Data Collection & Processing Hand Grip Strength P339-341 textbook.

Slides:



Advertisements
Similar presentations
SUMMARIZING DATA: Measures of variation Measure of Dispersion (variation) is the measure of extent of deviation of individual value from the central value.
Advertisements

Table of Contents Exit Appendix Behavioral Statistics.
RESEARCH STATISTICS Jobayer Hossain Larry Holmes, Jr November 6, 2008 Examining Relationship of Variables.
Business Statistics - QBM117 Least squares regression.
Summary of Quantitative Analysis Neuman and Robson Ch. 11
1 Doing Statistics for Business Doing Statistics for Business Data, Inference, and Decision Making Marilyn K. Pelosi Theresa M. Sandifer Chapter 11 Regression.
Inference for regression - Simple linear regression
Correlation Scatter Plots Correlation Coefficients Significance Test.
© 2005 The McGraw-Hill Companies, Inc., All Rights Reserved. Chapter 12 Describing Data.
Correlation and regression 1: Correlation Coefficient
TOPIC 1 STATISTICAL ANALYSIS
Quantitative Skills: Data Analysis and Graphing.
STATISTICS: BASICS Aswath Damodaran 1. 2 The role of statistics Aswath Damodaran 2  When you are given lots of data, and especially when that data is.
Association between 2 variables We've described the distribution of 1 variable in Chapter 1 - but what if 2 variables are measured on the same individual?
Relationships Scatterplots and correlation BPS chapter 4 © 2006 W.H. Freeman and Company.
Topic 6.1 Statistical Analysis. Lesson 1: Mean and Range.
1 Chapter 3: Examining Relationships 3.1Scatterplots 3.2Correlation 3.3Least-Squares Regression.
6.1 What is Statistics? Definition: Statistics – science of collecting, analyzing, and interpreting data in such a way that the conclusions can be objectively.
Variable  An item of data  Examples: –gender –test scores –weight  Value varies from one observation to another.
Regression and Correlation. Bivariate Analysis Can we say if there is a relationship between the number of hours spent in Facebook and the number of friends.
LECTURE UNIT 7 Understanding Relationships Among Variables Scatterplots and correlation Fitting a straight line to bivariate data.
Data Handbook Chapter 4 & 5. Data A series of readings that represents a natural population parameter A series of readings that represents a natural population.
Quantitative Skills 1: Graphing
Psychology’s Statistics Statistical Methods. Statistics  The overall purpose of statistics is to make to organize and make data more meaningful.  Ex.
6.1 Statistical Analysis.
Name: Angelica F. White WEMBA10. Teach students how to make sound decisions and recommendations that are based on reliable quantitative information During.
Wednesday, October 12 Correlation and Linear Regression.
Correlation and Linear Regression. Evaluating Relations Between Interval Level Variables Up to now you have learned to evaluate differences between the.
Statistical Analysis Topic – Math skills requirements.
Research & Statistics Looking for Conclusions. Statistics Mathematics is used to organize, summarize, and interpret mathematical data 2 types of statistics.
Make observations to state the problem *a statement that defines the topic of the experiments and identifies the relationship between the two variables.
Topic 10 - Linear Regression Least squares principle - pages 301 – – 309 Hypothesis tests/confidence intervals/prediction intervals for regression.
TYPES OF STATISTICAL METHODS USED IN PSYCHOLOGY Statistics.
Statistical analysis Outline that error bars are a graphical representation of the variability of data. The knowledge that any individual measurement.
Measures of central tendency are statistics that express the most typical or average scores in a distribution These measures are: The Mode The Median.
MGS3100_04.ppt/Sep 29, 2015/Page 1 Georgia State University - Confidential MGS 3100 Business Analysis Regression Sep 29 and 30, 2015.
Data Collection and Processing (DCP) 1. Key Aspects (1) DCPRecording Raw Data Processing Raw Data Presenting Processed Data CompleteRecords appropriate.
IB Mark Schemes Data Collection and Processing Honors Physical Science 2012.
© Copyright McGraw-Hill Correlation and Regression CHAPTER 10.
Chapter 16 Data Analysis: Testing for Associations.
11/23/2015Slide 1 Using a combination of tables and plots from SPSS plus spreadsheets from Excel, we will show the linkage between correlation and linear.
Association between 2 variables We've described the distribution of 1 variable - but what if 2 variables are measured on the same individual? Examples?
Chapter 9: Correlation and Regression Analysis. Correlation Correlation is a numerical way to measure the strength and direction of a linear association.
Statistical Analysis Topic – Math skills requirements.
Chapter Eight: Using Statistics to Answer Questions.
Data Analysis.
Chapter 6: Analyzing and Interpreting Quantitative Data
Statistical analysis Why?? (besides making your life difficult …)  Scientists must collect data AND analyze it  Does your data support your hypothesis?
EXCEL DECISION MAKING TOOLS BASIC FORMULAE - REGRESSION - GOAL SEEK - SOLVER.
CORRELATION ANALYSIS.
Introductory Statistics for Laboratorians dealing with High Throughput Data sets Centers for Disease Control.
26134 Business Statistics Week 4 Tutorial Simple Linear Regression Key concepts in this tutorial are listed below 1. Detecting.
STATISICAL ANALYSIS HLIB BIOLOGY TOPIC 1:. Why statistics? __________________ “Statistics refers to methods and rules for organizing and interpreting.
The Data Collection and Statistical Analysis in IB Biology John Gasparini The Munich International School Part II – Basic Stats, Standard Deviation and.
Using Excel to Graph Data Featuring – Mean, Standard Deviation, Standard Error and Error Bars.
NURS 306, Nursing Research Lisa Broughton, MSN, RN, CCRN RESEARCH STATISTICS.
Week 2 Normal Distributions, Scatter Plots, Regression and Random.
Statistical Analysis IB Topic 1. IB assessment statements:  By the end of this topic, I can …: 1. State that error bars are a graphical representation.
Chapter 13 Linear Regression and Correlation. Our Objectives  Draw a scatter diagram.  Understand and interpret the terms dependent and independent.
Statistical analysis.
Regression and Correlation
Statistical analysis.
POSC 202A: Lecture Lecture: Substantive Significance, Relationship between Variables 1.
Correlation and Regression
Statistical Methods For Engineers
CORRELATION ANALYSIS.
STEM Fair Graphs.
Descriptive Statistics
REGRESSION ANALYSIS 11/28/2019.
Presentation transcript:

