@@ -20,11 +20,11 @@ In this lecture we review some empirical aspects of business cycles.
2020
2121Business cycles are fluctuations in economic activity over time.
2222
23- The include expansions (also called booms) and contractions (also called recessions).
23+ These include expansions (also called booms) and contractions (also called recessions).
2424
2525For our study, we will use economic indicators from the [ World Bank] ( https://documents.worldbank.org/en/publication/documents-reports/api ) and [ FRED] ( https://fred.stlouisfed.org/ ) .
2626
27- In addition to those installed by Anaconda, this lecture requires
27+ In addition to the packages already installed by Anaconda, this lecture requires
2828
2929``` {code-cell} ipython3
3030:tags: [hide-output]
@@ -50,7 +50,7 @@ Here's some minor code to help with colors in our plots.
5050``` {code-cell} ipython3
5151:tags: [hide-input]
5252
53- # Set Graphical Parameters
53+ # Set graphical parameters
5454cycler = plt.cycler(linestyle=['-', '-.', '--', ':'],
5555 color=['#377eb8', '#ff7f00', '#4daf4a', '#ff334f'])
5656plt.rc('axes', prop_cycle=cycler)
@@ -59,12 +59,12 @@ plt.rc('axes', prop_cycle=cycler)
5959
6060## Data acquisition
6161
62- We will use ` wbgapi ` and ` pandas_datareader ` to retrieve data.
62+ We will use the World Bank's data API ` wbgapi ` and ` pandas_datareader ` to retrieve data.
6363
6464We can use ` wb.series.info ` with the argument ` q ` to query available data from
6565the [ World Bank] ( https://www.worldbank.org/en/home ) .
6666
67- For example, let's retrieve the ID to query GDP growth data.
67+ For example, let's retrieve the GDP growth data ID to query GDP growth data.
6868
6969``` {code-cell} ipython3
7070wb.series.info(q='GDP growth')
@@ -81,7 +81,7 @@ gdp_growth
8181```
8282
8383
84- We can the metadata to learn more about the series (click to expand).
84+ We can look at the series' metadata to learn more about the series (click to expand).
8585
8686``` {code-cell} ipython3
8787:tags: [hide-output]
@@ -155,7 +155,7 @@ def plot_series(data, country, ylabel,
155155
156156 ax.plot(data.loc[country], label=country, **g_params)
157157
158- # Highlight Recessions
158+ # Highlight recessions
159159 ax.axvspan(1973, 1975, **b_params)
160160 ax.axvspan(1990, 1992, **b_params)
161161 ax.axvspan(2007, 2009, **b_params)
@@ -248,7 +248,7 @@ Now let's consider Japan, which experienced rapid growth in the 1960s and
2482481970s, followed by slowed expansion in the past two decades.
249249
250250Major dips in the growth rate coincided with the Oil Crisis of the 1970s, the
251- GFC and the Covid-19 pandemic.
251+ Global Financial Crisis ( GFC) and the Covid-19 pandemic.
252252
253253``` {code-cell} ipython3
254254---
@@ -311,7 +311,7 @@ plt.show()
311311Notice that Argentina has experienced far more volatile cycles than
312312the economies examined above.
313313
314- At the same time, growth of Argentina did not fall during the two developed
314+ At the same time, Argentina's growth rate did not fall during the two developed
315315economy recessions in the 1970s and 1990s.
316316
317317
@@ -413,12 +413,12 @@ The labor market recovered at an unprecedented rate after the shock in 2020-2021
413413In our {ref}` previous discussion<gdp_growth> ` , we found that developed economies have had
414414relatively synchronized periods of recession.
415415
416- At the same time, this synchronization does not appear in Argentina until the 2000s.
416+ At the same time, this synchronization did not appear in Argentina until the 2000s.
417417
418418Let's examine this trend further.
419419
420420With slight modifications, we can use our previous function to draw a plot
421- that includes many countries
421+ that includes multiple countries.
422422
423423``` {code-cell} ipython3
424424---
@@ -466,7 +466,7 @@ def plot_comparison(data, countries,
466466 for country in countries:
467467 ax.plot(data.loc[country], label=country, **g_params)
468468
469- # Highlight Recessions
469+ # Highlight recessions
470470 ax.axvspan(1973, 1975, **b_params)
471471 ax.axvspan(1990, 1992, **b_params)
472472 ax.axvspan(2007, 2009, **b_params)
@@ -513,7 +513,7 @@ gdp_growth.columns = gdp_growth.columns.str.replace('YR', '').astype(int)
513513
514514```
515515
516- We use the United Kingdom, United States, Germany, and Japan as examples of developed economies
516+ We use the United Kingdom, United States, Germany, and Japan as examples of developed economies.
517517
518518``` {code-cell} ipython3
519519---
@@ -534,7 +534,7 @@ plot_comparison(gdp_growth.loc[countries, 1962:],
534534plt.show()
535535```
536536
537- We choose Brazil, China, Argentina, and Mexico as representative developing economies
537+ We choose Brazil, China, Argentina, and Mexico as representative developing economies.
538538
539539``` {code-cell} ipython3
540540---
@@ -561,14 +561,14 @@ business cycles are becoming more synchronized in 21st-century recessions.
561561However, emerging and less developed economies often experience more volatile
562562changes throughout the economic cycles.
563563
564- Despite of the synchronization in GDP growth, the experience of individual countries during
564+ Despite the synchronization in GDP growth, the experience of individual countries during
565565the recession often differs.
566566
567- We use unemployment rate and the recovery of labor market conditions
567+ We use the unemployment rate and the recovery of labor market conditions
568568as another example.
569569
570570Here we compare the unemployment rate of the United States,
571- United Kingdom, Japan, and France
571+ the United Kingdom, Japan, and France.
572572
573573``` {code-cell} ipython3
574574---
@@ -597,7 +597,7 @@ plt.show()
597597We see that France, with its strong labor unions, typically experiences
598598relatively slow labor market recoveries after negative shocks.
599599
600- We also notice that, Japan has a history of very low and stable unemployment rates.
600+ We also notice that Japan has a history of very low and stable unemployment rates.
601601
602602
603603## Leading indicators and correlated factors
@@ -684,19 +684,18 @@ plt.show()
684684
685685We see that
686686
687- * consumer sentiment often remains high during during expansion and
688- drops before a recession .
687+ * consumer sentiment often remains high during expansions and
688+ drops before recessions .
689689* there is a clear negative correlation between consumer sentiment and the CPI.
690690
691691When the price of consumer commodities rises, consumer confidence diminishes.
692692
693- This trend is more significant in the during [ stagflation] ( https://en.wikipedia.org/wiki/Stagflation ) .
693+ This trend is more significant during [ stagflation] ( https://en.wikipedia.org/wiki/Stagflation ) .
694694
695695
696696
697697### Production
698698
699-
700699Real industrial output is highly correlated with recessions in the economy.
701700
702701However, it is not a leading indicator, as the peak of contraction in production
@@ -751,7 +750,7 @@ activity and gloomy expectations for the future.
751750One example is domestic credit to the private sector by banks in the UK.
752751
753752The following graph shows the domestic credit to the private sector as a
754- percentage of GDP by banks from 1970 to 2022 in the UK
753+ percentage of GDP by banks from 1970 to 2022 in the UK.
755754
756755``` {code-cell} ipython3
757756---
@@ -777,7 +776,5 @@ ax = plot_series(private_credit, countries,
777776plt.show()
778777```
779778
780-
781- Note that the credit rises during economic expansion
779+ Note that the credit rises during economic expansions
782780and stagnates or even contracts after recessions.
783-
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