Data driven
decision making has been the mantra of most good CEOs and CMOs over the better
part of the last decade. They want all
marketing decisions to be based on solid data, which had previously not been available,
but is today in high amounts. But, data
can be deceiving. It may lead you in one
direction, when in fact the right answer may be completely in the opposite
direction. Allow me to explain with this
case study from my Restaurant Furniture Plus
business.
The Marketing Strategy When We Acquired the
Company
We acquired
Restaurant Furniture Plus in 2018. Up
until that point, the founder was largely dependent on advertising in the
Google Shopping section, with product listings of all their SKUs. I was curious why they were not advertising
in the Google Search section with keywords, and her response was “we tried for
a few months, but the data could not prove it was actually working, so we
pulled the plug.” I was hopeful, that
was an upside opportunity for us, if we could figure it out.
Our Marketing Strategy Soon After We
Acquired the Company
One of the
first things we did when we started our own marketing efforts was to build out
our list of keywords and begin advertising in the Google Search section (while
keeping our Google Shopping campaign live).
We thought of all the possible keywords around our products, including
chairs, tables, stools, etc., and all variations of those words, including extensions
for restaurant, hospitality, wholesale, commercial, foodservice, etc.
Our Initial Results Were Not Great
We were
perplexed; our initial results were exactly the same as the founders’ results
when she had tested Google Search. The
conversion data in Google was telling us it wasn’t working and our agency
recommended we shut it off. But, that
made no sense to me. I know we had
tripled our marketing spend overall, and I could see our revenues rapidly
growing with that spend. So, I decided
to dig a little deeper into the data.
What We Learned from the Original Data
When I
started to “peel back the layers of the onion”, interesting insights were
identified. First of all, the overall
campaign was not working, but there were pieces that were. For example, generic words like “dining
chairs” were not working, because it was largely consumers looking for
furniture for their homes, and all the competitive bidders for that space, like
Wayfair, Pottery Barn and Pier One, were talking the advertising costs up to
unprofitable levels. But, specific words
like “restaurant booths” were doing much better in helping us get to our desired
restaurant targets. So, we decided to
put all our efforts on those more directly targeted words, and shut off
everything else.
Secondly, we
uncovered a major attribution problem.
Our customers were using multiple devices, starting from a Google search
with their mobile phones, but buying from us from their work computers when
they got back to the office, where we losing the tracking of where the lead
really originated from. So, we
immediately turned on Google attribution modeling tools for them to help us
learn that our return on ad spend (ROAS) was closer to a profitable 6x, than
the unprofitable 2x the original reports were showing, with the proper marketing
attribution tracking in place.
And lastly,
we were managing our agency to optimize the wrong data metric. We were pushing them to drive an immediate
ROAS. The problem with that was the only
transactions that happened immediately, were the small ticket online ecommerce
orders worth $500 each. Not the big $5,000
offline orders we wanted to be closing, which had a longer 2-3 month sales
cycle. We immediately shifted gears, and
told our agency not to worry about immediate ROAS (we would track that in 3-4
months). Instead, the only data point we
care about, is driving big ticket leads into our sales pipeline (that we know
won’t close for 2-3 months). In this
case, patience for proving ROAS would be a virtue.
What Happened After We Changed Our Data
Focus
Once we
uncovered the above learnings and implemented the above changes, amazing things
started to happen. Instead of us leaning
towards stopping our Google Search marketing efforts based on the initial poor
data-driven results, we actually uncovered the true power of the Google Search
campaign and started to accelerate our efforts there (completely the opposite
of what we would have done based on the preliminary look at the data). And, as a result, our revenues started to
accelerate with more big ticket leads coming into the business. Yes, we had to be patient, waiting for those
leads to close over 2-3 months, but our pipeline had never been bigger or
healthier, and revenues soon followed.
An Interesting Twist
With these
changes, our desired leads were accelerating so fast, that our sales team asked
us to “pull off the gas”, to let them catch up.
That allowed us to test something we had never done before in our
history—what would happen if we shut off Google Shopping, the main driver of
the business to date. I’ll tell you what
happened. The business got materially
more efficient. Our marketing spend went
down, our average order size went up, our quantity of phone calls and orders
went down as we lost low-ticket consumers (allowing us to operate with fewer
staff), our ROAS started to grow, and our revenues/profits started to grow with
a clearer big-ticket focus. We were
doing a lot more, with a lot lower investment.
The Google Shopping channel that had been our focus for years, was never
turned back on, and we doubled down on Google Search. Completely the opposite from where we were
heading, all with a little bit of common sense and a clearer analytical lens.
Concluding Thoughts
So, yes,
data is really important for your business.
But, which data points you manage towards, and how you study the data,
can make or break your success. For as
much as we would like to turn our marketing efforts into a science, it is still
very much an art, knowing the right probing questions to ask and still
following your internal gut. This case
study was an example of Leonardo Da Vinci (art) trumping Albert Einstein
(science). Take these learnings into
your own business, and make sure you have a good balance of both art and
science in your decision making.
For future posts, please follow me on Twitter at: @georgedeeb.