scholarly journals Affective recommender systems in online news industry: how emotions influence reading choices

2018 ◽  
Vol 29 (2) ◽  
pp. 345-379 ◽  
Author(s):  
Jan Mizgajski ◽  
Mikołaj Morzy
2006 ◽  
Vol 31 (2) ◽  
Author(s):  
Robert Sparks ◽  
Mary Lynn Young ◽  
Simon Darnell

Abstract: This paper critically examines the corporate restructurings that took place in the Canadian news industry in 2000, using findings from website analyses in 2001 and 2003 that assessed the impact of the changes on the provision of online news. The paper shows that despite their stated commitment to convergence, the restructured companies only selectively exploited the interactive potential of the Web, and that they tended to operate under traditional news and revenue strategies. It also documents a continued shift in Canadian regulatory policies toward neo-liberal conceptions of news and the public good framed in terms of private ownership, free markets, and consumer choice. Résumé : Cet article propose un examen critique des réorganisations d’entreprises qui ont eu lieu dans l’industrie de l’actualité canadienne en 2000. Pour ce faire, il a recours aux résultats d’analyses de sites Web faites en 2001 et 2003. Ces analyses avaient pour but de mesurer l’impact de ces réorganisations sur la présence de nouvelles en ligne. L’article montre que les entreprises réorganisées, malgré l’engagement qu’elles ont exprimé de s’avancer vers la convergence, n’ont exploité le potentiel interactif du Web que de manière sélective continuant à recourir à des stratégies traditionnelles en ce qui a trait à l’actualité et au revenu. L’article observe aussi une tendance continue dans les politiques réglementaires canadiennes vers une conception néolibérale de l’actualité et du bien public qui privilégie la propriété privée, les marchés libres et l’offre de choix au consommateur.


2016 ◽  
Vol 2 ◽  
pp. e63 ◽  
Author(s):  
Nirmal Jonnalagedda ◽  
Susan Gauch ◽  
Kevin Labille ◽  
Sultan Alfarhood

Online news reading has become a widely popular way to read news articles from news sources around the globe. With the enormous amount of news articles available, users are easily overwhelmed by information of little interest to them. News recommender systems help users manage this flood by recommending articles based on user interests rather than presenting articles in order of their occurrence. We present our research on developing personalized news recommendation system with the help of a popular micro-blogging service, “Twitter.” News articles are ranked based on the popularity of the article identified from Twitter’s public timeline. In addition, users construct profiles based on their interests and news articles are also ranked based on their match to the user profile. By integrating these two approaches, we present a hybrid news recommendation model that recommends interesting news articles to the user based on their popularity as well as their relevance to the user profile.


Sensors ◽  
2021 ◽  
Vol 21 (16) ◽  
pp. 5666
Author(s):  
Cach N. Dang ◽  
María N. Moreno-García ◽  
Fernando De la Prieta

Recommender systems have been applied in a wide range of domains such as e-commerce, media, banking, and utilities. This kind of system provides personalized suggestions based on large amounts of data to increase user satisfaction. These suggestions help client select products, while organizations can increase the consumption of a product. In the case of social data, sentiment analysis can help gain better understanding of a user’s attitudes, opinions and emotions, which is beneficial to integrate in recommender systems for achieving higher recommendation reliability. On the one hand, this information can be used to complement explicit ratings given to products by users. On the other hand, sentiment analysis of items that can be derived from online news services, blogs, social media or even from the recommender systems themselves is seen as capable of providing better recommendations to users. In this study, we present and evaluate a recommendation approach that integrates sentiment analysis into collaborative filtering methods. The recommender system proposal is based on an adaptive architecture, which includes improved techniques for feature extraction and deep learning models based on sentiment analysis. The results of the empirical study performed with two popular datasets show that sentiment–based deep learning models and collaborative filtering methods can significantly improve the recommender system’s performance.


