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Framework introduction – Bachelor's theses
As is the custom at the HPI, each of the six original students that worked on the project wrote their respective bachelor's thesis on a topic related to the project work.
All of these theses offer in-depth information of a specific topic related to the project.
By: Nick Bessin (@SinNeax)
Language: German
German Title: Der Marktplatz der Zukunft: Simulation von Marktprozessen im Re-Commerce
Abstract:
to be inserted when complete
Links:
to be inserted when complete
By: Leonard Dreeßen (@ldreessen)
Language: German
German Title: Preisfindung in der Recommerce-Domäne: Analyse von Preisstrategien mithilfe einer Online-Marktsimulation
Abstract:
to be inserted when complete
Links:
to be inserted when complete
By: Jan Niklas Groeneveld (@jannikgro)
Language: German
German Title: Ein Vergleich von Reinforcement-Learning-Algorithmen für die dynamische Preisgestaltung auf Recommerce-Märkten
Abstract:
to be inserted when complete
Links:
to be inserted when complete
By: Judith Herrmann (@felix-20)
Language: German
German Title: Skalierbares Lernen in der Cloud
Abstract:
Cloud environments are becoming more and more important. Especially in the field of machine learning, they offer the possibility of making the learning process more efficient. The
better hardware, the easy and continuous availability makes these remote computers indispensable for modern systems. Large providers often sell a complete solution that includes all
the tools researchers need to work. However, only a few specialise in reinforcement learning.
This paper presents a cloud architecture that can be used to train reinforcement learning
agents. It is based on a market simulation in which the agents can learn the best possible
pricing strategies. The requirements and the implementation are discussed. In addition, the
scalability of the architecture will be shown on the basis of experiments carried out with the
market simulation.
Links:
Download
By: Nikkel Mollenhauer (@NikkelM)
Language: English
Abstract:
Sustainable recommerce markets are growing faster than ever. In such markets, customers are incentivised to resell their used products to businesses, which then refurbish and sell them again on the secondary market. However, businesses now face the challenge of having to set three different prices for the same item: One price for the new item, one for its refurbished version and the price at which items are bought back from customers. Since these prices are heavily influenced by each other, traditional pricing methods become less effective. To solve this dynamic pricing problem, a simulation framework was built which can be used to train artificial vendors to set optimised prices using Reinforcement learning algorithms. Before employing these trained agents on real markets, their fitness must be monitored and evaluated, as prices that are too high or too low can lead to high costs for the business. This thesis introduces a number of ways that such dynamic pricing agents can be monitored. We come to the conclusion that it is best to use a wide range of tools when evaluating different aspects of an agent’s performance, from running large-scale simulations to monitoring small policy changes following shifting market states.
Links:
Download link
Github repository
By: Johann Schulze Tast (@blackjack2693)
Language: German
German Title: Vortrainieren RL-basierter Preisfindungsagenten für Recommerce mit geammelten Marktdaten
Abstract:
to be inserted when complete
Links:
to be inserted when complete
Online Marketplace Simulation: A Testbed for Self-Learning Agents is the 2021/2022 bachelor's project of the Enterprise Platform and Integration Concepts (@hpi-epic, epic.hpi.de) research group of the Hasso Plattner Institute.