Prior to completing this week’s discussion, you must have SPSS rented and downlo

Prior to completing this week’s discussion, you must have SPSS rented and downlo

Prior to completing this week’s discussion, you must have SPSS rented and downloaded. You must also have the GSS dataset downloaded from the SPSS & GSS Overview and saved to your computer. You will first open SPSS and then open the GSS dataset within SPSS. (See Intro to SPSS.)
You are now going to create and post a frequency table, chart, and descriiptives table (central tendency/dispersion) of each of your variables.
Complete the following steps:
Post a brief explanation of your topic. Include your research question and for each variable – the name, survey question or descriiption, answer categories (yes/no, strongly agree, disagree, etc.), and level of measurement (nominal, ordinal, or interval/ratio)
Include a frequency table for each of your variables. Explain your outputs in no more than 5 sentences for each variable. Cite numbers in the outputs to support your conclusion. When you cite %, use the % reported in the “valid percent” column.
Create a chart for each variable, which is a graphic representation of your data. The type of chart (pie, bar, or histogram) is based on a variable’s level of measurement. Explain your outputs for each variable. It is OK if your explanation is similar to (but not the same as) the frequency table interpretation since a chart is a different data presentation on the SAME variable. Cite numbers in the outputs to support your conclusion.
Describe the measures of central tendency (mean, median, mode) and dispersion (variance, standard deviation) for each of your variables. Based on what you have learned in the readings and lessons this week, identify the best measures for each variable and explain what they tell us. What do these measures summarize for us about the variable’s data?
Copy all of the frequency tables and charts into the discussion window or into a document (PDF, MS Word) and attach to discussion. If your table/chart does not fit to the page, choose “copy special” and then “images” or take a screen shot of the table/chart to copy/past into the window.

Descriiptive Statistics Let’s begin by testing your knowledge of descriiptive st

Descriiptive Statistics
Let’s begin by testing your knowledge of descriiptive st

Descriiptive Statistics
Let’s begin by testing your knowledge of descriiptive statistics. Below is an example of a discrete random variable, i.e., family size. The attributes (values) of the variables are the number of persons in the family.
Family Size Values
1
2
3
4
5
6
7
8 or more
You draw a sample of 50 families from Alexandria, LA, and observe family size. What are the attributes (possible values) of family size?
When you collect data on your variables, you want to find ways to present your findings. Descriiptive, or summary, statistics help you present a snapshot of how the values of the variable are distributed in your sample. This is different from the use of inferential statistics in which you express your degree of confidence in how well the data you collected using a sample represents the whole population from which the sample was taken.
For now, let’s review some of the ways you can describe your data.
You ask family 1 how many members are in the family, so you designate the value for this family (x1), which is the first data point in the data set, or value of 2.
You proceed to ask family 2 (x2); for the second family, x2 = 9. You continue to family 50 = x50.
What can you tell by looking at the raw data alone? Actually, very little since it is hard to detect any patterns in a list of 50 raw data entries.
You would list the possible values of the variable “family size” in the first column. In the second column, you would list the number of families of that size. In the third column, you would report the percentage of families of that size. A percentage is calculated by dividing the number of families by the sample size of 50 and multiplying that result by 100%.
Here are the frequency and percentage distributions for the data on family size. Note the construction of the table so that all the information is clear to your audience. The numbers in your frequency column should add up to the sample size. The percentages in your percentage column should add up to 100.
Family Size
Frequency
Percentage
1
5
10.0
2
21
42.0
3
12
24.0
4
4
8.0
5
3
6.0
6
2
4.0
7
1
2.0
8+
2
4.0
Total
50
100.0
If you notice, you can now get a much better sense of how family size varies in the sample and which are the most prominent values. Most families in the sample have 2 or 3 members.
Summary Measures With Single Statistics
How can we summarize the data with single statistics?
Averages, or measures of central tendency, include mode, median, and mean.
Mode is the value category that appears most often (i.e., is the most frequently observed).
Median is the middle value in the distribution, such that 50% of the data points are above and 50% are below.
Must rank order data from lowest to highest, or vice versa
Find the median location with formula, (n+1)/2
Count to the median; if it is between 2 values, take the average
Mean is the arithmetic average, sum of all the observations divided by the number of observations.
Note: When using the frequency distribution, we made the judgment call to use “8” as the final category. If you used all 50 data points from the raw data, you would note that there is a family size of 9. Using the raw data would give us a more accurate mean, and it would be slightly higher, or 2.88.
The mean uses all the data in the data set, whereas the mode and median only use the most frequently observed value, or the middle value. Therefore, the mean is influenced by extreme high or low values. In this case, the few families of size 8 and 9 pulled the mean higher, actually closer to 3 as the “average” family size.
In summary, mode = 2; median = 2; mean = 2.88. The distribution of family size is skewed to the right because of some high values of the variable. In such cases, the median would be a better measure of central tendency to report to your audience.
Measures of Variation
We can also compute measures of variation. Without doing the actual computations, can you define and interpret what the above would tell you about the variable “family size”?
Range: The range would tell you how the observed values are spread out by subtracting the lowest value observed from the highest.
Interquartile range: Because the range is influenced by outliers (i.e., very high or very low values), the interquartile range is often used instead. This statistic uses the middle 50% of the data values, eliminating any outliers. This gives us a better sense of how the values cluster around the median.
Variance: The variance tells us how the values are clustered about the mean. This is not always an easy statistic to interpret, but it is valuable in many advanced statistical computations.
Standard deviation: The standard deviation is the square root of the variance, and a bit more intuitive to interpret. Simply, you might think about the standard deviation as the average distance of the observations from the computed mean of the distribution. Like the mean, it is influenced by very high and very low outliers.
Practice Question: Using Mean and Standard Deviations
Suppose you are the director of an agency and you want to promote one of your front line staff to supervisor. As a basis for your decision, you look at the mean number of days each staff person takes to get a client needed treatment.
Worker A: Mean = 22.4, s= 15.9
Worker B: Mean = 18.7, s = 36.5
Worker C: Mean = 24.6, s = 19.7
Whom would you select on the basis of this observation, and why?
How are summary statistics used in decision making? We often use means and standard deviations in progress reports. For example, at the end of this semester, you will all fill out a student evaluation of teaching for the instructor. The evaluative items are represented as an interval scale so that means and standard deviations of all the scores can be computed and given to the instructor as feedback. The means on each item tell the instructor how students, on average, rated him/her on that item. The standard deviations tell the instructor how much variability there was among students on that item.
In this example, the director has summarized some important productivity data. At first glance at the means, you might say Worker B gets to his/her clients much quicker than the others, so he/she is the logical person to promote. However, the standard deviations are also revealing. Worker B’s standard deviation is very high compared to the other two workers. This might mean there were one or two cases that he/she got to very, very quickly and those pulled his/her average lower. In other words, a couple of outlier cases make Worker B’s performance, on average, look better. But that variation is captured in the higher standard deviation. Worker A’s and C’s cases seem to cluster closer to their averages. Worker A has the second lowest average, and also the lowest variation. So he/she would be the better choice to promote if you are only considering these quantitative data.

