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Oppenheimer biographer endorses Democrat bill to bar AI from launching nukes

FOX News

Fox News congressional correspondent Aishah Hasnie has more on the bipartisan effort to prevent AI overreach and the dangers of tech innovation on'Special Report.' The Pulitzer Prize-winning biographer of physicist J. Robert Oppenheimer has endorsed legislation that would keep artificial intelligence away from nuclear weapons. Kai Bird, a co-author of "American Prometheus: The Triumph and Tragedy of J. Robert Oppenheimer" -- which serves as the main inspiration for Christopher Nolan's new film, "Oppenheimer," opening this weekend -- met with Sen. Ed Markey, D-Mass., on Thursday to discuss the intersecting threats of nuclear war and artificial intelligence. Markey is one of the sponsors of a bipartisan amendment to the National Defense Authorization Act that would prohibit AI from making nuclear launch decisions. During their meeting, Bird and Markey spoke about their shared concerns over emerging AI technologies and what guardrails are needed for their use in the national defense sector, as well as the risks of using nuclear weapons in South Asia and elsewhere.


The strange reason why Apple's logo has a bite taken out of it, revealed

Daily Mail - Science & tech

Ever wondered why the Apple logo has a bite taken out of it? Plenty of theories have emerged about how the iconic logo came to be, with some suggesting it was a nod to Sir Isaac Newton, who famously formulated gravitational theory when an apple fell on his head. Others think it could be linked to British mathematician Alan Turing who cracked the German enigma code during World War II. The codebreaker was convicted for having a homosexual relationship, and was later found dead from cyanide poisoning, with his body famously laying next to a half eaten apple. MailOnline reveals the true reason behind the now-famous logo - and it's much simpler than you probably think.


Calls to impeach Biden intensify, another Dem joins growing list of new GOP converts and more top headlines

FOX News

NEW ERA BEGINS - Fox News Channel kicks off its first week of the new primetime lineup. Laura Ingraham's "The Ingraham Angle" begins at 7 p.m. ET, followed by "Jesse Watters Primetime" at 8 p.m. ET, "Hannity" will remain at 9 p.m. ET and "Gutfeld!" BURISMA BOMBSHELL – Republican calls to impeach Biden grow following release of FBI document detailing bribery allegations. APPLYING PRESSURE - Russia testing Biden resolve in Syria amid string of ''unprofessional' incidents. QUESTIONABLE ACTIONS - Carlee Russell made several tweets just minutes before disappearing.


A simple declarative model of the Federal Disaster Assistance Policy -- modelling and measuring transparency

arXiv.org Artificial Intelligence

In this paper we will provide a quantitative analysis of a simple model of the Federal Disaster Assistance policy from the viewpoint of three different stakeholders. This quantitative methodology is new and has applications to other areas such as business and healthcare processes. The stakeholders are interested in process transparency but each has a different opinion on precisely what constitutes transparency. We will also consider three modifications to the Federal Disaster Assistance policy and analyse, from a stakeholder viewpoint, how stakeholder satisfaction changes from process to process. This analysis is used to rank the favourability of four policies with respect to all collective stakeholder preferences.


Towards Better Fairness-Utility Trade-off: A Comprehensive Measurement-Based Reinforcement Learning Framework

arXiv.org Artificial Intelligence

Machine learning is widely used to make decisions with societal impact such as bank loan approving, criminal sentencing, and resume filtering. How to ensure its fairness while maintaining utility is a challenging but crucial issue. Fairness is a complex and context-dependent concept with over 70 different measurement metrics. Since existing regulations are often vague in terms of which metric to use and different organizations may prefer different fairness metrics, it is important to have means of improving fairness comprehensively. Existing mitigation techniques often target at one specific fairness metric and have limitations in improving multiple notions of fairness simultaneously. In this work, we propose CFU (Comprehensive Fairness-Utility), a reinforcement learning-based framework, to efficiently improve the fairness-utility trade-off in machine learning classifiers. A comprehensive measurement that can simultaneously consider multiple fairness notions as well as utility is established, and new metrics are proposed based on an in-depth analysis of the relationship between different fairness metrics. The reward function of CFU is constructed with comprehensive measurement and new metrics. We conduct extensive experiments to evaluate CFU on 6 tasks, 3 machine learning models, and 15 fairness-utility measurements. The results demonstrate that CFU can improve the classifier on multiple fairness metrics without sacrificing its utility. It outperforms all state-of-the-art techniques and has witnessed a 37.5% improvement on average.


