Recent advances in Natural Language Processing have substantially improved contextualized representations of language. However, the inclusion of factual knowledge, particularly in the biomedical domain, remains challenging. Hence, many Language Models (LMs) are extended by Knowledge Graphs (KGs), but most approaches require entity linking (i.e., explicit alignment between text and KG entities). Inspired by single-stream multimodal Transformers operating on text, image and video data, this thesis proposes the Sophisticated Transformer trained on biomedical text and Knowledge Graphs (STonKGs). STonKGs incorporates a novel multimodal architecture based on a cross encoder that uses the attention mechanism on a concatenation of input sequences d...
Background Knowledge is often produced from data generated in scientific investigations. An ever-gro...
The availability and use of knowledge graphs have become commonplace as a compact storage of informa...
This presentation covers the state-of-the-art benchmark dataset resources as well as the best neural...
Recent advances in Natural Language Processing have substantially improved contextualized representa...
The majority of biomedical knowledge is stored in structured databases or as unstructured text in sc...
While most approaches individually exploit unstructured data from the biomedical literature or struc...
While recent years have seen a rise of research in knowledge graph enrichedpre-trained language mode...
Although knowledge graphs (KGs) are used extensively in biomedical research to model complex phenome...
Within clinical, biomedical, and translational science, an increasing number of projects are adoptin...
The slides in this repository were developed for Dr. Marco Mesiti's, University of Milan, course tit...
We propose an approach for knowledge graph (KG) completion that leverages multimodal information on ...
Within clinical, biomedical, and translational science, an increasing number of projects are adoptin...
The emergence of deep learning algorithms in natural language processing has boosted the development...
Text mining is still budding in the field of medicine. However, with rising volumes of scientific li...
Background Knowledge is often produced from data generated in scientific investigations. An ever-gro...
The availability and use of knowledge graphs have become commonplace as a compact storage of informa...
This presentation covers the state-of-the-art benchmark dataset resources as well as the best neural...
Recent advances in Natural Language Processing have substantially improved contextualized representa...
The majority of biomedical knowledge is stored in structured databases or as unstructured text in sc...
While most approaches individually exploit unstructured data from the biomedical literature or struc...
While recent years have seen a rise of research in knowledge graph enrichedpre-trained language mode...
Although knowledge graphs (KGs) are used extensively in biomedical research to model complex phenome...
Within clinical, biomedical, and translational science, an increasing number of projects are adoptin...
The slides in this repository were developed for Dr. Marco Mesiti's, University of Milan, course tit...
We propose an approach for knowledge graph (KG) completion that leverages multimodal information on ...
Within clinical, biomedical, and translational science, an increasing number of projects are adoptin...
The emergence of deep learning algorithms in natural language processing has boosted the development...
Text mining is still budding in the field of medicine. However, with rising volumes of scientific li...
Background Knowledge is often produced from data generated in scientific investigations. An ever-gro...
The availability and use of knowledge graphs have become commonplace as a compact storage of informa...
This presentation covers the state-of-the-art benchmark dataset resources as well as the best neural...