LSDS-IR'15: 2015 Workshop on large-scale and distributed systems for information retrieval

2015-10-17
Altıngövde, İsmail Sengör
Tonellotto, Nicola
The growth of the Web and other Big Data sources lead to important performance problems for large-scale and distributed information retrieval systems. The scalability and efficiency of such information retrieval systems have an impact on their effectiveness, eventually affecting the experience of their users and monetization as well. The LSDS-IR'15 workshop will provide space for researchers to discuss the existing performance problems in the context of large-scale and distributed information retrieval systems and define new research directions in the modern Big Data era. The workshop expects to bring together information retrieval practitioners from the industry, as well as academic researchers concerned with any aspect of large-scale and distributed information retrieval systems.

Suggestions

BIG DATA FOR INDUSTRY 4.0: A CONCEPTUAL FRAMEWORK
Gökalp, Mert Onuralp; Kayabay, Kerem; Eren, Pekin Erhan; Koçyiğit, Altan (2016-12-17)
Exponential growth in data volume originating from Internet of Things sources and information services drives the industry to develop new models and distributed tools to handle big data. In order to achieve strategic advantages, effective use of these tools and integrating results to their business processes are critical for enterprises. While there is an abundance of tools available in the market, they are underutilized by organizations due to their complexities. Deployment and usage of big data analysis t...
Large-Scale Renewable Energy Monitoring and Forecast Based on Intelligent Data Analysis
Özkan, Mehmet Barış; Küçük, Dilek; Buhan, Serkan; Demirci, Turan; Karagöz, Pınar (IGI Global, 2020-01-01)
Intelligent data analysis techniques such as data mining or statistical/machine learning algorithms are applied to diverse domains, including energy informatics. These techniques have been successfully employed in order to solve different problems within the energy domain, particularly forecasting problems such as renewable energy and energy consumption forecasts. This chapter elaborates the use of intelligent data analysis techniques for the facilitation of renewable energy monitoring and forecast. First, ...
Data Science Roadmapping: Towards an Architectural Framework
KAYABAY, KEREM; Gökalp, Mert Onuralp; Gökalp, Ebru; Eren, Pekin Erhan; Koçyiğit, Altan (2020-11-24)
The availability of big data and related technologies enables businesses to exploit data for competitive advantage. Still, many industries face obstacles while leveraging data science to overcome business problems. This paper explores the development of a roadmapping approach to address data science challenges. Towards this goal, we customize technology roadmapping by synthesizing roadmapping, big data, data science, and data-driven organization literature. The resulting data science roadmapping approach li...
Data mining in deductive databases using query flocks
Toroslu, İsmail Hakkı (Elsevier BV, 2005-04-01)
Data mining can be defined as a process for finding trends and patterns in large data. An important technique for extracting useful information, such as regularities, from usually historical data, is called as association rule mining. Most research on data mining is concentrated on traditional relational data model. On the other hand, the query flocks technique, which extends the concept of association rule mining with a 'generate-and-test' model for different kind of patterns, can also be applied to deduct...
EPICS: A Framework for Enforcing Security Policies in Composite Web Services
Ranchal, Rohit; Bhargava, Bharat; Angın, Pelin; ben Othmane, Lotfi (Institute of Electrical and Electronics Engineers (IEEE), 2019-05-01)
With advances in cloud computing and the emergence of service marketplaces, the popularity of composite services marks a paradigm shift from single-domain monolithic systems to cross-domain distributed services, which raises important privacy and security concerns. Access control becomes a challenge in such systems because authentication, authorization and data disclosure may take place across endpoints that are not known to clients. The clients lack options for specifying policies to control the sharing of...
Citation Formats
İ. S. Altıngövde and N. Tonellotto, “LSDS-IR′15: 2015 Workshop on large-scale and distributed systems for information retrieval,” 2015, Accessed: 00, 2020. [Online]. Available: https://hdl.handle.net/11511/56276.