4 research outputs found
Semantic and pragmatic characterization of learning objects
Tese de doutoramento. Engenharia Informática. Universidade do Porto. Faculdade de Engenharia. 201
POLIS: a probabilistic summarisation logic for structured documents
PhDAs the availability of structured documents, formatted in markup languages such as SGML, RDF,
or XML, increases, retrieval systems increasingly focus on the retrieval of document-elements,
rather than entire documents. Additionally, abstraction layers in the form of formalised retrieval
logics have allowed developers to include search facilities into numerous applications, without
the need of having detailed knowledge of retrieval models.
Although automatic document summarisation has been recognised as a useful tool for reducing
the workload of information system users, very few such abstraction layers have been developed
for the task of automatic document summarisation. This thesis describes the development
of an abstraction logic for summarisation, called POLIS, which provides users (such as developers
or knowledge engineers) with a high-level access to summarisation facilities. Furthermore,
POLIS allows users to exploit the hierarchical information provided by structured documents.
The development of POLIS is carried out in a step-by-step way. We start by defining a series
of probabilistic summarisation models, which provide weights to document-elements at a user
selected level. These summarisation models are those accessible through POLIS. The formal
definition of POLIS is performed in three steps. We start by providing a syntax for POLIS,
through which users/knowledge engineers interact with the logic. This is followed by a definition
of the logics semantics. Finally, we provide details of an implementation of POLIS.
The final chapters of this dissertation are concerned with the evaluation of POLIS, which is
conducted in two stages. Firstly, we evaluate the performance of the summarisation models by
applying POLIS to two test collections, the DUC AQUAINT corpus, and the INEX IEEE corpus.
This is followed by application scenarios for POLIS, in which we discuss how POLIS can be used in specific IR tasks
Knowledge Modelling and Learning through Cognitive Networks
One of the most promising developments in modelling knowledge is cognitive network science, which aims to investigate cognitive phenomena driven by the networked, associative organization of knowledge. For example, investigating the structure of semantic memory via semantic networks has illuminated how memory recall patterns influence phenomena such as creativity, memory search, learning, and more generally, knowledge acquisition, exploration, and exploitation. In parallel, neural network models for artificial intelligence (AI) are also becoming more widespread as inferential models for understanding which features drive language-related phenomena such as meaning reconstruction, stance detection, and emotional profiling. Whereas cognitive networks map explicitly which entities engage in associative relationships, neural networks perform an implicit mapping of correlations in cognitive data as weights, obtained after training over labelled data and whose interpretation is not immediately evident to the experimenter. This book aims to bring together quantitative, innovative research that focuses on modelling knowledge through cognitive and neural networks to gain insight into mechanisms driving cognitive processes related to knowledge structuring, exploration, and learning. The book comprises a variety of publication types, including reviews and theoretical papers, empirical research, computational modelling, and big data analysis. All papers here share a commonality: they demonstrate how the application of network science and AI can extend and broaden cognitive science in ways that traditional approaches cannot
Proceedings of the ECMLPKDD 2015 Doctoral Consortium
ECMLPKDD 2015 Doctoral Consortium was organized for the second time as part of the European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (ECMLPKDD), organised in Porto during September 7-11, 2015. The objective of the doctoral consortium is to provide an environment for students to exchange their ideas and experiences with peers in an interactive atmosphere and to get constructive feedback from senior researchers in machine learning, data mining, and related areas. These proceedings collect together and document all the contributions of the ECMLPKDD 2015 Doctoral Consortium