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

Size: px
Start display at page:

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

Transcription

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

2 Feedforward networks

3 Linear separability x 2 x x x 1 linearly separable not linearly separable

4 New features to the rescue! x x 3 x 3 = 0 0 x 1

5 New features to the rescue! x x x 1 x 3 = xor(x 1, x 2 )

6 How do we get new features? We want to apply the linear model not to x directly but to a representation φ(x) of x. How do we get this representation? Option 1. Manually engineer φ using expert knowledge. feature engineering Option 2. Make the model sensitive to parameters such that learning these parameters identifies a good representation φ. feature learning

7 From linear models to neural networks x 1 x 1 h 1 y y x 2 x 2 h 2

8 Function composition Neural networks are called networks because they can be understood in terms of function composition. (f g)(x) = f(g(x)) In essence, a neural network is an acyclic directed graph that describes how a collection of functions are composed. length of the composition chain = depth of the model The compositional structure of neural networks is important for the success of gradient-based optimisation. chain rule of derivatives

9 Functions, types, compositions h 1 x 1 h 2 y x 2 h 3 g 2 3 f 3 1

10 Shapes of the parameter matrices h 1 x 1 h 2 y x 2 h 3 H : (2, 3) W : (3, 1)

11 Feedforward networks Information flows through the network from the input layer x, through the intermediate layers, to the output layer y. There are no feedback connections in which (possibly intermediate) outputs of the model are fed back to itself. When feedforward networks are extended to include feedback connections, they are called recurrent networks.

12 A simple feedforward network h 1 x 1 h 2 y x 2 h 3 input layer hidden layer output layer

13 Artificial neuron x 0 θ 0 Σ f h(x) x n θ n

14 The rules of the game Choose the activation functions that will be used at each layer. sigmoid, tanh, rectified linear units, Choose an error function. function of predicted output and target output Choose a regulariser to prevent the network from overfitting. encodes preferences over the choices of parameters Choose an optimisation procedure to minimise the training loss. typically a variant of stochastic gradient descent

15 Activation functions

16 Logistic function 1 1 0,5 0,

17 Logistic function The output of a logistic unit is a number between 0 and 1. Therefore, the output can be interpreted as a conditional probability P(y = 1 x) for a binary random variable y. This makes logistic units ideal as output units for binary classification problems.

18 Softmax function The softmax function takes a k-dimensional vector z as its input and returns a k-dimensional vector y such that The softmax function generalises the logistic function in that it yields a probability distribution over k possible classes. In particular, each of the output components is a number between 0 and 1, and the sum of all output components is 1.

19 Softmax layer y 1 y 2 y 3 z 1 z 2 z 3 h 1 h 2 h 3 h 4

20 Hyperbolic tangent 1 1 0,5 0 0,5-0,

21 Problems with sigmoidal units Sigmoidal units saturate across most of their domain, which can make gradient-based learning very difficult. gradient is close to zero both for negative and positive values For this reason, their use as hidden units in feedforward networks is now discouraged. Sigmoidal units can still be used as output units when the cost function can undo the saturation. not the case with squared loss!

22 Rectified linear units 1 1 0,5 0,

23 Comparison of activation functions sigmoid tanh relu sigmoid tanh relu 1 1 0,5 0,75 0 0,5-0,5 0, activation functions gradients

24 Error functions

25 Maximum likelihood estimation Consider a family of probability distributions P(X; θ) that assign a probability to any sequence X of N examples. The maximum likelihood estimator for θ is then defined as If we assume that the examples are mutually independent and identically distributed, this can be rewritten as

26 Properties of the Maximum Likelihood Estimator The maximum likelihood estimator has two desirable properties: Consistency The mean squared error between the estimated and the true parameters decreases as N increases. Efficiency No consistent estimator has a lower mean squared error with respect to the parameters.

