Corpus ID: 16217537
Semantic Enrichment of Social Media Resources for Adaptation
Oliver Schimratzki, F. Bakalov, +1 author B. König-Ries
Published 2010
With more and more dynamic content available on the web, we need systems that aggregate and filter information from different sources to provide us with only the information we are really interested… Expand
Ceur-Ws.Org
Share This Paper
7 Citations
Background Citations
2
Methods Citations
3
Figures and Tables from this paper
Figure 1
Table 1
Figure 3
Figure 5
Figure 6
7 Citations
Personalized semantic assistance for the curation of biochemical literature
F. Bakalov, Marie-Jean Meurs, +4 authors A. Tsang
Computer Science
2012 IEEE International Conference on Bioinformatics and Biomedicine
2012
TLDR
The platform provides a single-point of access to abstracts of publications harvested from multiple databases and supports further analysis of these abstracts, and allows users to obtain a personalized view of the literature and its semantic analysis results. Expand
2 Citations
PDF
Scrutable adaptive in community-enabled web portals
F. Bakalov
Computer Science
2012
TLDR
This book presents a framework for scrutable adaptivity in community-enabled web portals that leverages the technology for Natural Language Processing and the willingness of the user community to contribute and annotate content. Expand
Modelling viewpoints in user generated content
Dimoklis Despotakis
Computer Science
2013
TLDR
This research complements notable efforts for viewpoints modelling by addressing three main challenges to enable better understanding of users by capturing the semantics of user viewpoints, and enable exploration of diversity by providing intelligent methods for analysis and comparison of viewpoints. Expand
5 Citations
PDF
Capturing the semantics of individual viewpoints on social signals in interpersonal communication
Dimoklis Despotakis, D. Thakker, L. Lau, V. Dimitrova
2012
The Social Web provides a vast source of user-generated content embedding different views on real life events and activities. Although there is a notable effort to utilise this content in… Expand
9 Citations
PDF
Semantically Enriched Machine Learning Approach to Filter YouTube Comments for Socially Augmented User Models
A. Ammari, V. Dimitrova, Dimoklis Despotakis
2011
Social media are media for social interaction that allow creating and exchanging user-generated content. The massive social content can provide rich resources for deriving social profiles that can… Expand
10 Citations
PDF
An approach to controlling user models and personalization effects in recommender systems
F. Bakalov, Marie-Jean Meurs, +4 authors A. Tsang
Computer Science
IUI '13

2013
TLDR
This paper proposes an approach to controlling adaptive behavior in recommender systems, using an example of a personalized portal for biochemical literature, whose users are biochemists, biologists and genomicists.Expand
43 Citations
PDF
Augmenting User Models with Real World Experiences to Enhance Personalization and Adaptation
F. Abel, V. Dimitrova, E. Herder, G. Houben
Computer ScienceUMAP Workshops
2011
TLDR
Augmented user modeling is an emerging strand of research that aims to connect and exploit activities and events in the digital, social and physical worlds. Expand
5 Citations
PDF
References
SHOWING 1-10 OF 19 REFERENCES
The Personal Publication Reader: Illustrating Web Data Extraction, Personalization and Reasoning for the Semantic Web
Robert Baumgartner, N. Henze, M. Herzog
Computer Science
ESWC

2005
TLDR
This paper demonstrates by means of an example application how personalized content syndication can be realized in the Semantic Web by providing the information system with real-time, dynamic data and the personalization part, which deduces personalized views on the data. Expand
43 Citations
PDF
A Hybrid Approach to Identifying User Interests in Web Portals
F. Bakalov, B. König-Ries, A. Nauerz, M. Welsch
Computer Science
IICS

2009
TLDR
This paper describes a hybrid approach to identifying user interests in Web portals that is enabled to “learn” the user interests from the content of visited pages and is empowered to provide users with an open access interface to their user models.Expand
21 Citations
PDF
Aggregate documents: making sense of a patchwork of topical documents
Michael Shilman
Computer Science
DocEng '08

2008
TLDR
This talk describes a complementary set of automated alternatives to Wikipedia and Digg, demonstrates these approaches with a working example, the commercial web site Wize.com, and derives some basic principles for aggregating a diverse set of documents into a coherent and useful summary. Expand
5 Citations
Semantic search
R. Guha, R. McCool, E. Miller
Computer Science
WWW '03

