PPT-Reinforcement
Author : liane-varnes | Published Date : 2015-11-14
Psych of Learning E L Thorndike Famous for puzzle box experiments of animal learning Examined animal intelligence by testing animal learning change in behavior
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Reinforcement: Transcript
Psych of Learning E L Thorndike Famous for puzzle box experiments of animal learning Examined animal intelligence by testing animal learning change in behavior Plotted animals learning on graphs perhaps first . Objective. Explain What is the Reinforcement Theory of Motivation. Explain What is meant by the ‘Law of Effect’. Explain What is meant by the ‘Quantitative Law of Effect’. Explain the Types of Reinforcement. How to teach your child new skills to improve independence with ADL’s, chores and homework. Presented by . Sheila Guiney, M.Ed.. Northshore Education . Consortium. November 2015. Teaching your child new skills. mwahahahahaha. Reinforcement. Any object or event that strengthens or . increases. the frequency of a response that it follows.. Punishment. Is the delivery of an unpleasant consequence following a response which . Lisa Morgan & Sara Shields. Roles and . Goals of officers. What is your role as a probation . or parole officer. ?. Agent of change or compliance monitor?. Roles and Goals. Compliance in conjunction with change. History. Established by Joseph . Klapper. (1960). Released a book ‘The Effects of Mass Communication’. Suggested that the media has little power to influence people. Thought it was important to move away from thinking that the media is all powerful in influence. Human-level control through deep . reinforcment. learning. Dueling Network Architectures for Deep Reinforcement Learning. Reinforcement Learning. Reinforcement learning is a computational approach to understanding and automating good directed learning and decision making. It learns by interacting with the environment.. Aaron Schumacher. Data Science DC. 2017-11-14. Aaron Schumacher. planspace.org has these slides. Plan. applications. : . what. t. heory. applications. : . how. onward. a. pplications: what. Backgammon. optimisation. Milica. Ga. š. i. ć. Dialogue Systems Group. Structure of spoken . dialogue systems. Language understanding. Language generation. semantics. a. ctions. 2. Speech recognition. Dialogue management. Differential Schedules. Also called . Differentiation or IRT . schedules. .. Usually used with reinforcement . Used where the reinforcer depends BOTH on time and . the . number of reinforcers.. Provides . SWOT Analysis. Strengths . Weaknesses. Appealing, well-designed stores. Fun, hip advertising. Quality merchandise. Helpful associates. Effective. p. romotional events. Higher prices than some competitors. Risk Management. Probability. of Occurrence. High. Medium. Low. Low. Medium. High. Magnitude. of Impact. Module 6, Activity 1, Slide . 1. © SHRM. Module 6 Reinforcement Activity. Risk Management. The vice president of HR for a mid-sized bank has listed. Equal Pay Cases. Case 1: A tenured female associate professor in the industrial technology department is employed at a salary lower than male colleagues who are the same rank and teach similar courses at the same location. She is the second-lowest-paid professor in a department of close to 20, despite the fact that she has a higher rank and more seniority than four male colleagues. Does the scenario violate the Equal Pay Act?. Behavioral Contrast. Behavioral contrast: often found "side effect“: original study: Reynolds, 1961. pigeons on CONC schedules of reinforcement with equal schedules at first. then, extinguish reinforcement on one alternative. Garima Lalwani Karan Ganju Unnat Jain. Today’s takeaways. Bonus RL recap. Functional Approximation. Deep Q Network. Double Deep Q Network. Dueling Networks. Recurrent DQN. Solving “Doom”.
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