Art der Publikation: Beitrag in Sammelwerk
Crowdsourcing Supported Context Detection for Improving Information Search Activities
- Beul, M.; Eicker, S.
- International Academy, Research, and Industry Association
- Titel des Sammelbands:
- Proceedings of The Seventh International Multi-Conference on Computing in the Global Information Technology
- (to be published)
- Download RIS
In environments that require the use of software applications, intervals where application functionality, tools, methods and technical systems are changing are often very short. The process of searching for relevant information about a specific issue is frequently executed and time-consuming. Because of the availability of a nearly unlimited amount of data, people spend a lot of time in formulating search queries and evaluating the relevance of the search results. In this paper, we describe a generic approach that improves the information search and retrieval process of different activities with the use of context information. One main goal is the integration of the crowd at different stages of this process by combining collective intelligence concepts with context-aware systems. This combination can be used to automatically reduce information overflow by filtering irrelevant data. Furthermore, a real-time information retrieval process without manual search im pulses is provided. We also present a prototype as a proof of concept in order to validate feasibility and benefit.