Recommender Systems – An Introduction Dietmar Jannach, Markus Zanker, Alexander Felfernig, Gerhard Friedrich Cambridge University Press Which digital.

Slides:



Advertisements
Similar presentations
Opportunities for the Use of Recommendation and Personalization Algorithms in meLearning Environments Tom E. Vandenbosch World Agroforestry Centre (ICRAF)
Advertisements

Recommender Systems & Collaborative Filtering
Content-based Recommendation Systems
Fawaz Ghali Web 2.0 for the Adaptive Web.
AVATAR: Advanced Telematic Search of Audivisual Contents by Semantic Reasoning Yolanda Blanco Fernández Department of Telematic Engineering University.
A Graph-based Recommender System Zan Huang, Wingyan Chung, Thian-Huat Ong, Hsinchun Chen Artificial Intelligence Lab The University of Arizona 07/15/2002.
UCLA : GSE&IS : Department of Information StudiesJF : 276lec1.ppt : 5/2/2015 : 1 I N F S I N F O R M A T I O N R E T R I E V A L S Y S T E M S Week.
Hybrid recommender systems Hybrid: combinations of various inputs and/or composition of different mechanism Knowledge-based: "Tell me what.
Hybrid recommendation approaches
Collaborative Filtering Sue Yeon Syn September 21, 2005.
X-Informatics Case Study: e-Commerce and Life Style Informatics: Recommender Systems I February Geoffrey Fox
AVATAR An Improved Solution for Personalized TV based on Semantic Inference Yolanda Blanco Fern á ndez, Jos é J. Pazos Arias, Mart í n L ó pez Nores, Alberto.
1 Pertemuan 21 Software Agents for E-Commerce Matakuliah: M0284/Teknologi & Infrastruktur E-Business Tahun: 2005 Versi: >
Agent Technology for e-Commerce
Web Mining Research: A Survey
Solutions for Personalized T-learning Alberto Gil Solla Department of Telematic Engineering University of Vigo (Spain) EuroITV 2005: the 3rd European Conference.
Information Access Douglas W. Oard College of Information Studies and Institute for Advanced Computer Studies Design Understanding.
Recommender Systems; Social Information Filtering.
Recommender systems Ram Akella November 26 th 2008.
Personalizing the Digital Library Experience Nicholas J. Belkin, Jacek Gwizdka, Xiangmin Zhang SCILS, Rutgers University
Algorithms for Efficient Collaborative Filtering Vreixo Formoso Fidel Cacheda Víctor Carneiro University of A Coruña (Spain)
12 -1 Lecture 12 User Modeling Topics –Basics –Example User Model –Construction of User Models –Updating of User Models –Applications.
Relevant words extraction method for recommender system Presentation slides.
E-learning Activities Recommender System (ELARS)
Chapter 12 (Section 12.4) : Recommender Systems Second edition of the book, coming soon.
A year 1 computer userA year 2 computer userA year 3 computer user Algorithms and programming I can create a series of instructions. I can plan a journey.
Consumer Behavior, Market Research
The 2nd International Conference of e-Learning and Distance Education, 21 to 23 February 2011, Riyadh, Saudi Arabia Prof. Dr. Torky Sultan Faculty of Computers.
Recommender Systems: An Introduction to the Art Tony White
Challenges in Information Retrieval and Language Modeling Michael Shepherd Dalhousie University Halifax, NS Canada.
Personalization of the Digital Library Experience: Progress and Prospects Nicholas J. Belkin Rutgers University, USA
Beyond Intelligent Interfaces: Exploring, Analyzing, and Creating Success Models of Cooperative Problem Solving Gerhard Fischer & Brent Reeves.
Recommender systems Drew Culbert IST /12/02.
Agenda  Summary and outlook –Summary –Outlook –References.
Personalization Technologies: A Process-Oriented Perspective Communications of the ACM (October 2005) Presented By Gediminas Adomavicius, Alexander Tuzhilin.
Toward the Next generation of Recommender systems
Personalized Search Xiao Liu
Nigel Koay, Pavandeep Kataria, and Radmilla Juric, Dipl.-Ing. University of Westminster, London, United Kingdom Telemedicine and e-Health.
The Structure of Information Retrieval Systems LBSC 708A/CMSC 838L Douglas W. Oard and Philip Resnik Session 1: September 4, 2001.
Personalized Interaction With Semantic Information Portals Eric Schwarzkopf DFKI
Objectives Objectives Recommendz: A Multi-feature Recommendation System Matthew Garden, Gregory Dudek, Center for Intelligent Machines, McGill University.
Recommender Systems. Recommender Systems (RSs) n RSs are software tools providing suggestions for items to be of use to users, such as what items to buy,
Consumer Behavior and Loyalty. Electronic CommercePrentice Hall © Learning about Consumer Behavior Online A Model of Consumer Behavior Online –The.
Pairwise Preference Regression for Cold-start Recommendation Speaker: Yuanshuai Sun
Juhaida Abdul Aziz Parilah M Shah Rosseni Din Rashidah Rahamat.
Use of Agents in ECommerce Product Search/Identification (eg “Eyes” by amazon) Information Brokering Automated Negotiation Web Marketing.
User Modeling and Recommender Systems: Introduction to recommender systems Adolfo Ruiz Calleja 06/09/2014.
Ontological user profiling seminar Ontological User Profiling in Recommender Systems Stuart E. Middleton IT Innovation Dept of Electronics and.
Ranking of Database Query Results Nitesh Maan, Arujn Saraswat, Nishant Kapoor.
Recommendation Systems By: Bryan Powell, Neil Kumar, Manjap Singh.
Navigation Aided Retrieval Shashank Pandit & Christopher Olston Carnegie Mellon & Yahoo.
Hybrid Recommendation Danielle Lee April 20, 2011.
Ass. Prof. Dr. Özgür KÖKALAN İstanbul Sabahattin Zaim University.
Presented By: Madiha Saleem Sunniya Rizvi.  Collaborative filtering is a technique used by recommender systems to combine different users' opinions and.
Context-driven Access to Personalized Digital Multimedia Libraries Invited Talk at the 1st International Conference on Digital Libraries New Dehli, India.
Collaborative Filtering - Pooja Hegde. The Problem : OVERLOAD Too much stuff!!!! Too many books! Too many journals! Too many movies! Too much content!
Recommendation Systems ARGEDOR. Introduction Sample Data Tools Cases.
Designing a framework For Recommender system Based on Interactive Evolutionary Computation Date : Mar 20 Sat, 2011 Project Number :
COMP423 Intelligent Agents. Recommender systems Two approaches – Collaborative Filtering Based on feedback from other users who have rated a similar set.
Decision-Making in Recommender Systems: The Role of User's Goals and Bounded Resources Paolo Cremonesi Antonio Donatacci Franca Garzotto Robert Turrin.
Recommender systems 06/10/2017 S. Trausan-Matu.
Recommender Systems 11/04/2017
Recommender Systems & Collaborative Filtering
Preface to the special issue on context-aware recommender systems
Personal Assistants for the Web: An MIT Perspective
Movie Recommendation System
Recommender Systems Copyright: Dietmar Jannah, Markus Zanker and Gerhard Friedrich (slides based on their IJCAI talk „Tutorial: Recommender Systems”)
A Glimpse of Recommender Systems on the Web
Recommender System.
Filtering and Recommendation
Presentation transcript:

