search query: @keyword itseorganisoiva kartta / total: 39
reference: 3 / 39
« previous | next »
Author:Lundqvist, Leo
Title:Deriving a Rule Set from a Large Set of Data
Härledning av ett regelverk ur en stor datamängd
Säännöstön johtaminen suuresta tietomäärästä
Publication type:Master's thesis
Publication year:2006
Pages:37      Language:   eng
Department/School:Teknillisen fysiikan ja matematiikan osasto
Main subject:Informaatiotekniikka   (T-115)
Supervisor:Simula, Olli
Instructor:Silvola, Risto
OEVS:
Electronic archive copy is available via Aalto Thesis Database.
Instructions

Reading digital theses in the closed network of the Aalto University Harald Herlin Learning Centre

In the closed network of Learning Centre you can read digital and digitized theses not available in the open network.

The Learning Centre contact details and opening hours: https://learningcentre.aalto.fi/en/harald-herlin-learning-centre/

You can read theses on the Learning Centre customer computers, which are available on all floors.

Logging on to the customer computers

  • Aalto University staff members log on to the customer computer using the Aalto username and password.
  • Other customers log on using a shared username and password.

Opening a thesis

  • On the desktop of the customer computers, you will find an icon titled:

    Aalto Thesis Database

  • Click on the icon to search for and open the thesis you are looking for from Aaltodoc database. You can find the thesis file by clicking the link on the OEV or OEVS field.

Reading the thesis

  • You can either print the thesis or read it on the customer computer screen.
  • You cannot save the thesis file on a flash drive or email it.
  • You cannot copy text or images from the file.
  • You cannot edit the file.

Printing the thesis

  • You can print the thesis for your personal study or research use.
  • Aalto University students and staff members may print black-and-white prints on the PrintingPoint devices when using the computer with personal Aalto username and password. Color printing is possible using the printer u90203-psc3, which is located near the customer service. Color printing is subject to a charge to Aalto University students and staff members.
  • Other customers can use the printer u90203-psc3. All printing is subject to a charge to non-University members.
Location:P1 Ark TF80     | Archive
Keywords:self-organizing map
clustering
association rules
product data
itseorganisoiva kartta
klusterointi
assosiaatio
säännöt
tuotedata
själv-organiserande karta
kluster
associations regler
produkt data
Abstract (eng): The acquisition of correct data is of great importance for all data mining tasks.
Data errors in product data can be very costly for a company and improving the data quality is therefore of high importance.
By making the acquisition process more efficient a possible bottleneck in the product management can also be removed.

In this work methods for finding rules and correlations from the data are presented.
Special emphasis is placed on methods capable of handling large amounts of data and on pre processing the data to make it more easily handled.
Clustering is used to divide the data into smaller data sets which can be handled more efficiently than the whole data.
This also makes it possible to better find local patterns in the data.
The clustering is implemented using self-organizing maps.

To find rules in the data set both correlation analysis and association rules are used.
Both methods can be used both globally on the whole data set and locally on the data clusters.

The methods presented are then applied to a product data set provided by Nokia Networks.
Here the goal is to predict data needed for an Enterprise Resource Planning system using data from a Product Data Management system.
ED:2006-09-28
INSSI record number: 32425
+ add basket
« previous | next »
INSSI