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4 changes: 4 additions & 0 deletions .gitignore
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.Rproj.user
.Rhistory
.RData
.Ruserdata
41 changes: 25 additions & 16 deletions Class 7 Instructions.Rmd
Original file line number Diff line number Diff line change
Expand Up @@ -11,14 +11,14 @@ date: "February 13, 2016"
We will use two packages: tidyr and dplyr
```{r}
#Insall packages
install.packages("tidyr", "dplyr")
#install.packages("tidyr", "dplyr")
#Load packages
library(tidyr, dplyr)
#library(tidyr, dplyr)
```

##Upload wide format instructor data (instructor_activity_wide.csv)
```{r}
data_wide <- read.table("~/Documents/NYU/EDCT2550/Assignments/Assignment 3/instructor_activity_wide.csv", sep = ",", header = TRUE)
data_wide <- read.table("~/Desktop/HUDK class/Class 7/instructor_activity_wide.csv", sep = ",", header = TRUE)

#Now view the data you have uploaded and notice how its structure: each variable is a date and each row is a type of measure.
View(data_wide)
Expand All @@ -38,11 +38,11 @@ The gather command requires the following input arguments:
- ...: Names of source columns that contain values

```{r}
data_long <- gather(data_wide, date, variables)
data_long_instructor <- gather(data_wide, date, variables)
#Rename the variables so we don't get confused about what is what!
names(data_long) <- c("variables", "date", "measure")
names(data_long_instructor) <- c("variables", "date", "measure")
#Take a look at your new data, looks weird huh?
View(data_long)
View(data_long_instructor)
```
##Now convert this long format into separate columns using the "spread" function to separate by the type of measure

Expand All @@ -53,13 +53,16 @@ The spread function requires the following input:
- value: Name of column containing values

```{r}
instructor_data <- spread(data_long, variables, measure)
instructor_data <- spread(data_long_instructor, variables, measure)
```

##Now we have a workable instructor data set!The next step is to create a workable student data set. Upload the data "student_activity.csv". View your file once you have uploaded it and then draw on a piece of paper the structure that you want before you attempt to code it. Write the code you use in the chunk below. (Hint: you can do it in one step)

```{r}

data_long_student <- read.table("~/Desktop/HUDK class/Class 7/student_activity.csv", sep = ",", header = TRUE)
View(data_long_student)
data_wide_student <- spread(data_long_student, variable,measure)
View(data_wide_student)
```

##Now that you have workable student data set, subset it to create a data set that only includes data from the second class.
Expand All @@ -69,13 +72,13 @@ To do this we will use the dplyr package (We will need to call dplyr in the comm
Notice that the way we subset is with a logical rule, in this case date == 20160204. In R, when we want to say that something "equals" something else we need to use a double equals sign "==". (A single equals sign means the same as <-).

```{r}
student_data_2 <- dplyr::filter(student_data, date == 20160204)
student_data_2 <- dplyr::filter(data_wide_student, date == 20160204)
```

Now subset the student_activity data frame to create a data frame that only includes students who have sat at table 4. Write your code in the following chunk:

```{r}

student_data_table4 <- dplyr::filter(data_wide_student, table == 4)
```

##Make a new variable
Expand All @@ -89,7 +92,8 @@ instructor_data <- dplyr::mutate(instructor_data, total_sleep = s_deep + s_light
Now, refering to the cheat sheet, create a data frame called "instructor_sleep" that contains ONLY the total_sleep variable. Write your code in the following code chunk:

```{r}

instructor_sleep <- dplyr::select(instructor_data,total_sleep)
View(instructor_sleep)
```

Now, we can combine several commands together to create a new variable that contains a grouping. The following code creates a weekly grouping variable called "week" in the instructor data set:
Expand All @@ -100,38 +104,43 @@ instructor_data <- dplyr::mutate(instructor_data, week = dplyr::ntile(date, 3))

Create the same variables for the student data frame, write your code in the code chunk below:
```{r}

data_wide_student <- dplyr::mutate(data_wide_student, week = dplyr::ntile(date, 3))
```

##Sumaraizing
Next we will summarize the student data. First we can simply take an average of one of our student variables such as motivation:

```{r}
student_data %>% dplyr::summarise(mean(motivation))
data_wide_student %>% dplyr::summarise(mean(motivation))

#That isn't super interesting, so let's break it down by week:

student_data %>% dplyr::group_by(date) %>% dplyr::summarise(mean(motivation))
data_wide_student %>% dplyr::group_by(date) %>% dplyr::summarise(mean(motivation))
```

Create two new data sets using this method. One that sumarizes average motivation for students for each week (student_week) and another than sumarizes "m_active_time" for the instructor per week (instructor_week). Write your code in the following chunk:

```{r}

student_week <- data_wide_student %>% dplyr::group_by(week) %>% dplyr::summarise(mean(motivation))
instructor_week <- instructor_data %>% dplyr::group_by(week) %>% dplyr::summarise(mean(m_active_time))
```

##Merging
Now we will merge these two data frames using dplyr.

```{r}
merge <- dplyr::full_join(instructor_week, student_week, "week")
colnames(merge) <- c("week","active","motivation")

```

##Visualize
Visualize the relationship between these two variables (mean motivation and mean instructor activity) with the "plot" command and then run a Pearson correlation test (hint: cor.test()). Write the code for the these commands below:

```{r}

View(merge)
plot(merge$active,merge$motivation)
cor.test(merge$active,merge$motivation)
```

Fnally save your markdown document and your plot to this folder and comit, push and pull your repo to submit.
Binary file added Rplot.png
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