Dark Data Dark Data

Dark Data

Why What You Don’t Know Matters

    • USD 13.99
    • USD 13.99

Descripción editorial

A practical guide to making good decisions in a world of missing data

In the era of big data, it is easy to imagine that we have all the information we need to make good decisions. But in fact the data we have are never complete, and may be only the tip of the iceberg. Just as much of the universe is composed of dark matter, invisible to us but nonetheless present, the universe of information is full of dark data that we overlook at our peril. In Dark Data, data expert David Hand takes us on a fascinating and enlightening journey into the world of the data we don't see.

Dark Data explores the many ways in which we can be blind to missing data and how that can lead us to conclusions and actions that are mistaken, dangerous, or even disastrous. Examining a wealth of real-life examples, from the Challenger shuttle explosion to complex financial frauds, Hand gives us a practical taxonomy of the types of dark data that exist and the situations in which they can arise, so that we can learn to recognize and control for them. In doing so, he teaches us not only to be alert to the problems presented by the things we don’t know, but also shows how dark data can be used to our advantage, leading to greater understanding and better decisions.

Today, we all make decisions using data. Dark Data shows us all how to reduce the risk of making bad ones.

GÉNERO
Informática e Internet
PUBLICADO
2020
18 de febrero
IDIOMA
EN
Inglés
EXTENSIÓN
344
Páginas
EDITORIAL
Princeton University Press
VENDEDOR
Princeton University Press
TAMAÑO
1.9
MB
The Improbability Principle The Improbability Principle
2025
Artificial Intelligence Frontiers in Statistics Artificial Intelligence Frontiers in Statistics
2020
From GDP to Sustainable Wellbeing From GDP to Sustainable Wellbeing
2020
Analysis of Repeated Measures Analysis of Repeated Measures
2017
Practical Longitudinal Data Analysis Practical Longitudinal Data Analysis
2017
Measurement Measurement
2016
The Structure of Scientific Revolutions The Structure of Scientific Revolutions
2022
The Theory That Would Not Die The Theory That Would Not Die
2020
1177 B.C. 1177 B.C.
2021
Great Expectations Great Expectations
1861
The Art of War The Art of War
2010