Title :
Transformation Algorithms for Data Streams
Author :
Eick, S.G. ; Lockwood, John W. ; Loui, R. ; Moscola, J. ; Weishar, D.J.
Author_Institution :
SSS Res. Inc., Lisle, IL
Abstract :
Next generation data processing systems must deal with very high data ingest rates and massive volumes of data. Such conditions are typically encountered in the intelligence community (IC) where analysts must search through huge volumes of data in order to gather evidence to support or refute their hypotheses. Their effort is made all the more difficult given that the data appears as unstructured text that is written in multiple languages using characters that have different encodings. Human analysts have not been able to keep pace with reading the data and a large amount of data is discarded even though it might contain key information. The goal of our project is to assess the feasibility of incrementally replacing humans with automation in key areas of information processing. These areas include document ingest, content categorization, language translation, and context- and temporally-based information retrieval
Keywords :
document handling; information analysis; information retrieval; language translation; content categorization; context-based information retrieval; data processing systems; data streams; document ingest; human analysts; information processing; intelligence community; language translation; temporally-based information retrieval; transformation algorithms; unstructured text; Automation; Data processing; Encoding; Hardware; Humans; Information analysis; Information processing; Laboratories; Performance evaluation; System testing;
Conference_Titel :
Aerospace Conference, 2005 IEEE
Conference_Location :
Big Sky, MT
Print_ISBN :
0-7803-8870-4
DOI :
10.1109/AERO.2005.1559611