SlideShare a Scribd company logo
1 of 18
Download to read offline
Slide notes will help you understand what was said during the conference.




                                                                            1
Geddy Van Elburg’s presentation mentioned the importance of average order
value. In this presentation you’ll learn if leveraging your AOV can be beneficial
for you.




                                                                                    2
Everybody wants to be like Amazon and cross-sell products like crazy.


Amazon makes 20-30% of its sales from recommendations.


Only 16% of people go to Amazon with explicit intent to buy something.
Source: Toby Segaran, Ravi Pathak
http://www.slideshare.net/ravipathak1/liftsuggest-at-a-conference




                                                                         3
Not a lot of website take care of their related products, even if their e-
commerce platform allows to manage relations easily.


The weakest point is human patience to fill in related products. Like you can
see in this case.


I completely understand, why they don’t care about it. It is quite difficult to
manage connections of 20 000 products.


Start with a minimum level of categories which should be perfected. But what
products to connect together?




                                                                                  4
There are several levels of cross-selling connections which you can read
about in every theoretical article.


What we found effective is to analyze your historical transactions and see
what customers wanted naturally.


Like in this example, where we don’t cross sell ovens with induction hobs or
fridges, but with some basic baking tins. But it makes sense.


When you’re buying an oven, you probably want to bake in it. So why don’t
you grab some nice tin that you can be sure that fits into your oven?




                                                                               5
So far you haven’t seen anything advanced. We just want to recommend to
the customer some products that are really relevant.


If you want to start connecting dots even in your store, use your current data
and knowledge.


It is possible to understand what products and product categories to focus on
from historical data and knowledge of business context.




                                                                                 6
You may think that analyzing your data is something too complicated.


Online marketers are usually scared of any advanced analytics that is not
directly visible in Google Analytics as it is too technical or too robust to
accomplish.


Don’t worry about that. I want to show you basic step-by-step tutorial how to
analyze your data.


Get your hands dirty and dive into data!




                                                                                7
You all probably use e-commerce tracking in Google Analytics for tracking
your orders or other type of transactions.


That’s great, because you already have a huge amount of data to analyze.


I personally love using Excellent Analytics as a tool to get my e-commerce
data into Excel where I do two basic things:


1) I start looking at the data. You can see that some of the rows have
   different color, because those categories were sold within the same
   transaction. This will be the base for our cross-selling analysis.


2) The second point is that I clean the data. In Czech republic there is some
   kind of recycling tax for electric good that the customer has to pay. For
   cross-selling analysis I’m not interested in those fees, so I wipe them out.




                                                                                  8
Don’t worry, I don’t want you to start programming not even trying to read
what is on the screenshot.


But we need somehow to analyze what products or product categories were
related in our orders. So I recommend you to use the software called R. It is
completely free and although it looks very technical, it is quite easy to use a
statistical library that will help you find strong associations in your orders.


On my last slide I put a link to an excellent and short article about how to do
precisely this analysis. I’m sure you will make it in less than one hour.


This is the real result from one of our client’s e-commerce data. Some minutes
before we were talking about ovens and other products for baking. You can
see that customers who are buying installed ovens are also buying induction
hobs. The confidence metric shows us that it is not that true vice versa, so
customers buying induction hobs are not buying installed ovens that much.


You can see that it is very clearly stated what product categories are related.
We don’t have customers that are buying from completely different categories,
but only very related goods. This is very important fact to recognize!




                                                                                  9
Now how do you know that it is worthy to start relating your products?


We’ll go back into Excel and with an easy pivot table we’ll divide our
transactions according to the number of items in them.


If we want to estimate how can sales go up with stronger cross-selling, we
should simulate a decrease of items with only one item.


From my simulation you can see how higher average order value helps your
sales.


I chose 12 % as a very conservative estimation based on the confidence
metric that I just showed you.




