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| The following are last minute news you should be aware of ;-) | | The following are last minute news you should be aware of ;-) |
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| + | 28/05/2013: fixed the data file prostate.data for the homework |
| 26/05/2013: first homework is out -> deadline to turn it in Sunday 09/06/2013 | | 26/05/2013: first homework is out -> deadline to turn it in Sunday 09/06/2013 |
| 21/05/2013: detailed schedule updated | | 21/05/2013: detailed schedule updated |
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| * A written examination covering the whole program that count for 70% of the course grade | | * A written examination covering the whole program that count for 70% of the course grade |
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− | The homework is just one per year, it will be published at the end of the course and you will have 15 days to turn it in. It is not mandatory, however if you do not turn it in you loose 30% of the course grade. There is the option of substitute the homework with a practical project, but this has to be discussed and agreed with the course professor. | + | The homework is just one per year, it will be published at the end of the course and you will have 15 days to turn it in. It is not mandatory, however if you do not |
− | | + | |
− | ==Teaching Material (the textbook)==
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− | Lectures will be based on material taken from the aforementioned slides and from the following book.
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− | * [http://http://www-stat.stanford.edu/~tibs/ElemStatLearn/index.html The Elements of Statistical Learning: Data Mining, Inference, and Prediction.] by Trevor Hastie, Robert Tibshirani, and Jerome Friedman.
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− | Some additional material that could be used to prepare the oral examination will be provided together with the past homeworks.
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− | | + | |
− | ===Teacher Slides===
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− | | + | |
− | In the following you can find the lecture slides used by the teacher and the teaching assistants during classes:
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− | * [[Media:PAMI_Intro.pdf | Course introduction]]: introductory slides of the course with useful information about the grading, and the course logistics. Some examples from supervised learning and two algorithms for classification (taken from ''The Elements of Statistical Learning'' book).
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− | * [[Media:ProbabilityBasics.pdf | Probability Basics]]: Slides on probability basics used to introduce Statistical Decision Theory.
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− | * [[Media:PAMI_LinearClassification.pdf | Linear Classification Examples]]: slides presenting images, tables and examples about (generalized) linear methods for classification (taken from ''The Elements of Statistical Learning'' book).
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− | * [[Media:PAMI_KernelSmoothing.pdf | Kernel Smoothing Examples]]: slides presenting images, tables and examples about Kernel Smoothing, Kernel Density Estimation and Gaussian Mixture Models (taken from ''The Elements of Statistical Learning'' book).
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− | * [[Media:PAMI_DTnR.pdf | Decision Trees and Classification Rules]]: these slides have been used to present decision trees and decision rules complementing the material in Ch. 9.2 of the ''The Elements of Statistical Learning'' book.
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− | * [[Media:PAMI_SVM.pdf | Support Vector Machines]]: these slides have been used to present Support Vector Machines (taken from ''The Elements of Statistical Learning'' book).
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− | | + | |
− | ===Additional Papers===
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− | Papers used to integrate the textbook
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− | * Bradley Efron, Trevor Hastie, Iain Johnstone and Robert Tibshirani, [http://www.stanford.edu/~hastie/Papers/LARS/LeastAngle_2002.pdf Least Angle Regression] Annals of Statistics (with discussion) (2004) 32(2), 407-499.
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− | * Burges, Christopher J. C., 1998. [http://www.svms.org/tutorials/Burges1998.pdf A tutorial on support vector machines for pattern recognition]. Data Mining and Knowledge Discovery, 2(2), 121–167.
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− | * ...
