Diff for "FAQ/texts" - CBU statistics Wiki
location: Diff for "FAQ/texts"
Differences between revisions 71 and 72
Revision 71 as of 2012-08-29 14:45:07
Size: 8985
Editor: PeterWatson
Comment:
Revision 72 as of 2012-12-10 09:48:52
Size: 9441
Editor: PeterWatson
Comment:
Deletions are marked like this. Additions are marked like this.
Line 39: Line 39:
Cornillon, P-A, Guyader, A, Husson, F, Jegou, N, Josse, J, Kloareg, M, Matzer-Lober, E and Rouviere L (2012) R for statistics. CRC Press:Abingdon. (Covers regressions, ANOVAs, PCA, clustering and graphics in R)
Line 63: Line 65:
 *Loehlin, JC (1987) Latent variable models: An introduction to factor, path, and structural analysis. Lawrence Erlbaum: Hillsdale, NJ.  *Loehlin, JC (1987, 2004) Latent variable models: An introduction to factor, path, and structural analysis. Lawrence Erlbaum: Hillsdale, NJ.
Line 110: Line 112:
Jureckova, J, Sen, PK and Picek J (2012) Methodology in robust and nonparametric statistics. CRC Press:Abingdon. (In addition to nonparametrics, Covers a closely related set of techniques to nonparametrics called robust statistics).

A :-) indicates in CBU library. Most of the others are in the university library. You can check at [http://ul-newton.lib.cam.ac.uk/ here.] Statistics books in the CBU library are listed [http://imaging.mrc-cbu.cam.ac.uk/statswiki here.] The Psychological Postgrads website also has a list of suggested Statistics and Research Methods textbooks with comments located [http://www.psypag.co.uk/resources/recommended-reading here.]

General

  • Everitt, BS (1996) Making sense of statistics in psychology. OUP: Oxford.
  • Gravetter, FJ and Wallnau, LB (2006) Statistics for the behavioral sciences. (7th Edition). Wadsworth:Pacific Grove, California. The swecond edition was recommended by a psych-postgrads list contributor especially for its chapter on a step-by-step introduction to structural equation modelling.

  • Howell, DC (2002) Statistical methods for psychology. (5th edition). Wadsworth:Pacific Grove, CA. Examples and illustrations of a variety of analyses put in an entertaining and understanding manner. :-) (Third and fourth edition also in library). There is also now a sixth edition of Howell (2010) with a significantly updated discussion of effect sizes and examples on how to write up the results of data analysis.

(The two below are recommended by psychology students on the PSYCH-POSTGRADS email list).

  • Rowntree, D (1991) Statistics Without Tears:an introduction for non-mathematicians. Penguin:London.

  • Salkind, NJ (2008) Statistics for people who think they hate statistics. (3rd Edition). Sage:London. (New edition due in November 2010)

SPSS learning books which cover a range of statistical procedures

  • Boslaugh, S (2005) An Intermediate Guide to SPSS Programming: Using Syntax for Data Management. Sage:Thousand Oaks, CA. SPSS syntax (including macros) with some description of the statistical methods that they implement. :-)

  • Brace, N, Kemp, R & Snelgar, R (2006) SPSS for psychologists (3rd edition). Lawrence Erlbaum: London. A broad range of advanced statistical procedures as implemented in SPSS. :-) (On order; First edition in library)

  • Collier, J (2009) Using SPSS syntax - A Beginner's Guide. Sage: London. Further details are [:FAQ/collier: here.]
  • Field, A (2005) Discovering Statistics using SPSS. 2nd Edition. Sage:London. :-)

  • Kinnear, PR and Gray, CD (2009) SPSS 16 made simple. Psychology Press: Hove, East Sussex, England. Revised (updated) versions available.

R learning books which cover a range of statistical procedures

  • Baguley, T (2012) Serious stats: A guide to advanced statistics for the behavioral sciences. Basingstoke: Palgrave. (covers basic analyses, effect sizes, messy data, AN(C)OVA and multilevel models). There is also some SPSS syntax given for comparison with R. :-)

Cornillon, P-A, Guyader, A, Husson, F, Jegou, N, Josse, J, Kloareg, M, Matzer-Lober, E and Rouviere L (2012) R for statistics. CRC Press:Abingdon. (Covers regressions, ANOVAs, PCA, clustering and graphics in R)

  • Crawley, MJ (2005) Statistics: an introduction using R. Wiley:New York. (covers basic analyses such as descriptives and one and two-sample tests) :-)

  • Crawley, MJ (2007) The R book. Wiley:New York. (covers more advanced analyses such as general linear models including regressions and analysis of (co)variance). :-)

Analysis of Variance

  • Keppel, G (1991). Design and analysis: A researcher's handbook (3rd edition). Prentice-Hall: Englewood Cliffs, New Jersey. Clear substantive and quantitative introduction to analysis of variance :-)

  • Maxwell, SE and Delaney, HD (2004). Designing experiments and analyzing data: a model comparison perspective (2nd Edition). Lawrence Erlbaum: Mahwah, NJ. A good blend of a smattering of important formulae and practical usage.
  • Miller Jr, RG (1998) Beyond ANOVA. CRC Press LLC: Boca Raton, Florida, USA (1998). There is also a Chapman and Hall 1997 edition. Involved treatment of ANOVAs and its formulation as a multiple regression.
  • Winer, BJ, Brown, DR, & Michels, KM (1991). Statistical Principles in Experimental Design (3rd Edition). McGraw-Hill: New York. Excellent book. Good resource. The third edition by the last two authors was completed after Winer died. 1962 version in CBU library :-)

Categorical Data Models

  • Agresti, A (1996) An Introduction to Categorical Data Analysis. Wiley: New York. A primer covering a wide variety of methods.
  • Agresti, A (2002) Categorical data analysis. Wiley: New York. More in-depth and comprehensive approach.