Bibliometric Analysis of Publisher and Journal Instructions to Authors on Generative-AI in Academic and Scientific Publishing

arXiv.org Artificial Intelligence

We aim to determine the extent and content of guidance for authors regarding the use of generative-AI (GAI), Generative Pretrained models (GPTs) and Large Language Models (LLMs) powered tools among the top 100 academic publishers and journals in science. The websites of these publishers and journals were screened from between 19th and 20th May 2023. Among the largest 100 publishers, 17% provided guidance on the use of GAI, of which 12 (70.6%) were among the top 25 publishers. Among the top 100 journals, 70% have provided guidance on GAI. Of those with guidance, 94.1% of publishers and 95.7% of journals prohibited the inclusion of GAI as an author. Four journals (5.7%) explicitly prohibit the use of GAI in the generation of a manuscript, while 3 (17.6%) publishers and 15 (21.4%) journals indicated their guidance exclusively applies to the writing process. When disclosing the use of GAI, 42.8% of publishers and 44.3% of journals included specific disclosure criteria. There was variability in guidance of where to disclose the use of GAI, including in the methods, acknowledgments, cover letter, or a new section. There was also variability in how to access GAI guidance and the linking of journal and publisher instructions to authors. There is a lack of guidance by some top publishers and journals on the use of GAI by authors. Among those publishers and journals that provide guidance, there is substantial heterogeneity in the allowable uses of GAI and in how it should be disclosed, with this heterogeneity persisting among affiliated publishers and journals in some instances. The lack of standardization burdens authors and threatens to limit the effectiveness of these regulations. There is a need for standardized guidelines in order to protect the integrity of scientific output as GAI continues to grow in popularity.


Model Reporting for Certifiable AI: A Proposal from Merging EU Regulation into AI Development

arXiv.org Artificial Intelligence

Despite large progress in Explainable and Safe AI, practitioners suffer from a lack of regulation and standards for AI safety. In this work we merge recent regulation efforts by the European Union and first proposals for AI guidelines with recent trends in research: data and model cards. We propose the use of standardized cards to document AI applications throughout the development process. Our main contribution is the introduction of use-case and operation cards, along with updates for data and model cards to cope with regulatory requirements. We reference both recent research as well as the source of the regulation in our cards and provide references to additional support material and toolboxes whenever possible. The goal is to design cards that help practitioners develop safe AI systems throughout the development process, while enabling efficient third-party auditing of AI applications, being easy to understand, and building trust in the system. Our work incorporates insights from interviews with certification experts as well as developers and individuals working with the developed AI applications.


DEFTri: A Few-Shot Label Fused Contextual Representation Learning For Product Defect Triage in e-Commerce

arXiv.org Artificial Intelligence

Defect Triage is a time-sensitive and critical process in a large-scale agile software development lifecycle for e-commerce. Inefficiencies arising from human and process dependencies in this domain have motivated research in automated approaches using machine learning to accurately assign defects to qualified teams. This work proposes a novel framework for automated defect triage (DEFTri) using fine-tuned state-of-the-art pre-trained BERT on labels fused text embeddings to improve contextual representations from human-generated product defects. For our multi-label text classification defect triage task, we also introduce a Walmart proprietary dataset of product defects using weak supervision and adversarial learning, in a few-shot setting.


On Provable Copyright Protection for Generative Models

arXiv.org Artificial Intelligence

There is a growing concern that learned conditional generative models may output samples that are substantially similar to some copyrighted data $C$ that was in their training set. We give a formal definition of $\textit{near access-freeness (NAF)}$ and prove bounds on the probability that a model satisfying this definition outputs a sample similar to $C$, even if $C$ is included in its training set. Roughly speaking, a generative model $p$ is $\textit{$k$-NAF}$ if for every potentially copyrighted data $C$, the output of $p$ diverges by at most $k$-bits from the output of a model $q$ that $\textit{did not access $C$ at all}$. We also give generative model learning algorithms, which efficiently modify the original generative model learning algorithm in a black box manner, that output generative models with strong bounds on the probability of sampling protected content. Furthermore, we provide promising experiments for both language (transformers) and image (diffusion) generative models, showing minimal degradation in output quality while ensuring strong protections against sampling protected content.


NusaCrowd: Open Source Initiative for Indonesian NLP Resources

arXiv.org Artificial Intelligence

We present NusaCrowd, a collaborative initiative to collect and unify existing resources for Indonesian languages, including opening access to previously non-public resources. Through this initiative, we have brought together 137 datasets and 118 standardized data loaders. The quality of the datasets has been assessed manually and automatically, and their value is demonstrated through multiple experiments. NusaCrowd's data collection enables the creation of the first zero-shot benchmarks for natural language understanding and generation in Indonesian and the local languages of Indonesia. Furthermore, NusaCrowd brings the creation of the first multilingual automatic speech recognition benchmark in Indonesian and the local languages of Indonesia. Our work strives to advance natural language processing (NLP) research for languages that are under-represented despite being widely spoken.