CS计算机代考程序代写 —


title: “STA304 – Fall 2021”
author: “[ADD YOUR NAME HERE – STUDENT NUMBER]”
subtitle: Assignment 1
output:
pdf_document: default

“`{r, include=FALSE}
knitr::opts_chunk$set(warning = FALSE, message = FALSE)
library(openintro)
“`

# Part 1

### Goal

### Procedure

” brackets.>

### Showcasing the survey.

\newpage

# Part 2

## Data

“`{r, include = FALSE}

# Here you can load in (or simulate) and clean the data (you may need to do the cleaning in a separate R script – this is up to you).

# You may need additional chunks, in case you want to include some of the cleaning output.

“`

“`{r, include=FALSE}

# Use this to calculate some summary measures.

“`

“`{r, echo = TRUE}

# Use this to create some plots.

“`

All analysis for this report was programmed using `R version 4.0.2`.

## Methods

$$ include.your.mathematical.model.here.if.you.have.some.math.to.show $$

I will invoke a non-parametric bootstrap [2] to derive the 95\% confidence interval (CI) for the mean age of students in STA304.

## Results

“`{r, include = FALSE}

# Here you can run a your HT/CIs.

# Here you can derive the CIs of interest.

“`

## Bibliography

1. Grolemund, G. (2014, July 16) *Introduction to R Markdown*. RStudio. [https://rmarkdown.rstudio.com/articles_intro.html](https://rmarkdown.rstudio.com/articles_intro.html). (Last Accessed: May 5, 2021)

2. Dekking, F. M., et al. (2005) *A Modern Introduction to Probability and Statistics: Understanding why and how.* Springer Science & Business Media.

3. Allaire, J.J., et. el. *References: Introduction to R Markdown*. RStudio. [https://rmarkdown.rstudio.com/docs/](https://rmarkdown.rstudio.com/docs/). (Last Accessed: May 5, 2021)

\newpage

## Appendix

Here is a glimpse of the data set simulated/surveyed:

“`{r, echo = FALSE}

# glimpse(my_data)

“`