                                                                             10
Now it’s your turn. As a homework after this presentation, you should try the
cross-sell analysis yourself.


In case you see some associated products, don’t start changing your site
completely. At first, try connecting manually products in top categories. In my
case from the example shown before a minute, I would start with ovens, GSM
phones and compact digital cameras.


If you are sure you can’t handle it manually, there are some services that can
ease you the work.


Lift suggest is one of the examples. It is made by an American-Indian
company Tatvic and they are running those codes in R software on their
servers and if you insert just a small code on your product pages, it will
automatically serve related products.


In any case, I want to show you how easy you can measure if the cross-
selling tools are performing well or not.




                                                                                  11
We’ll switch from e-commerce websites to a slightly different category.


Our company Dobry web organizes a large number of public trainings about
different areas of internet marketing.




                                                                           12
On the training page there is an order form. Before you submit the order, you
can use a nice box for adding one or more training to the order.


On the screenshot you can see that it is a training about Google Analytics and
the visitor is just clicking on a button called Pridat (Add) to add a training
about web copywriting. He will get a nice 15 % discount if he orders two
trainings at once.


We are measuring every click on these Add buttons with Event Tracking in
Google Analytics.




                                                                                 13
If you haven’t worked with Event tracking before, I strongly recommend you
doing that. It is very easy way to measure all interactions on your webpage
that are not related to pageviews.


As we are tracking every click on Add button and even on the button called
Odebrat (Remove), we can see how many visitors have played with our cross-
selling tool. But this doesn’t show us if the tool has helped our visitors to order
more transactions. The real power of this data in Google Analytics lies in the
capability to be connected to visitor goals using the advanced segmentation.




                                                                                      14
These are very important figures. By using advanced segments we can clearly
see how many visits have used the cross-selling tool and how many of them
have actually purchased a training.


Every fourth visit that used cross-selling has converted! It is remarkable!


Now you can see how easy it is to measure the performance and efficiency of
cross-selling tools. I’m pretty sure you can manage to do it yourself.




                                                                              15
What works for Amazon or your competitors doesn’t have to work for you. Try
analyzing your own orders. It will take you just one hour and I think you’ll
have fun as well.


By doing so you will get the picture and see if your store has any potential to
be better at cross-selling.


You can take an opportunity and make your Google Analytics perfect with
Event tracking.


Please, don’t forget to connect your data to the real world. It is really beneficial
to get some real feedback from real customers. You’ll justify if your cross-
selling tools are appropriate for your customers.




                                                                                       16
Twitter: @paveljasek
Email: pavel.jasek@dobryweb.cz


Feel free to email me what have you observed in your data and how well is
your cross-selling doing.


Thank you!




                                                                            17
You can download test set of orders and categories:
http://noca.cz/JBhUTh (CSV, 92 kB)


Save this file as C:./categories.csv


Sample code for R:


install.packages("arules");
library("arules");
txn = read.transactions(file="C:/categories.csv", rm.duplicates= FALSE,
format="single",sep=";",cols =c(1,2));
basket_rules <- apriori(txn,parameter = list(sup = 0.002, conf =
0.06,target="rules"), appearance = list(default = "both"));
inspect(basket_rules);


You can play with sup and conf parameters to adjust support and confidence
threshold.




                                                                             18

More Related Content

What's hot

8tipsforslideshare 140205110030-phpapp01
8tipsforslideshare 140205110030-phpapp018tipsforslideshare 140205110030-phpapp01
8tipsforslideshare 140205110030-phpapp01
凱文 鄭
 
The miller heiman prospecting guide - best practices
The miller heiman   prospecting guide - best practicesThe miller heiman   prospecting guide - best practices
The miller heiman prospecting guide - best practices
Jorge Hilário
 

What's hot (20)

Basic selling skills enas
Basic selling skills enasBasic selling skills enas
Basic selling skills enas
 
What is B2B sales?
What is B2B sales? What is B2B sales?
What is B2B sales?
 