Recommender Systems – An Introduction Dietmar Jannach, Markus Zanker, Alexander Felfernig, Gerhard Friedrich Cambridge University Press Which digital camera should I buy? What is the best holiday for me and my family? Which is the best investment for supporting the education of my children? Which movie should I rent? Which web sites will I find interesting? Which book should I buy for my next vacation? Which degree and university are the best for my future?

Agenda Introduction Problem domain Purpose and success criteria Paradigms of recommender systems Collaborative Filtering Content-based Filtering Knowledge-Based Recommendations Hybridization Strategies

Introduction

Problem domain Recommendation systems (RS) help to match users with items Ease information overload Sales assistance (guidance, advisory, persuasion,…) RS are software agents that elicit the interests and preferences of individual consumers […] and make recommendations accordingly. They have the potential to support and improve the quality of the decisions consumers make while searching for and selecting products online. (Xiao & Benbasat 20071) Different system designs / paradigms Based on availability of exploitable data Implicit and explicit user feedback Domain characteristics (1) Xiao and Benbasat, E-commerce product recommendation agents: Use, characteristics, and impact, MIS Quarterly 31 (2007), no. 1, 137–209

Purpose and success criteria (1) Different perspectives/aspects Depends on domain and purpose No holistic evaluation scenario exists Retrieval perspective Reduce search costs Provide "correct" proposals Users know in advance what they want Recommendation perspective Serendipity – identify items from the Long Tail Users did not know about existence Could a RS be a persuasive technology? In fact depending on the application area RS are deployed to:

Purpose and success criteria (2) Prediction perspective Predict to what degree users like an item Most popular evaluation scenario in research Interaction perspective Give users a "good feeling" Educate users about the product domain Convince/persuade users - explain Finally, conversion perspective Commercial situations Increase "hit", "clickthrough", "lookers to bookers" rates Optimize sales margins and profit

Recommender systems RS seen as a function Given: Find: User model (e.g. ratings, preferences, demographics, situational context) Items (with or without description of item characteristics) Find: Relevance score. Used for ranking. Relation to Information Retrieval: IR is finding material [..] of an unstructured nature [..] that satisfies an information need from within large collections [..]. (Manning et al. 20081) (1) Manning, Raghavan, and Schütze, Introduction to information retrieval, Cambridge University Press, 2008

Paradigms of recommender systems Recommender systems reduce information overload by estimating relevance

Paradigms of recommender systems Personalized recommendations

Paradigms of recommender systems Collaborative: "Tell me what's popular among my peers"

Paradigms of recommender systems Content-based: "Show me more of the same what I've liked"

Paradigms of recommender systems Knowledge-based: "Tell me what fits based on my needs"

Paradigms of recommender systems Hybrid: combinations of various inputs and/or composition of different mechanism

Outlook Part I (Basic Concepts) Part II (Recent Research Topics) Basic paradigms of collaborative, content-based, and knowledge-based recommendation, as well as hybridization methods. Explaining the reasons for recommending an item Experimental evaluation Part II (Recent Research Topics) How to cope with efforts to attack and manipulate a recommender system from outside, supporting consumer decision making and potential persuasion strategies, recommendation systems in the context of the social and semantic webs, and the application of recommender systems to ubiquitous domains