Erasmus University Thesis Repository Publications by Year
  • Faculties
    • Erasmus School of Economics
    • Erasmus School of History, Culture and Communication
    • Erasmus School of Law
    • Erasmus School of Philosophy
    • Erasmus School of Social and Behavioural Sciences
    • Erasmus School of Health Policy & Management
    • International Institute of Social Studies
    • Rotterdam School of Management
    • Tinbergen Institute
    • Institute for Housing and Urban Development Studies
    • RSM Parttime Master Bedrijfskunde
    • Erasmus University Library
  • about
    • Thesis Repository.
  • sign in
  • Rotterdam School of Management /
  • Series

Business Analytics & Management

Collection

Collection

A series from Rotterdam School of Management
organisation logo
  • Impact of Virtual Influencers on the Purchasing Intentions of Chinese Gen Z Master Thesis

    Pan, Yue

    August 2024
  • Forecasting efficiently the number of orders in McDonald's Netherlands. Exploration of an innovative "micro" approach to forecast KPIs Master Thesis

    Colnat, Martin

    August 2024
  • Approaches to Forecasting Competitors' Sales Distribution: Leveraging Data Pooling and Machine Learning Master Thesis

    Chen, Yi Hui

    August 2024
  • Sybil detection in token airdrops: a comparative analysis of clustering algorithms Master Thesis

    El-Naggar, Stefan

    August 2024
  • Exploring deep hybrid models for large scale data-driven railway switch prognostics Master Thesis

    Nissink, Ivo

    August 2024
  • Twitch drops: the impact of digital campaigns on channel popularity Master Thesis

    Krawiecki, Karol

    August 2024
  • Which complaints are more likely to be responded? A research based on the complaints & responses on Asia’s 50 Best Restaurants list on Tripadvisor Master Thesis

    Li, Xiangyun

    August 2024
  • Van Oord Case Study: How effectively can machine learning algorithms predict late invoice payments within Procure-to-Pay (PtP), and what are the implications of deploying controls based on these predictions for enhancing operational efficiency and reducing the incidence of delayed invoice settlements in a corporate setting? Master Thesis

    Chan, Chi Hong Adam

    September 2024
Previous
Refine Publication List
Export Citations
  • AAA Style
  • APA Style
  • Cell Style
  • Chicago Style
  • Harvard Style
  • IEEE Style
  • MLA Style
  • Nature Style
  • Vancouver Style
  • American-Institute-of-Physics Style
  • Council-of-Science-Editors Style
  • BibTex Format
  • Endnote Format
  • RIS Format
  • CSL Format
  • DOIs only
Next
logo
  • About

    • Erasmus University Rotterdam
    • Privacy Statement

Copyright © 2026 Erasmus University Rotterdam, its licensors, and contributors. All rights reserved.
Text and data mining (including for AI training) is prohibited unless permitted by law or with prior written consent.
Public search engines may crawl and index publicly available pages solely to facilitate discovery of this website and its content.

artudis website

Workflow

Workflow

Add Content


User Publication Person Organisation Collection
Close