MSE Master of Science in Engineering

The Swiss engineering master's degree


Ogni modulo equivale a 3 crediti ECTS. È possibile scegliere un totale di 10 moduli/30 ECTS nelle seguenti categorie: 

  • 12-15 crediti ECTS in moduli tecnico-scientifici (TSM)
    I moduli TSM trasmettono competenze tecniche specifiche del profilo e si integrano ai moduli di approfondimento decentralizzati.
  • 9-12 crediti ECTS in basi teoriche ampliate (FTP)
    I moduli FTP trattano principalmente basi teoriche come la matematica, la fisica, la teoria dell’informazione, la chimica ecc. I moduli ampliano la competenza scientifica dello studente e contribuiscono a creare un importante sinergia tra i concetti astratti e l’applicazione fondamentale per l’innovazione 
  • 6-9 crediti ECTS in moduli di contesto (CM)
    I moduli CM trasmettono competenze supplementari in settori quali gestione delle tecnologie, economia aziendale, comunicazione, gestione dei progetti, diritto dei brevetti, diritto contrattuale ecc.

La descrizione del modulo (scarica il pdf)riporta le informazioni linguistiche per ogni modulo, suddivise nelle seguenti categorie:

  • Insegnamento
  • Documentazione
  • Esame
Analysis of Sequential Data (TSM_AnSeqDa)

Many data sets are temporal by nature.  

The first part of the course presents techniques for analysis of time series. It starts from visualization techniques; then it shows techniques for characterizing trend and seasonality; eventually it present structured statistical approaches based on exponential smoothing and arima techniques. Several examples referring to real data sets are shown. 

In the second part of the course students learn how to analyze digital signals in different domains, i.e. time and spectral domain; they learn how to extract meaningful features from digital signals suitable for classification. Finally, they learn how to set up and learn statistical models, such as HMMs or DNNs, for recognizing and classifying time series. 

The course adopts a practical approach: theoretical concepts are illustrated and applied in specific case studies. 

A probabilistic approach is emphasized throughout the course.

The labs are done using  environments for scientific programming such as R or Matlab or Python.

Requisiti

Basic knowledge in statistics.
Programming with scripting languages.

Obiettivi di apprendimento

  • Students know how to visualize time series and how to characterize their main features.
  • Students know how to evaluate forecast accuracy.
  • Students know how to model trends, seasonalities and non-stationarities adopting exponential smoothing and ARIMA models.
  • Students know how to perform model estimation, model selection and probabilistic prediction with these models.
  • Students know different methods to analyse digital signals in different domains
  • Students know how to extract important features used in speech processing
  • Students learn to apply Bayes rule for classifying digital signals.
  • Students can apply modern deep learning approaches to classify digital signals

Categoria modulo

Part 1: Forecasting sequential data

  • Time series graphics.
  • Main features of time series.
  • Assessment of the predictions.
  • Exponential smoothing
  • ARIMA models

Practical case studies.

Part 2: Analysis and classification of digital signals

  • Analysis of digital signals in different domains
  • Feature extraction
  • Modelling, classification & recognition of digital signals 
    • Classic Approaches: Dynamic Time Warping, Vector Quantization
    • Statistical modelling: Hidden Markov Models
    • Deep Learning Approaches

Practical case studies.

Metodologie di insegnamento e apprendimento

  • Ex cathedra
  • Self study
  • Practical exercises with computer
  • Graded homeworks / project.

Bibliografia

Slides will be available covering the topics of the course.

In addition, recommended books are:

 

For forecasting:


R. Hyndman and G. Athanasopoulos., Forecasting: Principles and Practice, Springer, 2018 (online free textbook at https://otexts.org/fpp2/)

 

For digital signal processing:

X. Huang, A. Acero, H.-W. Hon:  Spoken Language Processing, Prentice Hall, 2001, ISBN 0-13-22616-5

L. R. Rabiner und B.-H. Juang, Fundamentals of Speech Recognition. Prentice Hall, 1993.

D. Yu und L. Deng, Automatic Speech Recognition: A Deep Learning Approach. Springer London, 2014.

Scarica il descrittivo completo del modulo

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