2003
TLDR
An application called 'Semantic Search' is presented which is built on these supporting technologies and is designed to improve traditional web searching and an overview of TAP, the application framework upon which the Semantic Search is built is provided. Expand
843 Citations
PDF
S-CREAM - Semi-automatic CREAtion of Metadata
S. Handschuh, Steffen Staab, F. Ciravegna
Computer Science
EKAW

2002
TLDR
OntoMat-Annotizer extract with the help of Amilcare knowledge structure from web pages through the use of knowledge extraction rules, the result of a learning-cycle based on already annotated pages. Expand
393 Citations
PDF
Semantic Annotation, Indexing, and Retrieval
A. Kiryakov, Borislav Popov, Damyan Ognyanoff, D. Manov, A. Kirilov, Miroslav Goranov
Computer Science
SEMWEB

2003
TLDR
A simplistic upper-level ontology is introduced which starts with some basic philosophic distinctions and goes down to the most popular entity types, thus providing many of the inter-domain common sense concepts and allowing easy domain-specific extensions. Expand
399 Citations
PDF
Recommendations based on semantically enriched museum collections
Yiwen Wang, N. Stash, Lora Aroyo, P. Gorgels, L. Rutledge, G. Schreiber
Computer Science
J. Web Semant.

2008
TLDR
It is shown how Semantic Web technologies can be deployed to (partially) solve three important challenges for recommender systems applied in an open Web context to deal with the complexity of various types of relationships for recommendation inferencing. Expand
116 Citations
PDF
KIM – a semantic platform for information extraction and retrieval
Borislav Popov, A. Kiryakov, Damyan Ognyanoff, D. Manov, A. Kirilov
Computer ScienceNatural Language Engineering
2004
TLDR
The KIM platform is presented, with an emphasis on its architecture, interfaces, front-ends, and other technical issues, and an upper-level ontology is introduced to ensure efficiency, easy sharing, and reusability of the metadata. Expand
331 Citations
IntrospectiveViews: An Interface for Scrutinizing Semantic User Models
F. Bakalov, B. König-Ries, A. Nauerz, M. Welsch
Computer Science
UMAP

2010
TLDR
IntrospectiveViews is introduced, an interface that enables the user to view and edit her user model and the results of a formative evaluation are presented that show the importance users give in general to different aspects of scrutable user models and substantiate the claim that Introspective views is an appropriate realization of an interface to such models. Expand
36 Citations
PDF
Content-Based Recommendation Systems
M. Pazzani, Daniel Billsus
Computer ScienceThe Adaptive Web
2007
TLDR
This chapter discusses content-based recommendation systems, i.e., systems that recommend an item to a user based upon a description of the item and a profile of the user's interests, which are used in a variety of domains ranging from recommending web pages, news articles, restaurants, television programs, and items for sale. Expand
2,253 Citations
PDF
...
1
2
...
SORT BY
Related Papers
The 6As model of social content management
Adel M. Aladwani
Sociology, Computer ScienceInt. J. Inf. Manag.
2014
TLDR
This manuscript summarizes such a framework, which consists of six components: activity sources, abridgements, activities context, affordances, ascertained boundaries, and actors, which can be helpful for practitioners and researchers interested in social content management.
31 Citations
Co-evolution of content popularity and delivery in mobile P2P networks
S. Venkatramanan, Anurag Kumar
Computer ScienceProceedings IEEE INFOCOM
2012
TLDR
This work model the joint evolution of the copying process and the interest evolution process, and derive joint fluid limit ordinary differential equations for the selection of parameters under the content provider's control for the optimization of various objective functions that aim at maximizing content popularity and efficient content delivery.
14 Citations
Show More
2/10
Abstract
Figures and Tables
7 Citations
19 References
Related Papers
Stay Connected With Semantic Scholar
What Is Semantic Scholar?
Semantic Scholar is a free, AI-powered research tool for scientific literature, based at the Allen Institute for AI.
Learn More
About
About Us
Publishers
Beta Program
Contact
Research
Team
Datasets
Open Corpus
Supp.ai
Resources
Librarians
Tutorials
FAQ
API
Proudly built by AI2
Terms of ServicePrivacy Policy
By clicking accept or continuing to use the site, you agree to the terms outlined in our Privacy Policy, Terms of Service, and Dataset License
ACCEPT & CONTINUE