000 04261nam a2200397 a 4500
005 20250930133222.0
008 120330s2012 nyu b 001 0 eng
020 _a9780415874144 (hbk.)
_cRM270.71
039 9 _a201309231136
_bzainol
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_drazalis
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_dzabidah
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_drasyilla
_y03-30-2012
_zrahah
040 _dUKM
090 _aH62.L666
090 _aH62
_b.L666
090 _aWT26.5
_b.L855 2012 9
245 0 0 _aLongitudinal data analysis :
_ba practical guide for researchers in aging, health, and social sciences /
_cedited by Jason T. Newsom, Richard N. Jones, Scott M. Hofer.
260 _aNew York :
_bRoutledge,
_c2011.
300 _axiii, 391 p. ;
_c24 cm.
490 0 _aMultivariate applications series ;
_v18.
504 _aIncludes bibliographical references and index.
520 _a'This book provides accessible treatment to state-of-the-art approaches to analyzing longitudinal studies. Comprehensive coverage of the most popular analysis tools allows readers to pick and choose the techniques that best fit their research. The analyses are illustrated with examples from 12 major longitudinal data sets including practical information about their content and design. Illustrations from popular software packages offer tips on how to interpret the results. Each chapter features suggested readings fur further study and a list of articles that further illustrate how to implement the analysis and report the results. An accompanying website provides syntax examples for several software packages for each of the chapter examples. Although many of the examples address health or social science questions related to aging, readers from other disciplines will find the analyses relevant to their work. In addition to demonstrating statistical analysis of longitudinal data, the book shows how to interpret and analyze the results within the context of the research design. Although most chapters emphasize the use of large studies collected over long term periods, much of the book is also relevant to researchers who analyze data collected in shorter time periods. The book opens with issues related to using publicly available data sets including a description of the goals, designs, and measures of the data. The next 10 chapters provide non-technical, practical introductions to the concepts and issues relevant to longitudinal analysis, including: weighting samples and adjusting designs for longitudinal studies; missing data and attrition; measurement issues related to longitudinal research; the use of ANOVA and regression for averaging change over time; mediation analysis for analyzing causal processes; growth curve models using multilevel regression; longitudinal hypotheses using structural equation modeling (SEM); latent growth curve models for evaluating individual trajectories of change; dynamic SEM models of change; and survival (event) analysis. Examples from longitudinal data sets such as the Health and Retirement Study, the Longitudinal Study of Aging, and Established Populations for Epidemiologic Studies of the Elderly as well as international data sets such as the Canadian National Population Health Survey and the English Longitudinal Study of Aging, illustrate key concepts. An ideal supplement for graduate level courses on data analysis and/or longitudinal modeling taught in psychology, gerontology, human development, family studies, medicine, sociology, social work, and other behavioral, social, and health sciences, this multidisciplinary book will also appeal to researchers in these fields.'--
_cProvided by publisher.
650 0 _aSocial sciences
_xResearch.
_960873
650 0 _aSocial sciences
_vLongitudinal studies.
650 0 _aLongitudinal method.
650 0 _aAging
_xResearch
_vLongitudinal studies.
650 0 _aHealth
_xResearch
_vLongitudinal studies.
700 1 _aNewsom, Jason T.
700 1 _aJones, Richard N.
700 1 _aHofer, Scott M.
907 _a.b15307979
_b2021-05-28
_c2019-11-12
942 _c01
_n0
_kH62.L666
914 _avtls003494703
990 _aza
991 _aFakulti Sains Sosial dan Kemanusiaan
991 _aFakulti Farmasi, KKL
998 _ad
_at
_b2012-04-03
_cm
_da
_feng
_gnyu
_y0
_z.b15307979
999 _c514658
_d514658