LEADER 09835nam 2200553Ia 450 001 9910820182603321 005 20240314001717.0 010 0 $a111854160X 010 0 $a9781118541609 010 $a9781118541593 035 $a(MiAaPQ)EBC7103789 035 $a(CKB)24989764100041 035 $a(MiAaPQ)EBC1221739 035 $a(Au-PeEL)EBL1221739 035 $a(CaPaEBR)ebr10726746 035 $a(OCoLC)852757481 035 $a(JP-MeL)3000111428 035 $a(Au-PeEL)EBL7103789 035 $a(OCoLC)1347024700 035 $a(EXLCZ)9924989764100041 100 $a20130404d2013 uy 0 101 0 $aeng 135 $aur||||||||||| 181 $ctxt$2rdacontent 182 $cc$2rdamedia 183 $acr$2rdacarrier 200 10$aStatistical methods for food science $eintroductory procedures for the food practitioner /$fJohn A. Bower 205 $a2nd ed. 210 $aChichester, West Sussex, UK ;$aHoboken, NJ $cWiley-Blackwell$d2013 215 $a1 online resource 320 $aIncludes bibliographical references and index. 327 $aIntro -- Statistical Methods for Food Science -- Contents -- Preface -- About the companion website -- Acknowledgements -- Part I Introduction and basics -- Chapter 1 Basics and terminology -- 1.1 Introduction -- 1.2 What the book will cover -- 1.3 The importance of statistics -- 1.4 Applications of statistical procedures in food science -- 1.4.1 The approach to experimentation -- 1.5 Focus and terminology -- 1.5.1 Audience -- 1.5.2 Conventions and terminology -- References -- Software sources and links -- Chapter 2 The nature of data and their collection -- 2.1 Introduction -- 2.2 The nature of data -- 2.2.1 Measurement scales -- 2.2.2 Numeric and non-numeric data -- 2.2.3 Levels of measurement -- 2.3 Collection of data and sampling -- 2.3.1 Sample, sample units and subsamples -- 2.3.2 Sample size -- 2.3.3 Sample selection methods -- 2.3.4 Application examples -- 2.4 Populations -- 2.4.1 Population distribution -- 2.4.2 Identification of population distributional form -- References -- Chapter 3 Descriptive statistics -- 3.1 Introduction -- 3.2 Tabular and graphical displays -- 3.2.1 Summarising nominal data (discrete) -- 3.2.2 Summarising ordinal data (discrete) -- 3.2.3 Summarising metric (interval and ratio) data (continuous or discrete) -- 3.2.4 Summarising two variables together -- 3.3 Descriptive statistic measures -- 3.3.1 Measures of central tendency -- 3.3.2 Measures of dispersion or variation -- 3.3.3 Summary measures for proportions -- 3.3.4 Application of descriptive measures -- 3.4 Measurement uncertainty -- 3.4.1 Error types -- 3.4.2 Aspects of data and results uncertainty -- 3.4.3 Determination of measures of uncertainty -- 3.5 Determination of population nature and variance homogeneity -- 3.5.1 Adherence to normality -- 3.5.2 Homogeneity of variance -- References -- Chapter 4 Analysis of differences - significance testing. 327 $a4.1 Introduction -- 4.2 Significance (hypothesis) testing -- 4.2.1 The method of significance testing -- 4.2.2 The procedure of significance testing -- 4.3 Assumptions of significance tests -- 4.4 Stages in a significance test -- 4.5 Selection of significance tests -- 4.5.1 Nature of the data -- 4.5.2 Circumstances of the experiment -- 4.6 Parametric or non-parametric tests -- References -- Chapter 5 Types of significance test -- 5.1 Introduction -- 5.2 General points -- 5.3 Significance tests for nominal data (non-parametric) -- 5.3.1 Chi-square tests -- 5.3.2 The binomial test -- 5.4 Significance tests for ordinal data (non-parametric) -- 5.4.1 Related pairs and groups -- 5.4.2 Ordinal scales -- 5.4.3 Independent groups -- 5.4.4 Other non-parametric tests -- 5.5 Significance tests for interval and ratio data (parametric) -- 5.5.1 t-tests -- 5.5.2 Analysis of variance (ANOVA) -- References -- Chapter 6 Association, correlation and regression -- 6.1 Introduction -- 6.2 Association -- 6.3 Correlation -- 6.3.1 Main features of correlation -- 6.3.2 Correlation analysis -- 6.3.3 Correlation application -- 6.4 Regression -- 6.4.1 Main features of regression -- 6.4.2 Regression analysis -- 6.4.3 Regression assumptions -- 6.4.4 Regression application -- References -- Chapter 7 Experimental design -- 7.1 Introduction -- 7.2 Terminology and general procedure -- 7.2.1 Experiments, studies and investigations -- 7.2.2 Experimental units and sampling units -- 7.2.3 Variables, factors, levels and treatments -- 7.2.4 Controls and base lines -- 7.2.5 Responses and effects -- 7.2.6 Stages in the design procedure -- 7.3 Sources of experimental error and its reduction -- 7.3.1 Ways of reducing error -- 7.4 Types of design -- 7.4.1 One-variable designs -- 7.4.2 Factorial designs -- 7.4.3 Optimisation designs. 