AI is used in social media to analyze user behavior, personalize content recommendations, and detect trends or sentiment. It employs machine learning algorithms and natural language processing to understand and categorize user-generated content, optimize ad targeting, and enhance user experiences on social media platforms.
Researchers employed AI techniques to analyze Reddit discussions on coronary artery calcium (CAC) testing, revealing diverse sentiments and concerns. The study identified 91 topics and 14 discussion clusters, indicating significant interest and engagement. While sentiment analysis showed predominantly neutral or slightly negative attitudes, there was a decline in sentiment over time.
This study delves into earthquake response dynamics using XGBoost, unraveling the interplay between environmental cues and human behavior through meticulous video analysis. With superior predictive accuracy, it offers invaluable insights for emergency management, signaling a paradigm shift in disaster response strategies.
In a study published in Scientific Reports, advanced AI techniques dissected the social media activity of 1358 VK users, unveiling correlations between behavior and personality traits. Through meticulous analysis of 753,252 posts and reposts alongside Big Five traits and intelligence assessments, the research highlighted the influence of emotional tone and engagement metrics on psychological attributes, advocating for behavior-based diagnostic models in the digital realm.
Researchers propose a groundbreaking framework utilizing social media data and deep learning techniques to assess urban park management effectively. By analyzing visitor comments on seven parks in Wuhan City, the study evaluated various management aspects and identified improvement suggestions, demonstrating the potential of this approach to enhance park service quality and management efficiency. The framework's dynamic visualization capabilities and scalability make it a valuable tool for improving public spaces and contributing to the development of smart cities, with opportunities for expansion to other urban areas and data sources in future research.
This research delves into the realm of virtual influencers on Instagram, scrutinizing 33 profiles to assess their impact on customer-brand engagement. Contrary to previous notions, the study reveals that non-branded virtual influencers outshine their branded counterparts in engaging customers. Additionally, it categorizes virtual influencers based on their marketing intentions and character narratives, offering insights into effective influencer selection for brands aiming to bolster engagement.
Canadian researchers at Western University and the Vector Institute unveil a groundbreaking method employing deep neural networks to predict the memorability of face photographs. Outperforming previous models, this innovation demonstrates near-human consistency and versatility in handling different face shapes, with potential applications spanning social media, advertising, education, security, and entertainment.
Researchers present CrisisViT, a novel transformer-based model designed for automatic image classification in crisis response scenarios. Leveraging in-domain learning with the Incidents1M crisis image dataset, CrisisViT outperforms conventional models, offering enhanced accuracy in disaster type, image relevance, humanitarian category, and damage severity classification. This innovation provides an efficient solution for crisis responders, enabling rapid image analysis through smartphones and social media, thereby aiding timely decision-making during emergencies.
This study from South Korea delves into the factors influencing user satisfaction and loyalty in Algorithmic News Recommendation Services (ANRS). By proposing a research model based on loyalty theory, service quality, and personal factors, the authors offer insights for service providers to enhance user experience and manage potential challenges like privacy concerns and biased perspectives.
This paper emphasizes the crucial role of machine learning (ML) in detecting and combating fake news amid the proliferation of misinformation on social media. The study reviews various ML techniques, including deep learning, natural language processing (NLP), ensemble learning, transfer learning, and graph-based approaches, highlighting their strengths and limitations in fake news detection. The researchers advocate for a multifaceted strategy, combining different techniques and optimizing computational strategies to address the complex challenges of identifying misinformation in the digital age.
This study delves into the influence of exposure to social bots on individuals' perceptions and policy preferences regarding these automated accounts on popular platforms like Twitter, Facebook, and Instagram. The research reveals that even minimal exposure distorts perceptions of bot prevalence and self-efficacy, triggering reactive policy sentiments among social media users.
This article discusses bioRxiv's collaboration with ScienceCast, an AI startup, to use large language models for multi-level summaries of scientific preprints. While aiming to enhance accessibility, the pilot reveals challenges in accurately summarizing complex technical content, with scientists noting inaccuracies. The future outlook suggests potential benefits as AI capabilities advance, but concerns around precision and the need for a balance between automation and human oversight persist.
Researchers propose essential prerequisites for improving the robustness evaluation of large language models (LLMs) and highlight the growing threat of embedding space attacks. This study emphasizes the need for clear threat models, meaningful benchmarks, and a comprehensive understanding of potential vulnerabilities to ensure LLMs can withstand adversarial challenges in open-source models.
This paper presents MULTITuDE, a benchmark dataset designed for multilingual machine-generated text (MGT) detection. The study evaluates various detection methods across 11 languages, demonstrating that fine-tuning detectors with multilingual language models is an effective approach, and the linguistic similarity between languages plays a significant role in the generalization of detectors.
This review explores the landscape of social robotics research, addressing knowledge gaps and implications for business and management. It highlights the need for more studies on social robotic interactions in organizations, trust in human-robot relationships, and the impact of virtual social robots in the metaverse, emphasizing the importance of balancing technology integration with societal well-being.
Researchers present the "SCALE" framework, which evaluates the impact of AI on the mortgage market, with a focus on promoting homeownership inclusivity for marginalized communities. The framework encompasses societal values, contextual integrity, accuracy, legality, and expanded opportunity, aiming to address concerns about bias and discrimination in AI applications within the mortgage industry while advancing fair lending practices and social equity in homeownership.
In a groundbreaking study, AI-driven data analysis accurately predicts Greco-Roman wrestlers' competitive success, with just an 11% error rate. This research has the potential to revolutionize athlete selection and training in various sports, offering valuable insights for coaches and athletes alike.
Researchers have introduced a groundbreaking approach to AI learning in social environments, where agents actively interact with humans. By combining reinforcement learning with social norms, the study demonstrated a 112% improvement in recognizing new information, highlighting the potential of socially situated AI in open social settings and human-AI interactions.
This study delves into the transformative potential of data science in African healthcare and research, emphasizing the critical role of ethical governance. It highlights ongoing initiatives, investments, and challenges while stressing the need for collaboration and investment in ethical oversight to drive impactful research in the continent.
A recent study delves into the automated classification of short texts from social media, crucial for social science research. The research compares lexicon-based and supervised machine learning approaches, highlighting the significance of traditional ML algorithms in short text classification and their efficiency compared to deep neural architectures, especially in cases with limited data resources.
Researchers have developed a robust web-based malware detection system that utilizes deep learning, specifically a 1D-CNN architecture, to classify malware within portable executable (PE) files. This innovative approach not only showcases impressive accuracy but also bridges the gap between advanced malware detection technology and user accessibility through a user-friendly web interface.
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