6 research outputs found
Understanding Class Representations : An Intrinsic Evaluation of Zero-Shot Text Classification
Frequently, Text Classification is limited by insufficient training data. This problem is addressed by Zero-Shot Classification through the inclusion of external class definitions and then exploiting the relations between classes seen during training and unseen classes (Zero-shot). However, it requires a class embedding space capable of accurately representing the semantic relatedness between classes. This work defines an intrinsic evaluation based on greater-than constraints to provide a better understanding of this relatedness. The results imply that textual embeddings are able to capture more semantics than Knowledge Graph embeddings, but combining both modalities yields the best performance
Designing Intelligent Systems for Online Education: Open Challenges and Future Directions
The design and delivering of platforms for online education is fostering increasingly intense research. Scaling up education online brings new emerging needs related with hardly manageable classes, overwhelming content alternatives, and academic dishonesty while interacting remotely, as examples. However, with the impressive progress of the data mining and machine learning fields, combined with the large amounts of learning-related data and high-performance computing, it has been possible to gain a deeper understanding of the nature of learning and teaching online. Methods at the analytical and algorithmic levels are constantly being developed and hybrid approaches are receiving an increasing attention. Recent methods are analyzing not only the online traces left by students a posteriori, but also the extent to which this data can be turned into actionable insights and models, to support the above needs in a computationally efficient, adaptive and timely way. In this paper, we present relevant open challenges lying at the intersection between the machine learning and educational communities, that need to be addressed to further develop the field of intelligent systems for online education. Several areas of research in this field are identified, such as data availability and sharing, time-wise and multi-modal data modelling, generalizability, fairness, explainability, interpretability, privacy, and ethics behind models delivered for supporting education. Practical challenges and recommendations for possible research
directions are provided for each of them, paving the way for future advances in this field
Modelling Archival Hierarchies in Practice: Key Aspects and Lessons Learned
An increasing number of archival institutions aim to provide public access to historical documents.
Ontologies have been designed, developed and utilised to model the archival description of historical
documents and to enable interoperability between different information sources. However, due to the
heterogeneous nature of archives and archival systems, current ontologies for the representation of
archival content do not always cover all existing structural organisation forms equally well. After briefly
contextualising the heterogeneity in the hierarchical structure of German archives, this paper describes
and evaluates differences between two archival ontologies, ArDO and RiC-O, and their approaches to
modelling hierarchy levels and archive dynamics
DDB-EDM to FaBiO: The Case of the German Digital Library
Cultural heritage portals have the goal of providing users
with seamless access to all their resources. This paper introduces initial
efforts for a user-oriented restructuring of the German Digital Library
(DDB). At present, cultural heritage objects (CHOs) in the DDB are
modeled using an extended version of the Europeana Data Model (DDBEDM), which negatively impacts usability and exploration. These challenges can be addressed by exploiting ontologies, and building a knowledge graph from the DDB’s voluminous collection. Towards this goal, an
alignment of bibliographic metadata from DDB-EDM to FRBR-Aligned
Bibliographic Ontology (FaBiO) is presented