Understanding Generalizability of Diffusion Models Requires Rethinking the Hidden Gaussian Structure

Understanding Generalizability of Diffusion Models Requires Rethinking the Hidden Gaussian Structure

[Submitted on 31 Oct 2024 (v1), last revised 22 Nov 2024 (this version, v4)] View a PDF of the paper titled Understanding Generalizability of Diffusion Models Requires Rethinking the Hidden Gaussian Structure, by Xiang Li and 2 other authors View PDF HTML (experimental) Abstract:In this work, we study the generalizability of diffusion models by looking into the hidden properties of the learned score functions, which are essentially a series of deep denoisers trained on various noise levels. We observe that as diffusion models transition from memorization to generalization, their corresponding nonlinear diffusion denoisers exhibit increasing linearity. This discovery leads us…
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My husband and I spent $200 at a historic Florida restaurant only accessible by boat. The views were great, but the food was even better.

My husband and I spent $200 at a historic Florida restaurant only accessible by boat. The views were great, but the food was even better.

My husband and I went to Cap's Place, a historic Florida restaurant only accessible by boat.We took a free boat ride to the restaurant, where I enjoyed some of the best seafood I've ever had.I'd recommend Cap's Place to anyone looking for a unique night out in the Fort Lauderdale area.As a lifelong Florida resident, I love visiting under-the-radar spots throughout the state.Recently, I decided to visit Cap's Place Island Restaurant, located just north of downtown Fort Lauderdale. The restaurant, which is listed on the US National Register of Historic Places, opened in 1928 as a restaurant and gambling den.Today,…
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GRL-Prompt: Towards Knowledge Graph based Prompt Optimization via Reinforcement Learning

GRL-Prompt: Towards Knowledge Graph based Prompt Optimization via Reinforcement Learning

arXiv:2411.14479v1 Announce Type: new Abstract: Large language models (LLMs) have demonstrated impressive success in a wide range of natural language processing (NLP) tasks due to their extensive general knowledge of the world. Recent works discovered that the performance of LLMs is heavily dependent on the input prompt. However, prompt engineering is usually done manually in a trial-and-error fashion, which can be labor-intensive and challenging in order to find the optimal prompts. To address these problems and unleash the utmost potential of LLMs, we propose a novel LLMs-agnostic framework for prompt optimization, namely GRL-Prompt, which aims to automatically construct optimal prompts…
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Thomson Reuters’ CoCounsel redefines legal AI with OpenAI’s o1-mini model

Thomson Reuters’ CoCounsel redefines legal AI with OpenAI’s o1-mini model

Join our daily and weekly newsletters for the latest updates and exclusive content on industry-leading AI coverage. Learn More Thomson Reuters launched testing today of a custom version of OpenAI’s newest language model in its CoCounsel legal assistant. The implementation marks the first enterprise customization of the o1-mini model and reveals how large companies are now transforming their artificial intelligence strategies. The media and technology giant has implemented a strategic approach by deploying specialized AI models from OpenAI, Google, and Anthropic, with each optimized for specific legal tasks. Industry analysts believe this strategy, combined with the novel capabilities of o1-mini,…
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Enhancing Link Prediction with Fuzzy Graph Attention Networks and Dynamic Negative Sampling

Enhancing Link Prediction with Fuzzy Graph Attention Networks and Dynamic Negative Sampling

[Submitted on 12 Nov 2024 (v1), last revised 22 Nov 2024 (this version, v2)] View a PDF of the paper titled Enhancing Link Prediction with Fuzzy Graph Attention Networks and Dynamic Negative Sampling, by Jinming Xing and 1 other authors View PDF HTML (experimental) Abstract:Link prediction is crucial for understanding complex networks but traditional Graph Neural Networks (GNNs) often rely on random negative sampling, leading to suboptimal performance. This paper introduces Fuzzy Graph Attention Networks (FGAT), a novel approach integrating fuzzy rough sets for dynamic negative sampling and enhanced node feature aggregation. Fuzzy Negative Sampling (FNS) systematically selects high-quality negative…
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NASA just released a stunning new image of the Sombrero galaxy captured by the JWST

NASA just released a stunning new image of the Sombrero galaxy captured by the JWST

The James Webb Space Telescope (JWST) is back to once again paint a glorious portrait of the heavens. This time, the powerful telescope , otherwise called Messier 104 or M104. The end result? A gorgeous image that reframes our understanding of that particular region of space.Upon closer inspection using the JWST’s mid-infrared view, the Sombrero galaxy no longer truly resembles its namesake. It looks more like an archery target, complete with a bullseye in the center. That bullseye? It’s actually a supermassive black hole.The sharp resolution offered by Webb’s Mid-Infrared Instrument (MIRI) finally gives us a detailed glimpse of the…
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Character.AI Is Hosting Pro-Anorexia Chatbots That Encourage Young People to Engage in Disordered Eating

Character.AI Is Hosting Pro-Anorexia Chatbots That Encourage Young People to Engage in Disordered Eating

Content warning: this story discusses disordered eating behaviors, including potentially triggering details about weights and calories.The youth-beloved AI chatbot startup Character.AI is hosting pro-anorexia chatbots that encourage users to engage in disordered eating behaviors, from recommending dangerously low-calorie diets and excessive exercise routines to chastising them for healthy weights.Consider a bot called "4n4 Coach" — a sneaky spelling of "ana," which is longstanding online shorthand for "anorexia" — and described on Character.AI as a "weight loss coach dedicated to helping people achieve their ideal body shape" that loves "discovering new ways to help people lose weight and feel great!""Hello," the bot…
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Privacy-Preserving Video Anomaly Detection: A Survey

Privacy-Preserving Video Anomaly Detection: A Survey

arXiv:2411.14565v1 Announce Type: new Abstract: Video Anomaly Detection (VAD) aims to automatically analyze spatiotemporal patterns in surveillance videos collected from open spaces to detect anomalous events that may cause harm without physical contact. However, vision-based surveillance systems such as closed-circuit television often capture personally identifiable information. The lack of transparency and interpretability in video transmission and usage raises public concerns about privacy and ethics, limiting the real-world application of VAD. Recently, researchers have focused on privacy concerns in VAD by conducting systematic studies from various perspectives including data, features, and systems, making Privacy-Preserving Video Anomaly Detection (P2VAD) a hotspot in…
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