Welcome to Loot.co.za!
Sign in / Register |Wishlists & Gift Vouchers |Help | Advanced search
|
Your cart is empty |
|||
Showing 1 - 3 of 3 matches in All Departments
Survival analysis is a class of statistical methods for studying
the occurrence and timing of events. Statistical analysis of
longitudinal data, particularly censored data, lies at the heart of
social work research, and many of social work research's empirical
problems, such as child welfare, welfare policy, evaluation of
welfare-to-work programs, and mental health, can be formulated as
investigations of timing of event occurrence. Social work
researchers also often need to analyze multilevel or grouped data
(for example, event times formed by sibling groups or mother-child
dyads or recurrences of events such as reentries into foster care),
but these and other more robust methods can be challenging to
social work researchers without a background in higher math.
Structural Equation Modeling (SEM) has long been used in social
work research, but the writing on the topic is typically fragmented
and highly technical. This pocket guide fills a major gap in the
literature by providing social work researchers and doctoral
students with an accessible synthesis. The authors demonstrate two
SEM programs with distinct user interfaces and capabilities (Amos
and Mplus) with enough specificity that readers can conduct their
own analyses without consulting additional resources. Examples from
social work literature highlight best practices for the
specification, estimation, interpretation, and modification of
structural equation models. Unlike most sources on SEM, this book
provides clear guidelines on how to evaluate SEM output and how to
proceed when model fit is not acceptable.
Fully updated to reflect the most recent changes in the field, the Second Edition of Propensity Score Analysis provides an accessible, systematic review of the origins, history, and statistical foundations of propensity score analysis, illustrating how it can be used for solving evaluation and causal-inference problems. With a strong focus on practical applications, the authors explore various strategies for employing PSA, discuss the use of PSA with alternative types of data, and delineate the limitations of PSA under a variety of constraints. Unlike existing textbooks on program evaluation and causal inference, this book delves into statistical concepts, formulas, and models within the context of a robust and engaging focus on application.
|
You may like...
|