Showing posts with label Technology. Show all posts
Showing posts with label Technology. Show all posts

Sunday, August 21, 2011

Analyzing Tesco - the analytics behind a top-notch loyalty program

My specific interest within predictive analytics have been as much about the technology and the data mining techniques that can be applied to the data, as much as it has been about the business value that can be extracted from the data. With this second interest in mind, I am going to embark on a series of a different kind of blog posts.

Instead of mostly talking about theory, I am going to share examples of how companies are using the power of analytics to know their customers better, anticipate their needs and ultimately become more profitable. One of the beacons in this space on whom many a volume has been written is the Tesco, the UK (and now increasingly international) retailing giant. What I am going to cover in this piece is the Tesco loyalty card, how it works and the different ways in which a retailer can take advantage of the information base created by the card to generate economic value.

First some background. Tesco hired the marketing firm of dunnhumby to develop a new loyalty program, to enable it to grow in the UK market. By 1995, the Clubcard launched with nearly instant success as Tesco enjoyed a large increase in customer loyalty and retention. Within the first five years sales had risen over 50%.

The structure of the card, and how the data is collectedThe data gathering for the loyalty program starts with a typical application which might ask for some basic demographic information such as address, age, gender, the number of members in a household and their ages, dietary habits.. Against this basic information, purchase history is appended. This includes the goods shopped for, and also information such as visit history, both to stores and online.

Next, a number of summary attributes are also computed. These include share of wallet information, information on frequency and duration of visits. Also information on customer preferences and tastes, as determined by some clever cluster analysis based on purchase history of specific fast-moving products. See this link for a review of a book describing the Tesco loyalty program called “Scoring Points”.

Tesco realized that better information leads to better results and created Crucible—a massive database of not only applicant information and purchase history, but also information purchased and collected elsewhere about participating consumers. Credit reports, loan applications, magazine subscription lists, Office for National Statistics, and the Land Registry are all sources of additional information that is stored in Crucible.

To summarize, Tesco maintains information about:
1. Customer demographics
2. Detailed shopping history
3. Purchase tastes, frequency, habits and behaviours
4. Other individual level indicators obtained from public sources

Creating this database is an undertaking in itself. Many organizations realize the value of such detailed data and are able to spend the resources to get it; however, they do such a bad job of integrating the data and making it available to analysts that only a fraction of the power in the data is realized.

Technology challengesWhat were some of the challenges faced from a technology standpoint? To start with, one of scale. Specifically, how to scale up from an analytical lab scale to servicing 10 million customers. In the words of Clive Humby of dunnhumby, “we're very pragmatic, so to begin with, we worked on a sample of data. We'll find the patterns in a sample, and then look for that pattern amongst everybody, rather than just trying to find it in this huge data warehouse.”

Sir Humby has revealed some interesting insights in this interview.

Tesco uses a hybrid mix of technologies: Oracle as the main data warehouse engine, SAS for the actual modeling, and White Cross and Sand Technology as the analytic engine for applying the learnings to larger volumes of data. Additionally, the technology group used a number of home-developed technologies and algorithms. This is a nice blog written by Nick Lansley about the technology choices made by Tesco - with some filtering, of course.


And finally, the business value or the economic benefits
1. LoyaltyThe first clear benefit is customer loyalty and the increased spend that comes from a customer moving most of their purchases on to Tesco. The loyalty program incentivizes customers to steer a greater share of their monthly grocery spend onto Tesco, which in turn explains the increase in market share for Tesco from about 15-20% to about 30% of the total UK market in the period from 1995 to about 2005.This is a clear objective of any loyalty program and Tesco delivers on the business objective brilliantly. Tesco does this by offering vouchers on associated products - so if a family is buying infant formula, it is quite a straightforward decision to offer them discounts on diapers and get the customer to move that part of the purchase also to Tesco.

2. Cross-sellsThe most immediate extension from increasing spend within one product category is cross-selling across product families. So an example of this would be (from the previous example) marketing a college-fund financial product to a family that has newly got into infant food and diapers purchases. The way Tesco would do this, I would imagine, is to have a family or customer level flag for “Has small children” or something of the sort. An alternative would be to see Disney Cruises to a family with small children. In this case, Tesco would not only collect a channel fee from Disney for selling their cruises through its site but also a premium for being demonstrably targeted in their marketing.

3. Inventory, distribution and store network planningThe first two applications are about knowing consumer needs better and targeting available products and services more effectively. The next benefit from this data is from materials movement. By getting a precise handle on demand and particularly, anticipating demand spikes in response to promotions, the company can do an effective job with its demand planning and managing the distribution pipeline efficiently from the (edits begin) manufacturing points to the distribution centers.

Also, based on the demographic (customer self-reported) and public information that is appended to the customer level database, a basis is created for inventory planning. So lets say Tesco wants to open a store in a region where there are a large number of families with young children residing, it becomes possible to anticipate the demand for baby products if a Tesco branch were to be opened in that region and stock up accordingly.

4. Optimal targeting and use of manufacturer promotionsAnother area of value for Tesco is optimal use of manufacturer’s promotions, such as either direct purchase discounts or one-for-many type schemes. At the outset, it might appear that retailers like Tesco would love manufacturer’s coupons and rebates. Woo wouldn’t like it if there was greater foot-traffic and purchase activity that came from a scheme, and all the cost was borne by the manufacturer? In reality though, things are never as simple as that. Retailer don't really want to run too many promotions, because managing promotions (displays, new labeling, frequent restocking, possible overstocking and the cost of damaged or expired inventory) is very labor intensive and also adds to the supply-chain costs.