27 Conditional log-likelihood In supervised learning, we want to learn a conditional probability distribution over target values y, given features x. The assumption that the samples are i.i.d. gives us Maximising likelihood is the same as minimising the crossentropy between the empirical distribution and the model. derivation in GBC, section 5.7

28 Conditional log-likelihood The maximum likelihood principle gives us a principled way to derive the cost function for a supervised learning problem: In the case of linear regression, minimising this expression is equivalent to minimising the mean squared error. GBC, Section 5.7.1

29 Negative log-likelihood 5 3,75 log p 2,5 1, ,25 0,5 0,75 1 p

30 Logistic function 1 1 0,5 0,

31 Cross-entropy error function The output of a logistic unit can be interpreted as the conditional probability P(y i = 1 x) for a binary random variable y i. The natural error function for a logistic unit is the negative log probability of the correct output: This is usually written as

32 Cross-entropy cost function 3 3 2,25 2,25 error 1,5 error 1,5 0,75 0, ,25 0,5 0, ,25 0,5 0,75 1 h(x) h(x) y = 1 y = 0

33 Sigmoid and cross-entropy balance each other E f y k z k The steepness of cross-entropy error exactly balances the flatness of the logistic function.

34 Regularisation

35 Norm-based regularisation We can regularise the training of a neural network by adding an additional term to the error function. L2-regularisation: Give preference to parameter vectors with smaller Euclidean norms ( lengths ): L1-regularisation: Give preference to parameter vectors with smaller absolute-value norms:

36 Selected regularisation techniques Dataset augmentation. Generate new training data by systematically transforming the existing data. example: rotating and scaling images Early stopping. Stop the training when the validation set error goes up and backtrack to the previous set of parameters. Bagging. Train several different models separately, then have all of the models vote on the output.

37 Dropout Randomly set a fraction of units to zero during training. for example, 50% of all units in a given layer Intuition: Damaging random parts of the network prevents it from becoming oversensitive to idiosyncratic patterns in the data.

38 Dropout unmodified neural net net after applying dropout

39 Backpropagation

40 Backpropagation Feedforward networks can be trained using gradient descent. feedforward network = chain of differentiable functions The computational problem is how to efficiently compute the gradient for all layers of the network, at the same time. The standard algorithm for this is called backpropagation.

41 Network structure f w jk f w ij y i

42 Forward pass E f y k z k w jk f y j z j w ij y i

43 What do we want? E w ij

44 Computing the errors E f y k z k w jk f y j z j w ij y i

45 Error in the output layer E f y k z k

46 Error in a hidden layer E f z k w jk y j z j

47 Computing the weight gradients E z j w ij y i

48 Lab: Handwritten digit recognition

49 Handwritten digit recognition You are to build a feedforward net that takes in a greyscale image of a handwritten digit and outputs the digit (an integer). supervised learning

50 Basic network architecture one neuron for each pixel one neuron for each digit ? 10

51 How to use the network Translate each image to a vector x with components, where component x i is the greyscale value for pixel i in the image. The greyscale value is a fraction k/155 between 0 (black) and 1 (white). Feed the image to the network. Find the neuron y i in the output layer that has the highest activation and predict the digit i. Bonus: Implement a softmax layer!

52 What does the net learn? Source: Kylin-Xu

53 How to train the network To train the network we use the MNIST database, which consists of 70,000 handwritten labelled digits. Each target is translated into a vector y with 10 components, where y i is 1 if the target equals i and 0 otherwise. Example: If the target is 3 then y 3 = 1, and all other components are zero.

ECE521 Lectures 9 Fully Connected Neural Networks

ECE521 Lectures 9 Fully Connected Neural Networks ECE521 Lectures 9 Fully Connected Neural Networks Outline Multi-class classification Learning multi-layer neural networks 2 Measuring distance in probability space We learnt that the squared L2 distance

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

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

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

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

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

Deep Feedforward Networks. Han Shao, Hou Pong Chan, and Hongyi Zhang

Deep Feedforward Networks. Han Shao, Hou Pong Chan, and Hongyi Zhang Deep Feedforward Networks Han Shao, Hou Pong Chan, and Hongyi Zhang Deep Feedforward Networks Goal: approximate some function f e.g., a classifier, maps input to a class y = f (x) x y Defines a mapping

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

Feedforward Neural Networks

Feedforward Neural Networks Feedforward Neural Networks Michael Collins 1 Introduction In the previous notes, we introduced an important class of models, log-linear models. In this note, we describe feedforward neural networks, which

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

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

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

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

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

Ch.6 Deep Feedforward Networks (2/3)

