PPT-Inference Lesson #1

Author : alexa-scheidler | Published Date : 2017-10-30

Photo Inference 1 Describe the setting 2 What have the girls been doing on horseback 3 What is the girl on the gray horse showing the other girl on her arm 4 Predict

Presentation Embed Code

Download Presentation

Download Presentation The PPT/PDF document "Inference Lesson #1" is the property of its rightful owner. Permission is granted to download and print the materials on this website for personal, non-commercial use only, and to display it on your personal computer provided you do not modify the materials and that you retain all copyright notices contained in the materials. By downloading content from our website, you accept the terms of this agreement.

Inference Lesson #1: Transcript


Photo Inference 1 Describe the setting 2 What have the girls been doing on horseback 3 What is the girl on the gray horse showing the other girl on her arm 4 Predict why the horse in the middle is wet. . A School Leader’s Guide for Improvement. 1. Georgia Department of Education . Dr. John D. Barge, State School Superintendent . All Rights Reserved. The Purpose of this Module is to…. p. rovide school leaders an opportunity to strengthen their understanding of low inference feedback.. Chris . Mathys. Wellcome Trust Centre for Neuroimaging. UCL. SPM Course (M/EEG). London, May 14, 2013. Thanks to Jean . Daunizeau. and . Jérémie. . Mattout. for previous versions of this talk. A spectacular piece of information. Meeting 5: Chunk 2. “I can infer…because…and…I know”. Today’s Cluster:. Objective: . By the end of the meeting, teachers will be prepared to introduce “I can infer…because…and I know…” using the critical attributes which. The truth, the whole truth, and nothing but the truth.. What is inference?. What you know + what you read = inference. Uses facts, logic, or reasoning to come to an assumption or conclusion. Asks: “What conclusions can you draw based on what is happening . S. M. Ali Eslami. September 2014. Outline. Just-in-time learning . for message-passing. with Daniel Tarlow, Pushmeet Kohli, John Winn. Deep RL . for ATARI games. with Arthur Guez, Thore Graepel. Contextual initialisation . Kari Lock Morgan. Department of Statistical Science, Duke University. kari@stat.duke.edu. . with Robin Lock, Patti Frazer Lock, Eric Lock, Dennis Lock. ECOTS. 5/16/12. Hypothesis Testing:. Use a formula to calculate a test statistic. Chapter 14 . The pinhole camera. Structure. Pinhole camera model. Three geometric problems. Homogeneous coordinates. Solving the problems. Exterior orientation problem. Camera calibration. 3D reconstruction. Suhas Lohit, . Kuldeep. Kulkarni, . Pavan. . Turaga. ,. . Jian Wang, . Aswin. . Sankaranarayanan. Arizona . State . University. . Carnegie Mellon University. Susan Athey, Stanford GSB. Based on joint work with Guido Imbens, Stefan Wager. References outside CS literature. Imbens and Rubin Causal Inference book (2015): synthesis of literature prior to big data/ML. Slide #. 1. 1-sample Z-test. H. o. :. . m. = . m. o. (where . m. o. = specific value). Statistic:. Test Statistic:. . Assume. :. . s. is known. n is “large” (. so . sampling distribution is Normal. 1. Based on. “Inference . to the Best Explanation: The General . Account”. “Inference . to the Best Explanation: . Examples”. Chapters 8 and 9 in. John D. Norton, . The Material Theory of Induction.. Donald A Pierce, Emeritus, OSU Statistics. and. Ruggero. . Bellio. , . Univ. of Udine. Slides and working paper, other things are at. : . . http://www.science.oregonstate.edu/~. piercedo. Slides and paper only are at: . Mathys. Wellcome Trust Centre for Neuroimaging. UCL. London SPM Course. Thanks to Jean . Daunizeau. and . Jérémie. . Mattout. for previous versions of this talk. A spectacular piece of information. Chapter . 2 . Introduction to probability. Please send errata to s.prince@cs.ucl.ac.uk. Random variables. A random variable . x. denotes a quantity that is uncertain. May be result of experiment (flipping a coin) or a real world measurements (measuring temperature).

Download Document

Here is the link to download the presentation.
"Inference Lesson #1"The content belongs to its owner. You may download and print it for personal use, without modification, and keep all copyright notices. By downloading, you agree to these terms.

Related Documents