CHEMISTRY ANALYTICAL CHEMISTRY Fall

Slides:



Advertisements
Similar presentations
DATA & STATISTICS 101 Presented by Stu Nagourney NJDEP, OQA.
Advertisements

AP Statistics Section 11.2 B. A 95% confidence interval captures the true value of in 95% of all samples. If we are 95% confident that the true lies in.
CHAPTER 21 Inferential Statistical Analysis. Understanding probability The idea of probability is central to inferential statistics. It means the chance.
Sampling: Final and Initial Sample Size Determination
The Central Limit Theorem
Hypothesis testing Week 10 Lecture 2.
REVIEW OF BASICS PART II Probability Distributions Confidence Intervals Statistical Significance.
Jump to first page STATISTICAL INFERENCE Statistical Inference uses sample data and statistical procedures to: n Estimate population parameters; or n Test.
Estimation from Samples Find a likely range of values for a population parameter (e.g. average, %) Find a likely range of values for a population parameter.
DATA ANALYSIS I MKT525. Plan of analysis What decision must be made? What are research objectives? What do you have to know to reach those objectives?
Quality Control Procedures put into place to monitor the performance of a laboratory test with regard to accuracy and precision.
Limitations of Analytical Methods l The function of the analyst is to obtain a result as near to the true value as possible by the correct application.
Statistical Concepts (continued) Concepts to cover or review today: –Population parameter –Sample statistics –Mean –Standard deviation –Coefficient of.
Analysis of Simulation Input.. Simulation Machine n Simulation can be considered as an Engine with input and output as follows: Simulation Engine Input.
Statistical Treatment of Data Significant Figures : number of digits know with certainty + the first in doubt. Rounding off: use the same number of significant.
ANALYTICAL CHEMISTRY CHEM 3811
Standard error of estimate & Confidence interval.
Statistics Introduction 1.)All measurements contain random error  results always have some uncertainty 2.)Uncertainty are used to determine if two or.
Chapter 6 Random Error The Nature of Random Errors
Statistics Outline Types of Error A. Systematic vs. random
Essentials of Marketing Research
Basic Business Statistics, 11e © 2009 Prentice-Hall, Inc. Chap 8-1 Confidence Interval Estimation.
Population All members of a set which have a given characteristic. Population Data Data associated with a certain population. Population Parameter A measure.
Statistics 101 Chapter 10. Section 10-1 We want to infer from the sample data some conclusion about a wider population that the sample represents. Inferential.
© 2003 Prentice-Hall, Inc.Chap 7-1 Basic Business Statistics (9 th Edition) Chapter 7 Sampling Distributions.
The Scientific Method Formulation of an H ypothesis P lanning an experiment to objectively test the hypothesis Careful observation and collection of D.
Lecture 4 Basic Statistics Dr. A.K.M. Shafiqul Islam School of Bioprocess Engineering University Malaysia Perlis
I Introductory Material A. Mathematical Concepts Scientific Notation and Significant Figures.
LECTURER PROF.Dr. DEMIR BAYKA AUTOMOTIVE ENGINEERING LABORATORY I.
Introduction to Analytical Chemistry
ME 322: Instrumentation Lecture 3 January 27, 2012 Professor Miles Greiner.
CONFIDENCE INTERVAL It is the interval or range of values which most likely encompasses the true population value. It is the extent that a particular.
Lecture 2 Forestry 3218 Lecture 2 Statistical Methods Avery and Burkhart, Chapter 2 Forest Mensuration II Avery and Burkhart, Chapter 2.
TEKS (6.10) Probability and statistics. The student uses statistical representations to analyze data. The student is expected to: (B) identify mean (using.
Statistics - methodology for collecting, analyzing, interpreting and drawing conclusions from collected data Anastasia Kadina GM presentation 6/15/2015.
Chap 7-1 Basic Business Statistics (10 th Edition) Chapter 7 Sampling Distributions.
Normal Distribution.
Selecting Input Probability Distribution. Simulation Machine Simulation can be considered as an Engine with input and output as follows: Simulation Engine.
Normal Distribution. Normal Distribution: Symmetric: Mean = Median = Mode.
CHEMISTRY ANALYTICAL CHEMISTRY Fall Lecture 6.
Learning Objective Chapter 12 Sample Size Determination Copyright © 2000 South-Western College Publishing Co. CHAPTER twelve Sample Size Determination.
Lecture PowerPoint Slides Basic Practice of Statistics 7 th Edition.
Chapter 4 Statistics Tools to accept or reject conclusion from experimental measurements Deal with random error only.
: An alternative representation of level of significance. - normal distribution applies. - α level of significance (e.g. 5% in two tails) determines the.
© 2001 Prentice-Hall, Inc.Chap 7-1 BA 201 Lecture 11 Sampling Distributions.
B. Neidhart, W. Wegscheider (Eds.): Quality in Chemical Measurements © Springer-Verlag Berlin Heidelberg 2000 U. PyellBasic Course Experiments to Demonstrate.
Inen 460 Lecture 2. Estimation (ch. 6,7) and Hypothesis Testing (ch.8) Two Important Aspects of Statistical Inference Point Estimation – Estimate an unknown.
ES 07 These slides can be found at optimized for Windows)
CHAPTER 1 EVERYTHING YOU EVER WANTED TO KNOW ABOUT STATISTCS.
Ch 8 Estimating with Confidence 8.1: Confidence Intervals.
ERT 207 Analytical Chemistry ERT 207 ANALYTICAL CHEMISTRY Dr. Saleha Shamsudin.
Chapter 4 Exploring Chemical Analysis, Harris
Hypothesis Testing. Suppose we believe the average systolic blood pressure of healthy adults is normally distributed with mean μ = 120 and variance σ.
Statistical Inference for the Mean Objectives: (Chapter 8&9, DeCoursey) -To understand the terms variance and standard error of a sample mean, Null Hypothesis,
Home Reading Skoog et al. Fundamental of Analytical Chemistry. Chapters 5 and 6.
Lecture 9-I Data Analysis: Bivariate Analysis and Hypothesis Testing
Statistical Methods Michael J. Watts
Data Analysis.
ESTIMATION.
Statistical Methods Michael J. Watts
STAT 312 Chapter 7 - Statistical Intervals Based on a Single Sample
Inference: Conclusion with Confidence
Statistical Inference for the Mean Confidence Interval
Confidence Intervals Chapter 10 Section 1.
Chapter 3: Averages and Variation
SP 225 Lecture 11 Confidence Intervals.
Lecture 10/24/ Tests of Significance
DESIGN OF EXPERIMENT (DOE)
Statistical Inference for the Mean: t-test
How Confident Are You?.
Presentation transcript:

CHEMISTRY 59-320 ANALYTICAL CHEMISTRY Fall - 2010 Lecture 5

Why do we need statistics in analytical chemistry? Scientists need a standard format to communicate significance of experimental numerical data. Objective mathematical data analysis methods needed to get the most information from finite data sets To provide a basis for optimal experimental design. Statistics gives us tools to accept conclusions that have a high probability of being correct and to reject conclusions that do not.

What Does Statistics Involve? Defining properties of probability distributions for infinite populations Application of these properties to treatment of finite (real-world) data sets Probabilistic approaches to: Reporting data Data treatment Finite sampling Experimental design

Some Useful Statistics Terms Mean – Average of a set of values Median – Mid-point of a set of values. Population – A collection of an infinite munber of measurements. N  infinity Sample – A finite set of measurements which represent the population. True value (true mean)- (m), mean value for the population. Observed Mean –(x), mean value of the sample set

4-1 Gaussian distribution

Standard Deviation The Most Important Statistic Standard Deviation s of an infinite set of experimental data is theoretically given by s = S(xi – m)2/N xi = individual measurement m = mean of infinite number of measurements (true value) N = number of measurements

Standard Deviation of a Finite Set of Experimental Data Estimated Standard Deviation, s (N < 30) s = (S(xi – x)2/(N-1)) For finite sets the precision is represented by s. Standard deviation of the mean smean Smean = s/N Relative standard deviation rsd: or coefficient of variation (s/mean)*100 = % rsd

Gaussian or normal distribution Mean Standard deviation Variance Gaussian or normal distribution The standardized normal deviate Confidence interval: Interval within which the true value almost certainly lies!