Journal Article10.3233/DS-200028
Reinforcement learning for personalization : A systematic literature review
Floris den Hengst,Eoin Martino Grua,Ali el Hassouni,Mark Hoogendoorn +3 more
- 11 Nov 2020
- Vol. 3, Iss: 2, pp 107-147
47
TL;DR: This compressed contribution presents a survey into reinforcement learning (RL) for personalization and its applications in the rapidly changing environment.
read more
Abstract: The major application areas of reinforcement learning (RL) have traditionally been game playing and continuous control. In recent years, however, RL has been increasingly applied in systems that interact with humans. RL can personalize digital systems to make them more relevant to individual users. Challenges in personalization settings may be different from challenges found in traditional application areas of RL. An overview of work that uses RL for personalization, however, is lacking. In this work, we introduce a framework of personalization settings and use it in a systematic literature review. Besides setting, we review solutions and evaluation strategies. Results show that RL has been increasingly applied to personalization problems and realistic evaluations have become more prevalent. RL has become sufficiently robust to apply in contexts that involve humans and the field as a whole is growing. However, it seems not to be maturing: the ratios of studies that include a comparison or a realistic evaluation are not showing upward trends and the vast majority of algorithms are used only once. This review can be used to find related work across domains, provides insights into the state of the field and identifies opportunities for future work.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Review of Deep Reinforcement Learning-Based Object Grasping: Techniques, Open Challenges, and Recommendations
TL;DR: This comprehensive review of deep reinforcement learning in the manipulation field may be valuable for researchers and practitioners because they can expedite the establishment of important guidelines.
A Call to Action on Assessing and Mitigating Bias in Artificial Intelligence Applications for Mental Health.
Adela C. Timmons,Jacqueline B Duong,Natalia Simo Fiallo,Theodore Lee,Huong Phuc Quynh Vo,Matthew W. Ahle,Jonathan S. Comer,La Princess C. Brewer,Stacy L. Frazier,Theodora Chaspari +9 more
TL;DR: In this paper , the authors review the health-equity implications of applying AI to mental health problems, outline state-of-the-art methods for assessing and mitigating algorithmic bias, and present a call to action to guide the development of fair-aware AI in psychological science.
89
Deep Reinforcement Learning Versus Evolution Strategies: A Comparative Survey
Amjad Yousef Majid,Serge Saaybi,Tomas van Rietbergen,Vincent François-Lavet,R. Venkatesha Prasad,Chris J. M. Verhoeven +5 more
TL;DR: An overview of how DRL and ESs can be used, either independently or in unison, to solve specific learning tasks is presented and is intended to guide researchers to select which method suits them best and provides a bird's eye view of the overall literature in the field.
Reinforcement learning strategies in cancer chemotherapy treatments: A review
TL;DR: In this article , the authors reviewed the emerging trends involved in forming a computational solution from the aspect of reinforcement learning, and highlighted the challenges, open questions, possible solutions, and future steps in inventing a realistic solution for the aforementioned problem.
37
•Posted Content
"Improving" prediction of human behavior using behavior modification
Galit Shmueli
- 26 Aug 2020
TL;DR: The derivation elucidates the implications of behavior modification to data scientists, platforms, their clients, and the humans whose behavior is manipulated, and decomposes the expected prediction error given behavior modification.
5
References
•Book
Reinforcement Learning: An Introduction
Richard S. Sutton,Andrew G. Barto +1 more
- 01 Jan 1988
TL;DR: This book provides a clear and simple account of the key ideas and algorithms of reinforcement learning, which ranges from the history of the field's intellectual foundations to the most recent developments and applications.
Preferred Reporting Items for Systematic Reviews and Meta-Analyses: The PRISMA Statement
David Moher,Alessandro Liberati,Alessandro Liberati,Jennifer Tetzlaff,Douglas G. Altman test +4 more
TL;DR: PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) is introduced, an update of the QUOROM guidelines for reporting systematic reviews and meta-analyses.
A Survey on Transfer Learning
Sinno Jialin Pan,Qiang Yang +1 more
TL;DR: The relationship between transfer learning and other related machine learning techniques such as domain adaptation, multitask learning and sample selection bias, as well as covariate shift are discussed.
Technical Note : \cal Q -Learning
Chris Watkins,Peter Dayan +1 more
TL;DR: This paper presents and proves in detail a convergence theorem forQ-learning based on that outlined in Watkins (1989), showing that Q-learning converges to the optimum action-values with probability 1 so long as all actions are repeatedly sampled in all states and the action- values are represented discretely.
Finite-time Analysis of the Multiarmed Bandit Problem
TL;DR: This work shows that the optimal logarithmic regret is also achievable uniformly over time, with simple and efficient policies, and for all reward distributions with bounded support.
Related Papers (5)
Chetan Nadiger,Anil Kumar,Sherine Abdelhak +2 more
- 03 Jun 2019
Richard S. Sutton,Andrew G. Barto +1 more
- 01 Jan 1988