‘Thinslicing’ connects the data, to the behaviour that creates it

If you’re here for the two examples of companies that improved customer service by allowing people (customers) to talk to people (employees), highlighted in red – and the 2nd example is in the 3rd comment. You can ignore the stuff about thinslicing:-)

To explain why I like the term thinslicing first take a look at the cool piece about data interpretation written today by Lithium’s Dr Michael Wu, including this neat illustration:

Then consider this, that my response to reading this blog post clarified a key thing I have been trying to say. Firstly, that I’ve come to term the business objective of finding the “interpretable, relevant and novel” in data as Michael terms it – through a combination of art and science – namely that of thinslicing.

thinslicing

But now I’ve made the next step. Identifying the value of thinslicing lies in the elegant and powerful way the term thinslicing connects the approach to data analytics to the behaviour that creates that data – namely with the thinslicing of online consumers who “tend to ignore most information available and instead ‘slice off’ a few relevant information or behavioral cues that are often social to make intuitive decisions,” as Brian Solis puts it. 

But perhaps it would help if I made clear what I don’t mean by thinslicing as a strategic tool, is that summed by nicely in these two paragraphs written by Bob Thompson on the CustomerThink community:

“Despite our best efforts to collect and analyze data, good business decisions will always include elements of judgement, intuition or just plain luck. Many day-to-day decisions are made with little or no thought, because the option selected just seems “right.” Gut-feel decisions might be examples of what Malcolm Gladwell called “thin-slicing” in his provocative 2005 bestseller Blink.

“However, the best decision can sometimes be counter-intuitive. For example, the financial services firm Assurant Solutions wanted to improve its “save” rate on customers calling in to cancel their protection insurance. The industry’s conventional wisdom, which resulted in 15-16% retention rates, was to focus on reducing wait time to boost customer satisfaction. But data analysis found a solution that tripled the retention rate: matching customer service reps with customers based on rapport and affinity.”

What I mean is the approach to data as you outline above which I categorize as thinslicing, coupled with the way consumers make purchasing decisions – which like good business “will always include elements of judgment, intuition or just plain luck”.

In other words by thinslicing, rather than using intuition to make decisions, I mean adopting a strategy which is based on the understanding that by connecting the means of analyzing the data with the way the data is created by customers.

The question then is why? While it may be clever to see a way which logically connects the way to analyse data with the way it’s created, why is that potentially so useful to a business? Now there’s a good question. The obvious answer is that by aligning the analytic method used by your business, with the way the data is created by your customers, you are going to produce better results in terms of both better quality actionable recommendations which also produce an increase in ROI. How does that sound?

Update: so there’s a nice response from Dr Michael Wu on that question of linking the too together, the way you approach the data, with the way its created, that connects the two ends of the spectrum together:

Good data scientists must know everything that happen to the data, from its creation, all the way to the point where they get their hands on the data. It is actually a pretty standard practice for hardcore financial/business analysts. Not only you need to “connecting the means of analyzing the data with the way the data is created,” you must know everything that happen to the data along the way, until the data reaches you (or the analyst). Only then can you be certain that your analysis is not biased or confounded by something before you get your hands on it. In statistics term, only then can you know the confidence interval of your result.

Thinslicing The Hunger Games

Plenty has been written about the significant role played by a carefully organised and orchestrated social campaign for The Hunger Games. So I’ll simply jump to my ‘thinslice,’ namely how the movie marketers used fan response to tweak as they went along. First of all though consider that this process is much like gaming company wooga carefully monitors user response to tweak aspects of its online games to help boost engagement and thus ROI.

Secondly, to get back to The Hunger Games, and to illustrate what this means – the value of feedback from fans – to be able to optimise your campaign here’s a key quote from Lionsgate’s senior vice president for digital marketing Danielle DePalma:

“What seemed to work the best, too, was fan-created content. I mean, the Peeta memes were always the top performers. That’s how we were really learning about what our audience liked most, through those Facebook results.” This character-focused social media strategy is also backed up by Crimson Hexagon’s analysis of the factors impacting on the success of Julian Fellowes, creator of the popular period drama ‘Downton Abbey’, with the US version, ‘The Gilded Age’ soon to be launched:

“Our analysis indicates that in order for Fellowes to recreate “Downton Abbey” with “The Gilded Age,” he must develop compelling, witty characters with strong moral convictions.”

In other words (ref: my previous post on the value of thinslicing), joining together how your audience behaves (qualitative) with what the data tells you (quantitative), gives you the intelligence to optimise your campaign as you go along – providing you possess the level of organisation and flexibility to allow that to happen (context) effectively. That’s what we’ve been doing at Sony EU in Q3 to good effect too, on the back of the colossal success of ‘Skyfall’.

What this means is that social media marketeers have to think and act on fan data much more like online gaming companies if they are going to both engage their customer base, and deliver real returns.