Effect of Macroeconomic Policy Implementation on Unemployment  
in Kenya  
Peter Mwai Kinuthia  
Department of Economics, Moi University, 2025  
Received: 12 May 2025; Accepted: 16 May 2025; Published: 20 June 2025  
ABSTRACT  
Policymakers in the majority of the world's economies are concerned about unemployment rates. Numerous  
models have been created in an effort to address the issue, but none offer a definitive answer. Policymakers in  
various economies struggle with finding solutions to the unemployment problem. The purpose of this study  
was to investigate the effects of various macroeconomic policy targets on unemployment in Kenya. More  
specifically, study objective was to examine the relationship between unemployment and inflation,  
relationship between government spending growth rate and unemployment and relationship between money  
supply growth rate and unemployment. The study was informed by the ever increasing unemployment rates,  
cost of living and the inadequate attention inform of macroeconomic policies made by the policy makers to  
alleviate the economy from this problem. The study was anchored on the Phillips curve theory. The study  
adopted an explanatory research design and employed an Auto-Regressive Distributed Lag and Error  
Correction Model to analyze both short run and long run results. Study sample entailed of annual secondary  
time series data set for a period of 30 years from 1991 to 2020, sourced from KNBS, Central Bank of Kenya,  
and World Bank. Findings of diagnostic test demonstrated that there was no multicollinearity among the  
independent variables, residuals were homoscedastic, and there was no autocorrelation among the residuals.  
The results of the Shapiro-Wilk normality test showed that the study's variables were normally distributed.  
The co-integration test and ADF unit root test both showed that there existed a unit root and that the variables  
had a long-run relationship. Additionally, the model's stability over time was confirmed by the CUSUM test.  
Findings of the study were: the relationship between unemployment and inflation was positive and  
insignificant both in the short run and in the long run; government spending growth rate had a positive  
significant relationship with unemployment; Money supply growth rate had a positive significant relationship  
with unemployment. The NAIRU was also positive and insignificant. These results suggest that it is difficult  
for policy makers in Kenya to employ inflation targeting policy mechanism to control and counter  
unemployment as suggested by Phillips curve. The study recommends that when the Kenyan economy is about  
to enter a recession or starts to experience sluggish economic growth, policymakers should employ an  
expansionary government spending policy. This type of fiscal strategy involves increasing government  
spending to counteract the effects of a recession. Additionally, the government should develop expansionary  
monetary policy strategies that target a sustainable level of inflation in the economy rather than targeting  
unemployment level in the economy. This is because reducing unemployment level below the natural rate of  
unemployment would lead to more inflationary pressures in the economy.  
Keywords: Unemployment, Inflation, Government spending, Money supply, NAIRU, Kenya.  
INTRODUCTION  
According to Heffetz & Reeves (2021), the percentage of a country's non-institutionalized population aged  
eighteen and older that is unemployed, actively looking for work, and available for work is the measure that  
is used to calculate the nation's unemployment rate. If a large number of people are required to register for  
work in order to receive certain benefits but express unwillingness to work, then the unemployment rate will  
Page 5533  
rise even though the number of people actually looking for work may remain relatively unchanged. This is  
because registering for work is a prerequisite for receiving benefits. There are a number of factors that  
contribute to high unemployment rates, the most significant of which is the ongoing economic crisis that has  
an impact across the board (Choudhry,Marelli & Signorelli, 2012).  
The majority of Kenyans feel that the current rate of unemployment is unacceptable (Kamau, 2021). It causes  
personal misery for the majority of people who are unemployed as well as their families and is steadily altering  
the nature of our society in ways that are unpleasant. Our societies are witnessing an increase in the number  
of areas that are economically disadvantaged and poor. A significant number of Kenyan’s children are raised  
in households where their parents do not hold jobs. It appears that a growing proportion of persons of working  
age are becoming increasingly dependent on welfare and other benefits. At least for the past twenty years,  
Kenya's unemployment rate has been at an unacceptable level, making it perhaps the country's most significant  
economic and social challenge (Mouly & Costa, 2022).  
It is common knowledge that the four primary goals of economic policy are to achieve full employment, price  
stability, a high and sustainable rate of economic growth, and maintain equilibrium in the balance of payments.  
