1,433 research outputs found

    Museum Experience Design: A Modern Storytelling Methodology

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    In this paper we propose a new direction for design, in the context of the theme “Next Digital Technologies in Arts and Culture”, by employing modern methods based on Interaction Design, Interactive Storytelling and Artificial Intelligence. Focusing on Cultural Heritage, we propose a new paradigm for Museum Experience Design, facilitating on the one hand traditional visual and multimedia communication and, on the other, a new type of interaction with artefacts, in the form of a Storytelling Experience. Museums are increasingly being transformed into hybrid spaces, where virtual (digital) information coexists with tangible artefacts. In this context, “Next Digital Technologies” play a new role, providing methods to increase cultural accessibility and enhance experience. Not only is the goal to convey stories hidden inside artefacts, as well as items or objects connected to them, but it is also to pave the way for the creation of new ones through an interactive museum experience that continues after the museum visit ends. Social sharing, in particular, can greatly increase the value of dissemination

    Neural Response Ranking for Social Conversation: A Data-Efficient Approach

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    The overall objective of 'social' dialogue systems is to support engaging, entertaining, and lengthy conversations on a wide variety of topics, including social chit-chat. Apart from raw dialogue data, user-provided ratings are the most common signal used to train such systems to produce engaging responses. In this paper we show that social dialogue systems can be trained effectively from raw unannotated data. Using a dataset of real conversations collected in the 2017 Alexa Prize challenge, we developed a neural ranker for selecting 'good' system responses to user utterances, i.e. responses which are likely to lead to long and engaging conversations. We show that (1) our neural ranker consistently outperforms several strong baselines when trained to optimise for user ratings; (2) when trained on larger amounts of data and only using conversation length as the objective, the ranker performs better than the one trained using ratings -- ultimately reaching a Precision@1 of 0.87. This advance will make data collection for social conversational agents simpler and less expensive in the future.Comment: 2018 EMNLP Workshop SCAI: The 2nd International Workshop on Search-Oriented Conversational AI. Brussels, Belgium, October 31, 201

    Chatbot development to assist patients in health care services

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    Dissertação de mestrado integrado em Engenharia InformáticaDados de alta qualidade sobre tratamentos médicos e de informação técnica tornaram-se acessíveis, criando novas oportunidades de E-Saúde para a recuperação de um paciente. A implementação da aprendizagem automática nestas soluções provou ser essencial e eficaz na elaboração de aplicações para o utilizador para aliviar a sobrecarga do sector de saúde. Atualmente, muitas interações com os utentes são realizadas via telefonemas e mensagens de texto. Os agentes de conversação podem responder a estas questões, fomentando uma rápida interação com os pacientes. O objetivo fundamental desta dissertação é prestar apoio aos pacientes, fornecendo uma fonte de informação fidedigna que lhes permita instruir-se e esclarecer dúvidas sobre os procedimentos e repercussões dos seus problemas de saúde. Este propósito foi concretizado não apenas através de uma plataforma Web intuitiva e acessível, composta por perguntas frequentes, mas também integrando um agente de conversação inteligente para responder a questões. Para este fim, cientificamente, foi necessário conduzir a investigação, implementação e viabilidade dos agentes de conversação no domínio fechado para os cuidados de saúde. Constitui um importante contributo para a comunidade de desenvolvimento de chatbots, na qual se reúnem as últimas inovações e descobertas, bem os desafios actuais da aprendizagem automática, contribuindo para a consciencialização desta área.High-quality data on medical treatments and facility-level information has become accessible, creating new eHealth opportunities for the recuperation of a patient. Machine learning implementation in these solutions has been proven to be essential and effective in building user-centred applications to relieves the burden on the healthcare sector. Nowadays, many patient interactions are handled through healthcare services via phone calls and text message exchange. Conversation agents can provide answers to these queries, promoting fast patient interaction. The underlying aim of this dissertation is to assist patients by providing a reliable source of information to educate themselves and clarify any doubts about procedures and implications of their health issue. This purpose was achieved not only through an intuitive and accessible web platform, with frequently asked questions, but also by integrating an intelligent chatting agent to answer questions. To this end, scientifically, it was necessary to conduct the research, implementation and feasibility of closed-domain conversation agents for healthcare. It is a valuable input for the chatbot development community, which assembles the latest innovations and findings, as well as the current challenges of machine learning, contributing to the awareness of this field

    Ethical Challenges in Data-Driven Dialogue Systems

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    The use of dialogue systems as a medium for human-machine interaction is an increasingly prevalent paradigm. A growing number of dialogue systems use conversation strategies that are learned from large datasets. There are well documented instances where interactions with these system have resulted in biased or even offensive conversations due to the data-driven training process. Here, we highlight potential ethical issues that arise in dialogue systems research, including: implicit biases in data-driven systems, the rise of adversarial examples, potential sources of privacy violations, safety concerns, special considerations for reinforcement learning systems, and reproducibility concerns. We also suggest areas stemming from these issues that deserve further investigation. Through this initial survey, we hope to spur research leading to robust, safe, and ethically sound dialogue systems.Comment: In Submission to the AAAI/ACM conference on Artificial Intelligence, Ethics, and Societ

    Generative Conversational Agents- The State-of-the-Art and the Future of Intelligent Conversational Systems

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    Intelligent conversational agents that generate responses from scratch are rapidly gaining in popularity. Sequence-to-sequence deep learning models are particularly well-suited for generating a textual response from a query. In this paper, I describe various generative models that are capable of having open-domain conversations. Toward the end, I present a null result I obtained in an attempt to train a chatbot from a small dataset and propose the use of a deep memory based machine translation model for training chatbots on small datasets
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