Machine learning has enabled remarkable progress in various fields of research and application in recent years. The primary objective of machine learning consists of developing algorithms that can learn and improve through observation and experience. Machine learning algorithms learn from data, which may exhibit various forms of complexity, which pose fundamental challenges. In this thesis, we address two major types of data complexity: First, data is often inherently connected and can be modeled by a single or multiple graphs. Machine learning methods could potentially exploit these connections, for instance, to find groups of similar users in a social network for targeted marketing or to predict functional properties of proteins for drug ...
Achieving better seeding depth consistency in no-till seeding is a critical performance metric of th...
As measurement of gene expression using microarrays has become a standard high throughput method in ...
This dissertation combined and extended two research areas in order to predict learners' cognition a...
The aim of this thesis is the development and benchmarking of computational methods for the analysis...
Automatic analysis of natural language data is a frequently occurring application of machine learnin...
Large-scale computing environments are important for many aspects of modern life. They drive scient...
Recent technological advances have made it possible to measure various parameters of biological proc...
Stalk lodging causes yield losses in maize cultivation ranging from 5 to 20% annually worldwide and ...
The description and analysis of spatial data is an omnipresent task in both science and industry: In...
The geometric nature of computational problems provides a rich source of solution strategies as well...
Data-driven research approaches are becoming increasingly popular in a growing number of scientific ...
Sentiment Analysis (SA) is the study of opinions and emotions that are conveyed by text. This field ...
Choice-Based Conjoint (CBC) analysis is nowadays by far the most widely used method for exploring co...
During the last decades, implementation of molecular markers such as single nucleotide polymorphisms...
Computational visualization allows scientists and engineers to better understand simulation data and...
Achieving better seeding depth consistency in no-till seeding is a critical performance metric of th...
As measurement of gene expression using microarrays has become a standard high throughput method in ...
This dissertation combined and extended two research areas in order to predict learners' cognition a...
The aim of this thesis is the development and benchmarking of computational methods for the analysis...
Automatic analysis of natural language data is a frequently occurring application of machine learnin...
Large-scale computing environments are important for many aspects of modern life. They drive scient...
Recent technological advances have made it possible to measure various parameters of biological proc...
Stalk lodging causes yield losses in maize cultivation ranging from 5 to 20% annually worldwide and ...
The description and analysis of spatial data is an omnipresent task in both science and industry: In...
The geometric nature of computational problems provides a rich source of solution strategies as well...
Data-driven research approaches are becoming increasingly popular in a growing number of scientific ...
Sentiment Analysis (SA) is the study of opinions and emotions that are conveyed by text. This field ...
Choice-Based Conjoint (CBC) analysis is nowadays by far the most widely used method for exploring co...
During the last decades, implementation of molecular markers such as single nucleotide polymorphisms...
Computational visualization allows scientists and engineers to better understand simulation data and...
Achieving better seeding depth consistency in no-till seeding is a critical performance metric of th...
As measurement of gene expression using microarrays has become a standard high throughput method in ...
This dissertation combined and extended two research areas in order to predict learners' cognition a...