CSE 190 Fall 2015 Midterm DO NOT TURN THIS PAGE UNTIL YOU ARE TOLD TO START!!!!

Size: px
Start display at page:

Download "CSE 190 Fall 2015 Midterm DO NOT TURN THIS PAGE UNTIL YOU ARE TOLD TO START!!!!"

Transcription

1 CSE 190 Fall 2015 Midterm DO NOT TURN THIS PAGE UNTIL YOU ARE TOLD TO START!!!! November 18, 2015 THE EXAM IS CLOSED BOOK. Once the exam has started, SORRY, NO TALKING!!! No, you can t even say see ya at Porter s! (Especially now that UCSD, in their infinite wisdom, kicked them out of campus...what were they thinking???) There are 5 problems: Make sure you have all of them - AFTER YOU ARE TOLD TO START! Read each question carefully. Remain calm at all times! Problem Type Points Score 1 True/False 15 2 Short Answer 20 3 Multiple Choice 10 4 The Delta Rule 10 5 Forward/Backwards Propagation 15 Total 70 1

2 Problem 1: True/False (15 pts) (15 pts: +1 for correct, -0.5 for incorrect, 0 for no answer) If you would like to justify an answer, feel free. Similar to learning in neural networks with the backpropagation procedure, the perceptron learning algorithm also ensures that the network output will near the target at each iteration. Following the percpetron learning algorithm, a perceptron is guaranteed to perfectly learn a given linearly separable data set within a finite number of training steps. 1 The sigmoid function, y = g(x) = of the input, x, given the output, y. 1+e wt x may be simply interpreted as the probability It is best to have as many hidden units as there are patterns to be learned by a multilayer neural network. Robbie Jacob s adaptive learning rate method resulted in a different learning rate for every weight in the network. The backpropagation procedure is a powerful optimization technique that can be applied to hidden activation functions like sigmoid, tanh and binary threshold. Stochastic gradient descent will typically provide a more accurate estimate of the gradient of a loss function than the full gradient calculated over all examples - that is why this method is generally preferred. Overfitting occurs when the model learns the regularities present only in the training data, or in other words, the model fits the sampling error of the training set. In backpropagation learning, we should start with a small learning rate and slowly increase it during the learning process. People use the Rectified Linear Unit (ReLU) as an activation function in deep networks because 1) it works; and 2) it makes computing the slope trivial. While implementing backpropagation, it is a mistake to compute the deltas for a layer, change the weights, and then propagate the deltas back to the next layer. Unfortunately, minibatch learning is difficult to parallelize. In a deep neural network, while the error surface may be very complicated and nonconvex, locally, it may be well-approximated by a quadratic surface. A convolutional neural network learns features with shared weights (filters) in order to reduce the number of free parameters. One of the biggest puzzles in machine learning is who hid the hidden layers, and why. Wherever they are, they are probably buried deep, very deep. Some suspect Wally did it. 2

3 Problem 2: Short answer (20 pts) Only a very brief explanation is necessary! a) (2 pts) Explain why dropout in a neural network acts as a regularizer. b) (2 pts) Explain why backpropagation of the deltas is a linear operation. c) (3 pts) Describe two distinct advantages of stochastic gradient descent over the batch method. d) (2 pts) Fill in the value for w in this example of gradient descent in E(w). Calculate the weight for Iteration 2 of gradient descent where the step-size is η = 1.0 and the momentum coefficient is 0.5. Assume the momentum is initialized t Iteration w w E e) (2 pts) Explain why we should use weight decay when training a neural network. f) (3 pts) A graduate student is competing in the ImageNet Challenge with 1000 classes, however, he is puzzled as to why his network doesn t work. He has two tanh hidden units in the final layer before the 1000-way output, but does not think this is a problem, since he has many units and layers leading up to this point. Explain the error in his thinking. 3

4 g) (4 pts) In the Efficient Backprop paper, preprocessing of the input data is recommended. Illustrate this process by starting with an elongated, oval-shaped cloud of points tilted at about 45 degrees,and showing effect of the mean cancellation step, the PCA step, and the variance scaling step. (so you should end up with 4 pictures from start to finish). h) (2 pts) What is wrong with using the logistic sigmoid in the hidden layers of a deep network? Give at least two reasons why it should be avoided. 4

5 Problem 3: Multiple Choice (10 pts, 2 each) a. Which of the following is the delta rule for the hidden units? i. δ i = (t i y i ) ii. δ j = k w jk δ k iii. δ j = y (a j ) k w jk δ k b. In a convolutional neural network, the image is of dimension x = and one of the learned filters is of dimension with a stride of 5. The resulting feature map of this filter over the image will have dimension, i ii iii. 5 5 iv v c. Assume we have an error function E and modify our cost function C by adding an L2-weight penalty, or specifically C = E + λ 2 j w2 j. The cost function is minimized with respect to w i when, i. w i = 1 E λ w i ii. w i = + E w i iii. w i = λ E 2 w i iv. w i = E w i 2 v. w i = 0 which describes how our weight magnitude should vary. HINT: recall that C is minimized when its derivative is 0. d. The best objective function for classification is i. Sum Squared Error ii. Cross-Entropy iii. Rectified linear unit iv. Logistic v. Funny tanh 5

