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HLXiON δ Ω Intent Σ Logic Ψ Synth Π Reason Γ Memory Processing: machine learning
iON AI Synthesis
The search results highlight various applications and approaches in machine learning, including unsupervised representation learning from dendrograms using Minimax distance measures and their computational efficiency (source 1, 4). Additionally, they discuss the development of frameworks like the Startup Success Forecasting Framework for predicting startup success using large language models (source 2), and the use of physics-guided machine learning to better understand changes in Southern Ocean dynamics under climate change (source 3). Finally, the potential societal impact of AI, especially regarding job market changes, is also noted (source 5).
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arxiv.org
Learning Representations from Dendrograms

We propose unsupervised representation learning and feature extraction from dendrograms. The commonly used Minimax distance measures correspond to building a dendrogram with single linkage criterion, with defining specific forms of a level function and a distance function over that. Therefore, we ex…

cs.LG stat.ML
arxiv.org
SSFF: Investigating LLM Predictive Capabilities for Startup Success through a Multi-Agent Framework with Enhanced Explainability and Performance

LLM based agents have recently demonstrated strong potential in automating complex tasks, yet accurately predicting startup success remains an open challenge with few benchmarks and tailored frameworks. To address these limitations, we propose the Startup Success Forecasting Framework, an autonomous…

cs.AI
arxiv.org
Southern Ocean Dynamics Under Climate Change: New Knowledge Through Physics-Guided Machine Learning

Complex ocean systems such as the Antarctic Circumpolar Current play key roles in the climate, and current models predict shifts in their strength and area under climate change. However, the physical processes underlying these changes are not well understood, in part due to the difficulty of charact…

physics.ao-ph cs.LG
arxiv.org
Unsupervised Representation Learning with Minimax Distance Measures

We investigate the use of Minimax distances to extract in a nonparametric way the features that capture the unknown underlying patterns and structures in the data. We develop a general-purpose and computationally efficient framework to employ Minimax distances with many machine learning methods that…

cs.LG cs.AI stat.ML
arxiv.org
Human-in-the-loop Artificial Intelligence

Little by little, newspapers are revealing the bright future that Artificial Intelligence (AI) is building. Intelligent machines will help everywhere. However, this bright future has a dark side: a dramatic job market contraction before its unpredictable transformation. Hence, in a near future, larg…

cs.AI
arxiv.org
Forecasting the COVID-19 vaccine uptake rate: An infodemiological study in the US

A year following the initial COVID-19 outbreak in China, many countries have approved emergency vaccines. Public-health practitioners and policymakers must understand the predicted populational willingness for vaccines and implement relevant stimulation measures. This study developed a framework for…

stat.AP econ.EM
arxiv.org
Mass Balance Approximation of Unfolding Improves Potential-Like Methods for Protein Stability Predictions

The prediction of protein stability changes following single-point mutations plays a pivotal role in computational biology, particularly in areas like drug discovery, enzyme reengineering, and genetic disease analysis. Although deep-learning strategies have pushed the field forward, their use in sta…

q-bio.QM cs.LG physics.bio-ph
arxiv.org
Artificial Intelligence Framework for Simulating Clinical Decision-Making: A Markov Decision Process Approach

In the modern healthcare system, rapidly expanding costs/complexity, the growing myriad of treatment options, and exploding information streams that often do not effectively reach the front lines hinder the ability to choose optimal treatment decisions over time. The goal in this paper is to develop…

cs.AI stat.ML
arxiv.org
ISLAND: In-Silico Prediction of Proteins Binding Affinity Using Sequence Descriptors

Determination of binding affinity of proteins in the formation of protein complexes requires sophisticated, expensive and time-consuming experimentation which can be replaced with computational methods. Most computational prediction techniques require protein structures which limit their applicabili…

q-bio.QM cs.LG
arxiv.org
WiCV 2019: The Sixth Women In Computer Vision Workshop

In this paper we present the Women in Computer Vision Workshop - WiCV 2019, organized in conjunction with CVPR 2019. This event is meant for increasing the visibility and inclusion of women researchers in the computer vision field. Computer vision and machine learning have made incredible progress o…

cs.CV