2019 ◽  
Author(s):  
Felicia Loecherbach ◽  
Damian Trilling

Today’s online news environment is increasingly characterized by personalized news selections, relying on algorithmic solutions for extracting relevant articles and composing an individual’s news diet. Yet, the impact of such recommendation algorithms on how we consume and perceive news is still understudied. We therefore developed one of the first software solutions to conduct studies on effects of news recommender systems in a realistic setting. The web app of our framework (called 3bij3) displays real-time news articles selected by different mechanisms. 3bij3 can be used to conduct large-scale field experiments, in which participants’ use of the site can be tracked over extended periods of time. Compared to previous work, 3bij3 gives researchers control over the recommendation system under study and creates a realistic environment for the participants. It integrates web scraping, different methods to compare and classify news articles, different recommender systems, a web interface for participants, gamification elements, and a user survey to enrich the behavioral measures obtained.


Author(s):  
Cach Nhan Dang ◽  
María N. Moreno ◽  
Fernando De la Prieta

Recommender systems have been applied in a wide range of domains such as e-commerce, media, banking, and utilities. This kind of system provides personalized suggestions based on large amounts of data in order to increase user satisfaction. These suggestions help client select products, while organizations can increase the consumption of a product. In the case of social data, sentiment analysis can help gain better understanding of a user’s attitudes, opinions and emotions, which is beneficial to integrate in recommender systems for achieving higher recommendation reliability. On the one hand, this information can be used to complement explicit ratings given to products by users. On the other hand, sentiment analysis of items that can be derived from online news services, blogs, social media or even from the recommender systems themselves is seen as capable of providing better recommendations to users. In this study, we present and evaluate a recommendation approach that integrates sentiment analysis into collaborative filtering methods. The recommender system proposal is based on an adaptive architecture, which includes improved techniques for feature extraction and deep learning models based on sentiment analysis. The results of the empirical study performed with two popular datasets show that sentiment–based deep learning models and collaborative filtering methods can significantly improve the recommender system’s performance.


2020 ◽  
Vol 2 (1) ◽  
pp. 53-79
Author(s):  
Felicia Loecherbach ◽  
Damian Trilling

Abstract Today’s online news environment is increasingly characterized by personalized news selections, relying on algorithmic solutions for extracting relevant articles and composing an individual’s news diet. Yet, the impact of such recommendation algorithms on how we consume and perceive news is still understudied. We therefore developed one of the first software solutions to conduct studies on effects of news recommender systems in a realistic setting. The web app of our framework (called 3bij3) displays real-time news articles selected by different mechanisms. 3bij3 can be used to conduct large-scale field experiments, in which participants’ use of the site can be tracked over extended periods of time. Compared to previous work, 3bij3 gives researchers control over the recommendation system under study and creates a realistic environment for the participants. It integrates web scraping, different methods to compare and classify news articles, different recommender systems, a web interface for participants, gamification elements, and a user survey to enrich the behavioural measures obtained.


AI Magazine ◽  
2022 ◽  
Vol 42 (3) ◽  
pp. 55-69
Author(s):  
Jon Gulla ◽  
Rolf Svendsen ◽  
Lemei Zhang ◽  
Agnes Stenbom ◽  
Jørgen Frøland

The adoption of recommender systems in online news personalization has made it possible to tailor the news stream to the individual interests of each reader. Previous research on commercial recommender systems has emphasized their use in large-scale media houses and technology companies, and real-world experiments indicate substantial improvements of click rates and user satisfaction. It is less understood how smaller media houses are coping with this new technology, how the technology affects their business models, their editorial processes, and their news production in general. Here we report on the experiences from numerous Scandinavian media houses that have experimented with various recommender strategies and streamlined their news production to provide personalized news experiences. In addition to influencing the content and style of news stories and the working environment of journalists, the news recommender systems have been part of a profound digital transformation of the whole media industry. Interestingly, many media houses have found it undesirable to automate the entire recommendation process and look for approaches that combine automatic recommendations with editorial choices.


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