Research the employment opportunities at a large business closest to you by visiting their employment website.

Research the employment opportunities at a large business closest to you by visiting their employment website.

Categorizing Positions
Please ensure you make assignment decisions using the project guidelines in “Data Projects;” as well as the below items.
Research the employment opportunities at a large business (such as a hospital, college, etc.) closest to you by visiting their employment website. Create a frequency table of how many positions are available in different categories such as Finance, Office/Clerical, Research, Security, and, Maintenance. If the chosen business does not have at least 20 open positions, find another employer. Respond to all questions below, (do not forget to provide the questions with your response).
included screenshot to see how it is suppose to be
Category Frequency Relative Frequency Cumulative Frequency
1.
2.
3.
4.
5.
What employer website did you visit?
Complete the frequency table summarizing the number of positions in each category.
Using the data in the table, make a statement about what each relative frequency tells you about the data.
Create a bar chart for the frequency table in Question 2 only highlighting the category and frequency.
Create a pie chart for a category and relative frequency. You may need to create a frequency table in Excel to create the pie chart and insert it into your Word Document.

You are a city manager for a mid-size city that is anticipating increases in population and auto traffic as new industries move into the downtown area.

You are a city manager for a mid-size city that is anticipating increases in population and auto traffic as new industries move into the downtown area.

As a city manager for a mid-size city, you must be able to examine patterns and trends to highlight organizational performance and support organizational strategic planning. One of the ways that is done is through analyzing the statistics. Still, just presenting the numbers is not always the most efficient way to present your analysis.
Scenario
You are a city manager for a mid-size city that is anticipating increases in population and auto traffic as new industries move into the downtown area. Parking spaces are already hard to find and traffic congestion can be problematic from commuters and events like concerts and sports. Before considering adding additional parking, you think it is possible to use existing parking more effectively through a smart parking app that identifies parking space availability in different parking lots throughout the city in real time.
In this assessment, you will demonstrate your skill in information visualization when you present your recommendations to the City Council members who are responsible for deciding whether the city invests in resources to set in motion the smart parking space app.
Preparation
Review the parking space usage file.
Select any 2 parking lots. For each one, review the scatter plot showing the occupancy rate at each time stamp during the week of 11/20/2022 –11/26/2022. Identify whether occupancy rates are time dependent. If so, identify the times that seem to experience the highest occupancy rates.
Research “smart cities” to provide guidance and support for your presentation.
Create a 10- to 12-slide information visualization presentation including voice-over or screencast video. Include the following in your presentation:
Outline the rationale and goals of the project.
Analyze the box plot charts showing the occupancy rates for each day of the week and interpret the results.
Analyze the box plot charts showing the occupancy rates for each parking lot and interpret the results.
Choose 2 scatter plot charts showing occupancy rate against the time of day over the course of the week and interpret the results.
Make a recommendation about continuing with the implementation of this project.
Format references according to APA guidelines.