6 e. Suppose we have a 3-dimensional input x = (x 1, x 2, x 3 ) connected to 4 neurons with the exact same weights w = (w 1, w 2, w 3 ) where: x 1 = 2, w 1 = 1, x 2 = 1, w 2 = 0.5, x 3 = 1, w 3 = 0, and the bias b = 0.5. We calculate the output of each of the four neurons using the input x, weights w and bias b. If y 1 = 0.95, y 2 = 3, y 3 = 1, y 4 = 3, then a valid guess for the neuron types of y 1, y 2, y 3 and y 4 is: i Rectified Linear, Logistic Sigmoid, Binary Threshold, Linear ii Linear, Binary Threshold, Logistic Sigmoid, Rectified Linear iii Logistic Sigmoid, Linear, Binary Threshold, Rectified Linear iv Rectified Linear, Linear, Binary Threshold, Logistic Sigmoid 6

7 Problem 4: The delta rule (10pts) Derive the delta rule for the case of a single layer network with a linear output and the sum squared error loss function. To make this as simple as possible, assume we are doing this for one input-output pattern p (then we can simply add these up over all of the patterns). So, starting with: SSE p = 1 2 (tp y p ) 2 (1) and y p = d w j x j (2) j=1 derive that: SSEp w i = (t p y p )x i (3) 7

8 Problem 5: Forward/Backward Propagation. (15 pts) Consider the simple neural network in Figure 1 with the corresponding initial weights and biases in Figure 2. Weights are indicated as numbers along connections and biases are indicated as numbers within a node. All units use the Sigmoid Activation function g(a) = f(a) = 1 and the cost function is the Cross-Entropy Loss. 1+e a On the following page, fill in the three panels. 1. (4 pts) In the first panel, record the a i s into each of the nodes. 2. (3 pts) In the second panel, record z i = g(a i ) for each of the nodes. You may use the table of approximate Sigmoid Activation values on the next page. 3. (5 pts) In the third panel, compute the δ for each node. Do this for training example, X = (1.0, 1.0) with target of t = Update the weights. (3 pts) Given the δ s you computed, use gradient descent to calculate the new weight from hidden unit 1 (H1) to the Output (OUT) (currently 1.0). Use gradient descent with no momentum and learning rate η = 1.0. Figure 1. Figure 2. 8

9 9

Reading Group on Deep Learning Session 1

Reading Group on Deep Learning Session 1 Reading Group on Deep Learning Session 1 Stephane Lathuiliere & Pablo Mesejo 2 June 2016 1/31 Contents Introduction to Artificial Neural Networks to understand, and to be able to efficiently use, the popular

More information

Neural Networks. Nicholas Ruozzi University of Texas at Dallas

Neural Networks. Nicholas Ruozzi University of Texas at Dallas Neural Networks Nicholas Ruozzi University of Texas at Dallas Handwritten Digit Recognition Given a collection of handwritten digits and their corresponding labels, we d like to be able to correctly classify

More information

CSC321 Lecture 5: Multilayer Perceptrons

CSC321 Lecture 5: Multilayer Perceptrons CSC321 Lecture 5: Multilayer Perceptrons Roger Grosse Roger Grosse CSC321 Lecture 5: Multilayer Perceptrons 1 / 21 Overview Recall the simple neuron-like unit: y output output bias i'th weight w 1 w2 w3

More information

Multilayer Neural Networks. (sometimes called Multilayer Perceptrons or MLPs)

Multilayer Neural Networks. (sometimes called Multilayer Perceptrons or MLPs) Multilayer Neural Networks (sometimes called Multilayer Perceptrons or MLPs) Linear separability Hyperplane In 2D: w x + w 2 x 2 + w 0 = 0 Feature x 2 = w w 2 x w 0 w 2 Feature 2 A perceptron can separate

More information

COGS Q250 Fall Homework 7: Learning in Neural Networks Due: 9:00am, Friday 2nd November.

COGS Q250 Fall Homework 7: Learning in Neural Networks Due: 9:00am, Friday 2nd November. COGS Q250 Fall 2012 Homework 7: Learning in Neural Networks Due: 9:00am, Friday 2nd November. For the first two questions of the homework you will need to understand the learning algorithm using the delta

More information

Need for Deep Networks Perceptron. Can only model linear functions. Kernel Machines. Non-linearity provided by kernels

Need for Deep Networks Perceptron. Can only model linear functions. Kernel Machines. Non-linearity provided by kernels Need for Deep Networks Perceptron Can only model linear functions Kernel Machines Non-linearity provided by kernels Need to design appropriate kernels (possibly selecting from a set, i.e. kernel learning)

More information

Introduction to Machine Learning

Introduction to Machine Learning Introduction to Machine Learning Neural Networks Varun Chandola x x 5 Input Outline Contents February 2, 207 Extending Perceptrons 2 Multi Layered Perceptrons 2 2. Generalizing to Multiple Labels.................

