SlideShare une entreprise Scribd logo
1  sur  20
Personal Data and User Modelling
           in Tourism
          Ioannis Stavrakantonakis

                STI Innsbruck
       University of Innsbruck, Austria




                ENTER 2013, Innsbruck     1
Data, data.. more data!




©Google, http://www.google.com/about/datacenters


            Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   2
Social Web data
• Facebook: One billion monthly active users,
  (https://www.facebook.com/facebook, October 2012)

• Twitter: Summer Olympics ‘12 in London
  generated 150 million Tweets
  (https://2012.twitter.com/en/pulse-of-the-planet.html)

• Foursquare: A half billion check-ins the last
  3 months, (http://blog.foursquare.com, Jan 17th 2013)


           Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   3
Recommendation systems

Where should you eat for dinner tonight?


             What should you visit in Innsbruck?

Where to go for a drink?


        Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   4
Recommenders examples
Nara.me asks user’s taste about:
• types of restaurants
• cuisines
• location
• 2 restaurants
  in the city


       Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   5
Recommenders examples (cont.)
SUPE by Toyota[1]:
• In-vehicle navigation system recommender
• Collects driver preferences to provide
  personalised POI search results to the
  driver
• Uses GPS logs (historical data)

        Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   6
The Problem
Personal Data in Social Web
• Data is contained within
  disparate silos
Recommendation systems
                                        Everywhere and nowhere,
• User models are trapped in     David Simonds, Economist 2008*

  proprietary data warehouses
• User model properties are not standardised
  in various domains [4]
                              *http://www.economist.com/business/displaystory.cfm?story_id=10880936
           Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck                7
Research Questions
• How could we bring closer the personal
  data of the users and the recommendation
  systems?
• How could we lower the borders among
  the recommenders?
• Which personal data could be used by the
  recommenders in tourism?

        Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   8
Our Approach
• Open User Model
  – Capturing personal data from the Social Web
  – Specific for tourism
  – Enable both personalisation systems and
    travellers to benefit
  – Based on existing ontologies reuse



        Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   9
Our Approach (cont.)
• Aims to
  – facilitate the extraction of personal data from
    Social Web;
  – facilitate the interoperability among
    recommenders in the tourism domain;
  – enable the users to consume personalised
    services from the data that they have already
    shared in the Social Web.

         Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   10
Related work in user modelling
GUMO [6], SWUM[5]:
  – Cover any attribute of a user model for the
    Social Web
  – Not specific for any domain
  – Aim to allow an easy data sharing between
    applications
Mypes[3]:
  – Cross-system user modelling

         Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   11
The methodology
• Define the attributes of the user model. [2]
  –   Basic user characteristics
  –   Interests
  –   Time dimension
  –   Historical data (e.g. visited places)
  –   User’s wishes



           Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   12
The methodology (cont.)
• Following a bottom-up methodology
  1. study the specifications of social networks
     (i.e. Facebook & Foursquare)
  2. extract user attributes related to tourism
     from the data models
  3. map the extracted attributes



         Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   13
User Model for Tourism
User model aspects                    Facebook            Foursquare                   Comments
Personal information                                                                 Name, Email
Marital status                                                                   Spouse, Children
Hometown                                                         
Current city                                                     

Visited POIs                                                                   Coordinates, Name,
                                                                                      Category
POIs to Explore                                                                POIs saved in ToDo
                                                                                        lists
Interests                                                        
Liked locations                                                  
Activities                                                       

                 Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck                  14
User Model for Tourism (cont.)
• Reuse of existing vocabularies
  – FOAF (http://xmlns.com/foaf/spec/)
     • describe basic information about people
     • describe Internet accounts, web-based activities
  – Geo (http://www.w3.org/2003/01/geo/)
     • information about spatially-located things
  – Wi (http://xmlns.notu.be/wi/)
     • describe that a person prefers one thing to another


          Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   15
User Model for Tourism (cont.)
                                         foaf:knows
                             foaf:Person
      wi:preference         foaf:name                                        umt:POI
                            foaf:mbox                                    umt:name
wi:WeightedInterest         foaf:account          umt:hasToDo            umt:category
                                                                         umt:timestamp
                                                 umt:hasVisited          geo:lat
                                                                         geo:long