The primary way in which economic policy has an impact on employment is through monetary and fiscal  
policies, which, through the use of their respective tools, influence aggregate supply and demand for goods  
and services (Benazić & Rami, 2016).  
When a country slips into recession the government works to reduce unemployment by boosting economic  
growth. The primary methods used are inflation targeting, expansionary monetary and fiscal policies. During  
an expansionary policy, the Federal Reserve eases monetary policy by reducing the federal funds rate and  
buying U.S. Treasury and mortgage-backed securities on the open market, which increases the supply of  
money in the economy. Collectively, these tactics are designed to reduce interest rates across the yield curve,  
which spurs businesses to borrow money to buy capital equipment and hire more workers. Low-interest rates  
also tend to boost the housing market, spur auto sales, and increase personal consumption spending. The vast  
majority of the theoretical models that were developed to cut unemployment in most economies suggest that  
the credibility-enhancing effects of the adoption of inflation targeting should cause an improvement in the  
unemployment-inflation trade-off; specifically, that reducing inflation by a given amount should occur with a  
smaller rise in unemployment (Clifton, Leon & Wong, 2001).  
According to Mitchell & Mosler, (2001), high unemployment rate not only hinders the ability of the central  
government to earn revenue but also has a tendency to dampen overall economic activity. When there are a  
lot of people looking for jobs, fewer people will pay taxes to the government. At the same time, unemployment  
results in a reduction in the number of people who have income that is available for discretionary spending on  
products and services. Reduced levels of consumer spending make it more challenging for firms to prosper  
and develop, which in turn slows the rate at which the economy grows.  
In order to maximize the impact of fiscal policy, Rendahl (2016) proposes that it is necessary to achieve a state  
of equilibrium in the dynamics of unemployment. Expansionary government expenditure boosts output and  
reduces the jobless rate in the aftermath of a shock that puts the economy in a liquidity trap. The consequences  
of present expenditure persist into the future, resulting in a lasting increase in income due to the persistence  
of fluctuations in unemployment. Because a sustained gain in income leads to increased private demand, an  
increase in government expenditure triggers a positive employment-spending cycle that has far-reaching  
implications on macroeconomic aggregates.  
LITERATURE REVIEW  
According to the findings of a study that was conducted by Epstein and Yeldan (2009), contemporary central  
banking institutions should have more room for policy maneuvering in order to strike a better balance between  
a variety of goals and instruments. In particular, the creation of new jobs, the reduction of poverty, and the  
Page 5534  
acceleration of economic growth should be included to the list of primary goals of central bank policy in  
addition to the stabilization of inflation and the economy more generally.  
A significant portion of the existing body of research on the effectiveness of Inflation Targeting has focused  
primarily on two questions: first, whether systemic risks and the accompanying volatility have been reduced  
in Inflation Targeting economies; second, whether inflation has actually come down as a response to the  
adoption of the framework itself, or whether it has come down due to a set of "exogenously welcome" factors.  
On the one hand, there is a good deal of consensus that advances in information technology have been linked  
to declines in price levels. In addition to this, there have been reports of a reduction in the effects of currency  
rate pass-through, and fluctuations in consumer prices have become less likely (Edwards, 2006). In spite of  
this, the evidence that is currently available suggests that Inflation Targeting has not resulted in inflation levels  
that are lower than the levels attained by industrial non-targeters who have opted for other monetary regimes  
(Ball and Sheridan, 2003). In addition, even while the country's monetary policy has been successful in  
lowering inflation, the anticipated increases in economic growth and employment have, for the most part, not  
been realized. According to Akyuz (2006, page 46), "the source of macroeconomic instability now is not  
instability in product markets but asset markets, and the main challenge for policy makers is not inflation, but  
unemployment and financial instability." In other words, unemployment and financial instability are the  
primary problems that policy makers face.  
