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Personalization in E-commerce Applications

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Presentation on theme: "Personalization in E-commerce Applications"— Presentation transcript:

1 Personalization in E-commerce Applications
Presented by Ingrid Liao 2018/11/23 Personalization in E-commerce Applications

2 Personalization in E-commerce Applications
Topics E-commerce (EC) Adaptation Frameworks for EC website development Trends in e-commerce applications Reminder 2018/11/23 Personalization in E-commerce Applications

3 Personalization in E-commerce Applications
E-commerce (EC) 2018/11/23 Personalization in E-commerce Applications

4 E-commerce (EC): Introduction
Definition: the conducting of business communication and transactions over networks and through computers Buying and selling of goods and services All aspects of business interaction, two levels: Business to Business e-commerce (B2B) Business to Consumer e-commerce (B2C) ( Source: Glossary of IT & Internet Terms) 2018/11/23 Personalization in E-commerce Applications

5 E-commerce (EC): Advantages
Geographical and time zone distance are no longer important Presentation of products and services in a web-based catalog is an effective way to publish information at low costs 2018/11/23 Personalization in E-commerce Applications

6 E-commerce (EC): Problems & Solutions
Lack of face to face dialog Good EC product candidates: software, music, book, high-tech products Good EC service candidates: information, booking, shipping services Problematic candidates: dress, insurance One size fits all catalog Personalization Allowing individuals to customize website appearance and functionality 2018/11/23 Personalization in E-commerce Applications

7 Personalization in E-commerce Applications
Adaptation 2018/11/23 Personalization in E-commerce Applications

8 Adaptable versus Adaptive
Adaptation decided by user Lower-level feature Adaptive Adaptation performed by system in an automated way 2018/11/23 Personalization in E-commerce Applications

9 Factors for Adaptivity
User Device Context of use 2018/11/23 Personalization in E-commerce Applications

10 Personalization in E-commerce Applications
User Characteristics User characteristics Knowledge & skills Interests & preferences Needs about disability Goals B2C e-commerce Complex products/services Category or properties Accessible services Application domain 2018/11/23 Personalization in E-commerce Applications

11 Personalization in E-commerce Applications
Type of Devices Environment data PC, laptop, mobile phone, PDA, on-board device, … Different characters Screen size Computation and memory capabilities I/O mechanism Connection speed, bandwidth 2018/11/23 Personalization in E-commerce Applications

12 Personalization in E-commerce Applications
Context of Use Broad Physical context User location (most popular context feature) Environment conditions Social Context Social community or group Task being performed 2018/11/23 Personalization in E-commerce Applications

13 Personalization in E-commerce Applications
What is Adapted? Suggestion of product/service (content recommendation) Recommender Tailored to user/device/context characteristics Configuration guide Presentation of product/service Media, presentation styles User interface (structure) Layout e.g. information & navigation structure Adaptation features 2018/11/23 Personalization in E-commerce Applications

14 More HCI, Less Adaptation
Accessibility 3D, virtual reality UI Usability Guidelines e.g. Serco Users w/ special needs Emotional buying style Being usable is the 1st step for being successful 2018/11/23 Personalization in E-commerce Applications

15 Frameworks for EC website development
2018/11/23 Personalization in E-commerce Applications

16 Personalization in E-commerce Applications
Merchant Systems Facilitate creation and management of electronic catalogs Support transactional, secure services and integration with legacy software Only basic personalization features, e.g. product recommendation Personalization strategies, e.g. BroadVision Push: recommend information and access Pull: handle user request in a personalized way Quantifier matching “Quantifier matching”, a filtering strategy, allowing companies to target content delivery, access to applications by using quantifies that match appropriate content and capabilities 2018/11/23 Personalization in E-commerce Applications

17 Personalized Product Recommendation
Enhance recommendation capabilities Interactive: user search according to own selection criteria, e.g. dynamic taxonomies Inference: based on user behavior Recommendation techniques Collaborative filtering: analyzing similarities in different people’s purchase history, e.g. Amazon Content-based filtering: analyzing product properties similar to individual’s past purchase Taking indirect users into account 2018/11/23 Personalization in E-commerce Applications

