102 research outputs found
ChatGPT and the AI Act
It is not easy being a tech regulator these days. The European institutions are working hard towards finalising the AI Act in autumn, and then generative AI systems like ChatGPT come along! In this essay, we comment the European AI Act by arguing that its current risk-based approach is too limited for facing ChatGPT & co
The European AI Act and How It Matters for Research into AI in Media and Journalism
The protection of fundamental rights, and the human-centric, ethical and responsible use of Artificial Intelligence (AI) technologies in general is a central ambition of the European AI strategy, with no lesser goal than âspearhead[ing] the development of new ambitious global normsâ (European Commission 2021). Like the General Data Protection Regulation before it, the draft AI Act can be expected to set a new tone for the debate around âresponsible AIâ both within and beyond Europe. It is one of the first attempts worldwide to cut through an increasingly opaque jungle of private and public ethical guidelines in order to formulate binding regulatory standards for what exactly responsible and human-centric AI must mean.The draft AI Act is relevant not only to potential producers and users of AI, but also to a growing community of scholars that is interested in the normative implications of AI and wants to find ways to make the notion of âresponsible useâ of AI meaningful. Scholars have an important role to play in informing the emerging policies around AI with their insights, as well as studying the consequences once policies are adopted. As such, the primary goal of this commentary is to explore the relevancy of the draft AI Act for media and journalism, as well as to stimulate the community of media scholars to engage further with the potential implications of the regulation
Storia: Summarizing Social Media Content based on Narrative Theory using Crowdsourcing
People from all over the world use social media to share thoughts and
opinions about events, and understanding what people say through these channels
has been of increasing interest to researchers, journalists, and marketers
alike. However, while automatically generated summaries enable people to
consume large amounts of data efficiently, they do not provide the context
needed for a viewer to fully understand an event. Narrative structure can
provide templates for the order and manner in which this data is presented to
create stories that are oriented around narrative elements rather than
summaries made up of facts. In this paper, we use narrative theory as a
framework for identifying the links between social media content. To do this,
we designed crowdsourcing tasks to generate summaries of events based on
commonly used narrative templates. In a controlled study, for certain types of
events, people were more emotionally engaged with stories created with
narrative structure and were also more likely to recommend them to others
compared to summaries created without narrative structure
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Leveraging Professional Ethics for Responsible AI
Applying AI techniques to journalism
Beyond mystery: Putting algorithmic accountability in context
Critical algorithm scholarship has demonstrated the difficulties of attributing accountability for the actions and effects of algorithmic systems. In this commentary, we argue that we cannot stop at denouncing the lack of accountability for algorithms and their effects but must engage the broader systems and distributed agencies that algorithmic systems exist within; including standards, regulations, technologies, and social relations. To this end, we explore accountability in âthe Generated Detective,â an algorithmically generated comic. Taking up the mantle of detectives ourselves, we investigate accountability in relation to this piece of experimental fiction. We problematize efforts to effect accountability through transparency by undertaking a simple operation: asking for permission to re-publish a set of the algorithmically selected and modified words and images which make the frames of the comic. Recounting this process, we demonstrate slippage between the âcomplicationâ of the algorithm and the obscurity of the legal and institutional structures in which it exists
LST1 promotes the assembly of a molecular machinery responsible for tunneling nanotube formation
Carefully orchestrated intercellular communication is an essential prerequisite for the development
of multicellular organisms. In recent years, tunneling nanotubes (TNT) have emerged as a novel
and widespread mechanism of cell-cell communication. However, the molecular basis of their
formation is still poorly understood. In the present study we report that the transmembrane MHC
class III protein LST1 induces the formation of functional nanotubes and is required for endogenous
nanotube generation. Mechanistically, we found LST1 to induce nanotube formation by recruiting
the small GTPase RalA to the plasma membrane and promoting its interaction with the exocyst
complex. Furthermore, we determined LST1 to recruit the actin-crosslinking protein filamin to the
plasma membrane and to interact with M-Sec, myosin and myoferlin. These results allow us to
suggest a molecular model for nanotube generation. In this proposal LST1 functions as a membrane
scaffold mediating the assembly of a multimolecular complex, which controls the formation of
functional nanotubes
Doing social media analytics
'The era of Big Data has begun' (boyd and Crawford, 2012: 662). In the few years since this statement, social media analytics has begun to accumulate studies drawing on social media as a resource and tool for research work. Yet, there has been relatively little attention paid to the development of methodologies for handling this kind of data. The few works that exist in this area often reflect upon the implications of 'grand' social science methodological concepts for new social media research (i.e. they focus on general issues such as sampling, data validity, ethics, etc). By contrast, we advance an abductively-oriented methodological suite designed to explore the construction of phenomena played out through social media. To do this, we use a software tool - Chorus - to illustrate a visual analytic approach to data. Informed by visual analytic principles, we posit a two-by-two methodological model of social media analytics, combining two data collection strategies with two analytic modes. We go on to demonstrate each of these four approaches âin actionâ, to help clarify how and why they might be used to address various research questions
SentiBench - a benchmark comparison of state-of-the-practice sentiment analysis methods
In the last few years thousands of scientific papers have investigated
sentiment analysis, several startups that measure opinions on real data have
emerged and a number of innovative products related to this theme have been
developed. There are multiple methods for measuring sentiments, including
lexical-based and supervised machine learning methods. Despite the vast
interest on the theme and wide popularity of some methods, it is unclear which
one is better for identifying the polarity (i.e., positive or negative) of a
message. Accordingly, there is a strong need to conduct a thorough
apple-to-apple comparison of sentiment analysis methods, \textit{as they are
used in practice}, across multiple datasets originated from different data
sources. Such a comparison is key for understanding the potential limitations,
advantages, and disadvantages of popular methods. This article aims at filling
this gap by presenting a benchmark comparison of twenty-four popular sentiment
analysis methods (which we call the state-of-the-practice methods). Our
evaluation is based on a benchmark of eighteen labeled datasets, covering
messages posted on social networks, movie and product reviews, as well as
opinions and comments in news articles. Our results highlight the extent to
which the prediction performance of these methods varies considerably across
datasets. Aiming at boosting the development of this research area, we open the
methods' codes and datasets used in this article, deploying them in a benchmark
system, which provides an open API for accessing and comparing sentence-level
sentiment analysis methods
LST1 promotes the assembly of a molecular machinery responsible for tunneling nanotube formation
Carefully orchestrated intercellular communication is an essential prerequisite for the development
of multicellular organisms. In recent years, tunneling nanotubes (TNT) have emerged as a novel
and widespread mechanism of cell-cell communication. However, the molecular basis of their
formation is still poorly understood. In the present study we report that the transmembrane MHC
class III protein LST1 induces the formation of functional nanotubes and is required for endogenous
nanotube generation. Mechanistically, we found LST1 to induce nanotube formation by recruiting
the small GTPase RalA to the plasma membrane and promoting its interaction with the exocyst
complex. Furthermore, we determined LST1 to recruit the actin-crosslinking protein filamin to the
plasma membrane and to interact with M-Sec, myosin and myoferlin. These results allow us to
suggest a molecular model for nanotube generation. In this proposal LST1 functions as a membrane
scaffold mediating the assembly of a multimolecular complex, which controls the formation of
functional nanotubes
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