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51 results
arxiv.org πŸ“… 2021 πŸ“° arXiv πŸ“„ PDF
Solving optimal stopping problems with Deep Q-Learning
πŸ‘€ John Ery; Loris Michel

We propose a reinforcement learning (RL) approach to model optimal exercise strategies for option-type products. We pursue the RL avenue in order to learn the optimal action-value function of the underlying stopping problem. In addition to retrieving the optimal Q-function at any time step, one can also price the contr…

q-fin.PR stat.ML
arxiv.org πŸ“… 2024 πŸ“° arXiv πŸ“„ PDF
Explainable Deep Learning Framework for SERS Bio-quantification
πŸ‘€ Jihan K. Zaki; Jakub Tomasik; Jade A. McCune; Sabine Bahn; Pietro LiΓ²; Oren A. Scherman

Surface-enhanced Raman spectroscopy (SERS) is a potential fast and inexpensive method of analyte quantification, which can be combined with deep learning to discover biomarker-disease relationships. This study aims to address present challenges of SERS through a novel SERS bio-quantification framework, including spectr…

q-bio.QM cs.LG q-bio.OT
arxiv.org πŸ“… 2023 πŸ“° arXiv πŸ“„ PDF
Quadratic Graph Attention Network (Q-GAT) for Robust Construction of Gene Regulatory Networks
πŸ‘€ Hui Zhang; Xuexin An; Qiang He; Yudong Yao; Yudong Zhang; Feng-Lei Fan; Yueyang Teng

Gene regulatory relationships can be abstracted as a gene regulatory network (GRN), which plays a key role in characterizing complex cellular processes and pathways. Recently, graph neural networks (GNNs), as a class of deep learning models, have emerged as a useful tool to infer gene regulatory relationships from gene…

q-bio.MN cs.CE
arxiv.org πŸ“… 2018 πŸ“° arXiv πŸ“„ PDF
Double Deep Q-Learning for Optimal Execution
πŸ‘€ Brian Ning; Franco Ho Ting Lin; Sebastian Jaimungal

Optimal trade execution is an important problem faced by essentially all traders. Much research into optimal execution uses stringent model assumptions and applies continuous time stochastic control to solve them. Here, we instead take a model free approach and develop a variation of Deep Q-Learning to estimate the opt…

q-fin.TR cs.LG q-fin.CP stat.ML
arxiv.org πŸ“… 2019 πŸ“° arXiv πŸ“„ PDF
An intelligent financial portfolio trading strategy using deep Q-learning
πŸ‘€ Hyungjun Park; Min Kyu Sim; Dong Gu Choi

Portfolio traders strive to identify dynamic portfolio allocation schemes so that their total budgets are efficiently allocated through the investment horizon. This study proposes a novel portfolio trading strategy in which an intelligent agent is trained to identify an optimal trading action by using deep Q-learning. …

q-fin.PM cs.AI
arxiv.org πŸ“… 2017 πŸ“° arXiv πŸ“„ PDF
Beyond Volume: The Impact of Complex Healthcare Data on the Machine Learning Pipeline
πŸ‘€ Keith Feldman; Louis Faust; Xian Wu; Chao Huang; Nitesh V. Chawla

From medical charts to national census, healthcare has traditionally operated under a paper-based paradigm. However, the past decade has marked a long and arduous transformation bringing healthcare into the digital age. Ranging from electronic health records, to digitized imaging and laboratory reports, to public healt…

cs.CY cs.LG stat.ML
DOI: 10.1007/978-3-319-69775-8_9
arxiv.org πŸ“… 2023 πŸ“° arXiv πŸ“„ PDF
Enhancing Chemistry Learning with ChatGPT, Bing Chat, Bard, and Claude as Agents-to-Think-With: A Comparative Case Study
πŸ‘€ Renato P. dos Santos

This research delves into the comparative advantages of Generative AI chatbots (GenAIbots) -- ChatGPT, Bing Chat, Bard, and Claude -- in the context of Chemistry education, framed within a constructivist perspective. Our primary objective was to identify which of these four AI tools is more effective for enhancing Chem…

cs.HC
arxiv.org πŸ“… 2023 πŸ“° arXiv πŸ“„ PDF
Enhancing Chemistry Learning with ChatGPT and Bing Chat as Agents to Think With: A Comparative Case Study
πŸ‘€ Renato P. dos Santos

This study explores the potential of Generative AI chatbots (GenAIbots) such as ChatGPT and Bing Chat, in Chemistry education, within a constructionist theoretical framework. A single-case study methodology was used to analyse extensive interaction logs between students and both AI systems in simulated Chemistry learni…

cs.HC cs.CY
semanticscholar.org πŸ“… 2018 πŸ“° arXiv.org πŸ”– 9 citations
Response to Comment on "All-optical machine learning using diffractive deep neural networks"
πŸ‘€ Deniz Mengu; Yilin Luo; Y. Rivenson; Xing Lin; Muhammed Veli; A. Ozcan

In their Comment, Wei et al. (arXiv:1809.08360v1 [cs.LG]) claim that our original interpretation of Diffractive Deep Neural Networks (D2NN) represent a mischaracterization of the system due to linearity and passivity. In this Response, we detail how this mischaracterization claim is unwarranted and oblivious to several…

arxiv.org πŸ“… 2018 πŸ“° arXiv πŸ“„ PDF
Response to Comment on "All-optical machine learning using diffractive deep neural networks"
πŸ‘€ Deniz Mengu; Yi Luo; Yair Rivenson; Xing Lin; Muhammed Veli; Aydogan Ozcan

In their Comment, Wei et al. (arXiv:1809.08360v1 [cs.LG]) claim that our original interpretation of Diffractive Deep Neural Networks (D2NN) represent a mischaracterization of the system due to linearity and passivity. In this Response, we detail how this mischaracterization claim is unwarranted and oblivious to several…

cs.NE cs.LG physics.optics
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