More information

4. Multilayer Perceptrons

4. Multilayer Perceptrons 4. Multilayer Perceptrons This is a supervised error-correction learning algorithm. 1 4.1 Introduction A multilayer feedforward network consists of an input layer, one or more hidden layers, and an output

More information

Multilayer Neural Networks. (sometimes called Multilayer Perceptrons or MLPs)

Multilayer Neural Networks. (sometimes called Multilayer Perceptrons or MLPs) Multilayer Neural Networks (sometimes called Multilayer Perceptrons or MLPs) Linear separability Hyperplane In 2D: w 1 x 1 + w 2 x 2 + w 0 = 0 Feature 1 x 2 = w 1 w 2 x 1 w 0 w 2 Feature 2 A perceptron

More information

Classification goals: Make 1 guess about the label (Top-1 error) Make 5 guesses about the label (Top-5 error) No Bounding Box

Classification goals: Make 1 guess about the label (Top-1 error) Make 5 guesses about the label (Top-5 error) No Bounding Box ImageNet Classification with Deep Convolutional Neural Networks Alex Krizhevsky, Ilya Sutskever, Geoffrey E. Hinton Motivation Classification goals: Make 1 guess about the label (Top-1 error) Make 5 guesses

More information

Introduction to Neural Networks

Introduction to Neural Networks CUONG TUAN NGUYEN SEIJI HOTTA MASAKI NAKAGAWA Tokyo University of Agriculture and Technology Copyright by Nguyen, Hotta and Nakagawa 1 Pattern classification Which category of an input? Example: Character

More information

CSCI567 Machine Learning (Fall 2018)

CSCI567 Machine Learning (Fall 2018) CSCI567 Machine Learning (Fall 2018) Prof. Haipeng Luo U of Southern California Sep 12, 2018 September 12, 2018 1 / 49 Administration GitHub repos are setup (ask TA Chi Zhang for any issues) HW 1 is due

More information

Mark your answers ON THE EXAM ITSELF. If you are not sure of your answer you may wish to provide a brief explanation.

Mark your answers ON THE EXAM ITSELF. If you are not sure of your answer you may wish to provide a brief explanation. CS 189 Spring 2015 Introduction to Machine Learning Midterm You have 80 minutes for the exam. The exam is closed book, closed notes except your one-page crib sheet. No calculators or electronic items.

More information

AN INTRODUCTION TO NEURAL NETWORKS. Scott Kuindersma November 12, 2009

AN INTRODUCTION TO NEURAL NETWORKS. Scott Kuindersma November 12, 2009 AN INTRODUCTION TO NEURAL NETWORKS Scott Kuindersma November 12, 2009 SUPERVISED LEARNING We are given some training data: We must learn a function If y is discrete, we call it classification If it is

More information

Neural Networks (Part 1) Goals for the lecture

Neural Networks (Part 1) Goals for the lecture Neural Networks (Part ) Mark Craven and David Page Computer Sciences 760 Spring 208 www.biostat.wisc.edu/~craven/cs760/ Some of the slides in these lectures have been adapted/borrowed from materials developed

More information

CSC 578 Neural Networks and Deep Learning

CSC 578 Neural Networks and Deep Learning CSC 578 Neural Networks and Deep Learning Fall 2018/19 3. Improving Neural Networks (Some figures adapted from NNDL book) 1 Various Approaches to Improve Neural Networks 1. Cost functions Quadratic Cross

More information

Midterm: CS 6375 Spring 2015 Solutions

Midterm: CS 6375 Spring 2015 Solutions Midterm: CS 6375 Spring 2015 Solutions The exam is closed book. You are allowed a one-page cheat sheet. Answer the questions in the spaces provided on the question sheets. If you run out of room for an

More information

Need for Deep Networks Perceptron. Can only model linear functions. Kernel Machines. Non-linearity provided by kernels

Need for Deep Networks Perceptron. Can only model linear functions. Kernel Machines. Non-linearity provided by kernels Need for Deep Networks Perceptron Can only model linear functions Kernel Machines Non-linearity provided by kernels Need to design appropriate kernels (possibly selecting from a set, i.e. kernel learning)

More information

Comments. Assignment 3 code released. Thought questions 3 due this week. Mini-project: hopefully you have started. implement classification algorithms

Comments. Assignment 3 code released. Thought questions 3 due this week. Mini-project: hopefully you have started. implement classification algorithms Neural networks Comments Assignment 3 code released implement classification algorithms use kernels for census dataset Thought questions 3 due this week Mini-project: hopefully you have started 2 Example:

More information

) (d o f. For the previous layer in a neural network (just the rightmost layer if a single neuron), the required update equation is: 2.

) (d o f. For the previous layer in a neural network (just the rightmost layer if a single neuron), the required update equation is: 2. 1 Massachusetts Institute of Technology Department of Electrical Engineering and Computer Science 6.034 Artificial Intelligence, Fall 2011 Recitation 8, November 3 Corrected Version & (most) solutions

More information

Lecture 10. Neural networks and optimization. Machine Learning and Data Mining November Nando de Freitas UBC. Nonlinear Supervised Learning

Lecture 10. Neural networks and optimization. Machine Learning and Data Mining November Nando de Freitas UBC. Nonlinear Supervised Learning Lecture 0 Neural networks and optimization Machine Learning and Data Mining November 2009 UBC Gradient Searching for a good solution can be interpreted as looking for a minimum of some error (loss) function

More information

Neural Networks and Deep Learning

Neural Networks and Deep Learning Neural Networks and Deep Learning Professor Ameet Talwalkar November 12, 2015 Professor Ameet Talwalkar Neural Networks and Deep Learning November 12, 2015 1 / 16 Outline 1 Review of last lecture AdaBoost

More information

Machine Learning for Large-Scale Data Analysis and Decision Making A. Neural Networks Week #6

Machine Learning for Large-Scale Data Analysis and Decision Making A. Neural Networks Week #6 Machine Learning for Large-Scale Data Analysis and Decision Making 80-629-17A Neural Networks Week #6 Today Neural Networks A. Modeling B. Fitting C. Deep neural networks Today s material is (adapted)

