Lecture 00 Course Introduction

Loading...

Flash Player 9 (or above) is needed to view presentations.
We have detected that you do not have it on your computer. To install it, go here.

0 comments

Post a comment

    Post a comment
    Embed Video
    Edit your comment Cancel

    Favorites, Groups & Events

    Lecture 00 Course Introduction - Presentation Transcript

    1. Course Introduction Data Mining and Text Mining (UIC 583 @ Politecnico di Milano)
    2. Machine Learning and Data Mining 2 Prof. Pier Luca Lanzi Dipartimento di Elettronica e Informazione pierluca.lanzi@polimi.it tel. 02 23993472 http://webspace.elet.polimi.it/lanzi Office Hours Wednesday, from 15:00 until 17:00 Teaching Assistant Dr. Daniele Loiacono Dipartimento di Elettronica e Informazione loiacono@elet.polimi.it Prof. Pier Luca Lanzi
    3. Course Structure 3 Basic Introduction (24 hours) Short introduction to Data Mining and Text Mining Advaced Techniques and Applications (16 hours) Advanced Data Mining techniques and applications Final Project An application to real-world data Prof. Pier Luca Lanzi
    4. Tecniche di Apprendimento Automatico 4 per Applicazioni di Data Mining This shorter course is covered by the first 20 hours The topics are more or less the ones covered by the previous editions Lectures are in English Final test is in Italian (or in English upon request) Prof. Pier Luca Lanzi
    5. Course Outline & Evaluation 5 Knowledge Discovery, Data Mining, and Machine Learning The representation of data and knowledge Typical Data Mining tasks Associations Clustering Classification Aggregate methods Preprocessing Advanced techniques and applications Text Mining Graph Mining Data Streams Evaluation One written exam Course project Prof. Pier Luca Lanzi
    6. Course Material 6 Lecture slides available at http://webspace.elet.polimi.it/lanzi Bibliography Jiawei Han, Micheline Kamber. “Data Mining: Concepts and Techniques” Second Edition. Morgan Kauffman, 2006. Ian H. Witten, Eibe Frank. “Data Mining: Practical Machine Learning Tools and Techniques with Java Implementations” 2nd Edition. Tom Mitchell. “Machine Learning”, McGraw Hill 1997 Software Weka, http://www.cs.waikato.ac.nz/~ml/weka/ Prof. Pier Luca Lanzi

    + Pier Luca LanziPier Luca Lanzi, 2 years ago

    custom

    1571 views, 0 favs, 0 embeds more stats

    Course Data Mining and Text Mining

    2007/2008
    Prof. more

    More info about this document

    © All Rights Reserved

    Go to text version

    • Total Views 1571
      • 1571 on SlideShare
      • 0 from embeds
    • Comments 0
    • Favorites 0
    • Downloads 47
    Most viewed embeds

    more

    All embeds

    less

    Flagged as inappropriate Flag as inappropriate
    Flag as inappropriate

    Select your reason for flagging this presentation as inappropriate. If needed, use the feedback form to let us know more details.

    Cancel
    File a copyright complaint
    Having problems? Go to our helpdesk?

    Categories