Pagina principaleGruppiConversazioniAltroStatistiche
Cerca nel Sito
Questo sito utilizza i cookies per fornire i nostri servizi, per migliorare le prestazioni, per analisi, e (per gli utenti che accedono senza fare login) per la pubblicità. Usando LibraryThing confermi di aver letto e capito le nostre condizioni di servizio e la politica sulla privacy. Il tuo uso del sito e dei servizi è soggetto a tali politiche e condizioni.

Risultati da Google Ricerca Libri

Fai clic su di un'immagine per andare a Google Ricerca Libri.

Sto caricando le informazioni...

Mastering Feature Engineering: Principles and Techniques for Data Scientists

di Alice Zheng

UtentiRecensioniPopolaritàMedia votiConversazioni
361685,686 (2.83)Nessuno
Feature engineering is a crucial step in the machine-learning pipeline, yet this topic is rarely examined on its own. With this practical book, you ?ll learn techniques for extracting and transforming features ?the numeric representations of raw data ?into formats for machine-learning models. Each chapter guides you through a single data problem, such as how to represent text or image data. Together, these examples illustrate the main principles of feature engineering. Rather than simply teach these principles, authors Alice Zheng and Amanda Casari focus on practical application with exercises throughout the book. The closing chapter brings everything together by tackling a real-world, structured dataset with several feature-engineering techniques. Python packages including numpy, Pandas, Scikit-learn, and Matplotlib are used in code examples. You ?ll examine: Feature engineering for numeric data: filtering, binning, scaling, log transforms, and power transforms Natural text techniques: bag-of-words, n-grams, and phrase detection Frequency-based filtering and feature scaling for eliminating uninformative features Encoding techniques of categorical variables, including feature hashing and bin-counting Model-based feature engineering with principal component analysis The concept of model stacking, using k-means as a featurization technique Image feature extraction with manual and deep-learning techniques… (altro)
Nessuno
Sto caricando le informazioni...

Iscriviti per consentire a LibraryThing di scoprire se ti piacerà questo libro.

Attualmente non vi sono conversazioni su questo libro.

A Quick read, teaches you basics in Feature Engineering, this might give you raw knowledge about Feature Engineering, meanwhile in Production or Industry, one has to practice or apply based on the the raw-knowledge.

If someone could come up with a best way to gain know-how or procedural knowledge faster, do let me know.

I have a summary of this, if you want do PM me, it might save your time.

Here's an Outline of the Book:

0. Introduction and my thoughts
1. Machine Learning Pipeline
2. Fancy Tricks with Simple Numbers
3. Text Data: Flattening, Filtering and Chunking
4. Effects of Feature Scaling: From Bag of Words to TF-IDF
5. Categorical Variables: Counting Eggs in Age of Robotic Chickens
6. Dimensionality Reduction: Squashing Data Pancake with PCA
7. Non-linear Featurization with K-Means Model Stacking
8. Automating Featurizer: Image Feature Extraction and Deep Learning
9. Back to the Feature: Building an Academic Paper Recommender
10. Linear Modeling and Linear Algebra Basics

I would recommend this to Statisticians, Computer Scientists, PhD researchers, Software Engineers

Deus Vult,
Gottfried ( )
  gottfried_leibniz | Jun 25, 2021 |
nessuna recensione | aggiungi una recensione
Devi effettuare l'accesso per contribuire alle Informazioni generali.
Per maggiori spiegazioni, vedi la pagina di aiuto delle informazioni generali.
Titolo canonico
Titolo originale
Titoli alternativi
Data della prima edizione
Personaggi
Luoghi significativi
Eventi significativi
Film correlati
Epigrafe
Dedica
Incipit
Citazioni
Ultime parole
Nota di disambiguazione
Redattore editoriale
Elogi
Lingua originale
DDC/MDS Canonico
LCC canonico

Risorse esterne che parlano di questo libro

Wikipedia in inglese

Nessuno

Feature engineering is a crucial step in the machine-learning pipeline, yet this topic is rarely examined on its own. With this practical book, you ?ll learn techniques for extracting and transforming features ?the numeric representations of raw data ?into formats for machine-learning models. Each chapter guides you through a single data problem, such as how to represent text or image data. Together, these examples illustrate the main principles of feature engineering. Rather than simply teach these principles, authors Alice Zheng and Amanda Casari focus on practical application with exercises throughout the book. The closing chapter brings everything together by tackling a real-world, structured dataset with several feature-engineering techniques. Python packages including numpy, Pandas, Scikit-learn, and Matplotlib are used in code examples. You ?ll examine: Feature engineering for numeric data: filtering, binning, scaling, log transforms, and power transforms Natural text techniques: bag-of-words, n-grams, and phrase detection Frequency-based filtering and feature scaling for eliminating uninformative features Encoding techniques of categorical variables, including feature hashing and bin-counting Model-based feature engineering with principal component analysis The concept of model stacking, using k-means as a featurization technique Image feature extraction with manual and deep-learning techniques

Non sono state trovate descrizioni di biblioteche

Descrizione del libro
Riassunto haiku

Discussioni correnti

Nessuno

Copertine popolari

Link rapidi

Voto

Media: (2.83)
0.5
1
1.5
2 1
2.5
3 1
3.5 1
4
4.5
5

Sei tu?

Diventa un autore di LibraryThing.

 

A proposito di | Contatto | LibraryThing.com | Privacy/Condizioni d'uso | Guida/FAQ | Blog | Negozio | APIs | TinyCat | Biblioteche di personaggi celebri | Recensori in anteprima | Informazioni generali | 206,463,546 libri! | Barra superiore: Sempre visibile