So one of the areas that Tesco specializes in is promotion optimization. Which means, given the 100s of promotions available at any given point in time, which 25-30 to pick and suugest a price to negotiate with the manufacturer. The optimization is based on:
- The cost of running the promotion including inventory costs and labor costs
- Local geography based factors - what kind of customers shop at a local store and what are their unique preferences
- Ensuring there’s something for everyone - ensuring every customer has a fair chance of getting a few promotional offers, given their typical purchase behaviour

5. Consumer insight generation and marketing those insightsA final area of economic value for Tesco is gleaning higher-level customer insights that other entities would be interested in. For example, Procter and Gamble would be EXTREMELY interested in knowing how households of different sizes and at different points of the economic spectrum buy and use laundry detergent. And how that use changes with seasons, over time and so on. Also, what is the propensity for such customers to buy and use related products such as, say, fabric softeners.

Given Tesco’s vantage point and their detailed view of what a customer’s purchases really looks like, it becomes really easy for Tesco to glean such insights from the data and see the information to a bunch of interested parties. This is another source of economic value for Tesco.

This post is getting really long - so let me stop here and summarize. We just discussed the types of data that is gathered by a top-notch loyalty program like Tesco’s and also what are all the sources of economic value from this data that Tesco gathers. In my next posts, I will talk about the potential value from such a program for Tesco and its comparable costs. What have been some of the unique and honestly hard-to-replicate factors that have helped Tesco succeed in this space. Also, what have been some of the competitive responses and how is this area evolving in the emerging SOcial, LOcal, MObile (or SoLoMo) world.

A set of interesting links about Tesco's loyalty program.
http://www.guardian.co.uk/lifeandstyle/2003/jul/19/shopping.features
http://www.customerthink.com/interview/clive_humby_tesco_shines_at_loyalty
http://blog.ouseful.info/2008/11/06/the-tesco-data-business-notes-on-scoring-points/
http://techfortesco.blogspot.com/

Tuesday, May 4, 2010

Interesting data mining links

1. The NY Times recently had a piece on how data is increasingly part of our life. Link here.

2. The Web Coupon - a new way for retailers to know more about you. Link here.

3. On Principal Components Analysis. Link here.

Saturday, May 1, 2010

The future of publishing - and a new business model

The demise of an ages-old business model and the emergence of a new one to take its place is always an exciting thing to watch - unless you are part of the age-old business model on its way to its demise. There are old assumptions challenged, changes in the way consumers consume, the emergence of a technology trigger, new financing patterns, new winners and losers. Fascinating to someone looking-in from the outside.

An industry that has pretty much been under attack since the coming of the Internet has been the print and the publishing business. But what threatened to be a slow roll of a snowball (obviously to be replaced with new ways of consuming and disseminating information) has taken the form of a rapidly growing avalanche after digitized books and the digital book reader (the Kindle, predominantly) have become mainstream. As is to be expected, there are powerful players working to pull the rug from under the feet of the big publishing and media companies. First Google with wanting to digitize every book ever published. Amazon then came with the Kindle that cut out printing costs from the value chain and make books much more affordable for end-consumers. Of course, the elimination of the printing, warehousing and the physical distribution process would mean massive job-cuts in the big publishing and printing houses, not to mention a necessary shrinking in the margins retained by the publisher from the printing price of the book.

An interesting article in the New Yorker talks about the demise of publishing at the hands of the digital giants in more detail. Link here Amazon, Apple and Google are the big digital players jockeying for position in this market. A few years back, Microsoft would have been a contender as well but repeated failures to crack the consumer space (where MS does not have a monopolist advantage) has resulted in a little more of circumspection.

Wednesday, July 15, 2009

Two great finds for physics fans

Back after a long break in the posts. Call it a mixture of home responsibilities, writer's block and just some plain old laziness.

One of my other interests (apart from statistics and social science) is physics and technology. I really enjoy reading about emerging applications of technology in various spheres of social and economic importance. The Technology Quarterly of the Economist is one of my treasured reads (though I end up reading very little of it, because of me wanting to leave aside "quality time" to do the reading).

I want to share two recent finds in the science and physics space. One is a really good book called "The Great Equations" by Robert Crease. The book covers ten of the seminal equations in physics and basically spins a story around how the equation formulator came about to creating the equation. There is usually a little mathematical proof behind the story usually, but most of the book is about the professional journey made by the scientist from an existing view of the world (or an older paradigm, to be more exact) to a new paradigm. And the paradigm is usually encapsulated in the form of an equation.

I found a couple of aspects about the journey extremely interesting. One, it was fascinating to have a window into the minds of physics greats (Newton, Maxwell, Einstein, Schrodinger, to name a few) and see how they synthesized the various different world views around them to create or arrive at their respective equations. The ability to deal with all the complexity of observed phenomena, the different philosophies and world views and to come up with something as elegant as a great equation, that defines genius for me. The second aspect that I found extremely interesting was that there was usually years and years of experimentation or mathematical work that preceded arriving at the great equation. One might be inclined to think that the great equations (given their utter simplicity) happen through a flash of inspiration. Nothing could be further from the truth.

The next find were the Feynman lectures. Now, many of us have read some of the Feynman lectures or have seen the lectures on a place like Youtube. But how cool would it be to have these lectures be annotated by Bill Gates? Check this link out at the Microsoft Research website. And happy watching!

I am guessing this blog has a fair share of aspiring or one-time physics and engineering fans. How do you keep your engineering bone tickled? I'd love to hear your pet indulgences.

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