                                          umt:hasHometown                 umt:Location
                                  umt:hasCurrentLocation                 umt:name
      Property
                                                                         geo:lat
      Subclass of                    umt:likesLocation
                                                                         geo:long




           Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck           16
Conclusion
• The data models of Social Networks are
  very similar regarding the visited places of
  the users.
• Personal data in the Social Web contain
  reusable information for recommendation
  in the tourism domain.
• An approach for the exploitation of this
  data in tourism.
         Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   17
Future steps
• Finalisation of the UMT model
• Exploitation of the Google Latitude data
• Evaluation of the approach and model




        Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   18
Questions?
ioannis.stavrakantonakis@sti2.at
istavrak.com
@istavrak




         Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   19
References
1. Parundekar, R., & Oguchi, K. (2012). Learning Driver Preferences of POIs
   Using a Semantic Web Knowledge System. The Semantic Web: Research and
   Applications.
2. Kang, E., Kim, H., & Cho, J. (2006). Personalization method for tourist point of
   interest (POI) recommendation. Knowledge-Based Intelligent Information and
   Engineering Systems.
3. Abel, F., Herder, E., Houben, G., Henze, N., & Krause, D. (2011). Cross-system
   user modeling and personalization on the social web. UMUAI Journal.
4. Aroyo, L., & Houben, G. (2010). User modeling and adaptive Semantic Web.
   Semantic Web Journal.
5. Plumbaum, T., Wu, S., De Luca, E., & Albayrak, S. (2011). User Modeling for
   the Social Semantic Web. Proceedings of SPIM 2011.
6. Heckmann, D., Schwarzkopf, E., Mori, J., Dengler, D., & Kröner, A. (2007). The
   user model and context ontology GUMO revisited for future Web 2.0
   extensions. Contexts and Ontologies: Representation and Reasoning.

                Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck   20

Contenu connexe

Similaire à Personal Data and User Modelling in Tourism

Predicting Venues in Location Based Social Network
Predicting Venues in Location Based Social Network Predicting Venues in Location Based Social Network
Predicting Venues in Location Based Social Network cscpconf
 
User Category Based Estimation of Location Popularity using the Road GPS Traj...
User Category Based Estimation of Location Popularity using the Road GPS Traj...User Category Based Estimation of Location Popularity using the Road GPS Traj...
User Category Based Estimation of Location Popularity using the Road GPS Traj...Waqas Tariq
 
Location Based Services (LBS) Overview
Location Based Services (LBS) OverviewLocation Based Services (LBS) Overview
Location Based Services (LBS) OverviewMoxie
 
Using Social Networking Data to Understand Urban Human Mobility
Using Social Networking Data to Understand Urban Human Mobility Using Social Networking Data to Understand Urban Human Mobility
Using Social Networking Data to Understand Urban Human Mobility Yuyun Wabula
 
IRJET- Analysis of Trajectories
IRJET- Analysis of TrajectoriesIRJET- Analysis of Trajectories
IRJET- Analysis of TrajectoriesIRJET Journal
 
Travel Recommendation Approach using Collaboration Filter in Social Networking
Travel Recommendation Approach using Collaboration Filter in Social NetworkingTravel Recommendation Approach using Collaboration Filter in Social Networking
Travel Recommendation Approach using Collaboration Filter in Social NetworkingIRJET Journal
 
A Review on Tourist Analyzer
A Review on Tourist AnalyzerA Review on Tourist Analyzer
A Review on Tourist AnalyzerIRJET Journal
 
Snap4City November 2019 Course: Smart City IOT Data Ingestion Interoperabilit...
Snap4City November 2019 Course: Smart City IOT Data Ingestion Interoperabilit...Snap4City November 2019 Course: Smart City IOT Data Ingestion Interoperabilit...
Snap4City November 2019 Course: Smart City IOT Data Ingestion Interoperabilit...Paolo Nesi
 
Kartograph - Urban Mapping with Mobile Augmented Reality
Kartograph - Urban Mapping with Mobile Augmented RealityKartograph - Urban Mapping with Mobile Augmented Reality
Kartograph - Urban Mapping with Mobile Augmented RealityEric Gould
 
VentureLab - Find It!
VentureLab - Find It!VentureLab - Find It!
VentureLab - Find It!zoltanp
 
