Best AI papers explained
A podcast by Enoch H. Kang
431 Episodes
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Conjoint topics from Handbook of Marketing Analytics: Methods and Applications
Published: 4/11/2025 -
Choice-Based Conjoint Analysis: Methods and Applications
Published: 4/11/2025 -
Beyond Conjoint Analysis: The Future of Preference Measurement
Published: 4/11/2025 -
An Optimization Framework for Adaptive Questionnaire Design
Published: 4/11/2025 -
Adaptive Self-Explication of Multiattribute Preferences
Published: 4/11/2025 -
Conjoint Analysis: Methods, Applications, and Recent Developments
Published: 4/11/2025 -
Current Issues and a “Wish List” for Conjoint Analysis
Published: 4/11/2025 -
Ellipsoidal Methods for Adaptive Choice-Based Conjoint Analysis
Published: 4/11/2025 -
Adaptive Polyhedral Methods for Conjoint Analysis
Published: 4/11/2025 -
MSL: Enhancing LLM Recommenders via Masked Softmax Loss
Published: 4/11/2025 -
Self-Supervised Deep Reinforcement Learning for Optimal Question Ranking
Published: 4/11/2025 -
Adaptive Language Elicitation for Latent Information Discovery
Published: 4/10/2025 -
LLM Persona Bias: Promise and Peril in Simulation
Published: 4/10/2025 -
AutoTools: Automating Tool Use for Large Language Models
Published: 4/10/2025 -
Tool Learning with Large Language Models: A Comprehensive Survey
Published: 4/10/2025 -
All Roads Lead to Likelihood: RL for Fine-Tuning Value
Published: 4/8/2025 -
ATLAS: Tuning Agents via Critical Step Learning
Published: 4/8/2025 -
Thinking Faster by Writing Less: Chain of Draft Reasoning
Published: 4/8/2025 -
Meta Plan Optimization for Boosting LLM Agents
Published: 4/8/2025 -
L1: Length Controlled Reasoning with Reinforcement Learning
Published: 4/8/2025
Cut through the noise. We curate and break down the most important AI papers so you don’t have to.