Ramdan Hours:
Sun - Thu
9.30 AM - 2.30 PM
Iftar in --:--:--
🌙 Maghrib: --:--
Image from Google Jackets

Sharing data and models in software engineering / Tim Menzies, Ekrem Kocaguneli, Leandro Minku, Fayola Peters, Burak Turhan.

By: Contributor(s): Material type: TextTextPublisher: Waltham, MA : Morgan Kaufmann, [2015]Copyright date: ℗♭2015Edition: First editionDescription: 378 pages ; illustrations : 24 cmContent type:
  • text
Media type:
  • computer
Carrier type:
  • online resource
ISBN:
  • 9780124172951
  • 9780124173071
  • 0124173071
Subject(s): Genre/Form: DDC classification:
  • 22 005.1 M.T.S
LOC classification:
  • QA76.758
Online resources:
Contents:
Chapter 1: Introduction Part I: Data Mining for Managers Chapter 2: Rules for Managers Chapter 3: Rule #1: Talk to the Users Chapter 4: Rule #2: Know The Domain Chapter 5: Rule #3: Suspect Your Data Chapter 6: Rule #4: Data Science is Cyclic Chapter 6: Rule #4: Data Science is Cyclic Part II: Data Mining: A Technical Tutorial Chapter 7: Data Mining and SE Chapter 8: Defect Prediction Chapter 9: Effort Estimation Chapter 10: Data Mining (Under The Hood) Part III: Sharing Data Chapter 11: Sharing Data: Challenges and Methods Chapter 12: Learning Contexts Chapter 13: Cross-Company Learning: Handling The Data Drought Chapter 14: Building Smarter Transfer Learners Chapter 15: Sharing Less Data (Is a Good Thing) Chapter 16: How To Keep Your Data Private Chapter 17: Compensating for Missing Data Chapter 18: Active Learning: Learning More With Less Part IV: Sharing Models Chapter 19: Sharing Models: Challenges and Methods Chapter 20: Ensembles of Learning Machines Chapter 21: How to Adapt Models in a Dynamic World Chapter 22: Complexity: Using Assemblies of Multiple Models Chapter 23: The Importance of Goals in Model-Based Reasoning Chapter 24: Using Goals in Model-Based Reasoning Chapter 25: A Final Word
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)

computer bookfair2016.

Includes bibliographic references.

Chapter 1: Introduction
Part I: Data Mining for Managers
Chapter 2: Rules for Managers
Chapter 3: Rule #1: Talk to the Users
Chapter 4: Rule #2: Know The Domain
Chapter 5: Rule #3: Suspect Your Data
Chapter 6: Rule #4: Data Science is Cyclic
Chapter 6: Rule #4: Data Science is Cyclic
Part II: Data Mining: A Technical Tutorial
Chapter 7: Data Mining and SE
Chapter 8: Defect Prediction
Chapter 9: Effort Estimation
Chapter 10: Data Mining (Under The Hood)
Part III: Sharing Data
Chapter 11: Sharing Data: Challenges and Methods
Chapter 12: Learning Contexts
Chapter 13: Cross-Company Learning: Handling The Data Drought
Chapter 14: Building Smarter Transfer Learners
Chapter 15: Sharing Less Data (Is a Good Thing)
Chapter 16: How To Keep Your Data Private
Chapter 17: Compensating for Missing Data
Chapter 18: Active Learning: Learning More With Less
Part IV: Sharing Models
Chapter 19: Sharing Models: Challenges and Methods
Chapter 20: Ensembles of Learning Machines
Chapter 21: How to Adapt Models in a Dynamic World
Chapter 22: Complexity: Using Assemblies of Multiple Models
Chapter 23: The Importance of Goals in Model-Based Reasoning
Chapter 24: Using Goals in Model-Based Reasoning
Chapter 25: A Final Word

Available to OhioLINK libraries.

There are no comments on this title.

to post a comment.