18 Collaborative versus Content-based filtering
Pros Items as elementary entities Cons “Bootstrapping” problems: minimum number of ranking Sparse user-rank matrix Content-based Pros Successfully recommend new items Cons Information must be available User behavior monitor Similar items 2018/11/23 Personalization in E-commerce Applications

19 How to Enhance Customer’s Trust in Recommender
Transparency and explanation Right amount of information Negotiation between customer and system Explanation of recommendation 2018/11/23 Personalization in E-commerce Applications

20 Customer Information Sharing
Increase knowledge about common customers Points for attention Respect customer’s privacy preferences Mutual trust between service providers Misuse Competitors 2018/11/23 Personalization in E-commerce Applications

21 Personalized Product Info Presentation
Individual customer’s interests & preferences Dynamically generated product descriptions in electronic catalogs How? Individual user model Different levels of detail Information on demand Customized compare table Example: SeTA system 2018/11/23 Personalization in E-commerce Applications

22 Personalized Product Presentation Example
For layperson, customers with low receptivity and minimal background in telecommunication products: a few features are described using simple terminology 2018/11/23 Personalization in E-commerce Applications

23 Personalized Product Presentation Example
Highly receptive user: more detailed and technical descriptions are generated for expert customers 2018/11/23 Personalization in E-commerce Applications

24 Personalized Product Presentation Example
Customized compare table Enable user to check product similarities and differences important to him/her Unobtrusively identify user priorities 2018/11/23 Personalization in E-commerce Applications

25 Customer Relationship Management (CRM)
One-to-one interaction Ultimate goal: profit increase Individual and personalized interaction Customer satisfaction Long-term relationship with customers Increase customer loyalty Accurate user model Supplement the lack of direct and personal contact with a human being 2018/11/23 Personalization in E-commerce Applications

26 Personalization in E-commerce Applications
Mass Customization Production of product/services tailored to specific customer needs, maintaining mass production efficiency and costs Past: off-the-shelf goods Good Enhance relationship between customer & vendor Limitation Costly and require expertise knowledge in configuration from scratch 2018/11/23 Personalization in E-commerce Applications

27 Mass Customization Example: Footwear
2018/11/23 Personalization in E-commerce Applications

28 Trends in e-commerce applications
2018/11/23 Personalization in E-commerce Applications

29 Personalization in E-commerce Applications
Ubiquitous Computing Possibility of accessing a serve anytime, anywhere and exploiting different types of (mobile) devices Adaptation in particular to context of use and device specific requirements Context-aware Applications Example: mobile guides Ability to integrate different adaptation strategies 2018/11/23 Personalization in E-commerce Applications

30 Personalization in E-commerce Applications
M-commerce Commercial transactions performed by exploiting wireless devices Support e-commerce transactions by providing information access and promotion Information about user’s local context Timely, relevant, focused services Physical context Type of activity 2018/11/23 Personalization in E-commerce Applications

31 M-commerce Services and Applications
(Source: Grami and Schell) 2018/11/23 Personalization in E-commerce Applications

32 Low Acceptance of Mobile Devices
Technical limitation of mobile devices High cost yet poor quality services Lack of standards and protocols Individual’s attitudes User’s goal 2018/11/23 Personalization in E-commerce Applications

33 Design Elements of M-commerce Interface
2018/11/23 Personalization in E-commerce Applications (Source: Lee and Benbasat)

34 M-commerce: Adaptation
Adapting product/service presentation to screen size Adapting layout of user interface to characteristics of device 2018/11/23 Personalization in E-commerce Applications

35 Personalization in E-commerce Applications
Reminder 2018/11/23 Personalization in E-commerce Applications

36 Personalization in E-commerce Applications
Not a goal, but Add values to CRM by supporting long-term relationship Quality of the offer if tailored to customer needs Usability if make navigation easier Back-office integration 2018/11/23 Personalization in E-commerce Applications


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