The study of statistics can be intimidating, but it can also be rewarding. Describe at least two benefits to your life as a student by engaging in the study of statistics.

The study of statistics can be intimidating, but it can also be rewarding. Describe at least two benefits to your life as a student by engaging in the study of statistics.

Discussion question 1
The study of statistics can be intimidating, but it can also be rewarding. Describe at least two benefits to your life as a student by engaging in the study of statistics.
Requirements: Essay format; 250-300 word
Discussion question 2
Prompt: In Excel, what is a formula? Give an example using an operator. How is a function different from a formula? What are three things that are true for all formulas? Provide an example of when you would use function.
Requirements: Essay format; 250-300 words
Statistics for People Who (Think They) Hate Statistics: Using Microsoft Excel
By Salkind, Neil J.Edition : 5TH 22
Publisher : SAGE
ISBN 13 : 9781071803882
Chapter 1 and 2

The purpose of this assignment is to teach you how to use SPSS to calculate a correlation

The purpose of this assignment is to teach you how to use SPSS to calculate a correlation

Prepare
Please make sure you read chapter 7 and review the Chapter 7 Lecture Notes before attempting this assignment. You can also watch the video below related to calculating correlations ( it is not the question you will be analyzing). Please note that I interpreted the output for you below, all you have to do is compare you output to my interpretations. These interpretations will help you with your final group research paper.
Purpose
Please use the SPSS data (survey.sav) Download (survey.sav)set to complete this assignment. The purpose of this assignment is to teach you how to use SPSS to calculate a correlation. This assignment is broken down into three parts. Part 1 will teach you how to graph a correlation. Part II will teach you how to run a correlation analysis in SPSS.
Details of Example
To demonstrate the use of correlation, I will explore the interrelationships among some of the variables included in the survey.sav Download survey.savdata file. The survey was designed to explore the factors that affect respondents’ psychological adjustment and wellbeing (see the Appendix for a full description of the study). In this example, I am interested in assessing the correlation between respondents’ feelings of control and their level of perceived stress. Details of the two variables I will be using are provided below.
Example of research question: Is there a relationship between the amount of control people have over their internal states and their levels of perceived stress? Do people with high levels of perceived control experience lower levels of perceived stress?
What you need: Two variables: both continuous, or one continuous and the other dichotomous (two values).
What it does: Correlation describes the relationship between two continuous variables, in terms of both the strength of the relationship and the direction.
Procedure
From the menu at the top of the screen, click on Analyze, then select Correlate, then Bivariate.
Select your two variables and move them into the box marked Variables (e.g. Total perceived stress: tpstress, Total PCOISS: tpcoiss). If you wish you can list a whole range of variables here, not just two. In the resulting matrix, the correlation between all possible pairs of variables will be listed. This can be quite large if you list more than just a few variables.
In the Correlation Coefficients section, the Pearson box is the default option.
Click on the Options button. For Missing Values, click on the Exclude cases pairwise box. Under Options, you can also obtain means and standard deviations if you wish.
Click on Continue and then on OK (or on Paste to save to Syntax Editor).
Export your Output file to PDF format, saving the file as “Correlation Last Name Output.pdf”.
How to Read the SPSS Output
Step 1: Checking the information about the sample
The first thing to look at in the table labelled Correlations is the N (number of cases). Is this correct? If there are a lot of missing data, you need to find out why. Did you forget to tick the Exclude cases pairwise box in the missing data option? Using listwise deletion (the other option), any case with missing data on any of the variables will be removed from the analysis. This can sometimes severely restrict your N. In the above example we have 426 cases that had scores on both of the scales used in this analysis. If a case was missing information on either of these variables, it would have been excluded from the analysis
Step 2: Determining the direction of the relationship
The second thing to consider is the direction of the relationship between the variables. Is there a negative sign in front of the correlation coefficient value? This would suggest a negative (inverse) correlation between the two variables (i.e. high scores on one are associated with low scores on the other). The interpretation of this depends on the way the variables are scored. Always check with your questionnaire, and remember to take into account that for many scales some items are negatively worded and therefore are reversed before scoring. What do high values really mean? This is one of the major areas of confusion for students, so make sure you get this clear in your mind before you interpret the correlation output.
In the example given here, the Pearson correlation coefficient (–.58) and Spearman rho value (–.56) are negative, indicating a negative correlation between perceived control and stress. The more control people feel they have, the less stress they experience.
Step 3: Determining the strength of the relationship
The third thing to consider in the output is the size of the value of the correlation coefficient. This can range from –1 to 1. This value will indicate the strength of the relationship between your two variables. A correlation of 0 indicates no relationship at all, a correlation of 1 indicates a perfect positive correlation, and a value of –1 indicates a perfect negative correlation.
Step 4: Calculating the coefficient of determination
To get an idea of how much variance your two variables share, you can also calculate what is referred to as the ‘coefficient of determination’. Sounds impressive, but all you need to do is square your r value (multiply it by itself). To convert this to ‘percentage of variance’, just multiply by 100 (shift the decimal place two columns to the right).
In our example the Pearson correlation is .581, which, when squared, indicates 33.76 per cent shared variance. Perceived control helps to explain nearly 34 per cent of the variance in respondents’ scores on the Perceived Stress Scale. This is quite a respectable amount of variance explained when compared with a lot of the research conducted in the social sciences.
Step 5: Assessing the significance level
The next thing to consider is the significance level (listed as Sig. 2 tailed). This is a frequently misinterpreted area, so care should be exercised here. The level of statistical significance does not indicate how strongly the two variables are associated (this is given by r or rho), but instead it indicates how much confidence we should have in the results obtained. The significance of r or rho is strongly influenced by the size of the sample. In a small sample (e.g. n=30), you may have moderate correlations that do not reach statistical significance at the traditional p<.05 level. In large samples (N=100+), however, very small correlations (e.g. r=.2) may reach statistical significance. While you need to report statistical significance, you should focus on the strength of the relationship and the amount of shared variance (see Step 4). Presenting the Results The relationship between perceived control of internal states (as measured by the PCOISS) and perceived stress (as measured by the Perceived Stress Scale) was investigated using Pearson product-moment correlation coefficient. Preliminary analyses were performed to ensure no violation of the assumptions of normality, linearity and homoscedasticity. There was a strong, negative correlation between the two variables, r = –.58, n = 426, p < .001, with high levels of perceived control associated with lower levels of perceived stress.

