Ernakulam Public Library OPAC

Online Public Access Catalogue

 

അന്താരാഷ്ട്ര വിവർത്തനദിന സെമിനാര്. 2024 സെപ്തംബര് 30 തിങ്കളാഴ്ച്ച വൈകീട്ട് 4.30 നു പ്രശസ്‌ത വിവർത്തകരായ പ്രൊഫ്. എം. തോമസ് മാത്യു, ഡോ: പ്രേമ ജയകുമാർ, സുനിൽ ഞാളിയത്ത്, ഡോ: പ്രിയ കെ. നായർ എന്നിവർ സംസാരിക്കുന്നതാണ്. കേരള സാഹിത്യ അക്കാഡമിയുടെ സമഗ്ര സംഭാവന പുരസ്‌കാരം ലഭിച്ച ഡോ: പ്രേമ ജയകുമാറിനെ ചടങ്ങിൽ ആദരിക്കുന്നതാണ്. സുനിൽ ഞാളിയത്ത് വിവർത്തനം ചെയ്ത സുചിത്ര ഭട്ടാചാര്യയുടെ ബംഗാളി കഥാസമാഹാരം 'പ്രണയം മാത്രം' ചടങ്ങിൽ പ്രകാശനം ചെയ്യുന്നതാണ്.
Image from Google Jackets

MAXIMUM LIKELIHOOD FOR SOCIAL SCIENCE : Strategies for Analysis

By: Contributor(s): Language: English Publication details: New York Cambridge University Press 2018/01/01Edition: 1Description: 298ISBN:
  • 9781107185821
Subject(s): DDC classification:
  • 300.72 WAR/MA
Contents:
Part 1 Concept, Theory, and Implementation 1. Introduction to Maximum Likelihood 2. Theory and Properties of maximum Likelihood Estimators 3. Maximum Likelihood for Binary Outcomes 4. Implementing MLE 5. Model Evaluation and Interpretation 6. Inference and Interpretation 7. The Generalized Liner Model 8. Ordered Categorical Variable Models 9. Models For Nominal Data 10. Strategies for Analyzing Count Data 11.Strategies for Temporal Dependence Models 12. Strategies for Missing Data
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)

"This volume provides a practical introduction to the method of maximum likelihood as used in social science research. Ward and Ahlquist focus on applied computation in R and use real social science data from actual, published research. Unique among books at this level, it develops simulation-based tools for model evaluation and selection alongside statistical inference. The book covers standard models for categorical data as well as counts, duration data, and strategies for dealing with data missingness. By working through examples, math, and code, the authors build an understanding about the contexts in which maximum likelihood methods are useful and develop skills in translating mathematical statements into executable computer code. Readers will not only be taught to use likelihood-based tools and generate meaningful interpretations, but they will also acquire a solid foundation for continued study of more advanced statistical

Part 1 Concept, Theory, and Implementation
1. Introduction to Maximum Likelihood
2. Theory and Properties of maximum Likelihood Estimators
3. Maximum Likelihood for Binary Outcomes
4. Implementing MLE
5. Model Evaluation and Interpretation
6. Inference and Interpretation
7. The Generalized Liner Model
8. Ordered Categorical Variable Models
9. Models For Nominal Data
10. Strategies for Analyzing Count Data
11.Strategies for Temporal Dependence Models
12. Strategies for Missing Data

There are no comments on this title.

to post a comment.