More information

Artificial Neural Networks

Artificial Neural Networks Artificial Neural Networks Threshold units Gradient descent Multilayer networks Backpropagation Hidden layer representations Example: Face Recognition Advanced topics 1 Connectionist Models Consider humans:

More information

Artificial Intelligence

Artificial Intelligence Artificial Intelligence Jeff Clune Assistant Professor Evolving Artificial Intelligence Laboratory Announcements Be making progress on your projects! Three Types of Learning Unsupervised Supervised Reinforcement

More information

Neural Networks Task Sheet 2. Due date: May

Neural Networks Task Sheet 2. Due date: May Neural Networks 2007 Task Sheet 2 1/6 University of Zurich Prof. Dr. Rolf Pfeifer, pfeifer@ifi.unizh.ch Department of Informatics, AI Lab Matej Hoffmann, hoffmann@ifi.unizh.ch Andreasstrasse 15 Marc Ziegler,

More information

CS 6501: Deep Learning for Computer Graphics. Basics of Neural Networks. Connelly Barnes

CS 6501: Deep Learning for Computer Graphics. Basics of Neural Networks. Connelly Barnes CS 6501: Deep Learning for Computer Graphics Basics of Neural Networks Connelly Barnes Overview Simple neural networks Perceptron Feedforward neural networks Multilayer perceptron and properties Autoencoders

More information

Logistic Regression & Neural Networks

Logistic Regression & Neural Networks Logistic Regression & Neural Networks CMSC 723 / LING 723 / INST 725 Marine Carpuat Slides credit: Graham Neubig, Jacob Eisenstein Logistic Regression Perceptron & Probabilities What if we want a probability

More information

Neural Networks and Deep Learning.

Neural Networks and Deep Learning. Neural Networks and Deep Learning www.cs.wisc.edu/~dpage/cs760/ 1 Goals for the lecture you should understand the following concepts perceptrons the perceptron training rule linear separability hidden

More information

1 What a Neural Network Computes

1 What a Neural Network Computes Neural Networks 1 What a Neural Network Computes To begin with, we will discuss fully connected feed-forward neural networks, also known as multilayer perceptrons. A feedforward neural network consists

More information

Cheng Soon Ong & Christian Walder. Canberra February June 2018

Cheng Soon Ong & Christian Walder. Canberra February June 2018 Cheng Soon Ong & Christian Walder Research Group and College of Engineering and Computer Science Canberra February June 2018 Outlines Overview Introduction Linear Algebra Probability Linear Regression

More information

Artificial Neural Networks. MGS Lecture 2

Artificial Neural Networks. MGS Lecture 2 Artificial Neural Networks MGS 2018 - Lecture 2 OVERVIEW Biological Neural Networks Cell Topology: Input, Output, and Hidden Layers Functional description Cost functions Training ANNs Back-Propagation

More information

MIDTERM: CS 6375 INSTRUCTOR: VIBHAV GOGATE October,

MIDTERM: CS 6375 INSTRUCTOR: VIBHAV GOGATE October, MIDTERM: CS 6375 INSTRUCTOR: VIBHAV GOGATE October, 23 2013 The exam is closed book. You are allowed a one-page cheat sheet. Answer the questions in the spaces provided on the question sheets. If you run

More information

Artificial Neural Networks

Artificial Neural Networks Artificial Neural Networks 鮑興國 Ph.D. National Taiwan University of Science and Technology Outline Perceptrons Gradient descent Multi-layer networks Backpropagation Hidden layer representations Examples

More information

Machine Learning Lecture 14

Machine Learning Lecture 14 Machine Learning Lecture 14 Tricks of the Trade 07.12.2017 Bastian Leibe RWTH Aachen http://www.vision.rwth-aachen.de leibe@vision.rwth-aachen.de Course Outline Fundamentals Bayes Decision Theory Probability

More information

Final Examination CS 540-2: Introduction to Artificial Intelligence

Final Examination CS 540-2: Introduction to Artificial Intelligence Final Examination CS 540-2: Introduction to Artificial Intelligence May 7, 2017 LAST NAME: SOLUTIONS FIRST NAME: Problem Score Max Score 1 14 2 10 3 6 4 10 5 11 6 9 7 8 9 10 8 12 12 8 Total 100 1 of 11

More information

Final Examination CS540-2: Introduction to Artificial Intelligence

Final Examination CS540-2: Introduction to Artificial Intelligence Final Examination CS540-2: Introduction to Artificial Intelligence May 9, 2018 LAST NAME: SOLUTIONS FIRST NAME: Directions 1. This exam contains 33 questions worth a total of 100 points 2. Fill in your

More information

Multilayer Perceptron

Multilayer Perceptron Outline Hong Chang Institute of Computing Technology, Chinese Academy of Sciences Machine Learning Methods (Fall 2012) Outline Outline I 1 Introduction 2 Single Perceptron 3 Boolean Function Learning 4

More information

Machine Learning

Machine Learning Machine Learning 10-315 Maria Florina Balcan Machine Learning Department Carnegie Mellon University 03/29/2019 Today: Artificial neural networks Backpropagation Reading: Mitchell: Chapter 4 Bishop: Chapter