Big data Analytics for Tourism Destination management by Professor G MIchael ...
Big data Analytics for Tourism Destination management by Professor G MIchael ...Big data Analytics for Tourism Destination management by Professor G MIchael ...
Big data Analytics for Tourism Destination management by Professor G MIchael ...Leisure Solutions®
 
Fosca Giannotti - Università di Pisa & ISTI-CNR - Big Data and Social Data Mi...
Fosca Giannotti - Università di Pisa & ISTI-CNR - Big Data and Social Data Mi...Fosca Giannotti - Università di Pisa & ISTI-CNR - Big Data and Social Data Mi...
Fosca Giannotti - Università di Pisa & ISTI-CNR - Big Data and Social Data Mi...AmbasciatadelCanada
 
2013 khci_virtual space syntax analysis on pervasive social computing
2013 khci_virtual space syntax analysis on pervasive social computing2013 khci_virtual space syntax analysis on pervasive social computing
2013 khci_virtual space syntax analysis on pervasive social computing4dspace
 
Overview of the Research in Wimmics 2018
Overview of the Research in Wimmics 2018Overview of the Research in Wimmics 2018
Overview of the Research in Wimmics 2018Fabien Gandon
 
Sharp Electronic portfolio
Sharp Electronic portfolioSharp Electronic portfolio
Sharp Electronic portfoliox07511963
 
Optimized travel recommendation using location based collaborative filtering
Optimized travel recommendation using location based collaborative filteringOptimized travel recommendation using location based collaborative filtering
Optimized travel recommendation using location based collaborative filteringIRJET Journal
 
IRJET- Location-Based Route Recommendation System with Effective Query Keywords
IRJET- Location-Based Route Recommendation System with Effective Query KeywordsIRJET- Location-Based Route Recommendation System with Effective Query Keywords
IRJET- Location-Based Route Recommendation System with Effective Query KeywordsIRJET Journal
 

Similaire à Personal Data and User Modelling in Tourism (20)

Predicting Venues in Location Based Social Network
Predicting Venues in Location Based Social Network Predicting Venues in Location Based Social Network
Predicting Venues in Location Based Social Network
 
User Category Based Estimation of Location Popularity using the Road GPS Traj...
User Category Based Estimation of Location Popularity using the Road GPS Traj...User Category Based Estimation of Location Popularity using the Road GPS Traj...
User Category Based Estimation of Location Popularity using the Road GPS Traj...
 
Scrlc geo ppt
Scrlc geo pptScrlc geo ppt
Scrlc geo ppt
 
Location Based Services (LBS) Overview
Location Based Services (LBS) OverviewLocation Based Services (LBS) Overview
Location Based Services (LBS) Overview
 
Using Social Networking Data to Understand Urban Human Mobility
Using Social Networking Data to Understand Urban Human Mobility Using Social Networking Data to Understand Urban Human Mobility
Using Social Networking Data to Understand Urban Human Mobility
 
3B_4_Rate-my-place
3B_4_Rate-my-place3B_4_Rate-my-place
3B_4_Rate-my-place
 
IRJET- Analysis of Trajectories
IRJET- Analysis of TrajectoriesIRJET- Analysis of Trajectories
IRJET- Analysis of Trajectories
 
Travel Recommendation Approach using Collaboration Filter in Social Networking
Travel Recommendation Approach using Collaboration Filter in Social NetworkingTravel Recommendation Approach using Collaboration Filter in Social Networking
Travel Recommendation Approach using Collaboration Filter in Social Networking
 
Sub1527
Sub1527Sub1527
Sub1527
 
A Review on Tourist Analyzer
A Review on Tourist AnalyzerA Review on Tourist Analyzer
A Review on Tourist Analyzer
 
Snap4City November 2019 Course: Smart City IOT Data Ingestion Interoperabilit...
Snap4City November 2019 Course: Smart City IOT Data Ingestion Interoperabilit...Snap4City November 2019 Course: Smart City IOT Data Ingestion Interoperabilit...
Snap4City November 2019 Course: Smart City IOT Data Ingestion Interoperabilit...
 
Kartograph - Urban Mapping with Mobile Augmented Reality
Kartograph - Urban Mapping with Mobile Augmented RealityKartograph - Urban Mapping with Mobile Augmented Reality
Kartograph - Urban Mapping with Mobile Augmented Reality
 
VentureLab - Find It!
VentureLab - Find It!VentureLab - Find It!
VentureLab - Find It!
 
