FAO Ontology Portal Prototypes FISHERY January 2004.

Slides:



Advertisements
Similar presentations
Dr. Leo Obrst MITRE Information Semantics Information Discovery & Understanding Command & Control Center February 6, 2014February 6, 2014February 6, 2014.
Advertisements

® IBM Research © 2006 IBM Corporation Faceted Logic, Ontologies, and Wikis: Possible Approaches for ONTOLOG Content John Boz Handy-Bosma, Ph.D., Senior.
Multilinguality & Semantic Search Eelco Mossel (University of Hamburg) Review Meeting, January 2008, Zürich.
Y. Jaques Yves Jaques ICIS Requirements Gathering, June 2008, Rome NeOn Lifecycle Support for Networked Ontologies.
1/ 26 AGROVOC and the OWL Web Ontology Language: the Agriculture Ontology Service - Concept Server OWL model NKOS workshop Alicante,
Advanced Information Systems Laboratory Department of Computer Science and Systems Engineering GI-DAYS MÜNSTER A software tool.
Why, what were the idea ? 1.Create a data infrastructure, 2.Data + the knowledge products that are produced on the basis of data a) Efficiant access to.
Information Retrieval: Human-Computer Interfaces and Information Access Process.
PIM Platform Free text search. When you type in the search field a suggestion tool helps you to find a concept from the ontology.
Agricultural Ontology Web Services Striving for more interoperability in agricultural information management OASIS Symposium May 2006 Boris Lauser.
IAEA International Atomic Energy Agency INIS Collection Search: Introduction and main features INIS Training Seminar 7-11 October 2013, Vienna Domenico.
Text Operations: Preprocessing. Introduction Document preprocessing –to improve the precision of documents retrieved –lexical analysis, stopwords elimination,
Information Retrieval Concerned with the: Representation of Storage of Organization of, and Access to Information items.
Digital textNamed Entities Hovering over a named entity highlights the areas where it appears in the text.
Experiments on Using Semantic Distances Between Words in Image Caption Retrieval Presenter: Cosmin Adrian Bejan Alan F. Smeaton and Ian Quigley School.
Information Retrieval: Human-Computer Interfaces and Information Access Process.
1/ 22 AGROVOC and the OWL Web Ontology Language: the Agriculture Ontology Service Concept Server OWL model DC 2006 Mexico, 4 October.
BioText Infrastructure Ariel Schwartz Gaurav Bhalotia 10/07/2002.
Building a Multilingual Thesaurus for Agriculture, Forestry and Fisheries in Japan Hiroko AOKI Agriculture, Forestry and Fisheries Research Information.
GL12 Conf. Dec. 6-7, 2010NTL, Prague, Czech Republic Extending the “Facets” concept by applying NLP tools to catalog records of scientific literature *E.
Improving Data Discovery in Metadata Repositories through Semantic Search Chad Berkley 1, Shawn Bowers 2, Matt Jones 1, Mark Schildhauer 1, Josh Madin.
1/ 27 The Agriculture Ontology Service Initiative APAN Conference 20 July 2006 Singapore.
4th project meeting 27-29/05/2013, Budapest, Hungary FP 7-INFRASTRUCTURES programme agINFRA agINFRA A data infrastructure for agriculture.
1 Opening the legal literature Portal to multilingual access E. Francesconi, G. Peruginelli ITTIG – CNR Institute of Legal Information Theory and Technologies.
IAEA International Atomic Energy Agency Agenda item 2.6 INIS Collection Search 36 th Consultative Meeting of INIS Liaison Officers 4-5 October 2012, Vienna,
1 The BT Digital Library A case study in intelligent content management Paul Warren
CIG Conference Norwich September 2006 AUTINDEX 1 AUTINDEX: Automatic Indexing and Classification of Texts Catherine Pease & Paul Schmidt IAI, Saarbrücken.
Slide 1 The Agricultural Ontology Service (AOS) Effort for Content Standardization in Agriculture Frehiwot Fisseha (UNFAO)
Johannes Keizer Food and Agriculture Organization of the UN Library and Documentation Systems Division The Agricultural Ontology Service - project, a.
H. Lundbeck A/S3-Oct-151 Assessing the effectiveness of your current search and retrieval function Anna G. Eslau, Information Specialist, H. Lundbeck A/S.
Project Proposal for a Fishery Ontology Service Aldo Gangemi CNR-ISTC Institute of Cognitive Sciences and Technologies
Spoken dialog for e-learning supported by domain ontologies Dario Bianchi, Monica Mordonini and Agostino Poggi Dipartimento di Ingegneria dell’Informazione.
28. Mai 2008Dr. Berthold Gillitzer Enhanced retrieval using semantic technologies: Ontology based retrieval as a new search paradigm? - Considerations.