Ch.6 Deep Feedforward Networks (2/3) Ch.6 Deep Feedforward Networks (2/3) 16. 10. 17. (Mon.) System Software Lab., Dept. of Mechanical & Information Eng. Woonggy Kim 1 Contents 6.3. Hidden Units 6.3.1. Rectified Linear Units and Their Generalizations

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 (NN) 1

Neural networks (NN) 1 Neural networks (NN) 1 Hedibert F. Lopes Insper Institute of Education and Research São Paulo, Brazil 1 Slides based on Chapter 11 of Hastie, Tibshirani and Friedman s book The Elements of Statistical

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

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

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

Deep Feedforward Networks

Deep Feedforward Networks Deep Feedforward Networks Yongjin Park 1 Goal of Feedforward Networks Deep Feedforward Networks are also called as Feedforward neural networks or Multilayer Perceptrons Their Goal: approximate some function

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

Neural Networks: Backpropagation

Neural Networks: Backpropagation Neural Networks: Backpropagation Seung-Hoon Na 1 1 Department of Computer Science Chonbuk National University 2018.10.25 eung-hoon Na (Chonbuk National University) Neural Networks: Backpropagation 2018.10.25

More information

From perceptrons to word embeddings. Simon Šuster University of Groningen

From perceptrons to word embeddings. Simon Šuster University of Groningen From perceptrons to word embeddings Simon Šuster University of Groningen Outline A basic computational unit Weighting some input to produce an output: classification Perceptron Classify tweets Written

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

Lecture 3 Feedforward Networks and Backpropagation

Lecture 3 Feedforward Networks and Backpropagation Lecture 3 Feedforward Networks and Backpropagation CMSC 35246: Deep Learning Shubhendu Trivedi & Risi Kondor University of Chicago April 3, 2017 Things we will look at today Recap of Logistic Regression

More information

Deep Neural Networks (1) Hidden layers; Back-propagation

Deep Neural Networks (1) Hidden layers; Back-propagation Deep Neural Networs (1) Hidden layers; Bac-propagation Steve Renals Machine Learning Practical MLP Lecture 3 4 October 2017 / 9 October 2017 MLP Lecture 3 Deep Neural Networs (1) 1 Recap: Softmax single

More information

Backpropagation Introduction to Machine Learning. Matt Gormley Lecture 12 Feb 23, 2018

Backpropagation Introduction to Machine Learning. Matt Gormley Lecture 12 Feb 23, 2018 10-601 Introduction to Machine Learning Machine Learning Department School of Computer Science Carnegie Mellon University Backpropagation Matt Gormley Lecture 12 Feb 23, 2018 1 Neural Networks Outline

More information

Deep Feedforward Networks. Sargur N. Srihari

Deep Feedforward Networks. Sargur N. Srihari Deep Feedforward Networks Sargur N. srihari@cedar.buffalo.edu 1 Topics Overview 1. Example: Learning XOR 2. Gradient-Based Learning 3. Hidden Units 4. Architecture Design 5. Backpropagation and Other Differentiation

More information

Artificial Neural Networks

Artificial Neural Networks Introduction ANN in Action Final Observations Application: Poverty Detection Artificial Neural Networks Alvaro J. Riascos Villegas University of los Andes and Quantil July 6 2018 Artificial Neural Networks

More information

Deep Learning Lab Course 2017 (Deep Learning Practical)

Deep Learning Lab Course 2017 (Deep Learning Practical) Deep Learning Lab Course 207 (Deep Learning Practical) Labs: (Computer Vision) Thomas Brox, (Robotics) Wolfram Burgard, (Machine Learning) Frank Hutter, (Neurorobotics) Joschka Boedecker University of

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

Lecture 3 Feedforward Networks and Backpropagation

Lecture 3 Feedforward Networks and Backpropagation Lecture 3 Feedforward Networks and Backpropagation CMSC 35246: Deep Learning Shubhendu Trivedi & Risi Kondor University of Chicago April 3, 2017 Things we will look at today Recap of Logistic Regression

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

Classification. Sandro Cumani. Politecnico di Torino

Classification. Sandro Cumani. Politecnico di Torino Politecnico di Torino Outline Generative model: Gaussian classifier (Linear) discriminative model: logistic regression (Non linear) discriminative model: neural networks Gaussian Classifier We want to