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− | | + | |
− | ===Clustering Slides===
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− | These are the slides used to present clustering algorithms during lectures
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− | * Lesson 1: Introduction to Clustering and K-Means ([http://davide.eynard.it/teaching/2012_PAMI/slides-lecture-e1.pdf slides], [http://davide.eynard.it/teaching/2012_PAMI/handout-lecture-e1.pdf handouts])
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− | | + | |
− | * Lesson 2: K-Means alternatives, Hierarchical, SOM ([http://davide.eynard.it/teaching/2012_PAMI/slides-lecture-e2.pdf slides], [http://davide.eynard.it/teaching/2012_PAMI/handout-lecture-e2.pdf handouts])
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− | | + | |
− | * Lesson 3: Mixture of Gaussians, DBSCAN, Jarvis-Patrick ([http://davide.eynard.it/teaching/2012_PAMI/slides-lecture-e3.pdf slides], [http://davide.eynard.it/teaching/2012_PAMI/handout-lecture-e3.pdf handouts])
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− | | + | |
− | * Lesson 4: Evaluation measures ([http://davide.eynard.it/teaching/2012_PAMI/slides-lecture-e4.pdf slides], [http://davide.eynard.it/teaching/2012_PAMI/handout-lecture-e4.pdf handouts]) and Spectral Clustering ([http://davide.eynard.it/teaching/2012_PAMI/Spectral%20Clustering.pdf])
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− | | + | |
− | ===Past Exams and Sample Questions===
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− | These are the text of past exams to give and idea on what to expect during the class exam:
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− | | + | |
− | * [[Media:2013_01_29_PAMI.pdf |29/01/2013 Exam]]
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− | * [[Media:2012_09_19_PAMI.pdf |19/09/2012 Exam]]
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− | * [[Media:2012_09_04_PAMI.pdf |04/09/2012 Exam]]
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− | * [[Media:2012_07_10_PAMI.pdf |10/07/2012 Exam]]
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− | * [[Media:2012_06_26_PAMI.pdf |26/06/2012 Exam]]
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− | * [[Media:2012_02_03_PAMI.pdf |03/02/2012 Exam]]
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− | * [[Media:2011_09_19_PAMI.pdf |19/09/2011 Exam]]
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− | * [[Media:2011_09_08_PAMI.pdf |08/09/2011 Exam]]
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− | * [[Media:2011_07_15_PAMI.pdf |15/07/2011 Exam]]
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− | * [[Media:2011_06_29_PAMI.pdf |29/06/2011 Exam]]
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− | | + | |
− | == 2013 Homework ==
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− | | + | |
− | The 2013 Homework (alike the 2012 one) is organized as an octave series of tutorials. You are requested to go through the tutorials and practice with the algorithms that have been presented in class. To prove us you have done it and that you have understood the code you will be requested to solve few exercises and provide us a pdf report by email
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− | * [[Media:homework_pami_regression_2013.pdf | Homework 2012 Regression]]: this is the text of the first part of the homework; it has been intentionally edited not to allow cut and paste. '''This part of the homework will contribute to the 10% of the grade and the deadline to submit the solution by email to matteucci@elet.polimi.it and malago@di.unimi.it is Sunday 09/06 23:59'''
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− | ** [[Media:prostate.data | prostate.data]]: the dataset used for the homework
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− | ** [[Media:prostate.info | prostate.info]]: the dataset used for the homework
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− | ** [[Media:diabete.mat | diabete.mat]]: the dataset used for the homework
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− | For any question or doubt please sen us an email as soon as possible.
