• Nie Znaleziono Wyników

A Genetic Programming Approach to Automated Test Generation for Object Oriented Software

N/A
N/A
Protected

Academic year: 2021

Share "A Genetic Programming Approach to Automated Test Generation for Object Oriented Software"

Copied!
20
0
0

Pełen tekst

(1)

Delft University of Technology

Software Engineering Research Group

Technical Report Series

A Genetic Programming Approach to

Automated Test Generation for Object

Oriented Software

Hans-Gerhard Gross, Arjan Seesing

Report TUD-SERG-2006-017

(2)

TUD-SERG-2006-017

Published, produced and distributed by: Software Engineering Research Group Department of Software Technology

Faculty of Electrical Engineering, Mathematics and Computer Science Delft University of Technology

Mekelweg 4 2628 CD Delft The Netherlands ISSN 1872-5392

Software Engineering Research Group Technical Reports: http://www.se.ewi.tudelft.nl/techreports/

For more information about the Software Engineering Research Group: http://www.se.ewi.tudelft.nl/

c

(3)

SERG Gross, Seesing – Genetic Programming for OO Software Testing

(4)

Gross, Seesing – Genetic Programming for OO Software Testing SERG

(5)

SERG Gross, Seesing – Genetic Programming for OO Software Testing

(6)

Gross, Seesing – Genetic Programming for OO Software Testing SERG

(7)

SERG Gross, Seesing – Genetic Programming for OO Software Testing

(8)

Gross, Seesing – Genetic Programming for OO Software Testing SERG

(9)

SERG Gross, Seesing – Genetic Programming for OO Software Testing

(10)

Gross, Seesing – Genetic Programming for OO Software Testing SERG

(11)

SERG Gross, Seesing – Genetic Programming for OO Software Testing

(12)

Gross, Seesing – Genetic Programming for OO Software Testing SERG

(13)

SERG Gross, Seesing – Genetic Programming for OO Software Testing

(14)

Gross, Seesing – Genetic Programming for OO Software Testing SERG

(15)

SERG Gross, Seesing – Genetic Programming for OO Software Testing

(16)

Gross, Seesing – Genetic Programming for OO Software Testing SERG

(17)

SERG Gross, Seesing – Genetic Programming for OO Software Testing

(18)

Gross, Seesing – Genetic Programming for OO Software Testing SERG

(19)
(20)

TUD-SERG-2006-017

Cytaty

Powiązane dokumenty

Convolutional weights are parameters of the model, so they are adjusted during the training process to filter out the most frequent features found in the data..

We stimulate neural networks with input data (usually affecting neurons in the input layer), for which neurons in subsequent layers make calculations until we obtain results (in

Train, dev (validation), and test sets should be set up in such a way that they share data of all distributions in the same way (be representative for the solved problem) to

a subset of training examples consisting of a defined number of training examples. In this case, training process is a compromise between the stability and speed, much better

One of the most important challenges for the readout electronics designers from the analog electronics point of view, is the noise level reduction (stemming from

One of the most important challenges for the readout electronics designers from the analog electronics point of view, is the noise level reduction (stemming from the

partners. This not only involves access to the created.. software development products, but also access to technical software development resources, such as tools and test

Mathematical support and software of vehicle computer control system // Forys Ivan Anatoliyovych // Ternopil Ivan Puluj National Technical University, Faculty of