More information

Deep Neural Networks (1) Hidden layers; Back-propagation

Deep Neural Networks (1) Hidden layers; Back-propagation Deep Neural Networs (1) Hidden layers; Bac-propagation Steve Renals Machine Learning Practical MLP Lecture 3 2 October 2018 http://www.inf.ed.ac.u/teaching/courses/mlp/ MLP Lecture 3 / 2 October 2018 Deep

More information

Engineering Part IIB: Module 4F10 Statistical Pattern Processing Lecture 6: Multi-Layer Perceptrons I

Engineering Part IIB: Module 4F10 Statistical Pattern Processing Lecture 6: Multi-Layer Perceptrons I Engineering Part IIB: Module 4F10 Statistical Pattern Processing Lecture 6: Multi-Layer Perceptrons I Phil Woodland: pcw@eng.cam.ac.uk Michaelmas 2012 Engineering Part IIB: Module 4F10 Introduction In

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

CS 179: LECTURE 16 MODEL COMPLEXITY, REGULARIZATION, AND CONVOLUTIONAL NETS

CS 179: LECTURE 16 MODEL COMPLEXITY, REGULARIZATION, AND CONVOLUTIONAL NETS CS 179: LECTURE 16 MODEL COMPLEXITY, REGULARIZATION, AND CONVOLUTIONAL NETS LAST TIME Intro to cudnn Deep neural nets using cublas and cudnn TODAY Building a better model for image classification Overfitting

More information

Deep Feedforward Networks. Lecture slides for Chapter 6 of Deep Learning Ian Goodfellow Last updated

Deep Feedforward Networks. Lecture slides for Chapter 6 of Deep Learning  Ian Goodfellow Last updated Deep Feedforward Networks Lecture slides for Chapter 6 of Deep Learning www.deeplearningbook.org Ian Goodfellow Last updated 2016-10-04 Roadmap Example: Learning XOR Gradient-Based Learning Hidden Units

More information

CS60010: Deep Learning

CS60010: Deep Learning CS60010: Deep Learning Sudeshna Sarkar Spring 2018 16 Jan 2018 FFN Goal: Approximate some unknown ideal function f : X! Y Ideal classifier: y = f*(x) with x and category y Feedforward Network: Define parametric

More information

MLPR: Logistic Regression and Neural Networks

MLPR: Logistic Regression and Neural Networks MLPR: Logistic Regression and Neural Networks Machine Learning and Pattern Recognition Amos Storkey Amos Storkey MLPR: Logistic Regression and Neural Networks 1/28 Outline 1 Logistic Regression 2 Multi-layer

More information

Outline. MLPR: Logistic Regression and Neural Networks Machine Learning and Pattern Recognition. Which is the correct model? Recap.

Outline. MLPR: Logistic Regression and Neural Networks Machine Learning and Pattern Recognition. Which is the correct model? Recap. Outline MLPR: and Neural Networks Machine Learning and Pattern Recognition 2 Amos Storkey Amos Storkey MLPR: and Neural Networks /28 Recap Amos Storkey MLPR: and Neural Networks 2/28 Which is the correct

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

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

Artificial Neural Networks D B M G. Data Base and Data Mining Group of Politecnico di Torino. Elena Baralis. Politecnico di Torino

Artificial Neural Networks D B M G. Data Base and Data Mining Group of Politecnico di Torino. Elena Baralis. Politecnico di Torino Artificial Neural Networks Data Base and Data Mining Group of Politecnico di Torino Elena Baralis Politecnico di Torino Artificial Neural Networks Inspired to the structure of the human brain Neurons as

More information

Computational Graphs, and Backpropagation. Michael Collins, Columbia University

Computational Graphs, and Backpropagation. Michael Collins, Columbia University Computational Graphs, and Backpropagation Michael Collins, Columbia University A Key Problem: Calculating Derivatives where and p(y x; θ, v) = exp (v(y) φ(x; θ) + γ y ) y Y exp (v(y ) φ(x; θ) + γ y ) φ(x;

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

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

Lecture 2: Learning with neural networks

Lecture 2: Learning with neural networks Lecture 2: Learning with neural networks Deep Learning @ UvA LEARNING WITH NEURAL NETWORKS - PAGE 1 Lecture Overview o Machine Learning Paradigm for Neural Networks o The Backpropagation algorithm for

