pedquant

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pedquant (Public Economic Data and QUANTitative analysis) provides an interface to access public economic and financial data for economic research and quantitative analysis. The functions are grouped into three main categories,

The functions in this package are designed to write minimum codes for some common tasks in quantitative analysis process. Since the parameters to get data can be interactively specify, it’s very easy to start. The loaded data have been carefully cleansed and provided in a unified format. More public data sources are still under cleansing and developing.

pedquant package has advantages on multiple aspects, such as the format of loaded data is a list of data frames, which can be easily manipulated in data.table or tidyverse packages; high performance on speed by use data.table and TTR; and modern graphics by using ggplot2. At this moment, pedquant can only handle EOD (end of date) data. Similar works including tidyquant or quantmod, which are much mature for financial analysis.

Installation

install.packages("pedquant")
devtools::install_github("shichenxie/pedquant")

Example

The following examples show you how to import data and create charts.

library(pedquant)
#> Registered S3 method overwritten by 'xts':
#>   method     from
#>   as.zoo.xts zoo
## import eocnomic data
dat1 = ed_fred('GDPCA')
#> 1/1 GDPCA
dat2 = ed_nbs(geo_type='nation', freq='quarterly', symbol='A010101')

## import market data
FAAG = md_stock(c('FB', 'AMZN', 'AAPL', 'GOOG'), date_range = 'max') # from yahoo
#> 1/4 FB
#> 2/4 AMZN
#> 3/4 AAPL
#> 4/4 GOOG
INDX = md_stock(c('^000001','^399001'), date_range = 'max', source = '163')
#> 1/2 ^000001
#> 2/2 ^399001

# candlestick chart with technical indicators
pq_plot(INDX$`^000001`, chart_type = 'candle', date_range = '1y', addti = list(
    sma = list(n=50), macd=list()
))

#> $`000001.SS`
#> TableGrob (2 x 1) "arrange": 2 grobs
#>    z     cells    name           grob
#> p0 1 (1-1,1-1) arrange gtable[layout]
#> p1 2 (2-2,1-1) arrange gtable[layout]

# comparing prices
pq_plot(FAAG, multi_series = list(nrow=2, scales = 'free_y'), date_range = '3y')
#> $multi_series

Issues and Contributions

This package still on the developing stage. If you have any issue when using this package, please update to the latest version from github. If the issue still exists, report it at github page. Contributions in any forms to this project are welcome.