64,89 €
Towards a Theory for Designing Machine Learning Systems for Complex Decision Making Problems
Towards a Theory for Designing Machine Learning Systems for Complex Decision Making Problems
  • Sold out
Towards a Theory for Designing Machine Learning Systems for Complex Decision Making Problems
Towards a Theory for Designing Machine Learning Systems for Complex Decision Making Problems
El. knyga:
64,89 €
The ubiquitousness of data and the emergence of data-driven machine learning approaches provide new means of creating insights. However, coping with the great volume, velocity, and variety of data requires improved data analysis methods. This dissertation contributes a nascent design theory, named the Division-of-Labor framework, for developing complex machine learning systems that can not only address the challenges of big data but also leverage their characteristics to perform more sophistica…
0
  • Publisher:
  • Year: 2020
  • Pages: 202
  • ISBN: 9783736962002
  • ISBN-10: 3736962002
  • ISBN-13: 9783736962002
  • Format: PDF
  • Language: English

Towards a Theory for Designing Machine Learning Systems for Complex Decision Making Problems (e-book) (used book) | bookbook.eu

Reviews

Description

The ubiquitousness of data and the emergence of data-driven machine learning approaches provide new means of creating insights. However, coping with the great volume, velocity, and variety of data requires improved data analysis methods. This dissertation contributes a nascent design theory, named the Division-of-Labor framework, for developing complex machine learning systems that can not only address the challenges of big data but also leverage their characteristics to perform more sophisticated analyses. I evaluate the proposed design principles in three practical settings, in which I apply the principles to design machine learning systems that (i) support treatment decision making for cancer patients, (ii) provide consumers with recommendations on two-sided platforms, and (iii) address a trade-off between efficiency and comfort in the context of autonomous vehicles. The evaluations partially validate the proposed theory, but also show that some principles require further attention in order to be practicable.

64,89 €
Log in and for this item
you will receive
0,65 Book Euros! ?

Electronic book:
Delivery after ordering is instant! Intended for reading only on a computer, tablet or other electronic device.

Lowest price in 30 days: 64,89 €

Lowest price recorded: Price has not changed

  • Publisher:
  • Year: 2020
  • Pages: 202
  • ISBN: 9783736962002
  • ISBN-10: 3736962002
  • ISBN-13: 9783736962002
  • Format: PDF
  • Language: English English

The ubiquitousness of data and the emergence of data-driven machine learning approaches provide new means of creating insights. However, coping with the great volume, velocity, and variety of data requires improved data analysis methods. This dissertation contributes a nascent design theory, named the Division-of-Labor framework, for developing complex machine learning systems that can not only address the challenges of big data but also leverage their characteristics to perform more sophisticated analyses. I evaluate the proposed design principles in three practical settings, in which I apply the principles to design machine learning systems that (i) support treatment decision making for cancer patients, (ii) provide consumers with recommendations on two-sided platforms, and (iii) address a trade-off between efficiency and comfort in the context of autonomous vehicles. The evaluations partially validate the proposed theory, but also show that some principles require further attention in order to be practicable.

Reviews

  • No reviews
0 customers have rated this item.
5
0%
4
0%
3
0%
2
0%
1
0%
(will not be displayed)