De-industrialization, substantial informalization, and a subsequent worsening of the position of wage-labor  
have afflicted a large number of developing nations, leading to a worsening of income distribution and an  
increase in poverty. This has resulted in a worsening of the position of wage-labor. The advent of neoliberal  
conditionalities, which impose rapid liberalization of trade and premature deregulation of the indigenous  
financial markets, has coincided with the occurrence of many of these events. Neoliberal conditionalities have  
forced rapid liberalization of trade (Acar, Voyvoda, & Yeldan, 2018).  
Maintaining price stability is often prescribed as the proper inflation target according to its proponents;  
nevertheless, there are fewer consensuses on the meaning of this phrase and on its precise measurement. This  
is despite the fact that there is widespread support for the idea. Many practitioners simply adopt the widely  
cited definition of Alan Greenspan, the former Governor of the US Federal Reserve, which was issued at the  
meeting of the Federal Open Market Committee in July 1996 (Siekmann, 2022). Greenspan defined inflation  
targeting as "a rate of inflation that is sufficiently low that households and businesses do not have to take it  
into account in beyond inflation targeting making every day decisions." ‘The public announcement of inflation  
targets, coupled with a credible and accountable commitment on the part of government policy authorities to  
the achievement of these targets’ (Setterfi eld, 2006, p. 653).  
During the '90s, inflation targeting gained prominence as a method for guiding monetary policy. While there  
were no official inflation targets for any country prior to 1990. The United States stands out as an outlier  
because its central bank, the Federal Reserve, is tasked with achieving both price stability and full employment.  
Fearing that the Fed may try to drive unemployment below its "natural rate," its lowest sustainable level, and  
ignite rapid inflation is a major reason why some economists propose inflation targeting for the United States.  
Over the past decade, however, the natural rate theory has been discredited as a reliable basis for policy  
decisions. As a result, inflation remained low while the unemployment rate dropped two percentage points  
below estimates of the natural rate in 2000. It is debatable whether the United States should adopt an inflation-  
targeting regime, as this strategy relies heavily on the theory of the natural rate. The apparent success of  
monetary policy under the dual mandate only serves to further fuel these concerns (Thorbecke, 2004).  
According to a study by Ball, Mankiw & Nordhaus, (1999), when asked about unemployment, conventional  
economists provides a response that makes a clear distinction between what is known as "short run"  
unemployment and "long run" unemployment. The conventional view maintains that short-run variations in  
unemployment are heavily impacted by monetary policy and other factors of aggregate demand; nevertheless,  
in the long run, unemployment levels return to a natural rate, often known as the nonaccelerating-inflation rate  
Page 5535  
of unemployment (NAIRU). The NAIRU is calculated based on the frictions that exist in the labor market.  
The NAIRU is subject to fluctuate over time for a variety of microeconomic reasons, including but not limited  
to shifts in the institutions that govern the labor market. The prevailing opinion, on the other hand, is that  
aggregate demand has no effect on the NAIRU, and that as a result, demand does not play a role in the  
development of long-term unemployment trends. The authors Ball, Mankiw, and Nordhaus (1999) contend  
that monetary policy and other factors that determine aggregate demand have significant effects not just on  
long-run but also on short-run fluctuations in unemployment rates.  
The Sustainable Development Goals acknowledge the significance of fiscal policy in terms of its contribution  
to development. Specific Sustainable Development Goals (SDGs) have been established in the domain of  
development, including the elimination of poverty (SDG1) and hunger (SDG2), the reduction of inequality  
(SDG3) and education (SDG4), the achievement of gender equality (SDG5), and the enhancement of  
infrastructure (SDGs 6,7,9,11). It is customary for the private sector to play only a little role in these spheres,  
in part due to the fact that the returns on investment may be very speculative or may take a significant amount  
of time. Wagner's law describes a pattern in which public spending and tax revenue tend to rise with rising  
levels of per capita income (Wagner 1958). This indicates that the role of redistribution through taxes and  
income-related transfers is played by fiscal policy, which also plays a role in equalizing opportunity through  
in-kind spending on areas such as infrastructure, education, and health (Gaspar et.,al, 2019).  
In a study spanning March 1980 to March 2005, Alexius and Holmlund (2007) used an SVAR model and  
quarterly data on domestic output gap, unemployment, and monetary conditions index (MCI), foreign output  
gap, technology, and government deficit to examine the correlation between monetary policy and  
unemployment fluctuations in Sweden. It appears that the output gap and unemployment rate both benefit  
from monetary policy that is more accommodative to economic growth.  
