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Sebastian Kaiser

    Die Bewertung von Betriebs- und Grundvermögen im Rahmen der Erbschaftsteuer- und Schenkungsteuerreform 2008
    Trends und Motive von Frauen im Studium an deutschen Universitäten und Entwicklungen im europäischen Raum
    Verbesserung der Laufzeit über 3.000m durch Intervalltraining bei durchschnittlich trainierten männlichen Sportlern
    Management in kommerziellen Sportstudios
    The Business of Events Management
    Biclustering: methods, software and application
    • 2014

      The Business of Events Management

      • 416 pages
      • 15 hours of reading

      Events Management 1e John Beech, Sebastian Kaiser and Robert Kaspar The Business of Events Management provides an accessible and lively introduction to the practice of managing an event, festival, conference or congress. Written by a team of international experts, the book incorporates the latest thinking in events management and highlights key theories, concepts and models by using a range of case studies and examples. This book will enable you to: * Manage the financial aspects of events management * Understand the impact of events on built and natural environments * Explain the role of volunteers in an event and understand the challenges that managing them involves * Understand the key issues in planning and designing a venue Each chapter features a real-life case study to illustrate key concepts and place theory in a practical context, as well as preparing students to tackle any challenges they may face in managing events. Case studies include the Edinburgh International Festival, the 2010 Winter Olympics and Indian Premier League Cricket.

      The Business of Events Management
    • 2011

      Over the past decade, biclustering has gained traction in biological data analysis and other areas involving high-dimensional two-way datasets. This technique simultaneously clusters both rows and columns, identifying subgroups of objects that share similarities in specific variables while differing in others. This dissertation aims to enhance biclustering methods, addressing the sensitivity of existing techniques to parameter variations and data fluctuations. An ensemble method was developed to improve stability and reliability, allowing for more consistent bicluster retrieval through varied parameter settings or by utilizing sub- or bootstrap samples of data. A software package was created, featuring a collection of bicluster algorithms tailored for diverse clustering tasks and data scales, along with new visualization methods for bicluster solutions. Traditional cluster validation indices, such as the Jaccard index, were adapted for the bicluster framework. The research also applied biclustering to marketing data, adjusting established algorithms for different data contexts and developing a new method for ordinal data. To validate this approach, artificial data with correlated random values was generated based on a probability vector and correlation structure. All methods discussed are accessible in the R packages biclust and orddata, with numerous examples provided to demonstrate their application.

      Biclustering: methods, software and application