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Reinforcement Learning

Concepts of reinforcement learning in the context of applied machine learning, with a focus on Markov Decision Processes, Q-Learning, and example applications.

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Deep Reinforcement Learning for Mobile App Prediction

This research focuses on a system, known as ATPP, based on deep marked temporal point processes, designed for predicting mobile app usage patterns. By leveraging deep reinforcement learning frameworks and context-aware modules, the system aims to predict the next app a user will open, along with its

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Understanding Composite Materials: Reinforcement and Matrix in Composites

Composite materials consist of reinforcement and matrix components, each serving a specific purpose to enhance the properties of the composite. The reinforcement phase provides strength and stiffness, while the matrix transfers loads and protects the fibers. Different types of reinforcements and mat

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INTRO TO FBA

Explore the foundational principles of Applied Behavior Analysis (ABA) through the lens of behaviorism, beginning with B.F. Skinner's theories on observable behavior. Learn about positive reinforcement, negative reinforcement, positive punishment, and negative punishment, and how these concepts shap

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Basic Learning Processes

Explore the essential vocabulary related to operant learning and reinforcement, including terms like automatic reinforcer, conditioned reinforcer, and positive reinforcement. Gain insights into theories such as drive-reduction theory and response-deprivation theory. Enhance your knowledge of behavio

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Advanced Reinforcement Learning for Autonomous Robots

Cutting-edge research in the field of reinforcement learning for autonomous robots, focusing on Proximal Policy Optimization Algorithms, motivation for autonomous learning, scalability challenges, and policy gradient methods. The discussion delves into Markov Decision Processes, Actor-Critic Algorit

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Deep Reinforcement Learning Overview and Applications

Delve into the world of deep reinforcement learning on the road to advanced AI systems like Skynet. Explore topics ranging from Markov Decision Processes to solving MDPs, value functions, and tabular solutions. Discover the paradigm of supervised, unsupervised, and reinforcement learning in various

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Exploring Machine Learning Applications in Enhancing 802.11 Performance

This document delves into recent research on utilizing machine learning (ML) to enhance 802.11 performance, focusing on emerging use cases and the increased interest in ML applications in the field since 2019. It outlines the ML areas frequently used, such as supervised learning (SL) and reinforceme

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Analyzing Interaction Effects in Composite-Based SEM

Explore the concept of interaction effects in composite-based structural equation modeling (SEM) through topics like the logic of interaction, estimating effects, multigroup analysis, and visualizing effects. Learn about moderators, their role in relationships between variables, and techniques for a

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Understanding the Effects of Drug Combinations in ARIDE Session 7

Dive into Session 7 of the ARIDE program to explore the prevalence of drug and alcohol use, the concept of polydrug impairment, and the potential effects of combining different substances. Learn about null effects, overlapping effects, and how various drug combinations can impact impairment indicato

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Understanding Factorial Designs in Experiments

Factorial designs in experiments allow researchers to study the effects of multiple independent variables simultaneously. This type of design enables the examination of main effects and interactions between factors, providing a comprehensive understanding of the research variables. Main effects refe

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Theories of Reinforcement in Behavioral Economics

Explore key theories of reinforcement including Thorndike's Law of Effect, Hull's Drive Reduction Theory, the Premack Principle, Response-Deprivation Hypothesis, and Behavioral Economics concepts such as Response Allocation. Learn about reinforcers as stimuli, primary and secondary reinforcers, the

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Batch Reinforcement Learning: Overview and Applications

Batch reinforcement learning decouples data collection and optimization, making it data-efficient and stable. It is contrasted with online reinforcement learning, highlighting the benefits of using a fixed set of experience to optimize policies. Applications of batch RL include medical treatment opt

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Token Economies and Behaviour Modification in Custody: Evaluating Efficacy

This article explores the application of token economies in prisons as a behaviour modification technique based on operant conditioning. Token economies involve exchanging tokens for desired behaviours, aiming to replace undesirable actions with positive reinforcement. The use of increments, consist