Blanchard (2016) carried out research on the economy of the United States utilizing data from the 1960s in  
order to assess the reliability of the Phillips curve. He desired a fresh look at how inflation and unemployment  
were behaving in the economy of the United States. As Phillips had predicted, it was discovered that low  
unemployment had the impact of driving up inflation, while high unemployment had the effect of driving  
down inflation. This finding was consistent with Phillips's predictions (1958). To put it another way, the  
Phillips curve was in good shape and functioning well in the US economy. He also discovered that inflation  
expectations had become steadily anchored, and that the Phillips curve more closely resembled the one from  
the 1960s than the accelerationist Phillips curve from the latter time. Both of these discoveries were made by  
him. He also discovered that the slope of the Phillips curve, which showed the relationship between  
unemployment and inflation, had significantly decreased over the years. This was another discovery that he  
made. The last thing he discovered was that the standard error of the residual in connection was quite high.  
The decision-makers in charge of executing monetary policy were faced with additional obstacles as a result  
of these four conclusions.  
When the Philips curve is flat, Beaudry, Hou, and Portier (2020) state that it is possible to achieve inflation at  
a level below its target while at the same time achieving low unemployment rates through the use of aggressive  
monetary policy. This is possible in situations where the Philips curve is flat. These conclusions will be  
determined by the degree to which aggregate demand is sensitive to changes in interest rates, in addition to  
the parameters of the Phillips curve models that were utilized in the research. When it comes to the  
implementation of monetary policies in the economy, Beaudry, Hou, and Portier (2020) urge for the  
application of the "Go Big or Stay Home" idea as a guiding principle. This means that in order to ensure that  
the economy achieves sustainable rates of inflation and unemployment without being negatively impacted by  
external shocks, policymakers had to pursue bold and aggressive monetary policies to combat these issues.  
When monetary policy is seen to be ineffectual, policymakers should refrain from taking any action at all  
rather than taking incremental steps.  
Page 5536  
RESEARCH METHODOLOGY  
Research Design  
Explanatory research design was used for this study in order to determine the amount and type of the  
relationships between the variables under consideration as well as their causes and effects. With inflation,  
government spending, and the money supply as proxies, this study tried to determine the causal relationship  
between unemployment and various macroeconomic policy proxies.  
Data Type and Source  
This research study made use of a secondary type of data. Unemployment, inflation, government spending,  
and the money supply were used in data analysis. The World Bank, the Central Bank of Kenya, and the Kenya  
National Bureau of Statistics (KNBS) were consulted for the statistics. A time series technique was used, and  
the project's study period spanned from 1990 to 2020.  
Model specification  
The focus is to examine the linkage among unemployment, inflation, government spending and money supply  
in Kenya. The model is adapted from macroeconomic model stated as:  
U = f (Π, GEGR, MSGR)  
(1)  
Where:  
U = unemployment rate,  
Π = inflation rate,  
GEGR = government expenditure growth rate,  
MSGR = Money supply growth rate.  
The model specification in a stochastic form is stated as:  
U = β0 + β1Π+ β2GEGR + β3MSGR + µ  
U = unemployment rate,  
(2)  
Π = inflation rate,  
GEGR = government expenditure growth rate,  
MSGR = Money supply growth rate,  
µ = error term.  
Data Analysis Method  
The unit test of the specified model was tested using the Augmented Dickey- Fuller Unit Roots Test (ADF).  
Heteroscedasticity was tested using the Breusch-Pagan test of heteroscedasticity. The study employed the  
Variance Inflation (VIF) factor test to test whether the independent variables of the regression model are  
correlated. The Pesaran/Shin/Smith (2001) ARDL bound tests was used to determine co-integration.  
Autocorrelation was tested using the Breusch-Godfrey test of Autocorrelation. The Akaike Information  
Criterion (AIC), Final Prediction Error (FPE), Hannan-Quinn Criterion (HQIC), and Schwartz Information  
Page 5537  
Criterion (SIC) were used to determine the best lag duration of the ARDL model in this work. Parameter  
stability test of the time series model was also tested using the cumulative sum of recursive residuals (CUSUM)  
test.  