Factor Analysis (both exploratory and confirmatory)

  • Loehlin, JC (1987, 2004) Latent variable models: An introduction to factor, path, and structural analysis. Lawrence Erlbaum: Hillsdale, NJ.
  • Dunn, G, Everitt, B and Pickles, A (2003) Modelling covariances and latent variables using EQS. Chapman and Hall: London.

Cluster Analysis

Clustering can be used on small samples (N<100) usually grouping items assessing service attributes which have a limited range of responses such as Yes/No.

  • Everitt, BS, Landau, S and Lees, M (2001) Cluster analysis. Fourth Edition Arnold:London. The first (1974) and second 1980) editions are in the CBSU library. :-)

  • Clustering is also covered in most multivariate data analysis textbooks including [attachment:clusterch.pdf Chapter 8 of Tan, P-N, Steinbach, M. and Kumar, V. (2005) Introduction to Data Mining. Addison-Wesley:Upper Saddle River, NJ.]

Logistic Regression

  • Hosmer, DW and Lemeshow, S (1989) Applied logistic regression. Wiley: New York.
  • Pampel, FC (2000) Logistic regression: a primer. Sage: London. A clear account, using mainly medical examples, of binary logistic regression.

Log-linear models

  • Knoke, D and Burke PJ (1983) Log-linear models. Sage: London. A primer for an area whose best known example is logistic regression.

Multiple Regression

  • Aiken, L and West, S (1991) Multiple Regression: Testing and Interpreting Interactions. Sage:London. This applied text addresses issues surrounding regression including multicollinearity and fitting interactions involving continuous covariates. :-)

  • Cohen, J and Cohen, P (1983) Applied multiple regression/correlation analysis for the behavioral sciences. Second edition. Lawrence Erlbaum: Hillsdale, NJ. :-)

  • Cohen, J, Cohen, P, West SG and Aiken LS (2002) Applied multiple regression/correlation analysis for the behavioral sciences. Routledge: London.
  • Miles, J and Shevlin, M (2005) Applying regression and correlation: a guide for students and researchers. Sage:London.

Multivariate Analyses

  • Field, A (2005) Discovering statistics using SPSS (2nd edition). Sage:London.

  • Hair Jr., JF, Tatham, RL, Anderson, RE and Black W. (1998) Multivariate Data Analysis (5th edition). Prentice-Hall:Englewood Cliffs, NJ. This accessible and comprehensive text features plenty of illustrations and rules of thumb. It is also available, together with earlier editions, in the university library :-)

There is also a sixth and seventh edition (2009) by Hair Jr, JF, Black,B, Babin, B, Anderson, RE, Tatham, RL published by Pearson International

  • Tabachnick, BG and Fidell LS (2007) Using multivariate statistics (5th edition). Pearson International:Boston, MA. :-)

  • [attachment:meyers.pdf Meyers LS, Gamst G and Guarino AJ Applied multivariate research. Design and interpretation. Sage:London]. The authors’ emphasis is on conceptual understanding of a comprehensive range of multivariate methods with illustrations of their use on data using SPSS.

Nonparametric Statistics

Jureckova, J, Sen, PK and Picek J (2012) Methodology in robust and nonparametric statistics. CRC Press:Abingdon. (In addition to nonparametrics, Covers a closely related set of techniques to nonparametrics called robust statistics).

  • Siegel, S. and Castellan, NJ (1988) Nonparametric Statistics for the Behavioural Sciences. McGraw-Hill, 2nd edition. A comprehensive text with illustrative examples of numerous nonparametric tests. :-)

Power

  • Aberson, CL (2010) Applied Power Analysis for the Behavioral Sciences. Routledge Academic. Contains SPSS syntax :-)

  • Kraemer, HC and Thiemann, S (1987) How Many Subjects? Statistical Power Analysis in Research. Sage. :-)

Random Effect modelling

  • Brown, H and Prescott, R (2006) Applied mixed models in medicine (2nd edition). Wiley:New York. This illustrates a wide variety of applications using SAS.

  • Luke, DA (2004) Multilevel modeling. Sage: London.
  • SPSS Inc. document. Linear mixed effects modeling in SPSS. (Pdf file giving details of fitting random effect models in SPSS [attachment:mixedspss.pdf is here.])

Statistica

A list of books which detail the use of Statistica are listed at the [http://www.statsoft.com/support/books-on-statistica/ here] on the software makers (Statsoft's) own website.

Mathematics Primers

  • Aitken, M., Broadhurst, B., Hladky, S. (2009) Mathematics for Biological Scientists. Garland Science:New York. :-)

  • Cann, A. J. (2002) Maths from Scratch for Biologists. Wiley:New York. :-)

  • Foster, P. C. (1998) Easy Mathematics for Biologists. Harwood academic:Amsterdam. :-)

  • Reed, M. B. (2011) Core Maths for the Biosciences. Oxford University Press. :-)

None: FAQ/texts (last edited 2023-08-08 10:48:09 by PeterWatson)