1 / 36

WIMS’ 14

Providing a context-aware location based web service through semantics and user-defined rules Iosif Viktoratos 1 , Athanasios Tsadiras 1 , Nick Bassiliades 2 , 1 Department of Economics , 2 Department of Informatics, Aristotle University of Thessaloniki GR-54124 Thessaloniki, Greece

danil
Download Presentation

WIMS’ 14

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Providing a context-aware location based web service through semantics and user-defined rules Iosif Viktoratos1, Athanasios Tsadiras1, Nick Bassiliades2, 1Department of Economics, 2Department of Informatics, Aristotle University of Thessaloniki GR-54124 Thessaloniki, Greece {viktorat, tsadiras, nbassili}@auth.gr WIMS’ 14

  2. Contents • Location Based Services (LBS) & Context • Semantic Technologies • The System Geo SPLIS • Design and General idea • Geo SPLIS’s Features • Geos SPLIS’s Architecture • Geo SPLIS’s Operations • Usage Scenarios • Evaluation • Conclusions • Future work

  3. Location Based Services (LBS) • Very popular over the last few years • Usedby millions of people • Navigation • Tracking • Information • Marketing • Entertainment • Emergency • Communication

  4. LBS & Context • Should offer information to users, relevant to their situation - context • Time, Location, User Preferences, Relationships… • Context awareness enables proactive personalized information of higher quality • Researchers and industries focus on contextual knowledge • Hardware (e.g. GPS, sensors) • Software (e.g. ontologies,rules)

  5. Semantic Technologies (1/2)Ontologies • Representation of related concepts (persons’ profiles, location) • High quality context perception • Complicated reasoning about concepts • Formal representation standard • Reusability • Interoperability • Connecting and sharing data from various sources • Flexibility • Knowledge sharing

  6. Semantic Technologies (2/2)Rules • Extensive reasoning capabilities • Reasoning about instances • Intelligence • Increased expressivenessfor complicated inferences • Autonomy - Proactiveness • Data-driven inference • Automatic derivation upon context changes

  7. Geo SPLISGeographicSemanticPersonalizedLocationInformationSystem • What? • Web mapping application for connecting user defined preferences (regarding POIs) with POI owners’ group targeted offers • Why? • To model human daily patterns and provide proactive, customized and contextualized information to users • How? • Combining semantics (rules & ontologies) with LBS

  8. Design and General idea (1/2) POIs adopt a rule-based policy to deploy their specific marketing strategy A restaurant offers 25% discount to students on Friday Regular users provide their profile My job is student Regular users have preferences/daily patterns If it is Sunday noon I would like some restaurants that serve Chinesecuisine The LBS provides spatiotemporal context E.g. its Friday! Combine POI policies with regular user preferences & spatiotemporal context Presents personalized offers on Google Maps 8/36

  9. Design and General idea (2/2)

  10. Geo SPLIS’s Features (1/2) • Collects data from external sources • Google+, Google Places API, POI websites • Regular users add contextualized rule based preferences • Via a web editor • Upload a RuleML file in their Google+ account • POI owners add group targeted offering policies via a web editor • Data from editor  RuleML  Jess Sesame • Executes and evaluates data and rules on the fly • Uses Google Maps for information

  11. Geo SPLIS’s Features (2/2) • Rule conditions • LBS context • Location (e.g. within 1 km) • Weather (e.g. sunny, rainy etc. ) • Time (e.g. between 14:00-18:00) • Day (e.g. Saturday) • Every existing propertyof a POI • E.g. cuisine currently serves • Rule consequences • Add a place in a recommendation list

  12. Geo SPLIS’sArchitecture (1/2) • Client • PC browser-based • Html, JavaScript, Css • Google Maps • Android mobile application • Server • Java Server Pages (JSP) • RDF data management • Sesame • Rules • Reaction RuleML  XSLT  Jess

  13. Geo SPLIS’sArchitecture (2/2)

  14. Geo SPLIS’s Operations(1/11) • Data collection • Information presentation • Operations concerning rules • Rule insertion through editor • Rule insertion through Google+ • Rule update operation • “Get a rule operation” • Planning operation 14/36

  15. Geo SPLIS’s Operations(2/11)Data collection • Ontology loading • Load the schema.org ontology into Sesame for updates • Data update • Get user data either from a registration form or from Google+ account • Obtain user position and retrieve nearest POIsfrom Google Places API • Store data for POIs into Sesame using predefined mapping to schema.org

  16. Geo SPLIS’s Operations(3/11)Information presentation • Data retrieval • Fetch user’s profile data and rules (if any) • Calculate contextual property values (location etc.) • Fetch POIs’ property values and rules (if any) • Rule evaluation • Assert above data to the Jess rule engine • Evaluate rules using the asserted facts • Presentation of personalized information • Bigger in size marker  recommended POI • Green marker  at least one valid offer for the user • Yellow marker  no rule is fired for the current user • Red marker  no offers at all • Red star  POI owner

