December 1, 2024

Manifold Geometry Meets Logistic Regression: The Rise of Hypergyroplanes | HackerNoon

Table of Links Abstract and 1. Introduction Preliminaries Proposed Approach 3.1 Notation 3.2 Nueral Networks on SPD Manifolds 3.3 MLR in Structure Spaces 3.4 Neural Networks on Grassmann Manifolds Experiments Conclusion and References A. Notations B. MLR in Structure Spaces C. Formulation of MLR from the Perspective of Distances to Hyperplanes D. Human Action Recognition E. Node Classification F. Limitations of our work G. Some Related Definitions H. Computation of Canonical Representation I. Proof of

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Reformulating Neural Layers on SPD Manifolds | HackerNoon

Table of Links Abstract and 1. Introduction Preliminaries Proposed Approach 3.1 Notation 3.2 Nueral Networks on SPD Manifolds 3.3 MLR in Structure Spaces 3.4 Neural Networks on Grassmann Manifolds Experiments Conclusion and References A. Notations B. MLR in Structure Spaces C. Formulation of MLR from the Perspective of Distances to Hyperplanes D. Human Action Recognition E. Node Classification F. Limitations of our work G. Some Related Definitions H. Computation of Canonical Representation I. Proof of

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Researchers Unlock Advanced Building Blocks for Neural Networks on Matrix Manifolds | HackerNoon

Table of Links Abstract and 1. Introduction Preliminaries Proposed Approach 3.1 Notation 3.2 Nueral Networks on SPD Manifolds 3.3 MLR in Structure Spaces 3.4 Neural Networks on Grassmann Manifolds Experiments Conclusion and References A. Notations B. MLR in Structure Spaces C. Formulation of MLR from the Perspective of Distances to Hyperplanes D. Human Action Recognition E. Node Classification F. Limitations of our work G. Some Related Definitions H. Computation of Canonical Representation I. Proof of

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Software

Matrix Manifold Neural Networks | HackerNoon

Authors: (1) Xuan Son Nguyen, ETIS, UMR 8051, CY Cergy Paris University, ENSEA, CNRS, France ([email protected]); (2) Shuo Yang, ETIS, UMR 8051, CY Cergy Paris University, ENSEA, CNRS, France ([email protected]); (3) Aymeric Histace, ETIS, UMR 8051, CY Cergy Paris University, ENSEA, CNRS, France ([email protected]). Table of Links Abstract and 1. Introduction Preliminaries Proposed Approach 3.1 Notation 3.2 Nueral Networks on SPD Manifolds 3.3 MLR in Structure Spaces 3.4 Neural Networks on Grassmann Manifolds Experiments Conclusion

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AI

Smaller is smarter

Alexandre Allouin · Follow Published in Towards Data Science · 4 min read · 6 hours ago — Concerns about the environmental impacts of Large Language Models (LLMs) are growing. Although detailed information about the actual costs of LLMs can be difficult to find, let’s attempt to gather some facts to understand the scale. Generated with ChatGPT-4o Since comprehensive data on ChatGPT-4 is not readily available, we can consider Llama 3.1 405B as an example.

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AR/VR

The end of AI scaling may not be nigh: Here’s what’s next

Join our daily and weekly newsletters for the latest updates and exclusive content on industry-leading AI coverage. Learn More As AI systems achieve superhuman performance in increasingly complex tasks, the industry is grappling with whether bigger models are even possible — or if innovation must take a different path. The general approach to large language model (LLM) development has been that bigger is better, and that performance scales with more data and more computing power.

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Software

How to Set Up a Trustless Escrow Smart Contract on Rootstock for Secure Transactions | HackerNoon

While trust and security are at the core of blockchain, this smart contract is designed to provide a trustless escrow system for peer-to-peer trades on Rootstock, using Solidity. It ensures that funds or assets are securely held until both the buyer and seller confirm that the terms have been met. If there’s a dispute, a neutral arbiter can step in to resolve the issue and release the funds. This system removes the need for intermediaries,

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IEEE President’s Note: Embracing the Future

3 min read Tom Coughlin is the 2024 IEEE President. In my columns throughout the year, I have shared my priorities for my presidency. These include the need for IEEE to increase its retention of younger members and to engage with industry. I also committed to working to increase the organization’s outreach to the broader public and to cultivating an environment that fosters the development of new products and services for our members and customers.

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AI

Why “Statistical Significance” Is Pointless

Here’s a better framework for data-driven decision-making Samuele Mazzanti · Follow Published in Towards Data Science · 9 min read · 11 hours ago — [Image by Author] Data scientists are in the business of decision-making. Our work is focused on how to make informed choices under uncertainty. And yet, when it comes to quantifying that uncertainty, we often lean on the idea of “statistical significance” — a tool that, at best, provides a shallow

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AI

The Lead, Shadow, and Sparring Roles in New Data Settings

From data engineer to domain expert—what it takes to build a new data platform Marina Tosic · Follow Published in Towards Data Science · 8 min read · 13 hours ago — “The best data engineers are runaway software engineers; the best data analysts, scientists, and solution (data) architects are runaway data engineers; and the best data product managers are runaway data analysts or scientists.” [Photo by Yurii Khomitskyi on Unsplash] Ever wonder why roles

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