Data Collection & Processing Hand Grip Strength P textbook

Problem Is there a stronger correlation between hand grip strength and body mass or hand grip strength and age? Independent Variable: body mass age Dependent Variable: Hand Grip Strength

Hypothesis Choose one of the following There is a stronger correlation between hand grip strength and body mass. Or There is a stronger correlation between hand grip strength and age.

Aspect 1: Raw Data (quantitative data) Raw (Unmodified) data is data that you collect in your experiment using various instruments/ tools. Presented in an easy to read table. Has a specific title (This table shows the effect of ….) Each column heading has proper units (metric units) Measures of uncertainty of all tools used (+/-1mm) Smallest unit of possible measurement of each tool) Consistent and correct number of decimals for each measurement. Decimal points are aligned in the data table (neatness counts) If data was pooled make sure you label each set of data.

Observations: Qualitative data Observations that help interpretation of data. Can be a paragraph, general information. (location, temp…) Or listed below each data table. (Information gathered in a questionnaire) more specific. Participant 1: left hand injury Participant 2 : HS athlete: wrestler Participant 3: Non-athlete Drawing are considered qualitative observations. Must be labeled, scale.

Aspect 2: Processing Raw Data Statistical numbers. Mean (average) Percent Standard Deviation (amount of variation around a mean) correlation coefficient (r-value) relationship between two variables. Co-efficient of Determination (r 2 – value) is a measure of how well a statistical model is likely to predict future outcomes. Explain what each calculation is and does for your experiment.