More information

CSC321 Lecture 8: Optimization

CSC321 Lecture 8: Optimization CSC321 Lecture 8: Optimization Roger Grosse Roger Grosse CSC321 Lecture 8: Optimization 1 / 26 Overview We ve talked a lot about how to compute gradients. What do we actually do with them? Today s lecture:

More information

Course 395: Machine Learning - Lectures

Course 395: Machine Learning - Lectures Course 395: Machine Learning - Lectures Lecture 1-2: Concept Learning (M. Pantic) Lecture 3-4: Decision Trees & CBC Intro (M. Pantic & S. Petridis) Lecture 5-6: Evaluating Hypotheses (S. Petridis) Lecture

More information

AI Programming CS F-20 Neural Networks

AI Programming CS F-20 Neural Networks AI Programming CS662-2008F-20 Neural Networks David Galles Department of Computer Science University of San Francisco 20-0: Symbolic AI Most of this class has been focused on Symbolic AI Focus or symbols

More information

Neural Networks. CSE 6363 Machine Learning Vassilis Athitsos Computer Science and Engineering Department University of Texas at Arlington

Neural Networks. CSE 6363 Machine Learning Vassilis Athitsos Computer Science and Engineering Department University of Texas at Arlington Neural Networks CSE 6363 Machine Learning Vassilis Athitsos Computer Science and Engineering Department University of Texas at Arlington 1 Perceptrons x 0 = 1 x 1 x 2 z = h w T x Output: z x D A perceptron

More information

Introduction to Machine Learning Spring 2018 Note Neural Networks

Introduction to Machine Learning Spring 2018 Note Neural Networks CS 189 Introduction to Machine Learning Spring 2018 Note 14 1 Neural Networks Neural networks are a class of compositional function approximators. They come in a variety of shapes and sizes. In this class,

More information

Serious limitations of (single-layer) perceptrons: Cannot learn non-linearly separable tasks. Cannot approximate (learn) non-linear functions

Serious limitations of (single-layer) perceptrons: Cannot learn non-linearly separable tasks. Cannot approximate (learn) non-linear functions BACK-PROPAGATION NETWORKS Serious limitations of (single-layer) perceptrons: Cannot learn non-linearly separable tasks Cannot approximate (learn) non-linear functions Difficult (if not impossible) to design

More information

Machine Learning. Neural Networks. (slides from Domingos, Pardo, others)

Machine Learning. Neural Networks. (slides from Domingos, Pardo, others) Machine Learning Neural Networks (slides from Domingos, Pardo, others) For this week, Reading Chapter 4: Neural Networks (Mitchell, 1997) See Canvas For subsequent weeks: Scaling Learning Algorithms toward

More information

Lecture 4: Perceptrons and Multilayer Perceptrons

Lecture 4: Perceptrons and Multilayer Perceptrons Lecture 4: Perceptrons and Multilayer Perceptrons Cognitive Systems II - Machine Learning SS 2005 Part I: Basic Approaches of Concept Learning Perceptrons, Artificial Neuronal Networks Lecture 4: Perceptrons

More information

Input layer. Weight matrix [ ] Output layer

Input layer. Weight matrix [ ] Output layer MASSACHUSETTS INSTITUTE OF TECHNOLOGY Department of Electrical Engineering and Computer Science 6.034 Artificial Intelligence, Fall 2003 Recitation 10, November 4 th & 5 th 2003 Learning by perceptrons

More information

Introduction to Natural Computation. Lecture 9. Multilayer Perceptrons and Backpropagation. Peter Lewis

Introduction to Natural Computation. Lecture 9. Multilayer Perceptrons and Backpropagation. Peter Lewis Introduction to Natural Computation Lecture 9 Multilayer Perceptrons and Backpropagation Peter Lewis 1 / 25 Overview of the Lecture Why multilayer perceptrons? Some applications of multilayer perceptrons.

More information

Neural Networks. Yan Shao Department of Linguistics and Philology, Uppsala University 7 December 2016

Neural Networks. Yan Shao Department of Linguistics and Philology, Uppsala University 7 December 2016 Neural Networks Yan Shao Department of Linguistics and Philology, Uppsala University 7 December 2016 Outline Part 1 Introduction Feedforward Neural Networks Stochastic Gradient Descent Computational Graph

More information

epochs epochs

epochs epochs Neural Network Experiments To illustrate practical techniques, I chose to use the glass dataset. This dataset has 214 examples and 6 classes. Here are 4 examples from the original dataset. The last values

More information

Neural Nets Supervised learning

Neural Nets Supervised learning 6.034 Artificial Intelligence Big idea: Learning as acquiring a function on feature vectors Background Nearest Neighbors Identification Trees Neural Nets Neural Nets Supervised learning y s(z) w w 0 w

More information

Deep Feedforward Networks. Seung-Hoon Na Chonbuk National University

Deep Feedforward Networks. Seung-Hoon Na Chonbuk National University Deep Feedforward Networks Seung-Hoon Na Chonbuk National University Neural Network: Types Feedforward neural networks (FNN) = Deep feedforward networks = multilayer perceptrons (MLP) No feedback connections

More information

CSE446: Neural Networks Spring Many slides are adapted from Carlos Guestrin and Luke Zettlemoyer

CSE446: Neural Networks Spring Many slides are adapted from Carlos Guestrin and Luke Zettlemoyer CSE446: Neural Networks Spring 2017 Many slides are adapted from Carlos Guestrin and Luke Zettlemoyer Human Neurons Switching time ~ 0.001 second Number of neurons 10 10 Connections per neuron 10 4-5 Scene