327 $a7.4.4 Designs to reduce the number of treatments and experimentation -- 7.5 Analysis methods and issues -- 7.5.1 Identification of design effects -- 7.6 Applicability of designs -- References -- Part II Applications -- Chapter 8 Sensory and consumer data -- 8.1 Introduction -- 8.2 The quality and nature of sensory and consumer data -- 8.3 Experimental design issues -- 8.4 Consumer data (sensory and survey) -- 8.4.1 Sampling issues -- 8.4.2 Analysis of consumer sensory tests -- 8.4.3 Analysis of consumer survey data -- 8.5 Trained panel sensory data -- 8.5.1 Samples for sensory assessment by trained panels -- 8.5.2 Quality of trained panel sensory data -- 8.5.3 Sources and test types -- 8.5.4 Experimental design issues -- 8.5.5 Analysis of trained panel sensory tests -- 8.6 Analysis of relationships -- References -- Chapter 9 Instrumental data -- 9.1 Introduction -- 9.2 Quality and nature of instrumental data -- 9.2.1 Quality of instrumental data -- 9.3 Sampling and replication -- 9.3.1 Sample sizes in instrumental determinations -- 9.4 Experimental design issues -- 9.5 Statistical analysis of instrumental data -- 9.5.1 Summary methods -- 9.6 Chemical analysis applications -- 9.6.1 Accuracy and bias in chemical analysis -- 9.6.2 Calibration studies -- 9.6.3 Precision studies -- 9.6.4 Uncertainty -- 9.7 Analysis of relationships -- References -- Chapter 10 Food product formulation -- 10.1 Introduction -- 10.2 Design application in food product development -- 10.3 Single ingredient effects -- 10.4 Two or more ingredients -- 10.4.1 Significance of effects (ingredients) -- 10.5 Screening of many ingredients -- 10.5.1 Graphical analysis -- 10.5.2 ANOVA -- 10.5.3 Three-level factorials -- 10.6 Formulation by constraints -- References -- Chapter 11 Statistical quality control -- 11.1 Introduction -- 11.2 Types of statistical quality control. 327 $a11.2.1 Types of end determination measure in SQC -- 11.3 Sampling procedures -- 11.3.1 Sample size and frequency -- 11.3.2 Sampling point location -- 11.4 Control charts -- 11.4.1 The x-bar control chart -- 11.4.2 Sampling for control charts -- 11.4.3 Compliance issues -- 11.4.4 Other variable control charts -- 11.4.5 Attribute charts -- 11.5 Acceptance sampling -- References -- Chapter 12 Multivariate applications -- 12.1 Introduction -- 12.2 Multivariate methods and their characteristics -- 12.3 Multivariate modes -- 12.3.1 Multiple regression -- 12.3.2 Multivariate analysis of variance -- 12.3.3 Principal component analysis -- 12.3.4 Cluster analysis -- 12.3.5 Correspondence analysis -- 12.3.6 Conjoint analysis -- 12.3.7 Discriminant analysis -- 12.3.8 Partial least squares regression -- 12.3.9 Preference mapping -- 12.3.10 Procrustes analysis -- 12.4 Relationship of consumer preference with sensory measures -- References -- Index -- Advert. 330 $aThe recording and analysis of food data are becoming  increasingly sophisticated. Consequently, the food scientist in industry or at study faces the task of using and understanding statistical methods. Statistics is often viewed as a difficult subject and is often avoided because of its complexity and a lack of specific application to the requirements of food science. This situation is changing - there is now much material on multivariate applications for the more advanced reader, but a case exists for a  univariate approach aimed at the non-statistician. This second edition of Statistical Methods for Food Science provides a source text on accessible statistical procedures for the food scientist, and is aimed at professionals and students in food laboratories where analytical, instrumental and sensory data are gathered and require some form of summary and analysis before interpretation. It is suitable for the food analyst, the sensory scientist and the product developer, and others who work in food-related disciplines involving consumer survey investigations will also find many sections of use. There is an emphasis on a 'hands-on' approach, and worked examples using computer software packages and the minimum of mathematical formulae are included. The book is based on the experience and practice of a scientist engaged for many years in research and teaching of analytical and sensory food science at undergraduate and post-graduate level. This revised and updated second edition is accompanied by a new companion website giving the reader access to the datasets and Excel spreadsheets featured in the book. Check it out now by visiting www.wiley.com/go/bower/statistical or by scanning the QR code below. 606 $aFood$xResearch$xStatistical methods 606 $aHome economics 615 0$aFood$xResearch$xStatistical methods. 615 0$aHome economics. 676 $a664.0072 700 $aBower$b John A$c(Lecturer in food science)$0514355 801 0$bMiAaPQ 801 1$bMiAaPQ 801 2$bMiAaPQ 906 $aBOOK 912 $a9910820182603321 996 $aStatistical methods for food science$9852046 997 $aUNINA