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               <dc:title>Data privacy and security in business intelligence and analytics</dc:title>
               <dc:title>Web analytics and their security implications</dc:title>
               <dc:creator>Beleuta, Victoria</dc:creator>
               <dc:subject>Àrees temàtiques de la UPC::Informàtica</dc:subject>
               <dc:subject>Business intelligence</dc:subject>
               <dc:subject>Big data</dc:subject>
               <dc:subject>Computer security</dc:subject>
               <dc:subject>data privacy</dc:subject>
               <dc:subject>business intelligence</dc:subject>
               <dc:subject>healthcare</dc:subject>
               <dc:subject>analytics</dc:subject>
               <dc:subject>security</dc:subject>
               <dc:subject>Espionatge industrial</dc:subject>
               <dc:subject>Dades massives</dc:subject>
               <dc:subject>Seguretat informàtica</dc:subject>
               <dc:description>Widespread web application adoption created a large, complex and varied amount&#xd;
of data known as Big Data. These data sets have a great value for many economic&#xd;
and scientific sectors, however they come with additional difficulties when&#xd;
it comes to storing and analyzing them. Big Data Analytics is the term that&#xd;
describes the process of researching this massive amount of information in order&#xd;
to find hidden patterns and correlations. Business Intelligence departments can&#xd;
now support decision-making processes based on this broad range of data points&#xd;
collected throughout the lifetime of an application and the designated user’s interaction&#xd;
with it. However, the abundance and extensive use of Big Data comes&#xd;
with a number of security and privacy risks that must be addressed. This work&#xd;
identifies and analyzes these concerns as well as their requirements. Focusing on&#xd;
user privacy, some of the major issues include: over collection of data in mobile&#xd;
applications, misuse of data, and multi-source data analysis. These issues can&#xd;
not always be solved using existing privacy preserving methods. The variety and&#xd;
velocity of Big Data makes it difficult to distinguish between sensitive and nonsensitive&#xd;
information, so traditional anonymization techniques can not always be&#xd;
used. Furthermore, analyzing multi-source datasets can lead to risks of user reidentification.&#xd;
In this paper we investigate proposed solutions for securing Big&#xd;
Data as well as ways to maintain data privacy. We look into two major use cases:&#xd;
healthcare and web analytics, where Big Data is becoming more and more important.&#xd;
We sum up with a comparison of the requirements and solutions used to&#xd;
preserve user data privacy for the statistical and clinical data collected in today’s&#xd;
applications.</dc:description>
               <dc:date>2017-06-20</dc:date>
               <dc:type>Master thesis</dc:type>
               <dc:rights>Open Access</dc:rights>
               <dc:publisher>Universitat Politècnica de Catalunya</dc:publisher>
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