Personalization Performance
Personalization performance focuses on tailoring machine learning models to individual users' needs and preferences, aiming to improve accuracy and user experience across diverse applications. Current research emphasizes efficient personalization techniques, such as parameter-efficient fine-tuning (e.g., using Low-Rank Adapters) and self-supervised learning strategies, often within federated learning frameworks to address data privacy and heterogeneity. These advancements are significant for various fields, including recommendation systems, personalized medicine, and adaptive user interfaces, by enabling more effective and responsive systems while respecting user data privacy.
Papers
Unsupervised Human Preference Learning
Sumuk Shashidhar, Abhinav Chinta, Vaibhav Sahai, Dilek Hakkani-Tür
Fine-Tuning Personalization in Federated Learning to Mitigate Adversarial Clients
Youssef Allouah, Abdellah El Mrini, Rachid Guerraoui, Nirupam Gupta, Rafael Pinot
Personalisation via Dynamic Policy Fusion
Ajsal Shereef Palattuparambil, Thommen George Karimpanal, Santu Rana
TextBoost: Towards One-Shot Personalization of Text-to-Image Models via Fine-tuning Text Encoder
NaHyeon Park, Kunhee Kim, Hyunjung Shim
Enhancing Cross-Market Recommendation System with Graph Isomorphism Networks: A Novel Approach to Personalized User Experience
Sümeyye Öztürk, Ahmed Burak Ercan, Resul Tugay, Şule Gündüz Öğüdücü
Implicit Personalization in Language Models: A Systematic Study
Zhijing Jin, Nils Heil, Jiarui Liu, Shehzaad Dhuliawala, Yahang Qi, Bernhard Schölkopf, Rada Mihalcea, Mrinmaya Sachan
RectifID: Personalizing Rectified Flow with Anchored Classifier Guidance
Zhicheng Sun, Zhenhao Yang, Yang Jin, Haozhe Chi, Kun Xu, Kun Xu, Liwei Chen, Hao Jiang, Yang Song, Kun Gai, Yadong Mu