logo
logo
x
바코드검색
BOOKPRICE.co.kr
책, 도서 가격비교 사이트
바코드검색

인기 검색어

실시간 검색어

검색가능 서점

도서목록 제공

Chemometrics for Pattern Recognition

Chemometrics for Pattern Recognition (Hardcover)

Richard Brereton (지은이)
John Wiley & Sons Inc
273,650원

일반도서

검색중
서점 할인가 할인률 배송비 혜택/추가 실질최저가 구매하기
224,390원 -18% 0원
11,220원
213,170원 >
yes24 로딩중
교보문고 로딩중
notice_icon 검색 결과 내에 다른 책이 포함되어 있을 수 있습니다.

중고도서

검색중
서점 유형 등록개수 최저가 구매하기
로딩중

eBook

검색중
서점 정가 할인가 마일리지 실질최저가 구매하기
로딩중

책 이미지

Chemometrics for Pattern Recognition
eBook 미리보기

책 정보

· 제목 : Chemometrics for Pattern Recognition (Hardcover) 
· 분류 : 외국도서 > 과학/수학/생태 > 과학 > 화학 > 분석화학
· ISBN : 9780470987254
· 쪽수 : 522쪽
· 출판일 : 2009-09-28

목차

Acknowledgements.

Preface.

1 Introduction.

1.1 Past, Present and Future.

1.2 About this Book.

Bibliography.

2 Case Studies.

2.1 Introduction.

2.2 Datasets, Matrices and Vectors.

2.3 Case Study 1: Forensic Analysis of Banknotes.

2.4 Case Study 2: Near Infrared Spectroscopic Analysis of Food.

2.5 Case Study 3: Thermal Analysis of Polymers.

2.6 Case Study 4: Environmental Pollution using Headspace Mass Spectrometry.

2.7 Case Study 5: Human Sweat Analysed by Gas Chromatography Mass Spectrometry.

2.8 Case Study 6: Liquid Chromatography Mass Spectrometry of Pharmaceutical Tablets.

2.9 Case Study 7: Atomic Spectroscopy for the Study of Hypertension.

2.10 Case Study 8: Metabolic Profiling of Mouse Urine by Gas Chromatography of Urine Extracts.

2.11 Case Study 9: Nuclear Magnetic Resonance Spectroscopy for Salival Analysis of the Effect of Mouthwash.

2.12 Case Study 10: Simulations.

2.13 Case Study 11: Null Dataset.

2.14 Case Study 12: GCMS and Microbiology of Mouse Scent Marks.

Bibliography.

3 Exploratory Data Analysis.

3.1 Introduction.

3.2 Principal Components Analysis.

3.2.1 Background.

3.2.2 Scores and Loadings.

3.2.3 Eigenvalues.

3.2.4 PCA Algorithm.

3.2.5 Graphical Representation.

3.3 Dissimilarity Indices, Principal Co-ordinates Analysis and Ranking.

3.3.1 Dissimilarity.

3.3.2 Principal Co-ordinates Analysis.

3.3.3 Ranking.

3.4 Self Organizing Maps.

3.4.1 Background.

3.4.2 SOM Algorithm.

3.4.3 Initialization.

3.4.4 Training.

3.4.5 Map Quality.

3.4.6 Visualization.

Bibliography.

4 Preprocessing.

4.1 Introduction.

4.2 Data Scaling.

4.2.1 Transforming Individual Elements.

4.2.2 Row Scaling.

4.2.3 Column Scaling.

4.3 Multivariate Methods of Data Reduction.

4.3.1 Largest Principal Components.

4.3.2 Discriminatory Principal Components.

4.3.3 Partial Least Squares Discriminatory Analysis Scores.

4.4 Strategies for Data Preprocessing.

4.4.1 Flow Charts.

4.4.2 Level 1.

4.4.3 Level 2.

4.4.4 Level 3.

4.4.5 Level 4.

Bibliography.

5 Two Class Classifiers.

5.1 Introduction.

5.1.1 Two Class Classifiers.

5.1.2 Preprocessing.

5.1.3 Notation.

5.1.4 Autoprediction and Class Boundaries.

5.2 Euclidean Distance to Centroids.

5.3 Linear Discriminant Analysis.

5.4 Quadratic Discriminant Analysis.

5.5 Partial Least Squares Discriminant Analysis.

5.5.1 PLS Method.

5.5.2 PLS Algorithm.

5.5.3 PLS-DA.

5.6 Learning Vector Quantization.

5.6.1 Voronoi Tesselation and Codebooks.

5.6.2 LVQ1.

5.6.3 LVQ3.

5.6.4 LVQ Illustration and Summary of Parameters.

5.7 Support Vector Machines.

5.7.1 Linear Learning Machines.

5.7.2 Kernels.

5.7.3 Controlling Complexity and Soft Margin SVMs.

5.7.4 SVM Parameters.

Bibliography.