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Understanding Reinforcement and Association in Behavioral Psychology

This content delves into the concepts of reinforcement, association, and operant conditioning in behavioral psychology. It discusses how actions are influenced by rewards and consequences, the differences between association and reinforcement, and classical conditioning models like the Rescorla-Wagn

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Strategies for Effective Reinforcement in Training

Strategic reinforcement plays a crucial role in successful behavior training for animals. It involves planning each reward delivery to avoid additional behaviors and ensure smooth progress. Components like reward location and delivery method are essential for effective training. Safety consideration

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Results of Onshore and Offshore Composite Repair Studies Workshop Presentation

This presentation discusses the results of a recent study on the suitability of composite repair systems for structural reinforcement in onshore and offshore applications. The study investigated the impact of installation pressure and replication of offshore environments on the performance of these

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Improving Spelling Skills for Better Learning

Enhancing spelling skills is crucial for academic success. The program highlights the evolution of spelling education, emphasizing the progression from limited reinforcement to daily, multi-sensory teaching methods. Structured stages, such as Stage 1 focusing on initial sounds and phonemes, facilita

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Understanding Interaction Effects in Regression Analysis using SAS 9.4

Regression models help analyze effects of independent variables (IVs) on dependent variables (DVs, like weight loss from exercise time). Interactions explore how one IV's effect can be modified by another IV (moderating variable, MV). In this seminar's purpose, techniques to estimate, test, and grap

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Research on Producing Bio-Composite Materials from Wastewater Using Filamentous Bacteria and Polyhydroxyalkanoates

This project conducted at the University of Delaware aimed to evaluate the potential of using filamentous wastewater microorganisms as reinforcement and polyhydroxyalkanoates (PHA)-accumulating microorganisms as a biorenewable matrix for bio-composite materials. Filamentous bacteria were analyzed fo

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Supporting Positive Behavior in Alberta Schools: Key Elements and Strategies

This content discusses strategies for supporting positive behavior in schools, focusing on key elements such as positive relationships, learning environment, differentiated instruction, understanding student behavior, and social skills instruction. It emphasizes the importance of positive reinforcem

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Understanding Behavioral Intervention Strategies for Children

Exploring the concepts of behavior, reinforcement, punishment, and challenging behaviors in children, along with examples of behavior change strategies used in school settings such as activity schedules and reinforcement systems. Additionally, guidance on how to generalize these strategies in home a

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Introduction to Reinforcement Learning in Artificial Intelligence

Reinforcement learning offers a different approach to problem-solving by learning the right moves in various states rather than through exhaustive searching. This concept, dating back to the 1960s, involves mimicking successful behaviors observed in agents, humans, or programs. The basic implementat

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Introduction to Machine Learning in BMTRY790 Course

The BMTRY790 course on Machine Learning covers a wide range of topics including supervised, unsupervised, and reinforcement learning. The course includes homework assignments, exams, and a real-world project to apply learned methods in developing prediction models. Machine learning involves making c

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Understanding Media Effects on Development: Strong, Limited, and Nil Impact (Continuation)

American psychologists have traditionally believed in strong media effects, attributing direct influence on audiences. However, the limited effects theory emerged in the 1940s, challenging this notion by suggesting media's negligible impact on behaviors such as voting. On the other hand, proponents

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Understanding Avoidance Behavior and Its Theories

Avoidance behavior involves negative reinforcement to increase the frequency of operant responses, not punishment. Different types of avoidance tests, such as discriminated avoidance and shuttle avoidance, are used to study negative reinforcement. The Two-Factor Theory of avoidance conditioning expl

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Denoising-Oriented Deep Hierarchical Reinforcement Learning for Next-basket Recommendation

This research paper presents a novel approach, HRL4Ba, for Next-basket Recommendation (NBR) by addressing the challenge of guiding recommendations based on historical baskets that may contain noise products. The proposed Hierarchical Reinforcement Learning framework incorporates dynamic context mode