  17. Geo SPLIS’s operations(4/11)Information presentation layer • Mobile version • PC browser-based version

  18. Geo SPLIS’s Operations (5/11) Rule insertion through editor • Enter the title and the priority of the rule • Four “Add …. Condition” buttons • Each one for the corresponding contextual condition. • The condition customization consists of three elements: • The property field (weather, day, time, distance) • The operator field (“is” and “<”,”>” for time and distance) • The value • An “AND” is implied among them • Drop down menus and read only forms to avoid mistakes • Select the desired POI category • Clicking the “Add Where Condition” button to add more conditions regarding desired POI properties • Add a textual explanation • Assert the rule “If day is Friday and time is before 17:00, I would like to visit some museums”

  19. Geo SPLIS’s operations (6/11)Geo SPLIS’s Web Editor

  20. RuleML representation Jess representation (defrule museums (declare (salience 1)) (place( type Museum) ( uri ?id)) (person ( day friday) ( time ?t) ) (test (< ?t 17)) => (assert (recommendation( id ?id))) (store EXPLANATION " If day is Friday and time is before 17:00, I would like to visit some museums ")) 20/36

  21. Geo SPLIS’s Operations (8/11)Rdf data representation 21/36

  22. Geo SPLIS’s Operations (9/11)Rule insertion through Google+ • Set as label the text “policy_link” • Upload a ruleml link in Google+ • Geo SPIS crawls user page, parses the rules and evaluates them on the fly 22/36

  23. Geo SPLIS’s Operations (10/11)Operations concerning rules • Rule update operation • Edit and delete a rule through editor • “Get a rule” operation • Get rules from other users • Check and get the rule • In case of editing a rule, a user is simply “unlinked” from the rule so that not to affect other users 23/36

  24. Geo SPLIS’s Operations (11/11)Planning operation • A user inserts a future day (1-5 days) • The time of day • The system gets user’s future contextual situation • Geo SPLIS provides POIs and offers regarding the future situation • Usage scenario will presented 24/36

  25. Usage Scenarios (1/6)Normal usage • A scenario concerning a selected user (“Mary”) • Personalized information • Planning operation

  26. Usage Scenarios (2/6)Normal usage • Becauseits Wednesday, 14:25 Mary’s rule 1 is fired • As a result restaurants are represented with a bigger in size marker

  27. Usage Scenarios (3/6)Normal usage • POI “Nama” is represented with a bigger marker because it is a restaurant (rule 1) • Mary is entitled for a special spaghetti price as a student (POI owner’s rule) 27/36

  28. Usage Scenarios (4/6)Normal usage • POI “Pizza Greca” is represented with a bigger marker because it is a restaurant • Mary is not entitled for a special pizza price as a student (POI owner’s rule) 28/36

  29. Usage Scenarios (5/6)Planning mode • Mary will visit Rome on Friday afternoon • Clicks “Planning” button from menu • Selects the following options in the pop window • after 2 days (it’s Wednesday) • the time she will be there (13:00 in our scenario) • As soon as she is inserted into planning mode she can right click on the map in Rome and find places and offers matching the future situation 29/36

  30. Usage Scenarios (6/6)Planning mode • The rule “If day is Friday and time is before 17:00, I would like to visit some museums” is fired (It’s Friday 13:00 o’clock) • Museums are represented with a bigger in size marker • Offers regarding the future situation

  31. Evaluation(1/3) • Quantitative evaluation was made • Geo SPLIS compared with a stripped-down version • Only yellow and red markers • Users had to click on the marker, view POI’s category to understand if it matches his/her preference and read POI owner’s message to understand if their offers matches his/her profile or not • “If day is Wednesday, find me some Coffee shops” • In stripped-down it was just told to users 31/36

  32. Evaluation (2/3) • 44 undergraduate students of Economics (18-22 years old, both genders) • 3 tasks in both systems • Task1.Find how many places match with your preference and contain an offer which also matches with your profile. • Task2.Find how many places contain an offer which matches with your profile. • Task3.Find how many places match with your preference and contain an offer that does not match with your profile. • Equal number of solutions • 25 places • 2 places/solutions to Task 1 • 6 places/solutions to Task 2 • 3 places/solutions to Task 3 32/36

  33. Evaluation (3/3) • Significant difference (p-significant was calculated 0,00131<0,05) 33/36

  34. Conclusions • Geo SPLIS models human daily preferences and connect them with POI owners group based offering policies • Advantages • POI owners have highly targeted marketing audience • Regular users enjoy proactive contextualized information • Adding rules dynamically leads to more customized and personalized user experience • The more rules were added to the system,the more interesting/intelligent it becomes • Exploit people collaboration and social intelligence to create large knowledge bases 34/36

  35. Future work • More extensive user evaluation • Add a social layer • Combine user rules with those of their logged in friends and provide group based information • Manually using friends’ rules • When personal preferences do not fire, then automatically use social graph to recommend • Expand the editor to add a wider range of preferences (movies, music etc.) • Rules (semi-)automatically induced by mining users’ logs, likes or reviews • Connect other social media sources (facebook, twitter etc.) 35/36

  36. Thanks for your time! Geo SPLIS is available at: http://tinyurl.com/GeoSPLIS Mobile version is available at:http://tinyurl.com/GeoSoSPLIS 36/36

More Related