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HBR Guide to. Data analytics basics for managers

Por: Tipo de material: TextoTextoIdioma: Inglés Lenguaje original: Inglés Detalles de publicación: Boston Harvard Business Review Press 2018Edición: 1a edDescripción: 231 pág. 23 cm. x 13 cmISBN:
  • 9781633694286
Tema(s): Clasificación CDD:
  • 658.4038 H339
Contenidos:
Getting started: Keep up with your quants: an innumerate's guide to navigating big data / by Thomas H. Davenport. -- A simple exercise to help you think like a data scientist: an easy way to learn the process of data analytics / by Thomas C. Redman.-- Gather the right information: Do you need all that data?: questions to ask for a focused search / by Ron Ashkenas.-- How to ask your data scientists for data and analytics: factors to keep in mind to get the information you need / by Michael Li, Madina Kassengaliyeva, and Raymond Perkins.-- How to design a business experiment: tips for using the scientific method / by Oliver Hauser and Michael Luca.-- Know the difference between your data and your metrics: understand what you're measuring / by Jeff Bladt and Bob Filbin.-- The fundamentals of A/B testing: how it works and mistakes to avoid / by Amy Gallo.-- Can your data be trusted?: gauge whether your data is safe to use / by Thomas C. Redman.-- Analyze the data: A predictive analytics primer: look to the future by looking at the past / by Thomas H. Davenport.-- Understanding regression analysis: evaluate the relationship between variables / by Amy Gallo.-- When to act on a correlation, and when not to: assess your confidence in your findings and the risk of being wrong / by David Ritter.-- Can machine learning solve your business problem?: steps to take before investing in AI / by Anastassia Fedyk.-- A refresher on statistical significance: check if your results are real or just luck / by Amy Gallo.-- Linear thinking in a nonlinear world: a common mistake that leads to errors in judgment / by Bart de Langhe, Stefano Puntoni, and Richard Larrick.-- Pitfalls of data-driven decisions: the cognitive traps to avoid / by Megan MacGarvie and Kristina McElheran.-- Don't let your analytics cheat the truth: always ask for the outliers / by Michael Schrage.-- Communicate your findings: Data is worthless if you don't communicate it: tell people what it means / by Thomas H. Davenport.-- When data visualization works, and when it doesn't: not all data is worth the effort / by Jim Stikeleather.-- How to make charts that pop and persuade: questions to help give your numbers meaning / by Nancy Duarte.-- Why it's so hard for us to communicate uncertainty: illustrating.- and understanding.- the likelihood of events: an interview with Scott Berinato / by Nicole Torres.-- Responding to someone who angrily challenges your data: ensure the data is thorough, then make them an ally / by Jon M. Jachimowicz.-- Decisions don't start with data: influence others through story and emotion / by Nick Morgan
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Tipo de ítem Biblioteca actual Colección Signatura topográfica Copia número Estado Fecha de vencimiento Código de barras
Libro Colección General Campus Armenia Central Armenia Colección General 658.4038 H339 (Navegar estantería(Abre debajo)) 1 Disponible L035266

Getting started: Keep up with your quants: an innumerate's guide to navigating big data / by Thomas H. Davenport. -- A simple exercise to help you think like a data scientist: an easy way to learn the process of data analytics / by Thomas C. Redman.-- Gather the right information: Do you need all that data?: questions to ask for a focused search / by Ron Ashkenas.-- How to ask your data scientists for data and analytics: factors to keep in mind to get the information you need / by Michael Li, Madina Kassengaliyeva, and Raymond Perkins.-- How to design a business experiment: tips for using the scientific method / by Oliver Hauser and Michael Luca.-- Know the difference between your data and your metrics: understand what you're measuring / by Jeff Bladt and Bob Filbin.-- The fundamentals of A/B testing: how it works and mistakes to avoid / by Amy Gallo.-- Can your data be trusted?: gauge whether your data is safe to use / by Thomas C. Redman.-- Analyze the data: A predictive analytics primer: look to the future by looking at the past / by Thomas H. Davenport.-- Understanding regression analysis: evaluate the relationship between variables / by Amy Gallo.-- When to act on a correlation, and when not to: assess your confidence in your findings and the risk of being wrong / by David Ritter.-- Can machine learning solve your business problem?: steps to take before investing in AI / by Anastassia Fedyk.-- A refresher on statistical significance: check if your results are real or just luck / by Amy Gallo.-- Linear thinking in a nonlinear world: a common mistake that leads to errors in judgment / by Bart de Langhe, Stefano Puntoni, and Richard Larrick.-- Pitfalls of data-driven decisions: the cognitive traps to avoid / by Megan MacGarvie and Kristina McElheran.-- Don't let your analytics cheat the truth: always ask for the outliers / by Michael Schrage.-- Communicate your findings: Data is worthless if you don't communicate it: tell people what it means / by Thomas H. Davenport.-- When data visualization works, and when it doesn't: not all data is worth the effort / by Jim Stikeleather.-- How to make charts that pop and persuade: questions to help give your numbers meaning / by Nancy Duarte.-- Why it's so hard for us to communicate uncertainty: illustrating.- and understanding.- the likelihood of events: an interview with Scott Berinato / by Nicole Torres.-- Responding to someone who angrily challenges your data: ensure the data is thorough, then make them an ally / by Jon M. Jachimowicz.-- Decisions don't start with data: influence others through story and emotion / by Nick Morgan

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