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AAL Data Cluster Analysis. Theory and Implementation

by Dzenan Hamzic
Save 14% Save 14%
Current price ₹3,320.00
Original price ₹3,871.00
Original price ₹3,871.00
Original price ₹3,871.00
(-14%)
₹3,320.00
Current price ₹3,320.00

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Book cover type: Paperback
  • ISBN13: 9783668299559
  • Binding: Paperback
  • Subject: N/A
  • Publisher: Grin Verlag
  • Publisher Imprint: Grin Verlag
  • Publication Date:
  • Pages: 64
  • Original Price: USD 39.5
  • Language: English
  • Edition: N/A
  • Item Weight: 96 grams
  • BISAC Subject(s): Business & Productivity Software / General

Bachelor Thesis from the year 2016 in the subject Computer Science - Applied, grade: 1, Vienna University of Technology, language: English, abstract: The e-Home project from the Vienna University of Technology is an R&D project with goals of providing assistive technologies for private households of older people with the idea to give them possibilities for longer and independent living in their homes. The e-Home system consists of an adaptive intelligent network of wireless sensors for activity monitoring with a central context-aware embedded system. The primary goal of this thesis is to investigate unsupervised prediction and clustering possibilities of user behaviour based on collected time-series data from infrared temperature sensors in the e-Home enviroment. Three different prediction approaches are described. Hourly Based Event Binning approach is compared to two clustering algorithms, Hierarchical Clustering and Dirichlet Process GMM. Prediction rates are measured on data from three different test persons. This thesis first examines two different approaches for event detection from infrared signal data. In a second stage three different methods for unsupervised prediction analytics are discussed and tested on selected data-sets. Clustering algorithms parameter settings for time-series data have also been discussed and tested in detail. Finally the prediction performance results are compared and each method's advantages and disadvantages have been discussed. The practical part of this thesis is implemented in IPython notebook. Python version was 2.7 on 64 bit Ubuntu linux 12.04 LTS. Data analysis has been implemented with Python's Pandas library. Visualisations are made with Matplotlib and Seaborn libraries. The results reveal that prediction accuracy depends on data quantity and spread of data points. The simplest method in prediction comparison, the Hourly Based Binning has however given the best prediction rates overall. The Dirichlet Proces

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