Retail sales training
Retail sales trainingRetail sales training
Retail sales training
 
Shopify Online Store Presentation – Setup Your Online Store in Minutes
Shopify Online Store Presentation – Setup Your Online Store in MinutesShopify Online Store Presentation – Setup Your Online Store in Minutes
Shopify Online Store Presentation – Setup Your Online Store in Minutes
 
Closing Sales Sample
Closing Sales SampleClosing Sales Sample
Closing Sales Sample
 
Selling skills
Selling skillsSelling skills
Selling skills
 
Sales training
Sales trainingSales training
Sales training
 
5-STEP PROCESS FOR HANDLING OBJECTIONS
5-STEP PROCESS FOR HANDLING OBJECTIONS5-STEP PROCESS FOR HANDLING OBJECTIONS
5-STEP PROCESS FOR HANDLING OBJECTIONS
 
8tipsforslideshare 140205110030-phpapp01
8tipsforslideshare 140205110030-phpapp018tipsforslideshare 140205110030-phpapp01
8tipsforslideshare 140205110030-phpapp01
 
Sales 101
Sales 101Sales 101
Sales 101
 
AWS IoT Lab Introduction
AWS IoT Lab IntroductionAWS IoT Lab Introduction
AWS IoT Lab Introduction
 
Sales Training - Sales Coaching
Sales Training - Sales CoachingSales Training - Sales Coaching
Sales Training - Sales Coaching
 
The Gong.io Demo Call Training Deck
The Gong.io Demo Call Training DeckThe Gong.io Demo Call Training Deck
The Gong.io Demo Call Training Deck
 
Effective Selling Skill
Effective Selling SkillEffective Selling Skill
Effective Selling Skill
 
The miller heiman prospecting guide - best practices
The miller heiman   prospecting guide - best practicesThe miller heiman   prospecting guide - best practices
The miller heiman prospecting guide - best practices
 
Sales Objections Linkedin
Sales Objections LinkedinSales Objections Linkedin
Sales Objections Linkedin
 
Sales
SalesSales
Sales
 
5 tools for an awesome presentation-By Samid Razzak
5 tools for an awesome presentation-By Samid Razzak5 tools for an awesome presentation-By Samid Razzak
5 tools for an awesome presentation-By Samid Razzak
 
Value Based Selling™ business model - Intro
Value Based Selling™  business model - IntroValue Based Selling™  business model - Intro
Value Based Selling™ business model - Intro
 
Automatic machine learning (AutoML) 101
Automatic machine learning (AutoML) 101Automatic machine learning (AutoML) 101
Automatic machine learning (AutoML) 101
 

Viewers also liked (6)

Smart Innovation Platform Flier - Grindstaff
Smart Innovation Platform Flier - GrindstaffSmart Innovation Platform Flier - Grindstaff
Smart Innovation Platform Flier - Grindstaff
 
Actuarial Challenge 2015 Price Indemnity Puzzle Contest Insurance Report
Actuarial Challenge 2015 Price Indemnity Puzzle Contest Insurance ReportActuarial Challenge 2015 Price Indemnity Puzzle Contest Insurance Report
Actuarial Challenge 2015 Price Indemnity Puzzle Contest Insurance Report
 
Community Insurance by The Goat trust
Community Insurance by The Goat trustCommunity Insurance by The Goat trust
Community Insurance by The Goat trust
 
Efficient Point Cloud Pre-processing using The Point Cloud Library
Efficient Point Cloud Pre-processing using The Point Cloud LibraryEfficient Point Cloud Pre-processing using The Point Cloud Library
Efficient Point Cloud Pre-processing using The Point Cloud Library
 
Want to work for The Insurance Barn
Want to work for The Insurance BarnWant to work for The Insurance Barn
Want to work for The Insurance Barn
 
Credit insurance Solutions
Credit insurance SolutionsCredit insurance Solutions
Credit insurance Solutions
 

