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Check News in One Click: NLP-Empowered Pro-Kremlin Propaganda Detection

arXiv.org Artificial Intelligence

Many European citizens become targets of the Kremlin propaganda campaigns, aiming to minimise public support for Ukraine, foster a climate of mistrust and disunity, and shape elections (Meister, 2022). To address this challenge, we developed ''Check News in 1 Click'', the first NLP-empowered pro-Kremlin propaganda detection application available in 7 languages, which provides the lay user with feedback on their news, and explains manipulative linguistic features and keywords. We conducted a user study, analysed user entries and models' behaviour paired with questionnaire answers, and investigated the advantages and disadvantages of the proposed interpretative solution.


Harnessing Network Effect for Fake News Mitigation: Selecting Debunkers via Self-Imitation Learning

arXiv.org Artificial Intelligence

This study aims to minimize the influence of fake news on social networks by deploying debunkers to propagate true news. This is framed as a reinforcement learning problem, where, at each stage, one user is selected to propagate true news. A challenging issue is episodic reward where the "net" effect of selecting individual debunkers cannot be discerned from the interleaving information propagation on social networks, and only the collective effect from mitigation efforts can be observed. Existing Self-Imitation Learning (SIL) methods have shown promise in learning from episodic rewards, but are ill-suited to the real-world application of fake news mitigation because of their poor sample efficiency. To learn a more effective debunker selection policy for fake news mitigation, this study proposes NAGASIL - Negative sampling and state Augmented Generative Adversarial Self-Imitation Learning, which consists of two improvements geared towards fake news mitigation: learning from negative samples, and an augmented state representation to capture the "real" environment state by integrating the current observed state with the previous state-action pairs from the same campaign. Experiments on two social networks show that NAGASIL yields superior performance to standard GASIL and state-of-the-art fake news mitigation models.


Automatic Time Signature Determination for New Scores Using Lyrics for Latent Rhythmic Structure

arXiv.org Artificial Intelligence

There has recently been a sharp increase in interest in Artificial Intelligence-Generated Content (AIGC). Despite this, musical components such as time signatures have not been studied sufficiently to form an algorithmic determination approach for new compositions, especially lyrical songs. This is likely because of the neglect of musical details, which is critical for constructing a robust framework. Specifically, time signatures establish the fundamental rhythmic structure for almost all aspects of a song, including the phrases and notes. In this paper, we propose a novel approach that only uses lyrics as input to automatically generate a fitting time signature for lyrical songs and uncover the latent rhythmic structure utilizing explainable machine learning models. In particular, we devise multiple methods that are associated with discovering lyrical patterns and creating new features that simultaneously contain lyrical, rhythmic, and statistical information. In this approach, the best of our experimental results reveal a 97.6% F1 score and a 0.996 Area Under the Curve (AUC) of the Receiver Operating Characteristic (ROC) score. In conclusion, our research directly generates time signatures from lyrics automatically for new scores utilizing machine learning, which is an innovative idea that approaches an understudied component of musicology and therefore contributes significantly to the future of Artificial Intelligence (AI) music generation.


It was expensive and underpowered, but the Apple Macintosh still changed the world John Naughton

The Guardian

Forty years ago this week, on 22 January 1984, a stunning advertising video was screened during the Super Bowl broadcast in the US. It was directed by Ridley Scott and evoked the dystopian atmosphere of Orwell's Nineteen Eighty-Four. Long lines of grey, shaven zombies march in lockstep through a tunnel into a giant amphitheatre, where they sit in rows gawping up at a screen on which an authoritarian figure is intoning a message. "Today, we celebrate the first glorious anniversary of the information purification directives," he drones. "We have created, for the first time in all history, a garden of pure ideology."


Football comes first for Devon boy, 12, who scored IQ of 162

BBC News

A 12-year-old boy who scored the maximum in an IQ test says football still comes first. Rory Bidwell, from Great Torrington, Devon, joined the ranks of Mensa after acing the Cattell III B test with 162, the top score for children. This is above what is believed to be a score of 160 for Albert Einstein, and in the top 2% of the population. Rory is also a keen sportsman and said he would prefer a career in football because it is "what I love".Image source, Family pictureImage caption, The keen sportsman also enjoys gaming and going out to the park Rory said he felt "really good" and "fantastic" after taking the test which his mother had suggested he take. "I knew nothing about Mensa before the test, no preparation," he said.


