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UC chancellors get big raises, putting them between 785,000 and nearly 1.2 million

Los Angeles Times

Things to Do in L.A. Tap to enable a layout that focuses on the article. UC chancellors get big raises, putting them between $785,000 and nearly $1.2 million The UC regents approved pay raises for seven chancellors at their September meeting. At UC Irvine, above, the chancellor will earn $895,000 a year, effective this month. University of California chancellors will get big salary boosts -- near or exceeding 30% in most cases -- as the Board of Regents agreed Thursday that higher pay was needed to bring leaders of the nation's top public university system closer to what their peers earn. The increases, which will be paid through private sources rather than tuition dollars or state funding, are effective this month and will vary by campus.


Newsom's deepfake election laws are already being challenged in federal court

FOX News

Gov. Gavin Newsom signed three bills to combat deepfake election content and remove deceptive material from social media, but two are facing court challenges.


Big Tech's New Adversaries in Europe

WIRED

For the past five years, Big Tech has faced a flurry of new rules and reprimands from Brussels. Now with a new team taking over the European Commission, relations may be entering a new era. If the past five years of EU tech rules could take human form, they would embody Thierry Breton . The bombastic commissioner, with his swoop of white hair, became the public face of Brussels' irritation with American tech giants, touring Silicon Valley last summer to personally remind the industry of looming regulatory deadlines. Combative and outspoken, Breton warned that Apple had spent too long " squeezing " other companies out of the market.


Apple's iPhone 16 released in Japan

The Japan Times

Apple's iPhone 16 released in Japan A man holds a new iPhone 16 at an Apple store in Tokyo's Shibuya Ward on Friday. The new iPhone 16 smartphone series of U.S. technology giant Apple went on sale in Japan on Friday, with more than 10 enthusiasts lined up at an Apple store in Tokyo's Shibuya Ward in the morning to buy iPhone 16 handsets. The store moved its opening time earlier to 8 a.m., but shoppers started to stand in line before the opening. At the start of the line was an engineer in his 30s, who bought the top-of-the-line Pro Max model. I'll be happy if it learns about the ways I use it and makes it easier for me to operate it, he said. All models are equipped with the Apple Intelligence generative artificial intelligence system, designed to help users draft emails and create summaries of transcripts of phone calls.


MeLIAD: Interpretable Few-Shot Anomaly Detection with Metric Learning and Entropy-based Scoring

arXiv.org Artificial Intelligence

Anomaly detection (AD) plays a pivotal role in multimedia applications for detecting defective products and automating quality inspection. Deep learning (DL) models typically require large-scale annotated data, which are often highly imbalanced since anomalies are usually scarce. The black box nature of these models prohibits them from being trusted by users. To address these challenges, we propose MeLIAD, a novel methodology for interpretable anomaly detection, which unlike the previous methods is based on metric learning and achieves interpretability by design without relying on any prior distribution assumptions of true anomalies. MeLIAD requires only a few samples of anomalies for training, without employing any augmentation techniques, and is inherently interpretable, providing visualizations that offer insights into why an image is identified as anomalous. This is achieved by introducing a novel trainable entropy-based scoring component for the identification and localization of anomalous instances, and a novel loss function that jointly optimizes the anomaly scoring component with a metric learning objective. Experiments on five public benchmark datasets, including quantitative and qualitative evaluation of interpretability, demonstrate that MeLIAD achieves improved anomaly detection and localization performance compared to state-of-the-art methods.


Transforming disaster risk reduction with AI and big data: Legal and interdisciplinary perspectives

arXiv.org Artificial Intelligence

Managing complex disaster risks requires interdisciplinary efforts. Breaking down silos between law, social sciences, and natural sciences is critical for all processes of disaster risk reduction. This enables adaptive systems for the rapid evolution of AI technology, which has significantly impacted the intersection of law and natural environments. Exploring how AI influences legal frameworks and environmental management, while also examining how legal and environmental considerations can confine AI within the socioeconomic domain, is essential. From a co-production review perspective, drawing on insights from lawyers, social scientists, and environmental scientists, principles for responsible data mining are proposed based on safety, transparency, fairness, accountability, and contestability. This discussion offers a blueprint for interdisciplinary collaboration to create adaptive law systems based on AI integration of knowledge from environmental and social sciences. Discrepancies in the use of language between environmental scientists and decision-makers in terms of usefulness and accuracy hamper how AI can be used based on the principles of legal considerations for a safe, trustworthy, and contestable disaster management framework. When social networks are useful for mitigating disaster risks based on AI, the legal implications related to privacy and liability of the outcomes of disaster management must be considered. Fair and accountable principles emphasise environmental considerations and foster socioeconomic discussions related to public engagement. AI also has an important role to play in education, bringing together the next generations of law, social sciences, and natural sciences to work on interdisciplinary solutions in harmony.