Similar to How to start with cross-sell analysis

5 ways to increase your affiliate commissions
5 ways to increase your affiliate commissions5 ways to increase your affiliate commissions
5 ways to increase your affiliate commissions
Chidi Nwadiuto
 

Similar to How to start with cross-sell analysis (20)

Moz holy grail of e commerce conversion optimization
Moz holy grail of e commerce conversion optimizationMoz holy grail of e commerce conversion optimization
Moz holy grail of e commerce conversion optimization
 
The Complete Inventory Management Guide for Retailers
The Complete Inventory Management Guide for RetailersThe Complete Inventory Management Guide for Retailers
The Complete Inventory Management Guide for Retailers
 
5 ways to increase your affiliate commissions
5 ways to increase your affiliate commissions5 ways to increase your affiliate commissions
5 ways to increase your affiliate commissions
 
eCommerce for Dummies
eCommerce for DummieseCommerce for Dummies
eCommerce for Dummies
 
Affiliate marketing
Affiliate marketingAffiliate marketing
Affiliate marketing
 
New FunnelMates App
New FunnelMates AppNew FunnelMates App
New FunnelMates App
 
Internet expert witness
Internet expert witnessInternet expert witness
Internet expert witness
 
Web designers
Web designersWeb designers
Web designers
 
Coaching de equipos
Coaching de equiposCoaching de equipos
Coaching de equipos
 
Hotels in copenhagen
Hotels in copenhagenHotels in copenhagen
Hotels in copenhagen
 
Oracle
OracleOracle
Oracle
 
BrainRider: B2B Pipeline Marketing "How To" Presentation With Notes (12 Slides)
BrainRider: B2B Pipeline Marketing "How To" Presentation With Notes (12 Slides)BrainRider: B2B Pipeline Marketing "How To" Presentation With Notes (12 Slides)
BrainRider: B2B Pipeline Marketing "How To" Presentation With Notes (12 Slides)
 
Building the perfect_sales_funnel
Building the perfect_sales_funnelBuilding the perfect_sales_funnel
Building the perfect_sales_funnel
 
Brother fax machine
Brother fax machineBrother fax machine
Brother fax machine
 
E commerce best practices
E commerce best practicesE commerce best practices
E commerce best practices
 
The bridge village
The bridge villageThe bridge village
The bridge village
 
2019-08 Digital Marketing Tools - August 2019
2019-08 Digital Marketing Tools - August 20192019-08 Digital Marketing Tools - August 2019
2019-08 Digital Marketing Tools - August 2019
 
3d wooded puzzles
3d wooded puzzles3d wooded puzzles
3d wooded puzzles
 
15 ways artificial intelligence is helping e commerce marketers
15 ways artificial intelligence is helping e commerce marketers15 ways artificial intelligence is helping e commerce marketers
15 ways artificial intelligence is helping e commerce marketers
 
Danish
DanishDanish
Danish
 

More from Sherpas

More from Sherpas (20)

Milan zeman content-first-2019
Milan zeman content-first-2019Milan zeman content-first-2019
Milan zeman content-first-2019
 
Jiří Suchý: Design sprint jako součást plánování marketingové kampaně
Jiří Suchý: Design sprint jako součást plánování marketingové kampaněJiří Suchý: Design sprint jako součást plánování marketingové kampaně
Jiří Suchý: Design sprint jako součást plánování marketingové kampaně
 
Milan Zeman: SEO jako multiobor
Milan Zeman: SEO jako multioborMilan Zeman: SEO jako multiobor
Milan Zeman: SEO jako multiobor
 
Luboš Plotěný & Tomáš Hrivnák: Ten novej název je divnej (BRANDstorming 2018)
Luboš Plotěný & Tomáš Hrivnák: Ten novej název je divnej (BRANDstorming 2018)Luboš Plotěný & Tomáš Hrivnák: Ten novej název je divnej (BRANDstorming 2018)
Luboš Plotěný & Tomáš Hrivnák: Ten novej název je divnej (BRANDstorming 2018)
 