More information

Neural Networks biological neuron artificial neuron 1

Neural Networks biological neuron artificial neuron 1 Neural Networks biological neuron artificial neuron 1 A two-layer neural network Output layer (activation represents classification) Weighted connections Hidden layer ( internal representation ) Input

More information

ECE G: Special Topics in Signal Processing: Sparsity, Structure, and Inference

ECE G: Special Topics in Signal Processing: Sparsity, Structure, and Inference ECE 18-898G: Special Topics in Signal Processing: Sparsity, Structure, and Inference Neural Networks: A brief touch Yuejie Chi Department of Electrical and Computer Engineering Spring 2018 1/41 Outline

More information

Module 12. Machine Learning. Version 2 CSE IIT, Kharagpur

Module 12. Machine Learning. Version 2 CSE IIT, Kharagpur Module 12 Machine Learning Lesson 39 Neural Networks - III 12.4.4 Multi-Layer Perceptrons In contrast to perceptrons, multilayer networks can learn not only multiple decision boundaries, but the boundaries

More information

Machine Learning (CSE 446): Neural Networks

Machine Learning (CSE 446): Neural Networks Machine Learning (CSE 446): Neural Networks Noah Smith c 2017 University of Washington nasmith@cs.washington.edu November 6, 2017 1 / 22 Admin No Wednesday office hours for Noah; no lecture Friday. 2 /

More information

Advanced statistical methods for data analysis Lecture 2

Advanced statistical methods for data analysis Lecture 2 Advanced statistical methods for data analysis Lecture 2 RHUL Physics www.pp.rhul.ac.uk/~cowan Universität Mainz Klausurtagung des GK Eichtheorien exp. Tests... Bullay/Mosel 15 17 September, 2008 1 Outline

More information

Jakub Hajic Artificial Intelligence Seminar I

Jakub Hajic Artificial Intelligence Seminar I Jakub Hajic Artificial Intelligence Seminar I. 11. 11. 2014 Outline Key concepts Deep Belief Networks Convolutional Neural Networks A couple of questions Convolution Perceptron Feedforward Neural Network

More information

Multilayer Perceptrons (MLPs)

Multilayer Perceptrons (MLPs) CSE 5526: Introduction to Neural Networks Multilayer Perceptrons (MLPs) 1 Motivation Multilayer networks are more powerful than singlelayer nets Example: XOR problem x 2 1 AND x o x 1 x 2 +1-1 o x x 1-1

More information

Midterm: CS 6375 Spring 2018

Midterm: CS 6375 Spring 2018 Midterm: CS 6375 Spring 2018 The exam is closed book (1 cheat sheet allowed). Answer the questions in the spaces provided on the question sheets. If you run out of room for an answer, use an additional

More information

Neural Networks and the Back-propagation Algorithm

Neural Networks and the Back-propagation Algorithm Neural Networks and the Back-propagation Algorithm Francisco S. Melo In these notes, we provide a brief overview of the main concepts concerning neural networks and the back-propagation algorithm. We closely

More information

Deep Feedforward Networks

Deep Feedforward Networks Deep Feedforward Networks Liu Yang March 30, 2017 Liu Yang Short title March 30, 2017 1 / 24 Overview 1 Background A general introduction Example 2 Gradient based learning Cost functions Output Units 3

More information

Multilayer Perceptrons and Backpropagation

Multilayer Perceptrons and Backpropagation Multilayer Perceptrons and Backpropagation Informatics 1 CG: Lecture 7 Chris Lucas School of Informatics University of Edinburgh January 31, 2017 (Slides adapted from Mirella Lapata s.) 1 / 33 Reading:

More information

Neural Networks. Bishop PRML Ch. 5. Alireza Ghane. Feed-forward Networks Network Training Error Backpropagation Applications

Neural Networks. Bishop PRML Ch. 5. Alireza Ghane. Feed-forward Networks Network Training Error Backpropagation Applications Neural Networks Bishop PRML Ch. 5 Alireza Ghane Neural Networks Alireza Ghane / Greg Mori 1 Neural Networks Neural networks arise from attempts to model human/animal brains Many models, many claims of

More information

Neural Networks, Computation Graphs. CMSC 470 Marine Carpuat

Neural Networks, Computation Graphs. CMSC 470 Marine Carpuat Neural Networks, Computation Graphs CMSC 470 Marine Carpuat Binary Classification with a Multi-layer Perceptron φ A = 1 φ site = 1 φ located = 1 φ Maizuru = 1 φ, = 2 φ in = 1 φ Kyoto = 1 φ priest = 0 φ

More information

1 Machine Learning Concepts (16 points)

1 Machine Learning Concepts (16 points) CSCI 567 Fall 2018 Midterm Exam DO NOT OPEN EXAM UNTIL INSTRUCTED TO DO SO PLEASE TURN OFF ALL CELL PHONES Problem 1 2 3 4 5 6 Total Max 16 10 16 42 24 12 120 Points Please read the following instructions

More information

Feed-forward Networks Network Training Error Backpropagation Applications. Neural Networks. Oliver Schulte - CMPT 726. Bishop PRML Ch.

