Human Prediction
Human prediction research focuses on developing accurate and reliable models to forecast various phenomena, from medical diagnoses and environmental events to complex systems like traffic flow and financial markets. Current research emphasizes the use of deep learning architectures, including convolutional neural networks (CNNs), recurrent neural networks (RNNs, such as LSTMs), and graph neural networks (GNNs), often combined with techniques like multi-task learning and ensemble methods to improve prediction accuracy and interpretability. This field is significant because improved prediction capabilities have substantial implications across diverse sectors, including healthcare, climate science, and engineering, enabling better decision-making and resource allocation.
Papers
LLM4Mat-Bench: Benchmarking Large Language Models for Materials Property Prediction
Andre Niyongabo Rubungo, Kangming Li, Jason Hattrick-Simpers, Adji Bousso Dieng
EchoNarrator: Generating natural text explanations for ejection fraction predictions
Sarina Thomas, Qing Cao, Anna Novikova, Daria Kulikova, Guy Ben-Yosef
Online Consistency of the Nearest Neighbor Rule
Sanjoy Dasgupta, Geelon So
P$^2$C$^2$Net: PDE-Preserved Coarse Correction Network for efficient prediction of spatiotemporal dynamics
Qi Wang, Pu Ren, Hao Zhou, Xin-Yang Liu, Zhiwen Deng, Yi Zhang, Ruizhi Chengze, Hongsheng Liu, Zidong Wang, Jian-Xun Wang, Ji-Rong_Wen, Hao Sun, Yang Liu
SoccerGuard: Investigating Injury Risk Factors for Professional Soccer Players with Machine Learning
Finn Bartels, Lu Xing, Cise Midoglu, Matthias Boeker, Toralf Kirsten, Pål Halvorsen
GeoFUSE: A High-Efficiency Surrogate Model for Seawater Intrusion Prediction and Uncertainty Reduction
Su Jiang, Chuyang Liu, Dipankar Dwivedi
A Multi-Modal Non-Invasive Deep Learning Framework for Progressive Prediction of Seizures
Ali Saeizadeh, Douglas Schonholtz, Joseph S. Neimat, Pedram Johari, Tommaso Melodia
Prediction of Final Phosphorus Content of Steel in a Scrap-Based Electric Arc Furnace Using Artificial Neural Networks
Riadh Azzaz, Valentin Hurel, Patrice Menard, Mohammad Jahazi, Samira Ebrahimi Kahou, Elmira Moosavi-Khoonsari
Multi-view biomedical foundation models for molecule-target and property prediction
Parthasarathy Suryanarayanan, Yunguang Qiu, Shreyans Sethi, Diwakar Mahajan, Hongyang Li, Yuxin Yang, Elif Eyigoz, Aldo Guzman Saenz, Daniel E. Platt, Timothy H. Rumbell, Kenney Ng, Sanjoy Dey, Myson Burch, Bum Chul Kwon, Pablo Meyer, Feixiong Cheng, Jianying Hu, Joseph A. Morrone
Prediction of microstructural representativity from a single image
Amir Dahari, Ronan Docherty, Steve Kench, Samuel J. Cooper
Target Strangeness: A Novel Conformal Prediction Difficulty Estimator
Alexis Bose, Jonathan Ethier, Paul Guinand
SPEED++: A Multilingual Event Extraction Framework for Epidemic Prediction and Preparedness
Tanmay Parekh, Jeffrey Kwan, Jiarui Yu, Sparsh Johri, Hyosang Ahn, Sreya Muppalla, Kai-Wei Chang, Wei Wang, Nanyun Peng
Evaluating Deep Learning Approaches for Predictions in Unmonitored Basins with Continental-scale Stream Temperature Models
Jared D. Willard, Fabio Ciulla, Helen Weierbach, Vipin Kumar, Charuleka Varadharajan
Population stratification for prediction of mortality in post-AKI patients
Flavio S. Correa da Silva, Simon Sawhney
Predicting 30-Day Hospital Readmission in Medicare Patients: Insights from an LSTM Deep Learning Model
Xintao Li, Sibei Liu, Dezhi Yu, Yang Zhang, Xiaoyu Liu