Tomáš Turek: Jak jsme rozjeli kampaně v maďarštině (WebTop100 2016)
Tomáš Turek: Jak jsme rozjeli kampaně v maďarštině (WebTop100 2016)Tomáš Turek: Jak jsme rozjeli kampaně v maďarštině (WebTop100 2016)
Tomáš Turek: Jak jsme rozjeli kampaně v maďarštině (WebTop100 2016)
 
Jiří Suchý: CX hodnoty a mapování cest v digi (CX konference 2017)
Jiří Suchý: CX hodnoty a mapování cest v digi (CX konference 2017)Jiří Suchý: CX hodnoty a mapování cest v digi (CX konference 2017)
Jiří Suchý: CX hodnoty a mapování cest v digi (CX konference 2017)
 
Filip Ekl: Analýza konkurence z pohledu UX
 (Klubový večer WebTop100: Konkure...
Filip Ekl: Analýza konkurence z pohledu UX
 (Klubový večer WebTop100: Konkure...Filip Ekl: Analýza konkurence z pohledu UX
 (Klubový večer WebTop100: Konkure...
Filip Ekl: Analýza konkurence z pohledu UX
 (Klubový večer WebTop100: Konkure...
 
Michal Mládek: Human centric culture (UX a digitální inovace)
Michal Mládek: Human centric culture (UX a digitální inovace)Michal Mládek: Human centric culture (UX a digitální inovace)
Michal Mládek: Human centric culture (UX a digitální inovace)
 
Luboš Plotěný: Měření výkonu digitálních kanálů/touchpointů pro E.On (Interne...
Luboš Plotěný: Měření výkonu digitálních kanálů/touchpointů pro E.On (Interne...Luboš Plotěný: Měření výkonu digitálních kanálů/touchpointů pro E.On (Interne...
Luboš Plotěný: Měření výkonu digitálních kanálů/touchpointů pro E.On (Interne...
 
Luboš Plotěný: Měření zákaznické spokojenosti na digitálních touchpointech (K...
Luboš Plotěný: Měření zákaznické spokojenosti na digitálních touchpointech (K...Luboš Plotěný: Měření zákaznické spokojenosti na digitálních touchpointech (K...
Luboš Plotěný: Měření zákaznické spokojenosti na digitálních touchpointech (K...
 
Filip Ekl: Uživatelské testování stránek z pohledu použitelnosti (Wordcamp Pr...
Filip Ekl: Uživatelské testování stránek z pohledu použitelnosti (Wordcamp Pr...Filip Ekl: Uživatelské testování stránek z pohledu použitelnosti (Wordcamp Pr...
Filip Ekl: Uživatelské testování stránek z pohledu použitelnosti (Wordcamp Pr...
 
Katalog školení Dobrého webu
Katalog školení Dobrého webuKatalog školení Dobrého webu
Katalog školení Dobrého webu
 
Jak na transakční e-maily
Jak na transakční e-mailyJak na transakční e-maily
Jak na transakční e-maily
 
Testování bankomatu
Testování bankomatuTestování bankomatu
Testování bankomatu
 
Efektivnější inovace díky uživatelům
Efektivnější inovace díky uživatelůmEfektivnější inovace díky uživatelům
Efektivnější inovace díky uživatelům
 
Jak přežít redesign obsahu obřího webu
Jak přežít redesign obsahu obřího webuJak přežít redesign obsahu obřího webu
Jak přežít redesign obsahu obřího webu
 
User experience: Ideální web pro uživatele
User experience: Ideální web pro uživateleUser experience: Ideální web pro uživatele
User experience: Ideální web pro uživatele
 
