4 research outputs found

    Integration of heterogeneous data sources and automated reasoning in healthcare and domotic IoT systems

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    In recent years, IoT technology has radically transformed many crucial industrial and service sectors such as healthcare. The multi-facets heterogeneity of the devices and the collected information provides important opportunities to develop innovative systems and services. However, the ubiquitous presence of data silos and the poor semantic interoperability in the IoT landscape constitute a significant obstacle in the pursuit of this goal. Moreover, achieving actionable knowledge from the collected data requires IoT information sources to be analysed using appropriate artificial intelligence techniques such as automated reasoning. In this thesis work, Semantic Web technologies have been investigated as an approach to address both the data integration and reasoning aspect in modern IoT systems. In particular, the contributions presented in this thesis are the following: (1) the IoT Fitness Ontology, an OWL ontology that has been developed in order to overcome the issue of data silos and enable semantic interoperability in the IoT fitness domain; (2) a Linked Open Data web portal for collecting and sharing IoT health datasets with the research community; (3) a novel methodology for embedding knowledge in rule-defined IoT smart home scenarios; and (4) a knowledge-based IoT home automation system that supports a seamless integration of heterogeneous devices and data sources

    Natural Language Processing: Emerging Neural Approaches and Applications

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    This Special Issue highlights the most recent research being carried out in the NLP field to discuss relative open issues, with a particular focus on both emerging approaches for language learning, understanding, production, and grounding interactively or autonomously from data in cognitive and neural systems, as well as on their potential or real applications in different domains

    Tackling Sexist Hate Speech: Cross-Lingual Detection and Multilingual Insights from Social Media

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    With the widespread use of social media, the proliferation of online communication presents both opportunities and challenges for fostering a respectful and inclusive digital environment. Due to the anonymity and weak regulations of social media platforms, the rise of hate speech has become a significant concern, particularly against specific individuals or groups based on race, religion, ethnicity, or gender, posing a severe threat to human rights. Sexist hate speech is a prevalent form of online hate that often manifests itself through gender-based violence and discrimination, challenging societal norms and legal systems. Despite the advances in natural language processing techniques for detecting offensive and sexist content, most research still focuses on monolingual (primarily English) contexts, neglecting the multilingual nature of online platforms. This gap highlights the need for effective and scalable strategies to address the linguistic diversity and cultural variations in hate speech. Cross-language transfer learning and state-of-the-art multilingual pre-trained language models provide potential solutions to improve the detection efficiency of low-resource languages by leveraging data from high-resource languages. Additional knowledge is crucial to facilitate the models’ performance in detecting culturally varying expressions of sexist hate speech in different languages. In this thesis, we delve into the complex area of identifying sexist hate speech in social media across diverse languages pertaining to different language families, with a focus on sexism and a broad exploration of datasets, methodologies, and barriers inherent in mitigating online hate speech in cross-lingual and multilingual scenarios. We primarily apply cross-lingual transfer learning techniques to detect sexist hate speech, aiming to leverage knowledge acquired from related linguistic data in order to improve performance in a target language. We also investigate the integration of external knowledge to deepen the understanding of sexism in multilingual social media contexts, addressing both the challenges of linguistic diversity and the need for comprehensive, culturally sensitive hate speech detection models. Specifically, it embarks on a comprehensive survey of tackling cross-lingual hate speech online, summarising existing datasets and cross-lingual approaches, as well as highlighting challenges and frontiers in this field. It then presents a first contribution to the field, the creation of the Sina Weibo Sexism Review (Swsr) dataset in Chinese —a pioneering resource that not only fills a crucial gap in limited resources but also lays the foundation for relevant cross-lingual investigations. Additionally, it examines how cross-lingual techniques can be utilised to generate domain-aware word embeddings, and explores the application of these embeddings in a cross-lingual hate speech framework, thereby enhancing the capacity to capture the subtleties of sexist hate speech across diverse languages. Recognising the significance of linguistic nuances in multilingual and cross-lingual settings, another innovation consists in proposing and evaluating a series of multilingual and cross-lingual models tailored for detecting sexist hate speech. By leveraging the capacity of shared knowledge and features across languages, these models significantly advance the state-of-the-art in identifying online sexist hate speech. As societies continue to deal with the complexities of social media, the findings and methodologies presented in this thesis could effectively help foster more inclusive and respectful online content across languages

    WICC 2016 : XVIII Workshop de Investigadores en Ciencias de la Computación

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    Actas del XVIII Workshop de Investigadores en Ciencias de la Computación (WICC 2016), realizado en la Universidad Nacional de Entre Ríos, el 14 y 15 de abril de 2016.Red de Universidades con Carreras en Informática (RedUNCI
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