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

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

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

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

Neural Networks. David Rosenberg. July 26, New York University. David Rosenberg (New York University) DS-GA 1003 July 26, / 35

Neural Networks. David Rosenberg. July 26, New York University. David Rosenberg (New York University) DS-GA 1003 July 26, / 35 Neural Networks David Rosenberg New York University July 26, 2017 David Rosenberg (New York University) DS-GA 1003 July 26, 2017 1 / 35 Neural Networks Overview Objectives What are neural networks? How

More information

Data Mining Part 5. Prediction

Data Mining Part 5. Prediction Data Mining Part 5. Prediction 5.5. Spring 2010 Instructor: Dr. Masoud Yaghini Outline How the Brain Works Artificial Neural Networks Simple Computing Elements Feed-Forward Networks Perceptrons (Single-layer,

More information

What Do Neural Networks Do? MLP Lecture 3 Multi-layer networks 1

What Do Neural Networks Do? MLP Lecture 3 Multi-layer networks 1 What Do Neural Networks Do? MLP Lecture 3 Multi-layer networks 1 Multi-layer networks Steve Renals Machine Learning Practical MLP Lecture 3 7 October 2015 MLP Lecture 3 Multi-layer networks 2 What Do Single

More information

Feedforward Neural Nets and Backpropagation

Feedforward Neural Nets and Backpropagation Feedforward Neural Nets and Backpropagation Julie Nutini University of British Columbia MLRG September 28 th, 2016 1 / 23 Supervised Learning Roadmap Supervised Learning: Assume that we are given the features

More information

Machine Learning Basics III

Machine Learning Basics III Machine Learning Basics III Benjamin Roth CIS LMU München Benjamin Roth (CIS LMU München) Machine Learning Basics III 1 / 62 Outline 1 Classification Logistic Regression 2 Gradient Based Optimization Gradient

More information

Feedforward Neural Networks. Michael Collins, Columbia University

Feedforward Neural Networks. Michael Collins, Columbia University Feedforward Neural Networks Michael Collins, Columbia University Recap: Log-linear Models A log-linear model takes the following form: p(y x; v) = exp (v f(x, y)) y Y exp (v f(x, y )) f(x, y) is the representation

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 Network Language Modeling

Neural Network Language Modeling Neural Network Language Modeling Instructor: Wei Xu Ohio State University CSE 5525 Many slides from Marek Rei, Philipp Koehn and Noah Smith Course Project Sign up your course project In-class presentation

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

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

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

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

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

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

Deep learning / Ian Goodfellow, Yoshua Bengio and Aaron Courville. - Cambridge, MA ; London, Spis treści

Deep learning / Ian Goodfellow, Yoshua Bengio and Aaron Courville. - Cambridge, MA ; London, Spis treści Deep learning / Ian Goodfellow, Yoshua Bengio and Aaron Courville. - Cambridge, MA ; London, 2017 Spis treści Website Acknowledgments Notation xiii xv xix 1 Introduction 1 1.1 Who Should Read This Book?

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

Feed-forward Network Functions

Feed-forward Network Functions Feed-forward Network Functions Sargur Srihari Topics 1. Extension of linear models 2. Feed-forward Network Functions 3. Weight-space symmetries 2 Recap of Linear Models Linear Models for Regression, Classification

More information

Learning Deep Architectures for AI. Part II - Vijay Chakilam

Learning Deep Architectures for AI. Part II - Vijay Chakilam Learning Deep Architectures for AI - Yoshua Bengio Part II - Vijay Chakilam Limitations of Perceptron x1 W, b 0,1 1,1 y x2 weight plane output =1 output =0 There is no value for W and b such that the model

More information

Mark Gales October y (x) x 1. x 2 y (x) Inputs. Outputs. x d. y (x) Second Output layer layer. layer.