Aspect 3: Presenting Processed Data Show an example calculation for each statistic you calculate. Round at the end of calculations Be neat and clear, proper metric units. Number of decimal places is only as accurate as the instruments you use. Data tables are presented as in aspect 1. Graphs must be used. (correct type: usually a line graph) Labels, scales, title, proper units must all be used. Plot averages, error bars, regression line (line of best fit)

Mean or average, of a group of values describes a middle point, or central tendency, about which data points vary. The mean is a way of summarizing a group of data and stating a best guess at what the true value of the dependent variable.

Error bars are a graphical representation of the variability of data. The knowledge that any individual measurement you make in a lab will lack perfect precision often leads a researcher to choose to take multiple measurements for the independent variable. Though not one of these measurements are likely to be more precise than any other, this group of values, it is hoped, will cluster about the true value you are trying to measure. This distribution of data values is often represented by showing a single data point, representing the mean value of the data, and error bars to represent the overall distribution of the data.

Error Bars

The error bars shown in a line graph represent a description of how confident you are that the mean represents the true value. The more the original data values range above and below the mean, the wider the error bars and less confident you are in a particular value.

Error Bars Why can’t bar ‘C’ be trusted? Error bar is too wide, measured data must of covered a wide range of numbers. All the other bars have a narrow error bar which means the measured values were closer in value, as a result they are more reliable.

Adding error bars in excel On the Format menu, click Selected Data Series. On the X Error Bars tab or the Y Error Bars tab, select the options you want.

Standard Deviation is a simple measure of the variability or dispersion of a data set.dispersion A low standard deviation indicates that the data points tend to be very close to the same value (the mean),mean while high standard deviation indicates that the data are “spread out” over a large range of values.

Standard Deviation For example, the average height for adult men in the United States is about 70 inches, with a standard deviation of around 3 inches. This means that most men (about 68%, assuming a normal distribution) have a height within 3 inches of the mean (67 inches – 73 inches), normal distribution while almost all men (about 95%) have a height within 6 inches of the mean (64 inches – 76 inches).

Standard Deviation If the standard deviation were zero, then all men would be exactly 70 inches high. If the standard deviation were 20 inches, then men would have much more variable heights, with a typical range of about 50 to 90 inches.

Statistic standard deviation is used to summarize the spread of values around the mean, and that within a normal distribution approximately 68% and 95% of the values fall within plus or minus one or two standard deviations respectively.

Standard Deviation A small standard deviation indicates that the data is clustered closely around the mean value. Conversely, a large standard deviation indicates a wider spread around the mean.

Calculate SD Excel will calculate standard deviation. Textbook pages

Correlation Coefficient (r-value) (Pearson product-moment) correlation coefficient (r) is the correlation between two variables (X and Y) This calculation provides a measure of the linear relationship between the two variables. Does X and Y increase or decrease together or is their relationship due to random chance. The correlation coefficient will be a value between and The closer the number is to 0 the less likely there is a linear relationship with a value of 0 is there is no linear relationship between X and Y.

Correlation Coefficient (r-value) The closer the number is to 1 the more likely there is a linear relationship between X and Y with a value of 1.0 indicating a perfect linear relationship. The sign (+ or -) indicates the direction of the relationship. A plus (+) sign tells you that as X increase so does Y. A minus (-) sign tells you as X increases, Y decreases or as X decrease, Y increases. (direct or inverse relationships)

Coefficient of determination (r 2 -value) Helps determine (in percentage) how much the variation of Y is based on the variation of X, or is it a relationship based on chance. Is the variation in Y (hand strength) related to the linear relationship between X (age or body mass) and Y (hand strength). is a measure of how well a statistical model is likely to predict future outcomes.

r 2 -value Example “If your r 2 = 0.850, which means that 85% of the total variation in y can be explained by the linear relationship between X and Y (as described by the regression equation). The other 15% of the total amount of variation in Y remains unexplained.”