George Carlin's estate sues over AI-generated comedy special: 'We have to draw a line'

FOX News

The estate of late comedian George Carlin has filed a lawsuit against a media company that used artificial intelligence to create a comedy special impersonating his iconic style. The special in question, titled "George Carlin: I'm Glad I'm Dead," was released earlier this month. The lawsuit, filed Thursday in Los Angeles, asks that Dudesy, the company behind the special, take down the offending video immediately. The estate is also seeking unspecified damages. A lawsuit filed by George Carlin's estate targets Dudesy, a media company that created a special called "George Carlin: I'm Glad I'm Dead" using artificial intelligence.


FaKnow: A Unified Library for Fake News Detection

arXiv.org Artificial Intelligence

Over the past years, a large number of fake news detection algorithms based on deep learning have emerged. However, they are often developed under different frameworks, each mandating distinct utilization methodologies, consequently hindering reproducibility. Additionally, a substantial amount of redundancy characterizes the code development of such fake news detection models. To address these concerns, we propose FaKnow, a unified and comprehensive fake news detection algorithm library. It encompasses a variety of widely used fake news detection models, categorized as content-based and social context-based approaches. This library covers the full spectrum of the model training and evaluation process, effectively organizing the data, models, and training procedures within a unified framework. Furthermore, it furnishes a series of auxiliary functionalities and tools, including visualization, and logging. Our work contributes to the standardization and unification of fake news detection research, concurrently facilitating the endeavors of researchers in this field. The open-source code and documentation can be accessed at https://github.com/NPURG/FaKnow and https://faknow.readthedocs.io, respectively.


Quantifying Stereotypes in Language

arXiv.org Artificial Intelligence

A stereotype is a generalized perception of a specific group of humans. It is often potentially encoded in human language, which is more common in texts on social issues. Previous works simply define a sentence as stereotypical and anti-stereotypical. However, the stereotype of a sentence may require fine-grained quantification. In this paper, to fill this gap, we quantify stereotypes in language by annotating a dataset. We use the pre-trained language models (PLMs) to learn this dataset to predict stereotypes of sentences. Then, we discuss stereotypes about common social issues such as hate speech, sexism, sentiments, and disadvantaged and advantaged groups. We demonstrate the connections and differences between stereotypes and common social issues, and all four studies validate the general findings of the current studies. In addition, our work suggests that fine-grained stereotype scores are a highly relevant and competitive dimension for research on social issues.


Style-News: Incorporating Stylized News Generation and Adversarial Verification for Neural Fake News Detection

arXiv.org Artificial Intelligence

With the improvements in generative models, the issues of producing hallucinations in various domains (e.g., law, writing) have been brought to people's attention due to concerns about misinformation. In this paper, we focus on neural fake news, which refers to content generated by neural networks aiming to mimic the style of real news to deceive people. To prevent harmful disinformation spreading fallaciously from malicious social media (e.g., content farms), we propose a novel verification framework, Style-News, using publisher metadata to imply a publisher's template with the corresponding text types, political stance, and credibility. Based on threat modeling aspects, a style-aware neural news generator is introduced as an adversary for generating news content conditioning for a specific publisher, and style and source discriminators are trained to defend against this attack by identifying which publisher the style corresponds with, and discriminating whether the source of the given news is human-written or machine-generated. To evaluate the quality of the generated content, we integrate various dimensional metrics (language fluency, content preservation, and style adherence) and demonstrate that Style-News significantly outperforms the previous approaches by a margin of 0.35 for fluency, 15.24 for content, and 0.38 for style at most. Moreover, our discriminative model outperforms state-of-the-art baselines in terms of publisher prediction (up to 4.64%) and neural fake news detection (+6.94% $\sim$ 31.72%).


Do We Need Language-Specific Fact-Checking Models? The Case of Chinese

arXiv.org Artificial Intelligence

This paper investigates the potential benefits of language-specific fact-checking models, focusing on the case of Chinese. We demonstrate the limitations of methods such as translating Chinese claims and evidence into English or directly using multilingual large language models (e.g. GPT4), highlighting the need for language-specific systems. We further develop a state-of-the-art Chinese fact-checking system that, in contrast to previous approaches which treat evidence selection as a pairwise sentence classification task, considers the context of sentences. We also create an adversarial dataset to identify biases in our model, and while they are present as in English language datasets and models, they are often specific to the Chinese culture. Our study emphasizes the importance of language-specific fact-checking models to effectively combat misinformation.