Feed-forward Networks Network Training Error Backpropagation Applications. Neural Networks. Oliver Schulte - CMPT 726. Bishop PRML Ch. Neural Networks Oliver Schulte - CMPT 726 Bishop PRML Ch. 5 Neural Networks Neural networks arise from attempts to model human/animal brains Many models, many claims of biological plausibility We will

More information

Machine Learning Lecture 10

Machine Learning Lecture 10 Machine Learning Lecture 10 Neural Networks 26.11.2018 Bastian Leibe RWTH Aachen http://www.vision.rwth-aachen.de leibe@vision.rwth-aachen.de Today s Topic Deep Learning 2 Course Outline Fundamentals Bayes

More information

Machine Learning for Computer Vision 8. Neural Networks and Deep Learning. Vladimir Golkov Technical University of Munich Computer Vision Group

Machine Learning for Computer Vision 8. Neural Networks and Deep Learning. Vladimir Golkov Technical University of Munich Computer Vision Group Machine Learning for Computer Vision 8. Neural Networks and Deep Learning Vladimir Golkov Technical University of Munich Computer Vision Group INTRODUCTION Nonlinear Coordinate Transformation http://cs.stanford.edu/people/karpathy/convnetjs/

More information

ECE521 Lecture 7/8. Logistic Regression

ECE521 Lecture 7/8. Logistic Regression ECE521 Lecture 7/8 Logistic Regression Outline Logistic regression (Continue) A single neuron Learning neural networks Multi-class classification 2 Logistic regression The output of a logistic regression

More information

Multilayer Perceptron

Multilayer Perceptron Aprendizagem Automática Multilayer Perceptron Ludwig Krippahl Aprendizagem Automática Summary Perceptron and linear discrimination Multilayer Perceptron, nonlinear discrimination Backpropagation and training

More information

Stochastic gradient descent; Classification

Stochastic gradient descent; Classification Stochastic gradient descent; Classification Steve Renals Machine Learning Practical MLP Lecture 2 28 September 2016 MLP Lecture 2 Stochastic gradient descent; Classification 1 Single Layer Networks MLP

More information

Artificial Neural Networks

Artificial Neural Networks Artificial Neural Networks Oliver Schulte - CMPT 310 Neural Networks Neural networks arise from attempts to model human/animal brains Many models, many claims of biological plausibility We will focus on

More information

Artificial Neural Networks Examination, June 2005

Artificial Neural Networks Examination, June 2005 Artificial Neural Networks Examination, June 2005 Instructions There are SIXTY questions. (The pass mark is 30 out of 60). For each question, please select a maximum of ONE of the given answers (either

More information

Statistical Machine Learning (BE4M33SSU) Lecture 5: Artificial Neural Networks

Statistical Machine Learning (BE4M33SSU) Lecture 5: Artificial Neural Networks Statistical Machine Learning (BE4M33SSU) Lecture 5: Artificial Neural Networks Jan Drchal Czech Technical University in Prague Faculty of Electrical Engineering Department of Computer Science Topics covered

More information

<Special Topics in VLSI> Learning for Deep Neural Networks (Back-propagation)

<Special Topics in VLSI> Learning for Deep Neural Networks (Back-propagation) Learning for Deep Neural Networks (Back-propagation) Outline Summary of Previous Standford Lecture Universal Approximation Theorem Inference vs Training Gradient Descent Back-Propagation

More information

Artifical Neural Networks

Artifical Neural Networks Neural Networks Artifical Neural Networks Neural Networks Biological Neural Networks.................................. Artificial Neural Networks................................... 3 ANN Structure...........................................

More information

Lab 5: 16 th April Exercises on Neural Networks

Lab 5: 16 th April Exercises on Neural Networks Lab 5: 16 th April 01 Exercises on Neural Networks 1. What are the values of weights w 0, w 1, and w for the perceptron whose decision surface is illustrated in the figure? Assume the surface crosses the

More information

CSC321 Lecture 7: Optimization

CSC321 Lecture 7: Optimization CSC321 Lecture 7: Optimization Roger Grosse Roger Grosse CSC321 Lecture 7: Optimization 1 / 25 Overview We ve talked a lot about how to compute gradients. What do we actually do with them? Today s lecture:

More information

Chapter ML:VI (continued)

Chapter ML:VI (continued) Chapter ML:VI (continued) VI Neural Networks Perceptron Learning Gradient Descent Multilayer Perceptron Radial asis Functions ML:VI-64 Neural Networks STEIN 2005-2018 Definition 1 (Linear Separability)

More information

Neural Networks DWML, /25

Neural Networks DWML, /25 DWML, 2007 /25 Neural networks: Biological and artificial Consider humans: Neuron switching time 0.00 second Number of neurons 0 0 Connections per neuron 0 4-0 5 Scene recognition time 0. sec 00 inference

More information

Neural Networks Learning the network: Backprop , Fall 2018 Lecture 4

Neural Networks Learning the network: Backprop , Fall 2018 Lecture 4 Neural Networks Learning the network: Backprop 11-785, Fall 2018 Lecture 4 1 Recap: The MLP can represent any function The MLP can be constructed to represent anything But how do we construct it? 2 Recap:

More information

DEEP LEARNING AND NEURAL NETWORKS: BACKGROUND AND HISTORY

DEEP LEARNING AND NEURAL NETWORKS: BACKGROUND AND HISTORY DEEP LEARNING AND NEURAL NETWORKS: BACKGROUND AND HISTORY 1 On-line Resources http://neuralnetworksanddeeplearning.com/index.html Online book by Michael Nielsen http://matlabtricks.com/post-5/3x3-convolution-kernelswith-online-demo