The trade-off between data minimization and fairness in collaborative filtering

arXiv.org Artificial Intelligence

General Data Protection Regulations (GDPR) aim to safeguard individuals' personal information from harm. While full compliance is mandatory in the European Union and the California Privacy Rights Act (CPRA), it is not in other places. GDPR requires simultaneous compliance with all the principles such as fairness, accuracy, and data minimization. However, it overlooks the potential contradictions within its principles. This matter gets even more complex when compliance is required from decision-making systems. Therefore, it is essential to investigate the feasibility of simultaneously achieving the goals of GDPR and machine learning, and the potential tradeoffs that might be forced upon us. This paper studies the relationship between the principles of data minimization and fairness in recommender systems. We operationalize data minimization via active learning (AL) because, unlike many other methods, it can preserve a high accuracy while allowing for strategic data collection, hence minimizing the amount of data collection. We have implemented several active learning strategies (personalized and non-personalized) and conducted a comparative analysis focusing on accuracy and fairness on two publicly available datasets. The results demonstrate that different AL strategies may have different impacts on the accuracy of recommender systems with nearly all strategies negatively impacting fairness. There has been no to very limited work on the trade-off between data minimization and fairness, the pros and cons of active learning methods as tools for implementing data minimization, and the potential impacts of AL on fairness. By exploring these critical aspects, we offer valuable insights for developing recommender systems that are GDPR compliant.


A Survey on Moral Foundation Theory and Pre-Trained Language Models: Current Advances and Challenges

arXiv.org Artificial Intelligence

Moral values have deep roots in early civilizations, codified within norms and laws that regulated societal order and the common good. They play a crucial role in understanding the psychological basis of human behavior and cultural orientation. The Moral Foundation Theory (MFT) is a well-established framework that identifies the core moral foundations underlying the manner in which different cultures shape individual and social lives. Recent advancements in natural language processing, particularly Pre-trained Language Models (PLMs), have enabled the extraction and analysis of moral dimensions from textual data. This survey presents a comprehensive review of MFT-informed PLMs, providing an analysis of moral tendencies in PLMs and their application in the context of the MFT. We also review relevant datasets and lexicons and discuss trends, limitations, and future directions. By providing a structured overview of the intersection between PLMs and MFT, this work bridges moral psychology insights within the realm of PLMs, paving the way for further research and development in creating morally aware AI systems.


LLM for Everyone: Representing the Underrepresented in Large Language Models

arXiv.org Artificial Intelligence

Natural language processing (NLP) has witnessed a profound impact of large language models (LLMs) that excel in a multitude of tasks. However, the limitation of LLMs in multilingual settings, particularly in underrepresented languages, remains a significant hurdle. This thesis aims to bridge the gap in NLP research and development by focusing on underrepresented languages. A comprehensive evaluation of LLMs is conducted to assess their capabilities in these languages, revealing the challenges of multilingual and multicultural generalization. Addressing the multilingual generalization gap, this thesis proposes data-and-compute-efficient methods to mitigate the disparity in LLM ability in underrepresented languages, allowing better generalization on underrepresented languages without the loss of task generalization ability. The proposed solutions cover cross-lingual continual instruction tuning, retrieval-based cross-lingual in-context learning, and in-context query alignment. Furthermore, a novel method to measure cultural values alignment between LLMs operating in different languages is proposed, ensuring cultural sensitivity and inclusivity. These contributions aim to enhance the multilingual and multicultural alignment of LLMs in underrepresented languages, ultimately advancing the NLP field toward greater equality and inclusiveness.


Unlocking Memorization in Large Language Models with Dynamic Soft Prompting

arXiv.org Artificial Intelligence

Pretrained large language models (LLMs) have revolutionized natural language processing (NLP) tasks such as summarization, question answering, and translation. However, LLMs pose significant security risks due to their tendency to memorize training data, leading to potential privacy breaches and copyright infringement. Accurate measurement of this memorization is essential to evaluate and mitigate these potential risks. However, previous attempts to characterize memorization are constrained by either using prefixes only or by prepending a constant soft prompt to the prefixes, which cannot react to changes in input. To address this challenge, we propose a novel method for estimating LLM memorization using dynamic, prefix-dependent soft prompts. Our approach involves training a transformer-based generator to produce soft prompts that adapt to changes in input, thereby enabling more accurate extraction of memorized data. Our method not only addresses the limitations of previous methods but also demonstrates superior performance in diverse experimental settings compared to state-of-the-art techniques. In particular, our method can achieve the maximum relative improvement of 112.75% and 32.26% over the vanilla baseline in terms of discoverable memorization rate for the text generation task and code generation task respectively.