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Add NBER recession bars to Matplotlib axes for time series plots
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"""MIT License | |
Copyright (c) 2019-2021 Harry Posner | |
Permission is hereby granted, free of charge, to any person obtaining a copy | |
of this software and associated documentation files (the "Software"), to deal | |
in the Software without restriction, including without limitation the rights | |
to use, copy, modify, merge, publish, distribute, sublicense, and/or sell | |
copies of the Software, and to permit persons to whom the Software is | |
furnished to do so, subject to the following conditions: | |
The above copyright notice and this permission notice shall be included in all | |
copies or substantial portions of the Software. | |
THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR | |
IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, | |
FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE | |
AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER | |
LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, | |
OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE | |
SOFTWARE. | |
""" | |
import pandas as pd | |
# See https://www.nber.org/cycles for the most up-to-date business cycle dates | |
DATES = (pd.DataFrame([ | |
# PEAK , TROUGH | |
("" , "1854-12"), | |
("1857-06", "1858-12"), | |
("1860-10", "1861-06"), | |
("1865-04", "1867-12"), | |
("1869-06", "1870-12"), | |
("1873-10", "1879-03"), | |
("1882-03", "1885-05"), | |
("1887-03", "1888-04"), | |
("1890-07", "1891-05"), | |
("1893-01", "1894-06"), | |
("1895-12", "1897-06"), | |
("1899-06", "1900-12"), | |
("1902-09", "1904-08"), | |
("1907-05", "1908-06"), | |
("1910-01", "1912-01"), | |
("1913-01", "1914-12"), | |
("1918-08", "1919-03"), | |
("1920-01", "1921-07"), | |
("1923-05", "1924-07"), | |
("1926-10", "1927-11"), | |
("1929-08", "1933-03"), | |
("1937-05", "1938-06"), | |
("1945-02", "1945-10"), | |
("1948-11", "1949-10"), | |
("1953-07", "1954-05"), | |
("1957-08", "1958-04"), | |
("1960-04", "1961-02"), | |
("1969-12", "1970-11"), | |
("1973-11", "1975-03"), | |
("1980-01", "1980-07"), | |
("1981-07", "1982-11"), | |
("1990-07", "1991-03"), | |
("2001-03", "2001-11"), | |
("2007-12", "2009-06"), | |
("2020-02", "2020-04"), | |
]) | |
.apply(pd.to_datetime) | |
.rename(columns={0: "Peak month", 1: "Trough month"}) | |
) | |
def add_recession_bars(ax, | |
date_bounds=None, | |
method="trough", | |
caption=False): | |
"""Add recession bars to a Matplotlib axes with datetime x-axis | |
Parameters | |
---------- | |
ax : Matplotlib axes | |
The axes to which to add recession bars | |
date_bounds : {iterable, None}, default None | |
Iterable of length 2, indicating start and end dates for recession bars. | |
Can use any format parseable by pd.to_datetime. If None, works from | |
existing bounds of x-axis. | |
method : {"trough", "midpoint", "peak"}, default "trough" | |
Method for choosing exact start and end of recessionary period. | |
Equivalent to FRED series USREC, USRECM, and USRECP respectively. | |
caption : boolean, default False | |
Add caption to axes' parent figure reading "Shaded areas indicate U.S. | |
recessions" | |
Returns | |
------- | |
ax : The original axes passed to the function | |
""" | |
dates = DATES + {"trough": pd.DateOffset(months=1), | |
"midpoint": pd.DateOffset(days=14), | |
"peak": pd.DateOffset(0)}[method] | |
if pd.isnull(dates["Trough month"].iloc[-1]): | |
# If we're currently in a recession, shade right up to now | |
dates["Trough month"].iloc[-1] = pd.to_datetime("today").floor("D") | |
if date_bounds is not None: | |
d_start, d_end = map(pd.to_datetime, date_bounds) | |
else: | |
d_start, d_end = (pd.Timestamp.fromordinal(int(x)) for x in ax.get_xlim()) | |
dates = dates[(dates["Trough month"] > d_start) & | |
(dates["Peak month"] < d_end)] | |
if dates["Peak month"].iloc[0] < d_start: | |
dates["Peak month"].iloc[0] = d_start | |
if dates["Trough month"].iloc[-1] > d_end: | |
dates["Trough month"].iloc[-1] = d_end | |
y1, y2 = ax.get_ylim() | |
for row in dates.iterrows(): | |
x = row[1] | |
ax.fill_between(x.values, y1=y1, y2=y2, color="lightgrey") | |
if caption: | |
(ax | |
.get_figure() | |
.text(0.01, 0.01, "Shaded areas indicate U.S. recessions") | |
) | |
return ax |
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