Data Mining and Machine Learning Module

The module provides an introduction to base concepts of data mining and knowledge extraction process, introducing analytical models and algorithms for clustering, classification and pattern discovery, also referring Big Data sources. It is part of the Master in Big Data Analytics & Social Mining at the University of Pisa (https://www.masterbigdata.it).

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  • IntroductionPDF

    Introduction and Knowledge Extraction Overview

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  • Case Studies OutlinePDF

    Competitive Intelligence Fraud Detection Health Care, Athereosclerosy...

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  • Data Preparation and ExplorationPDF

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  • ClusteringPDF

    Introduction to Cluster Analysis

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  • ClassificationPDF

    The classification task: - Input: a training set of tuples, each labelled...

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  • Machine Learning and Data MiningPDF

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  • Fraud DetectionPDF

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  • Exemplar Projects on Customer Relationship ...PDF

    Short recap on Customer Relationship Management concepts CaseStudy2 –...

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Additional Info
Field Value
Availability On-Site
Course UNIPI Master in Big Data Analytics & Social Mining
Keywords CRISP Methodology
Keywords Association Rules
Keywords Distance Functions
Keywords Descriptive Statistics
Keywords Data Understanding
Keywords Data Preparation
Keywords Data Exploration
Keywords Case Studies
Keywords KDD Process
Keywords Pattern Discovery
Keywords Clustering
Keywords Classification
Keywords Machine Learning
Keywords Data Mining
Length 8 Lectures for a 40 hour course based on 695 slides
Lesson number 8
Prerequisites Data Analysis
Provider Institution ISTI-CNR, UNIPI
Target users Other
Target users Professionals
Target users PhD Students
Target users Data Scientists
Target users Social Scientists
Thematic Cluster Social Data [SD]
Thematic Cluster Visual Analytics [VA]
Thematic Cluster Web Analytics [WA]
Thematic Cluster Human Mobility Analytics [HMA]
Thematic Cluster Social Network Analysis [SNA]
Thematic Cluster Text and Social Media Mining [TSMM]
Training material typology Slides
system:type TrainingMaterial
Management Info
Field Value
Author BRAGHIERI MARCO
Maintainer BRAGHIERI MARCO
Version 1
Last Updated 14 October 2021, 14:14 (CEST)
Created 6 September 2018, 14:38 (CEST)