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− | | + | |
− | <!-- ** [[Media:textread.m | textread.m]]: (optional) function which might be useful depending on your octave version -->
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− | <!-- ** [[Media:strread.m | strread.m]]: (optional) function which might be useful depending on your octave version -->
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− | | + | |
− | '''Note 1:''' for some strange reason the CSM of the website has decided to rename the files with capitals, please save them in lower case :-(
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− | | + | |
− | <strike>'''Note 2:''' rename the file Diabete.data into diabete.mat ... still fighting with the CSM :-)</strike>
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− | | + | |
− | '''Note 3:''' the code has been tested with octave under linux, we suggest to use it not to spend too much time with installing it under windows or using matlab. If you do not have linux installed, try using a live CD as the ubuntu 13.04 live distro ;-)
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− | <!--
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− | == 2012 Homework ==
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− | | + | |
− | The Homework of 2012 organized like an octave/matlab series of tutorials. You are requested to go through the tutorials and practice with the algorithms that have been presented in class. To prove us you have done it and that you have understood the code you will be requested to solve few exercises and provide us a pdf report by email
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− | | + | |
− | * [[Media:PAMI_homework_2012_1.pdf | Homework 2012 part 1]]: this is the text of the first part of the homework; it has been intentionally edited not to allow cut and paste. '''This part of the homework will contribute to the 10% of the grade and the deadline to submit the solution by email to matteucci@elet.polimi.it and malago@elet.polimi.it is Tuesday 5/6 23:59'''
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− | ** [[Media:prostate.data | prostate.data]]: the dataset used for the homework
| + | |
− | ** [[Media:prostate.info | prostate.info]]: the dataset used for the homework
| + | |
− | ** [[Media:textread.m | textread.m]]: (optional) function which might be useful depending on your octave version
| + | |
− | ** [[Media:strread.m | strread.m]]: (optional) function which might be useful depending on your octave version
| + | |
− | | + | |
− | '''Note:''' for some strange reason the CSM of the website has decided to rename the files with capitals, please save them in lower case :-(
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− | | + | |
− | * [[Media:PAMI_homework_2012_2.pdf | Homework 2012 part 2]]: this is the text of the second part of the homework; it has been intentionally edited not to allow cut and paste. '''This part of the homework will contribute to the 10% of the grade; the deadline to submit the solution by email to matteucci@elet.polimi.it is the day before the exam you decide to attend''' (e.g., if you decide to take the exam on the 26/6 then you need to turn it in by 25/6).
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− | ** [[Media:SAheart.data | SAheart.data]]: the dataset used for the homework
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− | ** [[Media:SAheart.info | SAheart.info]]: the dataset used for the homework
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− | | + | |
− | '''Errata Corrige''': there were a few bugs a bug in the homework text. I have updated the pdf and they were:
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− | In the code for loading the data I forgot to remove the first column which you do not need
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− | data = dlmread('SAheart.data',',',1,1);
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− | X = data(:,1:9);
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− | Y = data(:,10);
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− | | + | |
− | In the StratifiedSampling function the sorted verctors should be assigned
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− | % just an ahestetic sorting
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− | testing = sort(testing);
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− | training = sort(training);
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− | | + | |
− | In the computation of feature projection, the code for the maximization of a'B*a via SVD should be changed as it follows
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− | % maximization of a'*B*a / a'*w*a via SVD
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− | [Vw, Dw, Vw] = svd(W);
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− | Whalf = Vw * sqrt(Dw) * Vw'; % Whalf'*Whalf == W
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− | Wminushalf = inv(Whalf);
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− | Mstar = M*Wminushalf;
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− | % Add this variable for computing Mstar mean
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− | meanMstar = mean(Mstar);
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− | for i=1:size(M,1)
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− | % Remove the mean saved before the loop
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− | Mstar(i,:) = Mstar(i,:)-meanMstar;
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− | end
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− | Bstar = Mstar'*Mstar;
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− | [Vstar, Db, Vstar] = svd(Bstar);
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− | | + | |
− | In the expansion to quadratic space the starting index for the inner loop should i and not 1. Moreover in some cases it might be possible to have columns which are duplicated (e.g., with boolean attribute); in this case you should not need the robust version of linear regression.
