scholarly journals Data transformations from CMS to CDP enriched by semantics

2020 ◽  
Vol 77 ◽  
pp. 03006
Author(s):  
Christina Salwitzek ◽  
Christina Steuer

Today’s users no longer expect a classic manual, but short, clearly structured pieces of information that fit their application context, use case and role. Instead of conventional documentation, “intelligent information” is required that is modular, format-neutral and can be found via metadata and full-text search. The information is often created in a CMS and provided via CDPs. There are not always compatible interfaces between these systems, especially those of different software manufacturers. Therefore, the information created cannot be processed further. The purpose of this paper is to show that data transformations can provide accessibility for the information from a CMS for different CDPs. On this basis, data transformations were developed, enriched by semantics and implemented within the project. For the enrichment by semantics, metadata were used as well as a further approach based on metadata, called “microDocs”. This approach describes the combination and aggregation of different topic-based information that are connected by defined use cases and a logical context. Some CDP manufacturers already support microDocs and it is expected that even more extensions will be implemented in the future. Accordingly, it is highly likely that microDocs will play an important role in the field of information delivery.

2021 ◽  
Vol 55 (1) ◽  
pp. 1-18
Author(s):  
Martin Potthast ◽  
Benno Stein ◽  
Matthias Hagen

The Information Retrieval Anthology, IR Anthology for short, is an endeavor to create a comprehensive collection of metadata and full texts of IR-related publications. We report on its first release, the use cases it can serve, as well as the challenges lying ahead to develop it towards a resource that serves the IR community for years to come. The IR Anthology's metadata browser and full text search engine are available at IR.webis.de.


2013 ◽  
Vol 284-287 ◽  
pp. 3428-3432 ◽  
Author(s):  
Yu Hsiu Huang ◽  
Richard Chun Hung Lin ◽  
Ying Chih Lin ◽  
Cheng Yi Lin

Most applications of traditional full-text search, e.g., webpage search, are offline which exploit text search engine to preview the texts and set up related index. However, applications of online realtime full-text search, e.g., network Intrusion detection and prevention systems (IDPS) are too hard to implementation by using commodity hardware. They are expensive and inflexible for more and more occurrences of new virus patterns and the text cannot be previewed and the search must be complete realtime online. Additionally, IDPS needs multi-pattern matching, and then malicious packets can be removed immediately from normal ones without degrading the network performance. Considering the problem of realtime multi-pattern matching, we implement two sequential algorithms, Wu-Manber and Aho-Corasick, respectively over GPU parallel computation platform. Both pattern matching algorithms are quite suitable for the cases with a large amount of patterns. In addition, they are also easier extendable over GPU parallel computation platform to satisfy realtime requirement. Our experimental results show that the throughput of GPU implementation is about five to seven times faster than CPU. Therefore, pattern matching over GPU offers an attractive solution of IDPS to speed up malicious packets detection among the normal traffic by considering the lower cost, easy expansion and better performance.


2012 ◽  
Vol 02 (04) ◽  
pp. 106-109 ◽  
Author(s):  
Rujia Gao ◽  
Danying Li ◽  
Wanlong Li ◽  
Yaze Dong

Author(s):  
Namik Delilovic

Searching for contents in present digital libraries is still very primitive; most websites provide a search field where users can enter information such as book title, author name, or terms they expect to be found in the book. Some platforms provide advanced search options, which allow the users to narrow the search results by specific parameters such as year, author name, publisher, and similar. Currently, when users find a book which might be of interest to them, this search process ends; only a full-text search or references at the end of the book may provide some additional pointers. In this chapter, the author is going to give an example of how a user could permanently get recommendations for additional contents even while reading the article, using present machine learning and artificial intelligence techniques.


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