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Understanding Behavior Establishment and Extinction in Inclusive Education

Behavior establishment and extinction are crucial concepts in the field of inclusive education. Behaviors are reinforced based on antecedents and consequences, with extinction occurring when reinforcement is discontinued. Different types of extinction target behaviors maintained by positive or negat

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Understanding Plain & Reinforced Concrete Structures

Concrete is a vital construction material, with Plain Cement Concrete (PCC) and Reinforced Cement Concrete (RCC) being common types. PCC lacks reinforcement and is strong in compression but weak in tension. On the other hand, RCC combines concrete with steel reinforcement for improved tensile streng

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Denoising-Guided Deep Reinforcement Learning for Social Recommendation

This research introduces a Denoising-Guided Deep Reinforcement Learning framework, DRL4So, for enhancing social recommendation systems. By automatically masking noise from social friends to improve recommendation performance, this framework focuses on maximizing the positive utility of social denois

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Understanding Schedules of Reinforcement

Different schedules of reinforcement, including fixed ratio, fixed interval, variable ratio, and variable interval, are explained through relatable scenarios like buying lottery tickets, taking breaks, and receiving allowances. By identifying these reinforcement schedules, individuals can better und

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Understanding Markov Decision Processes in Reinforcement Learning

Markov Decision Processes (MDPs) involve states, actions, transition models, reward functions, and policies to find optimal solutions. This concept is crucial in reinforcement learning, where agents interact with environments based on actions to maximize rewards. MDPs help in decision-making process

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Understanding Positive and Negative Reinforcement in Special Education

Positive reinforcement involves rewarding good behavior in children, such as praise or rewards, while negative reinforcement motivates change by removing something unpleasant. Positive reinforcement is usually more effective and includes examples like praising a child for putting away dishes or rewa

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Challenges in Model-Based Nonlinear Bandit and Reinforcement Learning

Delving into advanced topics of provable model-based nonlinear bandit and reinforcement learning, this content explores theories, complexities, and state-of-the-art analyses in deep reinforcement learning and neural net approximation. It highlights the difficulty of statistical learning with even on

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Collective Effects in High-Energy Physics Facilities

Collective effects play a crucial role in Higgs factories and high-energy physics facilities. Impedance effects are proportional to beam-induced voltage, with peak bunch current impacting SB effects and average current affecting MB effects. Factors like beam loading compensation and detuning of the

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Exploring Levels of Analysis in Reinforcement Learning and Decision-Making

This content delves into various levels of analysis related to computational and algorithmic problem-solving in the context of Reinforcement Learning (RL) in the brain. It discusses how RL preferences for actions leading to favorable outcomes are resolved using Markov Decision Processes (MDPs) and m

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Deep Reinforcement Learning for Human Dressing Motion Synthesis

Using deep reinforcement learning, this research explores synthesizing human dressing motions by breaking down the dressing sequence into subtasks and learning control policies for each subtask. The goal is to achieve dexterous manipulation of clothing while optimizing character control policies to

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Reinforcement Learning for Queueing Systems

Natural Policy Gradient is explored as an algorithm for optimizing Markov Decision Processes in queueing systems with unknown parameters. The challenges of unknown system dynamics and policy optimization are addressed through reinforcement learning techniques such as Actor-critic and Trust Region Po

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Low Latency Multi-viewpoint 360 Interactive Video System with Deep Reinforcement Learning

This research focuses on addressing the challenges of achieving low latency and high quality in multi-viewpoint (MVP) 360 interactive videos. The proposed iView system utilizes multimodal learning and a Deep Reinforcement Learning (DRL) module to optimize tile selection, aiming to reduce latency and

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Cutting-Edge Reinforcement Learning Research and Applications

Explore the latest advancements in reinforcement learning, from Sim2Real transfer methods to real-life applications of RL algorithms like Distributed Deep Q Network and Proximal Policy Optimization. Discover projects in robotics, AI for connected mobility, and data acquisition using simulators. See

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