Mark Gales October y (x) x 1. x 2 y (x) Inputs. Outputs. x d. y (x) Second Output layer layer. layer. University of Cambridge Engineering Part IIB & EIST Part II Paper I0: Advanced Pattern Processing Handouts 4 & 5: Multi-Layer Perceptron: Introduction and Training x y (x) Inputs x 2 y (x) 2 Outputs x

More information

Machine Learning and Data Mining. Multi-layer Perceptrons & Neural Networks: Basics. Prof. Alexander Ihler

Machine Learning and Data Mining. Multi-layer Perceptrons & Neural Networks: Basics. Prof. Alexander Ihler + Machine Learning and Data Mining Multi-layer Perceptrons & Neural Networks: Basics Prof. Alexander Ihler Linear Classifiers (Perceptrons) Linear Classifiers a linear classifier is a mapping which partitions

More information

Lecture 2: Modular Learning

Lecture 2: Modular Learning Lecture 2: Modular Learning Deep Learning @ UvA MODULAR LEARNING - PAGE 1 Announcement o C. Maddison is coming to the Deep Vision Seminars on the 21 st of Sep Author of concrete distribution, co-author

More information

text classification 3: neural networks

text classification 3: neural networks text classification 3: neural networks CS 585, Fall 2018 Introduction to Natural Language Processing http://people.cs.umass.edu/~miyyer/cs585/ Mohit Iyyer College of Information and Computer Sciences University

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

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

Pattern Recognition Prof. P. S. Sastry Department of Electronics and Communication Engineering Indian Institute of Science, Bangalore

Pattern Recognition Prof. P. S. Sastry Department of Electronics and Communication Engineering Indian Institute of Science, Bangalore Pattern Recognition Prof. P. S. Sastry Department of Electronics and Communication Engineering Indian Institute of Science, Bangalore Lecture - 27 Multilayer Feedforward Neural networks with Sigmoidal

More information

Deep Neural Networks

Deep Neural Networks Deep Neural Networks DT2118 Speech and Speaker Recognition Giampiero Salvi KTH/CSC/TMH giampi@kth.se VT 2015 1 / 45 Outline State-to-Output Probability Model Artificial Neural Networks Perceptron Multi

More information

Topics in AI (CPSC 532L): Multimodal Learning with Vision, Language and Sound. Lecture 3: Introduction to Deep Learning (continued)

Topics in AI (CPSC 532L): Multimodal Learning with Vision, Language and Sound. Lecture 3: Introduction to Deep Learning (continued) Topics in AI (CPSC 532L): Multimodal Learning with Vision, Language and Sound Lecture 3: Introduction to Deep Learning (continued) Course Logistics - Update on course registrations - 6 seats left now -

More information

ARTIFICIAL INTELLIGENCE. Artificial Neural Networks

ARTIFICIAL INTELLIGENCE. Artificial Neural Networks INFOB2KI 2017-2018 Utrecht University The Netherlands ARTIFICIAL INTELLIGENCE Artificial Neural Networks Lecturer: Silja Renooij These slides are part of the INFOB2KI Course Notes available from www.cs.uu.nl/docs/vakken/b2ki/schema.html

More information

EVERYTHING YOU NEED TO KNOW TO BUILD YOUR FIRST CONVOLUTIONAL NEURAL NETWORK (CNN)

EVERYTHING YOU NEED TO KNOW TO BUILD YOUR FIRST CONVOLUTIONAL NEURAL NETWORK (CNN) EVERYTHING YOU NEED TO KNOW TO BUILD YOUR FIRST CONVOLUTIONAL NEURAL NETWORK (CNN) TARGETED PIECES OF KNOWLEDGE Linear regression Activation function Multi-Layers Perceptron (MLP) Stochastic Gradient Descent

More information

An overview of deep learning methods for genomics

An overview of deep learning methods for genomics An overview of deep learning methods for genomics Matthew Ploenzke STAT115/215/BIO/BIST282 Harvard University April 19, 218 1 Snapshot 1. Brief introduction to convolutional neural networks What is deep

More information

Logistic Regression. COMP 527 Danushka Bollegala

Logistic Regression. COMP 527 Danushka Bollegala Logistic Regression COMP 527 Danushka Bollegala Binary Classification Given an instance x we must classify it to either positive (1) or negative (0) class We can use {1,-1} instead of {1,0} but we will

More information

Apprentissage, réseaux de neurones et modèles graphiques (RCP209) Neural Networks and Deep Learning

Apprentissage, réseaux de neurones et modèles graphiques (RCP209) Neural Networks and Deep Learning Apprentissage, réseaux de neurones et modèles graphiques (RCP209) Neural Networks and Deep Learning Nicolas Thome Prenom.Nom@cnam.fr http://cedric.cnam.fr/vertigo/cours/ml2/ Département Informatique Conservatoire

