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Publicações

Publicações por LIAAD

2021

The position of a sample of Portuguese food and nutrition professionls towards food labelling and European Legislation

Autores
Vareiro, Daniela; Franchini, Bela; Bruno, M P M Oliveira; Almeida, Maria Daniel Vaz de;

Publicação

Abstract

2021

Evaluation of the impact of protein intake on postprandial glycemia in adults with type 1 Diabetes Mellitus with functional insulin therapy

Autores
Ribeiro, Lisandra; Neves, Celestino; Arteiro, Cristina; Bruno M P M Oliveira; Correia, Flora;

Publicação

Abstract

2021

Adherence to the Mediterranean Dietary Pattern and its relationships with energy and nutritional intake

Autores
Ribeiro, S.; Abreu, T.; Rodrigues, Sara; Afonso, Cláudia; Bruno M P M Oliveira; Poínhos, Rui;

Publicação

Abstract

2021

Exploding TV Sets and Disappointing Laptops: Suggesting Interesting Content in News Archives Based on Surprise Estimation

Autores
Jatowt, A; Hung, IC; Färber, M; Campos, R; Yoshikawa, M;

Publicação
Advances in Information Retrieval - 43rd European Conference on IR Research, ECIR 2021, Virtual Event, March 28 - April 1, 2021, Proceedings, Part I

Abstract
Many archival collections have been recently digitized and made available to a wide public. The contained documents however tend to have limited attractiveness for ordinary users, since content may appear obsolete and uninteresting. Archival document collections can become more attractive for users if suitable content can be recommended to them. The purpose of this research is to propose a new research direction of Archival Content Suggestion to discover interesting content from long-term document archives that preserve information on society history and heritage. To realize this objective, we propose two unsupervised approaches for automatically discovering interesting sentences from news article archives. Our methods detect interesting content by comparing the information written in the past with one created in the present to make use of a surprise effect. Experiments on New York Times corpus show that our approaches effectively retrieve interesting content. © 2021, Springer Nature Switzerland AG.

2021

Estimating Contemporary Relevance of Past News

Autores
Sato, M; Jatowt, A; Duan, YJ; Campos, R; Yoshikawa, M;

Publicação
2021 ACM/IEEE JOINT CONFERENCE ON DIGITAL LIBRARIES (JCDL 2021)

Abstract
Our society generates massive amounts of digital data, significant portion of which is being archived and made accessible to the public for the current and future use. In addition, historical born-analog documents are being increasingly digitized and included in document archives which are available online. Professionals who use document archives tend to know what they wish to search for. Yet, if the results are to be useful and attractive for ordinary users they need to contain content which is interesting and familiar. However, the state-of-the-art retrieval methods for document archives basically apply same techniques as search engines for synchronic document collections. In this paper, we introduce a novel concept of estimating the relation of archival documents to the present times, called contemporary relevance. Contemporary relevance can be used for improving access to archival document collections so that users have higher probability of finding interesting or useful content. We then propose an effective method for computing contemporary relevance degrees of news articles using Learning to Rank with a range of diverse features, and we successfully test it on the New York Times Annotated document collection. Our proposal offers a novel paradigm of information access to archival document collections by incorporating the context of contemporary time.

2021

Crowdsourced Data Stream Mining for Tourism Recommendation

Autores
Leal, F; Veloso, B; Malheiro, B; Burguillo, JC;

Publicação
Trends and Applications in Information Systems and Technologies - Volume 1, WorldCIST 2021, Terceira Island, Azores, Portugal, 30 March - 2 April, 2021.

Abstract
Crowdsourced data streams are continuous flows of data generated at high rate by users, also known as the crowd. These data streams are popular and extremely valuable in several domains. This is the case of tourism, where crowdsourcing platforms rely on tourist and business inputs to provide tailored recommendations to future tourists in real time. The continuous, open and non-curated nature of the crowd-originated data requires robust data stream mining techniques for on-line profiling, recommendation and evaluation. The sought techniques need, not only, to continuously improve profiles and learn models, but also be transparent, overcome biases, prioritise preferences, and master huge data volumes; all in real time. This article surveys the state-of-art in this field, and identifies future research opportunities. © 2021, The Author(s), under exclusive license to Springer Nature Switzerland AG.

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