Big data Analytics for Tourism Destination management by Professor G MIchael ...
Big data Analytics for Tourism Destination management by Professor G MIchael ...Big data Analytics for Tourism Destination management by Professor G MIchael ...
Big data Analytics for Tourism Destination management by Professor G MIchael ...
 
Fosca Giannotti - Università di Pisa & ISTI-CNR - Big Data and Social Data Mi...
Fosca Giannotti - Università di Pisa & ISTI-CNR - Big Data and Social Data Mi...Fosca Giannotti - Università di Pisa & ISTI-CNR - Big Data and Social Data Mi...
Fosca Giannotti - Università di Pisa & ISTI-CNR - Big Data and Social Data Mi...
 
2013 khci_virtual space syntax analysis on pervasive social computing
2013 khci_virtual space syntax analysis on pervasive social computing2013 khci_virtual space syntax analysis on pervasive social computing
2013 khci_virtual space syntax analysis on pervasive social computing
 
Overview of the Research in Wimmics 2018
Overview of the Research in Wimmics 2018Overview of the Research in Wimmics 2018
Overview of the Research in Wimmics 2018
 
Sharp Electronic portfolio
Sharp Electronic portfolioSharp Electronic portfolio
Sharp Electronic portfolio
 
Optimized travel recommendation using location based collaborative filtering
Optimized travel recommendation using location based collaborative filteringOptimized travel recommendation using location based collaborative filtering
Optimized travel recommendation using location based collaborative filtering
 
IRJET- Location-Based Route Recommendation System with Effective Query Keywords
IRJET- Location-Based Route Recommendation System with Effective Query KeywordsIRJET- Location-Based Route Recommendation System with Effective Query Keywords
IRJET- Location-Based Route Recommendation System with Effective Query Keywords
 

Dernier

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.pdfEnterprise Knowledge
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Scriptwesley chun
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesSinan KOZAK
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking MenDelhi Call girls
 
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 productivityPrincipled Technologies
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024The Digital Insurer
 
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.pptxHampshireHUG
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationSafe Software
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slidespraypatel2
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationMichael W. Hawkins
 
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.pptxEarley Information Science
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilV3cube
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationRadu Cotescu
 
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 SolutionsEnterprise Knowledge
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Allon Mureinik
 
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...gurkirankumar98700
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘RTylerCroy
 
A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024Results
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsMaria Levchenko
 

Dernier (20)

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
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Unblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen FramesUnblocking The Main Thread Solving ANRs and Frozen Frames
Unblocking The Main Thread Solving ANRs and Frozen Frames
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 
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
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
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
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slides
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
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
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of Brazil
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
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
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)
 
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
Kalyanpur ) Call Girls in Lucknow Finest Escorts Service 🍸 8923113531 🎰 Avail...
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 