Jak nastartovat vlastni obsahovy marketing
Jak nastartovat vlastni obsahovy marketingJak nastartovat vlastni obsahovy marketing
Jak nastartovat vlastni obsahovy marketing
 
Nástroje pro váš marketing - Zn. Zdarma
Nástroje pro váš marketing - Zn. ZdarmaNástroje pro váš marketing - Zn. Zdarma
Nástroje pro váš marketing - Zn. Zdarma
 
Jak měřit a vyhodnocovat obsahový marketing
Jak měřit a vyhodnocovat obsahový marketingJak měřit a vyhodnocovat obsahový marketing
Jak měřit a vyhodnocovat obsahový marketing
 

Recently uploaded

EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Earley Information Science
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
Enterprise Knowledge
 

Recently uploaded (20)

Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?What Are The Drone Anti-jamming Systems Technology?
What Are The Drone Anti-jamming Systems Technology?
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
 
Evaluating the top large language models.pdf
Evaluating the top large language models.pdfEvaluating the top large language models.pdf
Evaluating the top large language models.pdf
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 

How to start with cross-sell analysis

  • 1. Slide notes will help you understand what was said during the conference. 1
  • 2. Geddy Van Elburg’s presentation mentioned the importance of average order value. In this presentation you’ll learn if leveraging your AOV can be beneficial for you. 2
  • 3. Everybody wants to be like Amazon and cross-sell products like crazy. Amazon makes 20-30% of its sales from recommendations. Only 16% of people go to Amazon with explicit intent to buy something. Source: Toby Segaran, Ravi Pathak http://www.slideshare.net/ravipathak1/liftsuggest-at-a-conference 3
  • 4. Not a lot of website take care of their related products, even if their e- commerce platform allows to manage relations easily. The weakest point is human patience to fill in related products. Like you can see in this case. I completely understand, why they don’t care about it. It is quite difficult to manage connections of 20 000 products. Start with a minimum level of categories which should be perfected. But what products to connect together? 4
  • 5. There are several levels of cross-selling connections which you can read about in every theoretical article. What we found effective is to analyze your historical transactions and see what customers wanted naturally. Like in this example, where we don’t cross sell ovens with induction hobs or fridges, but with some basic baking tins. But it makes sense. When you’re buying an oven, you probably want to bake in it. So why don’t you grab some nice tin that you can be sure that fits into your oven? 5
  • 6. So far you haven’t seen anything advanced. We just want to recommend to the customer some products that are really relevant. If you want to start connecting dots even in your store, use your current data and knowledge. It is possible to understand what products and product categories to focus on from historical data and knowledge of business context. 6
  • 7. You may think that analyzing your data is something too complicated. Online marketers are usually scared of any advanced analytics that is not directly visible in Google Analytics as it is too technical or too robust to accomplish. Don’t worry about that. I want to show you basic step-by-step tutorial how to analyze your data. Get your hands dirty and dive into data! 7
  • 8. You all probably use e-commerce tracking in Google Analytics for tracking your orders or other type of transactions. That’s great, because you already have a huge amount of data to analyze. I personally love using Excellent Analytics as a tool to get my e-commerce data into Excel where I do two basic things: 1) I start looking at the data. You can see that some of the rows have different color, because those categories were sold within the same transaction. This will be the base for our cross-selling analysis. 2) The second point is that I clean the data. In Czech republic there is some kind of recycling tax for electric good that the customer has to pay. For cross-selling analysis I’m not interested in those fees, so I wipe them out. 8
  • 9. Don’t worry, I don’t want you to start programming not even trying to read what is on the screenshot. But we need somehow to analyze what products or product categories were related in our orders. So I recommend you to use the software called R. It is completely free and although it looks very technical, it is quite easy to use a statistical library that will help you find strong associations in your orders. On my last slide I put a link to an excellent and short article about how to do precisely this analysis. I’m sure you will make it in less than one hour. This is the real result from one of our client’s e-commerce data. Some minutes before we were talking about ovens and other products for baking. You can see that customers who are buying installed ovens are also buying induction hobs. The confidence metric shows us that it is not that true vice versa, so customers buying induction hobs are not buying installed ovens that much. You can see that it is very clearly stated what product categories are related. We don’t have customers that are buying from completely different categories, but only very related goods. This is very important fact to recognize! 9