More information

Convolutional Neural Networks. Srikumar Ramalingam

Convolutional Neural Networks. Srikumar Ramalingam Convolutional Neural Networks Srikumar Ramalingam Reference Many of the slides are prepared using the following resources: neuralnetworksanddeeplearning.com (mainly Chapter 6) http://cs231n.github.io/convolutional-networks/

More information

PV021: Neural networks. Tomáš Brázdil

PV021: Neural networks. Tomáš Brázdil 1 PV021: Neural networks Tomáš Brázdil 2 Course organization Course materials: Main: The lecture Neural Networks and Deep Learning by Michael Nielsen http://neuralnetworksanddeeplearning.com/ (Extremely

More information

Recurrent and Recursive Networks

Recurrent and Recursive Networks Neural Networks with Applications to Vision and Language Recurrent and Recursive Networks Marco Kuhlmann Introduction Applications of sequence modelling Map unsegmented connected handwriting to strings.

More information

Introduction to (Convolutional) Neural Networks

Introduction to (Convolutional) Neural Networks Introduction to (Convolutional) Neural Networks Philipp Grohs Summer School DL and Vis, Sept 2018 Syllabus 1 Motivation and Definition 2 Universal Approximation 3 Backpropagation 4 Stochastic Gradient

More information

Introduction to Convolutional Neural Networks 2018 / 02 / 23

Introduction to Convolutional Neural Networks 2018 / 02 / 23 Introduction to Convolutional Neural Networks 2018 / 02 / 23 Buzzword: CNN Convolutional neural networks (CNN, ConvNet) is a class of deep, feed-forward (not recurrent) artificial neural networks that

More information

Neural networks COMS 4771

Neural networks COMS 4771 Neural networks COMS 4771 1. Logistic regression Logistic regression Suppose X = R d and Y = {0, 1}. A logistic regression model is a statistical model where the conditional probability function has a

More information

Index. Santanu Pattanayak 2017 S. Pattanayak, Pro Deep Learning with TensorFlow,

Index. Santanu Pattanayak 2017 S. Pattanayak, Pro Deep Learning with TensorFlow, Index A Activation functions, neuron/perceptron binary threshold activation function, 102 103 linear activation function, 102 rectified linear unit, 106 sigmoid activation function, 103 104 SoftMax activation

More information

Introduction to Convolutional Neural Networks (CNNs)

Introduction to Convolutional Neural Networks (CNNs) Introduction to Convolutional Neural Networks (CNNs) nojunk@snu.ac.kr http://mipal.snu.ac.kr Department of Transdisciplinary Studies Seoul National University, Korea Jan. 2016 Many slides are from Fei-Fei

More information

Topic 3: Neural Networks

Topic 3: Neural Networks CS 4850/6850: Introduction to Machine Learning Fall 2018 Topic 3: Neural Networks Instructor: Daniel L. Pimentel-Alarcón c Copyright 2018 3.1 Introduction Neural networks are arguably the main reason why

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

CSCI 315: Artificial Intelligence through Deep Learning

CSCI 315: Artificial Intelligence through Deep Learning CSCI 35: Artificial Intelligence through Deep Learning W&L Fall Term 27 Prof. Levy Convolutional Networks http://wernerstudio.typepad.com/.a/6ad83549adb53ef53629ccf97c-5wi Convolution: Convolution is

More information

Neural Network Tutorial & Application in Nuclear Physics. Weiguang Jiang ( 蒋炜光 ) UTK / ORNL

Neural Network Tutorial & Application in Nuclear Physics. Weiguang Jiang ( 蒋炜光 ) UTK / ORNL Neural Network Tutorial & Application in Nuclear Physics Weiguang Jiang ( 蒋炜光 ) UTK / ORNL Machine Learning Logistic Regression Gaussian Processes Neural Network Support vector machine Random Forest Genetic

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

How to do backpropagation in a brain

How to do backpropagation in a brain How to do backpropagation in a brain Geoffrey Hinton Canadian Institute for Advanced Research & University of Toronto & Google Inc. Prelude I will start with three slides explaining a popular type of deep

More information