Metadata Normalisation in Europeana The Hague, 13 & 14 January 2009 Julie Verleyen Scientific Coordinator, Europeana Office EuropeanaLocal Knowledge Sharing.
Copyright © 2006 Access Innovations, Inc. 1 Building Taxonomies Part 5 Alice Redmond-Neal Access Innovations, Inc. Enterprise Search Summit New York City,
An ontology is a semantic structure that formalizes the knowledge that members of a community have about a given domain. consists of concepts and relations.
Multilingual Information Exchange APAN, Bangkok 27 January 2005
Concept-based Image Retrieval: The ARRS GoldMiner ® Image Search Engine Charles E. Kahn Jr., MD, MS Medical College of Wisconsin Milwaukee, Wisconsin,
MPEG-7 Interoperability Use Case. Motivation MPEG-7: set of standardized tools for describing multimedia content at different abstraction levels Implemented.
Jennie Ning Zheng Linda Melchor Ferhat Omur. Contents Introduction WordNet Application – WordNet Data Structure - WordNet FrameNet Application – FrameNet.
NCSU Libraries Kristin Antelman NCSU Libraries June 24, 2006.
1 University of Palestine Topics In CIS ITBS 3202 Ms. Eman Alajrami 2 nd Semester
Incorporating ARGOVOC in DSpace-based Agricultural Repositories Dr. Devika P. Madalli & Nabonita Guha Documentation Research & Training Centre Indian Statistical.
Food and Agriculture Organization of the UN Library and Documentation Systems Division GILW FAO's activities on Thesauri and Terminology Systems.
The UNESCO Thesaurus Meeting for Managers of UNESCO Documentation Networks Meron Ewketu UNESCO Library June
, 1/21, © Library and Documentation Systems Division 21 st APAN Meeting Tokyo, January 2006 AGROVOC and AOS, Margherita Sini, FAO From.
Johannes Keizer Food and Agriculture Organization of the UN Library and Documentation Systems Division Semantic Standards for the Web The Agricultural.
Food and Agriculture Organization of the UN Library and Documentation Systems Division Margherita Sini July 2005 Managing domain ontologies within the.
Controlled Vocabulary & Thesaurus Design Term Selection/Format & Synonyms.
© Copyright 2013 STI INNSBRUCK “How to put an annotation in HTML?” Ioannis Stavrakantonakis.
APAN AG-WG Bangkok Food and Agriculture Organization of the UN Library and Documentation Systems Division Margherita Sini Slide Sustainable.
Translating Dialects in Search: Mapping between Specialized Languages of Discourse and Documentary Languages Vivien Petras UC Berkeley School of Information.
AGROVOC Thesaurus. 1980s: developed as multilingual structured thesaurus for agricultural terminology (“rice”) : parallel effort to express thesaurus.
Using Domain Ontologies to Improve Information Retrieval in Scientific Publications Engineering Informatics Lab at Stanford.
GEMET GEneral Multilingual Environmental Thesaurus leading the way to federated terminologies Stefan Jensen, Head of information services group with input.
Food and Agriculture Organization of the UN Library and Documentation Systems Division July 2005 Modelling (real) multilinguality 6 th AOS Workshop Vial.
The Agricultural Ontology Service: A proposal to create a Knowledge Organisation Framework in the Area of Food and Agriculture Johannes Keizer, Food and.
June 2003INIS Training Seminar1 INIS Training Seminar 2-6 June 2003 Subject Analysis Thesaurus and Indexing Alexander Nevyjel Subject Control Unit INIS.
IAEA International Atomic Energy Agency INIS Collection Search: Introduction and main features The Role of the International Nuclear Information System.
Frontiers in Forest Information, 5-7 December 2005, Oxford Networking Our Stocks of Information Stefan Farrenkopf Goettingen State and University Library.
Acceso a la información mediante exploración de sintagmas Anselmo Peñas, Julio Gonzalo y Felisa Verdejo Dpto. Lenguajes y Sistemas Informáticos UNED III.
Gauri Salokhe, FAO 1/ Examples of Ontology Applications Seventh Agricultural Ontology Service Workshop Bangalore, India Gauri.
Integrated Departmental Information Service IDIS provides integration in three aspects Integrate relational querying and text retrieval Integrate search.
Online Information and Education Conference 2004, Bangkok Dr. Britta Woldering, German National Library Metadata development in The European Library.
Food and Agriculture Organization of the UN GILW Library and Documentation Systems Division Food, Nutrition and Agriculture Ontology Portal.
Mohammad Alqahtani, Dr. Eric Atwell
UNIFIED MEDICAL LANGUAGE SYSTEMS (UMLS)
Improving Data Discovery Through Semantic Search
Kenneth Baclawski et. al. PSB /11/7 Sa-Im Shin
NKOS workshop Alicante, 2006
Presentation transcript:

FAO Ontology Portal Prototypes FISHERY January 2004

Functionalities 1.Form versus meaning: a)Traditional Search b)Concept Search 2.Implemented functionalities: a)synonym search b)multilingual capability c)terminology brokering d)disambiguation e)related concepts f)query expansion 3.Basic natural language queries 4.Semantic navigation of bibliographical metadata 5.Semantic Navigation of Knowledge a)Alphabetic list... as a starting point b)Core Fishery Concepts... as a starting point

Additional Functionalities Functionalities to further develop: a)Intelligent query expansion b)Natural language queries (paraphrasing) a)check spelling b)parsing c)stemming c)Semantic Navigation of Knowledge a)Thesaurus based

Demo

1) Form versus meaning: a) Traditional Search The system gets records from different portals using the string vessel

1) Form versus meaning: a) Traditional Search FAOBIB results Using a free text search, the system retrieves all records containing the string “vessel” including records not pertinent to the user’s intended meaning of the term Using a keyword search, the system retrieves 0 results as the thesaurus used in this portal does not use vessel as a keyword

1) Form versus meaning: b) Concept Search In a concept based search the system retrieves all meanings represented by the term vessel. For example: - vessel can refer to the concept blood vessel - vessel can also be interpreted as ship

2) Implemented functionalities : a) synonym search The same records will be retrieved regardless of the specific synonyms or singular/plural forms that the user uses to refer to a concept.

2) Implemented functionalities : b) multilingual capability The system is also able to understand a concept even when different languages are used.

2) Implemented functionalities : c) terminology brokering User query terms are converted into the respective corresponding variants used in a given information system

2) Implemented functionalities : d) disambiguation When the query term is ambiguous all concepts that correspond to that term are displayed to the user and disambiguated using the parent concept

2) Implemented functionalities : e) related concepts Concepts related to the user query are displayed (e.g. for query refinements, etc.)

2) Implemented functionalities : f) query expansion (ex. 1) The query can be refined using one or more related concept(s)

2) Implemented functionalities : f) query expansion (ex. 2) To improve query results (in terms of quality and quantity), it is possible to select one or more translations or related terms...

...The query will then take into consideration all selected lexicalizations to improve the query. The system will broker the refined query using the terms from a given portal..

3) Basic natural language queries Bibliographical records related to fishing vessel in Kenya

4) Semantic navigation of bibliographical metadata

5) Semantic Navigation of Knowledge: a) Alphabetic list... as a starting point

5) Semantic Navigation of Knowledge: b) Core Fishery Concepts... as a starting point parent concept(s) children concept(s)

Additional Functionalities

a) Intelligent query expansion japanese fishing vessel –The system search for documents related to Japan and fishing vessel –If 0 results are retrieved, the system search for Asia and fishing vessel etc.

b) Natural language queries (paraphrasing) japanese fishing vessel tuna ships in the Caribbean sea etc. The System check first for spelling errors, parse the query

c) Semantic Navigation of Knowledge: a) Thesaurus based Highlighting the originator thesaurus. User can select a specific thesaurus to look for.