Personal Data and User Modelling in Tourism

  • 1. Personal Data and User Modelling in Tourism Ioannis Stavrakantonakis STI Innsbruck University of Innsbruck, Austria ENTER 2013, Innsbruck 1
  • 2. Data, data.. more data! ©Google, http://www.google.com/about/datacenters Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 2
  • 3. Social Web data • Facebook: One billion monthly active users, (https://www.facebook.com/facebook, October 2012) • Twitter: Summer Olympics ‘12 in London generated 150 million Tweets (https://2012.twitter.com/en/pulse-of-the-planet.html) • Foursquare: A half billion check-ins the last 3 months, (http://blog.foursquare.com, Jan 17th 2013) Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 3
  • 4. Recommendation systems Where should you eat for dinner tonight? What should you visit in Innsbruck? Where to go for a drink? Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 4
  • 5. Recommenders examples Nara.me asks user’s taste about: • types of restaurants • cuisines • location • 2 restaurants in the city Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 5
  • 6. Recommenders examples (cont.) SUPE by Toyota[1]: • In-vehicle navigation system recommender • Collects driver preferences to provide personalised POI search results to the driver • Uses GPS logs (historical data) Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 6
  • 7. The Problem Personal Data in Social Web • Data is contained within disparate silos Recommendation systems Everywhere and nowhere, • User models are trapped in David Simonds, Economist 2008* proprietary data warehouses • User model properties are not standardised in various domains [4] *http://www.economist.com/business/displaystory.cfm?story_id=10880936 Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 7
  • 8. Research Questions • How could we bring closer the personal data of the users and the recommendation systems? • How could we lower the borders among the recommenders? • Which personal data could be used by the recommenders in tourism? Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 8
  • 9. Our Approach • Open User Model – Capturing personal data from the Social Web – Specific for tourism – Enable both personalisation systems and travellers to benefit – Based on existing ontologies reuse Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 9
  • 10. Our Approach (cont.) • Aims to – facilitate the extraction of personal data from Social Web; – facilitate the interoperability among recommenders in the tourism domain; – enable the users to consume personalised services from the data that they have already shared in the Social Web. Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 10
  • 11. Related work in user modelling GUMO [6], SWUM[5]: – Cover any attribute of a user model for the Social Web – Not specific for any domain – Aim to allow an easy data sharing between applications Mypes[3]: – Cross-system user modelling Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 11
  • 12. The methodology • Define the attributes of the user model. [2] – Basic user characteristics – Interests – Time dimension – Historical data (e.g. visited places) – User’s wishes Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 12
  • 13. The methodology (cont.) • Following a bottom-up methodology 1. study the specifications of social networks (i.e. Facebook & Foursquare) 2. extract user attributes related to tourism from the data models 3. map the extracted attributes Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 13
  • 14. User Model for Tourism User model aspects Facebook Foursquare Comments Personal information   Name, Email Marital status   Spouse, Children Hometown   Current city   Visited POIs   Coordinates, Name, Category POIs to Explore   POIs saved in ToDo lists Interests   Liked locations   Activities   Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 14
  • 15. User Model for Tourism (cont.) • Reuse of existing vocabularies – FOAF (http://xmlns.com/foaf/spec/) • describe basic information about people • describe Internet accounts, web-based activities – Geo (http://www.w3.org/2003/01/geo/) • information about spatially-located things – Wi (http://xmlns.notu.be/wi/) • describe that a person prefers one thing to another Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 15
  • 16. User Model for Tourism (cont.) foaf:knows foaf:Person wi:preference foaf:name umt:POI foaf:mbox umt:name wi:WeightedInterest foaf:account umt:hasToDo umt:category umt:timestamp umt:hasVisited geo:lat geo:long umt:hasHometown umt:Location umt:hasCurrentLocation umt:name Property geo:lat Subclass of umt:likesLocation geo:long Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 16
  • 17. Conclusion • The data models of Social Networks are very similar regarding the visited places of the users. • Personal data in the Social Web contain reusable information for recommendation in the tourism domain. • An approach for the exploitation of this data in tourism. Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 17
  • 18. Future steps • Finalisation of the UMT model • Exploitation of the Google Latitude data • Evaluation of the approach and model Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 18
  • 19. Questions? ioannis.stavrakantonakis@sti2.at istavrak.com @istavrak Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 19
  • 20. References 1. Parundekar, R., & Oguchi, K. (2012). Learning Driver Preferences of POIs Using a Semantic Web Knowledge System. The Semantic Web: Research and Applications. 2. Kang, E., Kim, H., & Cho, J. (2006). Personalization method for tourist point of interest (POI) recommendation. Knowledge-Based Intelligent Information and Engineering Systems. 3. Abel, F., Herder, E., Houben, G., Henze, N., & Krause, D. (2011). Cross-system user modeling and personalization on the social web. UMUAI Journal. 4. Aroyo, L., & Houben, G. (2010). User modeling and adaptive Semantic Web. Semantic Web Journal. 5. Plumbaum, T., Wu, S., De Luca, E., & Albayrak, S. (2011). User Modeling for the Social Semantic Web. Proceedings of SPIM 2011. 6. Heckmann, D., Schwarzkopf, E., Mori, J., Dengler, D., & Kröner, A. (2007). The user model and context ontology GUMO revisited for future Web 2.0 extensions. Contexts and Ontologies: Representation and Reasoning. Personal Data and User Modelling in Tourism - ENTER 2013, Innsbruck 20

Notes de l'éditeur

  1. Following the best practices in Ontology engineering we use existing vocabularies.
  2. The weighted interest includes