• الرئیسیة
  • البحث المتقدم
  • قائمة المکتبات
  • حول الموقع
  • اتصل بنا
  • نشأة

عنوان
Applied text analysis with Python :

پدید آورنده
Benjamin Bengfort, Rebecca Bilbro, and Tony Ojeda.

موضوع
Machine learning.,Natural language processing (Computer science),Python (Computer program language),COMPUTERS-- Programming Languages-- Python.,Machine learning.,Natural language processing (Computer science),Python (Computer program language)

رده
QA76
.
73
.
P98

کتابخانه
کتابخانه مطالعات اسلامی به زبان های اروپایی

محل استقرار
استان: قم ـ شهر: قم

کتابخانه مطالعات اسلامی به زبان های اروپایی

تماس با کتابخانه : 32910706-025

1491962992
1491963018
1491963042
9781491962992
9781491963012
9781491963043
9781491963043

Applied text analysis with Python :
[Book]
enabling language-aware data products with machine learning /
Benjamin Bengfort, Rebecca Bilbro, and Tony Ojeda.

First edition.

Sebastopol, CA :
O'Reilly Media,
[2018]
©2018

1 online resource (xviii, 310 pages) :
illustrations

Includes bibliographical references and index.

Cover; Copyright; Table of Contents; Preface; Computational Challenges of Natural Language; Linguistic Data: Tokens and Words; Enter Machine Learning; Tools for Text Analysis; What to Expect from This Book; Who This Book Is For; Code Examples and GitHub Repository; Conventions Used in This Book; Using Code Examples; O'Reilly Safari; How to Contact Us; Acknowledgments; Chapter 1. Language and Computation; The Data Science Paradigm; Language-Aware Data Products; The Data Product Pipeline; Language as Data; A Computational Model of Language; Language Features; Contextual Features.
Corpus TransformationIntermediate Preprocessing and Storage; Reading the Processed Corpus; Conclusion; Chapter 4. Text Vectorization and Transformation Pipelines; Words in Space; Frequency Vectors; One-Hot Encoding; Term Frequency-Inverse Document Frequency; Distributed Representation; The Scikit-Learn API; The BaseEstimator Interface; Extending TransformerMixin; Pipelines; Pipeline Basics; Grid Search for Hyperparameter Optimization; Enriching Feature Extraction with Feature Unions; Conclusion; Chapter 5. Classification for Text Analysis; Text Classification.
Identifying Classification ProblemsClassifier Models; Building a Text Classification Application; Cross-Validation; Model Construction; Model Evaluation; Model Operationalization; Conclusion; Chapter 6. Clustering for Text Similarity; Unsupervised Learning on Text; Clustering by Document Similarity; Distance Metrics; Partitive Clustering; Hierarchical Clustering; Modeling Document Topics; Latent Dirichlet Allocation; Latent Semantic Analysis; Non-Negative Matrix Factorization; Conclusion; Chapter 7. Context-Aware Text Analysis; Grammar-Based Feature Extraction; Context-Free Grammars.
Structural FeaturesConclusion; Chapter 2. Building a Custom Corpus; What Is a Corpus?; Domain-Specific Corpora; The Baleen Ingestion Engine; Corpus Data Management; Corpus Disk Structure; Corpus Readers; Streaming Data Access with NLTK; Reading an HTML Corpus; Reading a Corpus from a Database; Conclusion; Chapter 3. Corpus Preprocessing and Wrangling; Breaking Down Documents; Identifying and Extracting Core Content; Deconstructing Documents into Paragraphs; Segmentation: Breaking Out Sentences; Tokenization: Identifying Individual Tokens; Part-of-Speech Tagging; Intermediate Corpus Analytics.
Syntactic ParsersExtracting Keyphrases; Extracting Entities; n-Gram Feature Extraction; An n-Gram-Aware CorpusReader; Choosing the Right n-Gram Window; Significant Collocations; n-Gram Language Models; Frequency and Conditional Frequency; Estimating Maximum Likelihood; Unknown Words: Back-off and Smoothing; Language Generation; Conclusion; Chapter 8. Text Visualization; Visualizing Feature Space; Visual Feature Analysis; Guided Feature Engineering; Model Diagnostics; Visualizing Clusters; Visualizing Classes; Diagnosing Classification Error; Visual Steering; Silhouette Scores and Elbow Curves.
0
8
8
8
8

From news and speeches to informal chatter on social media, natural language is one of the richest and most underutilized sources of data. Not only does it come in a constant stream, always changing and adapting in context; it also contains information that is not conveyed by traditional data sources. The key to unlocking natural language is through the creative application of text analytics. This practical book presents a data scientist's approach to building language-aware products with applied machine learning. You'll learn robust, repeatable, and scalable techniques for text analysis with Python, including contextual and linguistic feature engineering, vectorization, classification, topic modeling, entity resolution, graph analysis, and visual steering. By the end of the book, you'll be equipped with practical methods to solve any number of complex real-world problems. Preprocess and vectorize text into high-dimensional feature representations. Perform document classification and topic modeling. Steer the model selection process with visual diagnostics. Extract key phrases, named entities, and graph structures to reason about data in text. Build a dialog framework to enable chatbots and language-driven interaction. Use Spark to scale processing power and neural networks to scale model complexity.--Provided by publisher.

Safari Books Online
CL0500000981

Applied text analysis with Python.

Machine learning.
Natural language processing (Computer science)
Python (Computer program language)
COMPUTERS-- Programming Languages-- Python.
Machine learning.
Natural language processing (Computer science)
Python (Computer program language)

COM-- 051360

005
.
133
23

QA76
.
73
.
P98

Bengfort, Benjamin,1984-

Bilbro, Rebecca
Ojeda, Tony

20200823033040.0
pn

 مطالعه متن کتاب 

[Book]

Y

الاقتراح / اعلان الخلل

تحذیر! دقق في تسجیل المعلومات
ارسال عودة
تتم إدارة هذا الموقع عبر مؤسسة دار الحديث العلمية - الثقافية ومركز البحوث الكمبيوترية للعلوم الإسلامية (نور)
المكتبات هي المسؤولة عن صحة المعلومات كما أن الحقوق المعنوية للمعلومات متعلقة بها
برترین جستجوگر - پنجمین جشنواره رسانه های دیجیتال