PowerPoint Presentation: Submit a PowerPoint Presentation using the Module One P

PowerPoint Presentation: Submit a PowerPoint Presentation using the Module One P

PowerPoint Presentation: Submit a PowerPoint Presentation using the Module One PowerPoint Template. If references are included, they should be cited in APA format. Consult the Shapiro Library APA Style Guide for more information on citations.

Please read the requirements of each question carefully. Excel must be used to s

Please read the requirements of each question carefully. Excel must be used to s

Please read the requirements of each question carefully. Excel must be used to solve the problem. The spreadsheet required for the question has been created and needs to be filled in completely according to the requirements. Each question requires the use of an Excel Solver to solve. Please answer the question in full sentences when you have finished.

Present two different types of data, or variables, used in the health field. Exa

Present two different types of data, or variables, used in the health field. Exa

Present two different types of data, or variables, used in the health field. Examples could be blood pressure, temperature, pH, pain rating scales, pulse oximetry, % hematocrit, minute respiration, gender, age, ethnicity, etc.
Classify each of your variables as qualitative or quantitative and explain why they fall into the category that you chose.
Also, classify each of the variables as to their level of measurement–nominal, ordinal, interval or ratio–and justify your classifications.
Which type of sampling could you use to gather your data? (stratified, cluster, systematic, and convenience sampling)
Minimum of 1 scholarly source AND one appropriate resource such as the textbook, math video and/or math website
In your reference for this assignment, be sure to include both your text/class materials AND your outside reading(s).
This week we learned all about data. Think about a research study or question you may be interested in answering and explain what variables you might need to collect to answer your question. Describe and categorize those variables, and explain how you would collect your data. Provide a population of interest and how you could sample from that population.
You may also want to consider the difficulties or problems you may run into when trying to gather your data. Remember the big idea in statistics is to take a representative sample from a large population and be able to make inferences from your sample data about the whole population! However, this is not always easy as Stopher (2012) points out, “Survey sampling methodology can be defined as the science of choosing a sample that provides an acceptable compromise between sample cost and sample representativeness.”
Stopher, P. (2012). Collecting, managing, and assessing data using sample surveys. Cambridge University Press.

In this exercise, you’ll practice what you learned about completing an independe

In this exercise, you’ll practice what you learned about completing an independe

In this exercise, you’ll practice what you learned about completing an independent samples t-test. Open the assignment document for details of what’s required for your homework. Use the JASP datafile to work through the assignment. A .csv file is also provided if this is easier for you to import into JASP