard deviation; and all of these multiples ignore growth rates. So where to from here? Given that the underlying logic of this âvalue chainâ still holds, the secret to effectively value companies still sits somewhere in there.
As discussed above, P&L typically breaks down into:
â Revenue
less: Cost of Goods Sold
â â Gross Profit less: Operating Costs (R&D, S&M, G&A)
â â â Operating Profit (EBIT) less: Interest & Taxes
â â â â Net Income less: Capital Expenditures, etc.
â â â â â Free Cash FlowLetâs start over and figure out which metric is the most âpredictiveâ or critical from a first principles perspective.
Weâve already established why P/B and Asset-based evaluations donât work; and why Revenue alone is a bad indicator of future success, because it doesnât account for unit economics, and the signal to noise is no better.
â Revenue
less: Cost of Goods Sold
less: Operating Costs (R&D, S&M, G&A)
â â â Operating Profit (EBIT) less: Interest & Taxes
â â â â Net Income less: Capital Expenditures, etc.
â â â â â Free Cash FlowWhile EV/FCF is really the only metric that matters (âin how many years will I get paid back for purchasing this share of stock?â), it really only applies for thoroughly mature companies which operate âlike a bondâ, and whose CapEx are either fixed (i.e., maintenance mode or zero). Really, what weâre trying to predict here is (Future EV) / (Future FCF), and in a weird way, higher CapEx can lead to future FCF, so lower FCF could be â in some cases, like Amazon â inversely correlated with Future EV.
To put it differently, EV/FCF doesnât work well for any company that is trying to grow or invest (which every company aspires to). So letâs rule out FCF as the âkey metric.â
Interest & Taxes are either a) exogenous or b) a function of the companyâs financing structure (debt vs. equity), but not necessarily a predictor of the quality of a companyâs business in the long term. This is also part of the reason why P/E isnât always sufficiently predictive. So letâs rule out Net Income as the âkey metric.â
less: Operating Costs (R&D, S&M, G&A)
â Operating Profit (EBIT) less: Interest & Taxes
less: Capital Expenditures, etc.
So that leaves Operating Profit and Gross Profit.
If youâve ever run a DCF model for a company over a 5-10+ year horizon, thereâs a fun fact youâll recognize right away⊠the difference between the two, which is operating costs (R&D, S&M, G&A) are always a âplugâ. Theyâre always a placeholder value that isnât quite flat but of course doesnât scale linearly with revenue. So⊠itâs always a made up value.
So if youâre really trying to estimate long-term-anything, why on earth should that be a major determining factor?
Those are also â if invested in correctly â the departments that âscale well.â 10xing your revenue shouldnât require 10xing your HQ staff (thatâs why itâs a plug in DCF models, after all). If you trust a companyâs execs to build their organizations well, your operating costs pay off in the 2-5+ year horizon via better innovation, or brand, or operating efficiency.
On the flip side⊠I know from personal experience that optimizing for EBIT and cutting HQ headcount (which happens all too often at stagnating companies in the interest of âshareholder valueâ) is the wrong strategy almost every time. It leads to underinvestment in engineering, or loss of brand value and go-to-market strength, it skinnies out your HR team which leads to crappier employee experiences or bad recruiting, and so on.
So⊠that means that the only predictor of a companyâs long-term free cash flow is not:
- companies that spend on operating costs; that can pay off if done well
- companies that spend on interest (itâs a function of capital structure) or taxes (exogenous)
- companies that spend on CapEx; that can also pay off if done well
It is, in fact, a function of:
- companies that have strong unit economics
Which leaves: Gross Profit as the critical metric.
If you take a step back, this relatively quick calculation (growth rate ^N * gross profit) approximates the recommendations of a full-fledged DCF model; because it gives weight to critical inputs (gross profit and growth rate) and ignores the variables that end up being âplugs,â anyway (operating line items).
No multiple or metric is perfect, but this is why this approach produces a much lower error bar than other typical metrics such as P/E, P/S, etc. This produces a Back of the Envelope Discounted Cash Flow Model, if you will. BOEDCFM doesnât quite roll off the tongue, though, does it? So letâs stick with PCG đ.
Other Thoughts on the Benefits of PCG
Youâre suddenly able to compare a brick-and-mortar retailer to a high-margin software company â something that has never been possible before.
Gross Profit accounts for the fundamentals of a company (specifically, in ensuring that their business model / unit economics are healthy).
If accounting is competent, it factors in the cost of âbuying revenueâ, through promotions, discounts, or other artificial efforts to boost revenue. This was already becoming a factor because of companies in the mid-2010s to âblitzscaleâ by buying revenue.
- When you look at the P&L of a company that hasnât fully matured yet, Gross Profit is probably the best predictor of profitability when they are at scale. The rest of the line items "scale better" (i.e., fall as a percent of sales as a company grows: Sales & Marketing; General & Administrative; Research & Development).
Note: particularly for companies with cyclical revenue (e.g., retail), using LTM (Last 12 Months) gross profit is necessary, instead of annualizing quarterly gross profit.
Variances in the quality of a given business â ability to innovate, brand power, stickiness, operating efficiency, etc. â cannot be folded into the input metrics or existing profit, because those are early investments which take years (sometimes decades) to pay off. Instead, they are usually expressed in the final multiple itself.
No multiple is meant to solve for that "X-factor"; rather, its role is in enabling an investor to normalize valuations across companies so that they can make educated decisions on whether and where to deploy capital.
By accounting for all the other numerical factors, we leave it to the judgment of an investor whether a company has strong or weak fundamentals, as measured by the stickiness of their business model, their capital intensivity, their corporate culture and ability to execute, their brand and IP moat, and so on.
But⊠When looking at S&P 500 P/E ratios over the last 5 years, the mean was 49, the median was 20, and the standard deviation was 620. That's not a typo.