6 One Class Classifiers.

6.1 Introduction.

6.2 Distance Based Classifiers.

6.3 PC Based Models and SIMCA.

6.4 Indicators of Significance.

6.4.1 Gaussian Density Estimators and Chi-Squared.

6.4.2 Hotelling’s T2.

6.4.3 D-Statistic.

6.4.4 Q-Statistic or Squared Prediction Error.

6.4.5 Visualization of D- and Q-Statistics for Disjoint PC Models.

6.4.6 Multivariate Normality and What to do if it Fails.

6.5 Support Vector Data Description.

6.6 Summarizing One Class Classifiers.

6.6.1 Class Membership Plots.

6.6.2 ROC Curves.

Bibliography.

7 Multiclass Classifiers.

7.1 Introduction.

7.2 EDC, LDA and QDA.

7.3 LVQ.

7.4 PLS.

7.4.1 PLS2.

7.4.2 PLS1.

7.5 SVM.

7.6 One against One Decisions.

Bibliography.

8 Validation and Optimization.

8.1 Introduction.

8.1.1 Validation.

8.1.2 Optimization.

8.2 Classification Abilities, Contingency Tables and Related Concepts.

8.2.1 Two Class Classifiers.

8.2.2 Multiclass Classifiers.

8.2.3 One Class Classifiers.

8.3 Validation.

8.3.1 Testing Models.

8.3.2 Test and Training Sets.

8.3.3 Predictions.

8.3.4 Increasing the Number of Variables for the Classifier.

8.4 Iterative Approaches for Validation.

8.4.1 Predictive Ability, Model Stability, Classification by Majority Vote and Cross Classification Rate.

8.4.2 Number of Iterations.

8.4.3 Test and Training Set Boundaries.

8.5 Optimizing PLS Models.

8.5.1 Number of Components: Cross-Validation and Bootstrap.

8.5.2 Thresholds and ROC Curves.

8.6 Optimizing Learning Vector Quantization Models.

8.7 Optimizing Support Vector Machine Models.

Bibliography.

9 Determining Potential Discriminatory Variables.

9.1 Introduction.

9.1.1 Two Class Distributions.

9.1.2 Multiclass Distributions.

9.1.3 Multilevel and Multiway Distributions.

9.1.4 Sample Sizes.

9.1.5 Modelling after Variable Reduction.

9.1.6 Preliminary Variable Reduction.

9.2 Which Variables are most Significant?.

9.2.1 Basic Concepts: Statistical Indicators and Rank.

9.2.2 T-Statistic and Fisher Weights.

9.2.3 Multiple Linear Regression, ANOVA and the F-Ratio.

9.2.4 Partial Least Squares.

9.2.5 Relationship between the Indicator Functions.

9.3 How Many Variables are Significant?

9.3.1 Probabilistic Approaches.

9.3.2 Empirical Methods: Monte Carlo.

9.3.3 Cost/Benefit of Increasing the Number of Variables.

Bibliography.

10 Bayesian Methods and Unequal Class Sizes.

10.1 Introduction.

10.2 Contingency Tables and Bayes’ Theorem.

10.3 Bayesian Extensions to Classifiers.

Bibliography.

11 Class Separation Indices.

11.1 Introduction.

11.2 Davies Bouldin Index.

11.3 Silhouette Width and Modified Silhouette Width.

11.3.1 Silhouette Width.

11.3.2 Modified Silhouette Width.

11.4 Overlap Coefficient.

Bibliography.

12 Comparing Different Patterns.

12.1 Introduction.

12.2 Correlation Based Methods.

12.2.1 Mantel Test.

12.2.2 RV Coefficient.

12.3 Consensus PCA.

12.4 Procrustes Analysis.

Bibliography.

Index.

이 포스팅은 쿠팡 파트너스 활동의 일환으로,
이에 따른 일정액의 수수료를 제공받습니다.
이 포스팅은 제휴마케팅이 포함된 광고로 커미션을 지급 받습니다.
도서 DB 제공 : 알라딘 서점(www.aladin.co.kr)
최근 본 책