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− | function extendedX = expandToQuadraticSpace(X)
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− | % adds new columns to extendedX; keeps X for other calculations
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− | extendedX = X;
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− | for i=1:size(X, 2)
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− | for j=i:size(X, 2)
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− | newColumn = X(:, i) .* X(:, j);
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− | extendedX = [extendedX newColumn];
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− | end
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− | end
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− | % remove duplicated columns
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− | duplicates = [];
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− | for i=1:size(extendedX, 2)
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− | for j=i+1:size(extendedX, 2)
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− | if(sum(extendedX(:,i)==extendedX(:,j)) == size(X,1))
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− | duplicates = [duplicates j];
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− | end
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− | end
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− | end
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− | extendedX(:,duplicates) = [];
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− | end
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− | * [http://davide.eynard.it/2012/06/05/octave-clustering-demo-part-0-introduction-and-setup/ Homework 2012 part 3]: the third part of the homework is '''optional''', so you are not required to complete it. However, if you want to give it a try and use it to understand the topics covered by Davide Eynard in his lectures you are welcome. As usual, the questions in this homework are very close to the ones you will find in classworks, so we suggest to have a look at hose anyway! '''In case you decide to turn it in and have it contribute with a 10% to the grade, the deadline to submit the solution by email to matteucci@elet.polimi.it and davide.eynard@polimi.it is the day before you decide to take the exam''' (e.g., if you decide to take the exam on the 10/7 then you need to turn it in by 9/7)
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− | | + | |
− | '''Note:''' homeworks are meant to let you see (and practice) a little bit with the topics presented during the course. They are evaluated because you spent some time on those and thus you deserve some credit for that ;-)
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− | | + | |
− | == 2011 Homework ==
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− | | + | |
− | Here you can find the homework for the year 2011 and the material you need to complete it. Please read the F.A.Q. below and for any unsolved doubt contact the teachers of the course.
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− | | + | |
− | * [[Media:PAMI_homework_2011_v02.pdf | Homework 2011 v02]] a minor change in the signature of the logistic regression function
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− | * [[Media:PAMI_homework_2011_v01.pdf | Homework 2011 v01]] text with questions and exercises
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− | * [[Media:dataset.txt | Dataset]] for the clustering exercise in csv format
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− | | + | |
− | '''Frequently Asked Questions'''
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− | | + | |
− | * '''''How do I take the square root of a matrix?''''': check the diagonalization approach from [http://en.wikipedia.org/wiki/Square_root_of_a_matrix].
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− | | + | |
− | * '''''How do I compute the chi square statistics?'''': in the slide there is a cut and paste error since e_ij=R_it*C_tj as described here [http://en.wikipedia.org/wiki/Pearson's_chi-square_test]
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− | | + | |
− | * '''''When it is due? In which format?''''': The homework is due on the 29/06 and should be delivered by email. Send us (all the course teachers) the .m files in a zip archive attached to this email and a link to the pdf with the written part (not to flood our mailboxes).
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− | * '''''Can we do that in groups? How many people per group?''''': Yes, you can work on the homework in groups, but no more than 3 people per group are allowed. Put the names of all homework authors in the pdf and in all the .m files. If you discuss something with other people, w.r.t. the people in your group, point it out in the pdf file as well.
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− | | + | |
− | * '''''Can we ask questions about the exercises or the code?''''': Yes you should! First of all, there might be unclear things in the exercise descriptions and those should be clarified as soon as possible for all (this is why the homework is versioned). But you could ask for help as well, our goal is to have you all solving all the questions and get a high grade ... but we will not do the homework on you behalf ;-)
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− | * '''''How the optional questions are graded?''''': They compensate for possible errors in the other questions; we suggest to work on them anyway to be sure you get the maximum grading.
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− | * '''''How the homework will be graded?''''': we are interested in understanding if you understood or not; thus we are not interested in the result, but we want to check how you get to the result. So please: 1) clarify all the assumptions and all the steps in your exercises 2) comment as much as possible your .m files!
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− | -->
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The objective of this course is to give an advanced presentation of the techniques most used in artificial intelligence and machine learning for pattern recognition, knowledge discovery, and data analysis/modeling.
The course is composed by a blending of lectures and exercises by the course teacher and some teaching assistants.
Techniques from machine and statistical learning are presented from a theoretical (i.e., statistics and information theory) and practical perspective through the descriptions of algorithms, the theory behind them, their implementation issues, and few examples from real applications. The course follows, at least partially, the outline of The Elements of Statistical Learning book (by Trevor Hastie, Robert Tibshirani, and Jerome Friedman):
A detailed schedule of the course can be found here; topics are just indicative while days and teachers are correct up to some last minute change (I will notify you by email). Please note that not all days we have lectures!!
The homework is just one per year, it will be published at the end of the course and you will have 15 days to turn it in. It is not mandatory, however if you do not