Use the given code below to answer the questions.
## Load package
library(tidyverse) # for cleaning, plotting, etc
library(tidyquant) # for financial analysis
## Import data
stocks <- tq_get("AAPL", get = "stock.prices", from = "2016-01-01")
stocks
## Visualize
stocks %>%
ggplot(aes(x = date, y = close)) +
geom_line()
Hint: Insert a new code chunk below and type in the code, using the tq_get() function above. Replace the ticker symbol. Find ticker symbols from Yahoo Finance.
stocks <- tq_get("MSFT", get = "stock.prices", from = "2016-01-01")
stocks
Hint: Watch the video, “Basic Data Types”, in DataCamp: Introduction to R for Finance: Ch1 The Basics.
Examples of character data would be any characters such as survey taker names, address, favorite sports, etc. Examples of logical data would be values that read either TRUE or FALSE.
Hint: Insert a new code chunk below and type in the code, using the ggplot() function above. Revise the code so that it maps adjusted to the y-axis, instead of close.
stocks %>%
ggplot(aes(x = date, y = adjusted)) +
geom_line()
For more information on the ggplot() function, refer to Ch2 Introduction to ggplot2 in one of our e-textbooks, Data Visualization with R.
In the beginning of 2019, Microsoft began with a stock point of approximately 90. During the course of the year, the stock has continued to rise to a peak of approximately 160, where it then finished the year still at 160.
Hint: Insert a new code chunk below and type in the code, using the tq_get() function above. You may refer to the manual of the tidyquant r package. Or, simply Google the tq_get function and see examples of the function’s usage. Do this by using the tq_get() function once, not twice.
knitr::opts_chunk$set(echo = TRUE, message = FALSE, results = "markup")
stocks <- tq_get("MSFT","AMZN", get = "stock.prices", from = "2016-01-01")
stocks
## # A tibble: 1,091 x 8
## symbol date open high low close volume adjusted
## <chr> <date> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
## 1 MSFT 2016-01-04 54.3 54.8 53.4 54.8 53778000 50.4
## 2 MSFT 2016-01-05 54.9 55.4 54.5 55.0 34079700 50.6
## 3 MSFT 2016-01-06 54.3 54.4 53.6 54.0 39518900 49.7
## 4 MSFT 2016-01-07 52.7 53.5 52.1 52.2 56564900 48.0
## 5 MSFT 2016-01-08 52.4 53.3 52.2 52.3 48754000 48.1
## 6 MSFT 2016-01-11 52.5 52.8 51.5 52.3 36943800 48.1
## 7 MSFT 2016-01-12 52.8 53.1 52.1 52.8 36095500 48.5
## 8 MSFT 2016-01-13 53.8 54.1 51.3 51.6 66883600 47.5
## 9 MSFT 2016-01-14 52 53.4 51.6 53.1 52381900 48.8
## 10 MSFT 2016-01-15 51.3 52.0 50.3 51.0 71820700 46.9
## # … with 1,081 more rows
Hint: Use message, echo and results in the chunk options. Refer to the RMarkdown Reference Guide.
Hint: Use echo and results in the chunk option. Note that this question only applies to the individual code chunk of Q6.