PSIM Stresses Analysis

Hunt, Steve
March 2007
Security: Solutions for Enterprise Security Leaders;Mar2007, Vol. 44 Issue 3, p26
Trade Publication
The article explains that Physical Security Information Management (PSIM) is a subcategory of technological innovations within security systems. Vendors include Quantum Secure, Sentry Port, and Trusted Network Technologies. Quantum Secure is a specialist in policy management across distributed systems. Sentry Port's solution mines and correlates security data.


Related Articles

  • In Search of Alternative Metaphors for Knowledge; Inspiration from Symbolism. Andriessen, Daniel; Van Den Boom, Marien // Proceedings of the European Conference on Intellectual Capital;2009, p44 

    Conceptual metaphors play a vital role in our ability to think in abstract terms like knowledge. Metaphors structure and give meaning to the concept of knowledge. They hide and highlight certain characteristics. The choice of metaphor when reasoning about knowledge is therefore of vital...

  • Dimensional Modeling of HIV Data Using Open Source. Otine, Charles D.; Kucel, Samuel B.; Trojer, Lena // World Academy of Science, Engineering & Technology;Mar2010, Issue 39, p156 

    Selecting the data modeling technique for an information system is determined by the objective of the resultant data model. Dimensional modeling is the preferred modeling technique for data destined for data warehouses and data mining, presenting data models that ease analysis and queries which...

  • REDE SOCIAL PARA TRANSFERÊNCIA DE CONHECIMENTO E INOVAÇÃO SOCIAL. Mussi, Clarissa Carneiro; Faraco, Rafael Ávila; Angeloni, Maria Terezinha; Peres, Felipe Marcon // Revista Pensamento Contemporâneo em Administração;out-dez2013, Vol. 7 Issue 4, p77 

    This paper aims to propose a framework for a digital social network designed to support the transfer of knowledge to innovation among companies incubated in technological poles. The theoretical basis is related to knowledge management, knowledge transfer and social networks. From a...

  • An Innovative Approach for finding Frequent Item sets using Maximal Apriori and Fusion Process and its Evaluation. Chourasia, Shailendra; Vishwakarma, Rashmi; Shukla, Neeraj; Utmal, Meghna // International Journal of Computer Applications;Feb2012, Vol. 40, p23 

    Frequent pattern mining is a vital branch of Data Mining that supports frequent itemsets, frequent sequence and frequent structure mining. Our approach is regarding frequent itemsets mining. Frequent item sets mining plays an important role in association rules mining. Many algorithms have been...

  • The Interaction Between Knowledge Codification and Knowledge-Sharing Networks. De Liu; Ray, Gautam; Whinston, Andrew B. // Information Systems Research;Dec2010, Vol. 21 Issue 4, p892 

    Current knowledge management (KM) technologies and strategies advocate two different approaches: knowledge codification and knowledge-sharing networks. However, the extant literature has paid limited attention to the interaction between them. This research draws on the literature on formal...

  • What's New in SQL Server 2005 Business Intelligence? Behold the cornerstones of the new functionality. Mcdowell, Douglas // SQL Server Magazine;Nov2005, Vol. 7 Issue 11, p35 

    This article provides a glimpse of the features of SQL Server 2005 Business Intelligence (BI) platform. SQL Server Integration Services, Analysis Services, and Reporting Services serve as the three pillars of the Microsoft BI platform. Integration Services is targeted toward data integration, or...

  • A Novel Approach for Mining High-Utility Sequential Patterns in Sequence Databases. Ahmed, Chowdhury Farhan; Tanbeer, Syed Khairuzzaman; Byeong-Soo Jeong // ETRI Journal;Oct2010, Vol. 32 Issue 5, p676 

    Mining sequential patterns is an important research issue in data mining and knowledge discovery with broad applications. However, the existing sequential pattern mining approaches consider only binary frequency values of items in sequences and equal importance/significance values of distinct...

  • Research on the Data Model and the Approaches to Data Mining in the Semi-structured Data. Fenghua LIU // Applied Mechanics & Materials;2014, Issue 513-517, p663 

    As an important form of Internet data, semi-structured data in data mining is an important fist conditions. And the data mining was designed to find and extract large database in the implied information of value. This paper first introduced the half structured data concept characteristic, based...

  • Data Mining in Child Welfare. Schoech, Dick; Quinn, Andrew; Rycraft, Joan R. // Child Welfare;Sep/Oct2000, Vol. 79 Issue 5, p633 

    Data mining is the sifting through of voluminous data to extract knowledge for decision-making. This article illustrates the context, concepts, processes, techniques, and tools of data mining, using statistical and neural network analyses on a dataset concerning employee turnover. The resulting...


Read the Article


Sorry, but this item is not currently available from your library.

Try another library?
Sign out of this library

Other Topics