More information

Lecture 5: Logistic Regression. Neural Networks

Lecture 5: Logistic Regression. Neural Networks Lecture 5: Logistic Regression. Neural Networks Logistic regression Comparison with generative models Feed-forward neural networks Backpropagation Tricks for training neural networks COMP-652, Lecture

More information

Neural Networks. Single-layer neural network. CSE 446: Machine Learning Emily Fox University of Washington March 10, /9/17

Neural Networks. Single-layer neural network. CSE 446: Machine Learning Emily Fox University of Washington March 10, /9/17 3/9/7 Neural Networks Emily Fox University of Washington March 0, 207 Slides adapted from Ali Farhadi (via Carlos Guestrin and Luke Zettlemoyer) Single-layer neural network 3/9/7 Perceptron as a neural

More information

COMS 4771 Introduction to Machine Learning. Nakul Verma

COMS 4771 Introduction to Machine Learning. Nakul Verma COMS 4771 Introduction to Machine Learning Nakul Verma Announcements HW1 due next lecture Project details are available decide on the group and topic by Thursday Last time Generative vs. Discriminative

More information

Statistical NLP for the Web

Statistical NLP for the Web Statistical NLP for the Web Neural Networks, Deep Belief Networks Sameer Maskey Week 8, October 24, 2012 *some slides from Andrew Rosenberg Announcements Please ask HW2 related questions in courseworks

More information

Neural Networks with Applications to Vision and Language. Feedforward Networks. Marco Kuhlmann

Neural Networks with Applications to Vision and Language. Feedforward Networks. Marco Kuhlmann Neural Networks with Applications to Vision and Language Feedforward Networks Marco Kuhlmann Feedforward networks Linear separability x 2 x 2 0 1 0 1 0 0 x 1 1 0 x 1 linearly separable not linearly separable

More information

CSC 411 Lecture 10: Neural Networks

CSC 411 Lecture 10: Neural Networks CSC 411 Lecture 10: Neural Networks Roger Grosse, Amir-massoud Farahmand, and Juan Carrasquilla University of Toronto UofT CSC 411: 10-Neural Networks 1 / 35 Inspiration: The Brain Our brain has 10 11

More information

Midterm. Introduction to Machine Learning. CS 189 Spring You have 1 hour 20 minutes for the exam.

Midterm. Introduction to Machine Learning. CS 189 Spring You have 1 hour 20 minutes for the exam. CS 189 Spring 2013 Introduction to Machine Learning Midterm You have 1 hour 20 minutes for the exam. The exam is closed book, closed notes except your one-page crib sheet. Please use non-programmable calculators

More information

Revision: Neural Network

Revision: Neural Network Revision: Neural Network Exercise 1 Tell whether each of the following statements is true or false by checking the appropriate box. Statement True False a) A perceptron is guaranteed to perfectly learn

More information

Deep Feedforward Networks

Deep Feedforward Networks Deep Feedforward Networks Liu Yang March 30, 2017 Liu Yang Short title March 30, 2017 1 / 24 Overview 1 Background A general introduction Example 2 Gradient based learning Cost functions Output Units 3

More information

y(x n, w) t n 2. (1)

y(x n, w) t n 2. (1) Network training: Training a neural network involves determining the weight parameter vector w that minimizes a cost function. Given a training set comprising a set of input vector {x n }, n = 1,...N,

More information

Introduction to Deep Learning

Introduction to Deep Learning Introduction to Deep Learning A. G. Schwing & S. Fidler University of Toronto, 2015 A. G. Schwing & S. Fidler (UofT) CSC420: Intro to Image Understanding 2015 1 / 39 Outline 1 Universality of Neural Networks

More information

Machine Learning, Midterm Exam

Machine Learning, Midterm Exam 10-601 Machine Learning, Midterm Exam Instructors: Tom Mitchell, Ziv Bar-Joseph Wednesday 12 th December, 2012 There are 9 questions, for a total of 100 points. This exam has 20 pages, make sure you have

More information

NONLINEAR CLASSIFICATION AND REGRESSION. J. Elder CSE 4404/5327 Introduction to Machine Learning and Pattern Recognition

NONLINEAR CLASSIFICATION AND REGRESSION. J. Elder CSE 4404/5327 Introduction to Machine Learning and Pattern Recognition NONLINEAR CLASSIFICATION AND REGRESSION Nonlinear Classification and Regression: Outline 2 Multi-Layer Perceptrons The Back-Propagation Learning Algorithm Generalized Linear Models Radial Basis Function

More information

Neural Networks Lecturer: J. Matas Authors: J. Matas, B. Flach, O. Drbohlav

Neural Networks Lecturer: J. Matas Authors: J. Matas, B. Flach, O. Drbohlav Neural Networks 30.11.2015 Lecturer: J. Matas Authors: J. Matas, B. Flach, O. Drbohlav 1 Talk Outline Perceptron Combining neurons to a network Neural network, processing input to an output Learning Cost

More information

ECS171: Machine Learning

ECS171: Machine Learning ECS171: Machine Learning Lecture 4: Optimization (LFD 3.3, SGD) Cho-Jui Hsieh UC Davis Jan 22, 2018 Gradient descent Optimization Goal: find the minimizer of a function min f (w) w For now we assume f

More information