IniciGrupsConversesMésTendències
Cerca al lloc
Aquest lloc utilitza galetes per a oferir els nostres serveis, millorar el desenvolupament, per a anàlisis i (si no has iniciat la sessió) per a publicitat. Utilitzant LibraryThing acceptes que has llegit i entès els nostres Termes de servei i política de privacitat. L'ús que facis del lloc i dels seus serveis està subjecte a aquestes polítiques i termes.

Resultats de Google Books

Clica una miniatura per anar a Google Books.

S'està carregant…

Noise: A Flaw in Human Jugdment

de Daniel Kahneman, Inger Sverreson Holmes (Traductor), Olivier Sibony (Autor), Cass R. Sunstein (Autor)

MembresRessenyesPopularitatValoració mitjanaMencions
1,0801918,903 (3.56)7
Discusses why people make bad judgments and how to make better ones by reducing the influence of "noise"--variables that can cause bias in decision making--and draws on examples in many fields, including medicine, law, economic forecasting, forensic science, strategy, and personnel selection.
S'està carregant…

Apunta't a LibraryThing per saber si aquest llibre et pot agradar.

No hi ha cap discussió a Converses sobre aquesta obra.

» Mira també 7 mencions

Es mostren 1-5 de 19 (següent | mostra-les totes)
This book has some merits, but being interesting isn't one of them. It is repetitive and filled with statistical discussions. I love, absolutely love, statistics, but there are ways to discuss them that isn't just plain boring. Also, some of the statistical data they presented seem to support their conclusion, but...and this is a big but...the effect was small enough that it likely didn't meet the criterion of being important. Significance isn't enough; is the difference big enough to cover the deviation and the overlap? And even if it is, does it matter? If I'd finished the book, perhaps they'd have convinced me it did, but I couldn't slog through any more of it, even though their major premise is accurate. The world does have a lot of noise in our judgement, causing one person to judge vastly different than another, and even the same person to vary depending on the environment. I'm not sure AI is the answer, though, even though they are enthusiastic. The biases that develop quickly in AI seem to make that a risky proposition. Overall, I don't recommend it. ( )
  Devil_llama | Apr 29, 2024 |
An important subject but poorly written book, bad organisation, lacking depth of analisys in key experiments, lacking in take away general specific knowledge. The authors are working on something important but it is not yet integrated and experimental evidence is not presented in a convincing way.
( )
  yates9 | Feb 28, 2024 |
I found the first 200 pages of this book to be almost impenetrable and frequently forgot a sentence shortly after reading it.

That said, the book and its import improve.

If you’ve read Kahneman’s earlier work, Thinking Fast and Slow, you’ll be familiar with the use of a core metaphor to the argument. While the book says it’s about “Noise” it’s really about the statistical sources of bad judgments.

Noise is the shorthand systems engineers use to explain flaws in the system.

Kahneman et al want us to take a systems view of bad judgments, and bad judges. There is hope for them yet.

Forestalling judgment until the evidence is collected, breaking down complex judgments to their constituent parts, employing baseline comparisons, and employing objective referees will all yield better judgments in business, in law and medicine, and in life.

I certainly hope so. I have trouble just dealing with the volume of judgments I am called upon to make everyday in business.

There is a lot here to think about, especially about the people who are the experts we rely upon, and how they frequently get important things wrong. ( )
  MylesKesten | Jan 23, 2024 |
Educational but not particularly enjoyable to read ( )
  danielskatz | Dec 26, 2023 |
Focuses specifically on system noise (which is different from cognitive biases). With implications on decision-making and all types of human judgments and systems. You'll learn:
• What is system noise and how it affects all types of decisions, from personal to professional judgments, individual to group decisions, and private sector to public sector;
• The difference between noise and bias, the components of system noise, how to evaluate the quality of judgments and measure noise;
• A range of strategies for reducing noise, including: how to do noise audits, find good judges, use de-biasing, and adopt various preventive decision hygiene strategies;
• Problems and limits to noise reduction, and how we can consider the “right” level of noise to accept.

Book summary at: https://readingraphics.com/book-summary-noise/ ( )
  AngelaLamHF | Jul 29, 2023 |
Es mostren 1-5 de 19 (següent | mostra-les totes)
Sense ressenyes | afegeix-hi una ressenya

» Afegeix-hi altres autors

Nom de l'autorCàrrecTipus d'autorObra?Estat
Kahneman, Danielautor primaritotes les edicionsconfirmat
Holmes, Inger SverresonTraductorautor principaltotes les edicionsconfirmat
Sibony, OlivierAutorautor principaltotes les edicionsconfirmat
Sunstein, Cass R.Autorautor principaltotes les edicionsconfirmat
Has d'iniciar sessió per poder modificar les dades del coneixement compartit.
Si et cal més ajuda, mira la pàgina d'ajuda del coneixement compartit.
Títol normalitzat
Informació del coneixement compartit en anglès. Modifica-la per localitzar-la a la teva llengua.
Títol original
Títols alternatius
Data original de publicació
Gent/Personatges
Llocs importants
Esdeveniments importants
Pel·lícules relacionades
Epígraf
Informació del coneixement compartit en anglès. Modifica-la per localitzar-la a la teva llengua.
[None]
Dedicatòria
Informació del coneixement compartit en anglès. Modifica-la per localitzar-la a la teva llengua.
For Noga, Ori and Gilli - DK
For Fantin and Lélia - OS
For Samantha - CRS
Primeres paraules
Informació del coneixement compartit en anglès. Modifica-la per localitzar-la a la teva llengua.
Imagine that four teams of friends have gone to a shooting arcade.

Introduction. Two kinds of error.
It is not acceptable for similar people, convicted of the same offense, to end up with dramatically different sentences - say, five years in jail for one and probation for another.

Part I. Finding noise.
Suppose that someone has been convicted of a crime - shoplifting, possession of heroin, assault, or armed robbery.

Chapter I. Crime and noisy punishment.
Citacions
Darreres paraules
Informació del coneixement compartit en anglès. Modifica-la per localitzar-la a la teva llengua.
(Clica-hi per mostrar-ho. Compte: pot anticipar-te quin és el desenllaç de l'obra.)
Nota de desambiguació
Editor de l'editorial
Creadors de notes promocionals a la coberta
Informació del coneixement compartit en anglès. Modifica-la per localitzar-la a la teva llengua.
Llengua original
Informació del coneixement compartit en anglès. Modifica-la per localitzar-la a la teva llengua.
CDD/SMD canònics
LCC canònic

Referències a aquesta obra en fonts externes.

Wikipedia en anglès

Cap

Discusses why people make bad judgments and how to make better ones by reducing the influence of "noise"--variables that can cause bias in decision making--and draws on examples in many fields, including medicine, law, economic forecasting, forensic science, strategy, and personnel selection.

No s'han trobat descripcions de biblioteca.

Descripció del llibre
Sumari haiku

Debats actuals

Cap

Cobertes populars

Dreceres

Valoració

Mitjana: (3.56)
0.5
1 2
1.5
2 11
2.5 2
3 32
3.5 6
4 36
4.5 2
5 17

Ets tu?

Fes-te Autor del LibraryThing.

 

Quant a | Contacte | LibraryThing.com | Privadesa/Condicions | Ajuda/PMF | Blog | Botiga | APIs | TinyCat | Biblioteques llegades | Crítics Matiners | Coneixement comú | 205,437,893 llibres! | Barra superior: Sempre visible