  • 10. Now how do you know that it is worthy to start relating your products? We’ll go back into Excel and with an easy pivot table we’ll divide our transactions according to the number of items in them. If we want to estimate how can sales go up with stronger cross-selling, we should simulate a decrease of items with only one item. From my simulation you can see how higher average order value helps your sales. I chose 12 % as a very conservative estimation based on the confidence metric that I just showed you. 10
  • 11. Now it’s your turn. As a homework after this presentation, you should try the cross-sell analysis yourself. In case you see some associated products, don’t start changing your site completely. At first, try connecting manually products in top categories. In my case from the example shown before a minute, I would start with ovens, GSM phones and compact digital cameras. If you are sure you can’t handle it manually, there are some services that can ease you the work. Lift suggest is one of the examples. It is made by an American-Indian company Tatvic and they are running those codes in R software on their servers and if you insert just a small code on your product pages, it will automatically serve related products. In any case, I want to show you how easy you can measure if the cross- selling tools are performing well or not. 11
  • 12. We’ll switch from e-commerce websites to a slightly different category. Our company Dobry web organizes a large number of public trainings about different areas of internet marketing. 12
  • 13. On the training page there is an order form. Before you submit the order, you can use a nice box for adding one or more training to the order. On the screenshot you can see that it is a training about Google Analytics and the visitor is just clicking on a button called Pridat (Add) to add a training about web copywriting. He will get a nice 15 % discount if he orders two trainings at once. We are measuring every click on these Add buttons with Event Tracking in Google Analytics. 13
  • 14. If you haven’t worked with Event tracking before, I strongly recommend you doing that. It is very easy way to measure all interactions on your webpage that are not related to pageviews. As we are tracking every click on Add button and even on the button called Odebrat (Remove), we can see how many visitors have played with our cross- selling tool. But this doesn’t show us if the tool has helped our visitors to order more transactions. The real power of this data in Google Analytics lies in the capability to be connected to visitor goals using the advanced segmentation. 14
  • 15. These are very important figures. By using advanced segments we can clearly see how many visits have used the cross-selling tool and how many of them have actually purchased a training. Every fourth visit that used cross-selling has converted! It is remarkable! Now you can see how easy it is to measure the performance and efficiency of cross-selling tools. I’m pretty sure you can manage to do it yourself. 15
  • 16. What works for Amazon or your competitors doesn’t have to work for you. Try analyzing your own orders. It will take you just one hour and I think you’ll have fun as well. By doing so you will get the picture and see if your store has any potential to be better at cross-selling. You can take an opportunity and make your Google Analytics perfect with Event tracking. Please, don’t forget to connect your data to the real world. It is really beneficial to get some real feedback from real customers. You’ll justify if your cross- selling tools are appropriate for your customers. 16
  • 17. Twitter: @paveljasek Email: pavel.jasek@dobryweb.cz Feel free to email me what have you observed in your data and how well is your cross-selling doing. Thank you! 17
  • 18. You can download test set of orders and categories: http://noca.cz/JBhUTh (CSV, 92 kB) Save this file as C:./categories.csv Sample code for R: install.packages("arules"); library("arules"); txn = read.transactions(file="C:/categories.csv", rm.duplicates= FALSE, format="single",sep=";",cols =c(1,2)); basket_rules <- apriori(txn,parameter = list(sup = 0.002, conf = 0.06,target="rules"), appearance = list(default = "both")); inspect(basket_rules); You can play with sup and conf parameters to adjust support and confidence threshold. 18