ANALYSIS AND DISCUSSION  
Descriptive statistics  
The research variables under study for the years 1991 to 2020 are shown in Table 1 raw summary descriptive  
statistics.  
Table 1: Descriptive statistics  
Variable  
Observation  
Mean  
InflationUnemployment Money supply Growth rate Government Expenditure Growth rate  
30  
30  
30  
30  
11.4  
7.07  
.7276  
6.19  
10.4  
15.827  
8.5586  
2.931  
39.021  
13.1596  
9.2567  
1.981  
51.241  
Standard deviation 9.55  
Minimum  
Maximum  
1.55  
45.98  
Source: Author, 2022  
From the table above, the mean of unemployment rate was 7.07 (standard deviation =.7276; Minimum=6.19;  
Maximum= 10.4. The gap between the minimum value and the maximum value of unemployment was  
relatively small as indicated by the difference between the minimum and the maximum values. This was also  
supported by a relatively small value of standard deviation of .7276.  
Figure 1 below shows a graphical representation of unemployment from the year 1990 to 2020. Unemployment  
rate rose gradually from the year 1990 to 2018 and rose sharply from 2018 to 2019 then dropped sharply to  
the year 2020.  
Figure 1: Unemployment trend from 1990 to 2020  
The mean of inflation rate was 11.4 (standard deviation =9.55; Minimum= 1.55; Maximum=45.98). This  
indicates that the inflation rate on average was 11.4. The deviation from the mean of inflation rate was huge  
as supported by a standard deviation of 9.55.  
Page 5538  
Figure 2 below shows the graphical representation of inflation rate from the year 1990 to 2020. The inflation  
rate has been fluctuation throughout the years between 1990 and 2020 with some years experiencing a sharp  
rise and drop while some periods having mild fluctuations. The year 1994 and 2008 recorded the highest  
inflation rate of about 46 percent and 28 percent respectively.  
Figure 2: Inflation trend from 1990 to 2020  
The mean of money supply growth rate was 15.827 (standard deviation =8.5586; Minimum= 2.931;  
Maximum=39.021). This indicates that the money supply growth rate on average was 15.827. The deviation  
from the mean of money supply growth rate was relatively larger as supported by a standard deviation of  
8.5586.  
Figure 3 below shows a graphical representation of money supply growth rate from the year 1990 to 2020.  
The money supply growth rate rose between 1990 and 1993 then reduces between 1993 and 1998 where it  
rose again between 1998 and 2013 but with some periods recording fluctuations. A downward trend was  
observed between 2013 and 2015 and a small rise 2015 and 2020.  
Figure 3: Money supply growth rate trend from 1990 to 2020  
Page 5539  
The mean of government expenditure growth rate was 13.1596 (standard deviation =9.2567; Minimum=  
1.981; Maximum=51.241). This indicates that the government expenditure growth rate on average was  
13.1596. The deviation from the mean of government expenditure growth rate was relatively larger as  
supported by a standard deviation of 9.2567.  
Figure 4 below shows a graphical representation of government expenditure growth rate from the year 1990  
to 2020. The government expenditure growth rate has been fluctuating between 1990 and 1920 with some  
years experiencing a rise in the government expenditure growth rate while others experiencing a decrease.  
1995 recorded the highest ever government expenditure growth rate at about 51.241 percent while the year  
2000 recorded the lowest ever government expenditure growth rate of 1.981 percent. However, government  
expenditure growth rate has remained relatively constant from 2016 to 2020.  
Figure 4: Government expenditure growth rate trend from 1990 to 2020  
Optimum Lag selection criteria  
Table 2 displays the criteria for lag selection order for the ARDL model based on the Akaike Information  
Criterion (AIC), the Final Prediction Error (FPE), the Hannan-Quinn Criterion (HQIC), and the Bayesian  
Information Criterion (SBIC). According to the Akaike Information Criterion (AIC), the Hannan-Quinn  
Criterion (HQIC), and the Bayesian Information Criterion (BIC), it is suggested that the ARDL model should  
have four ideal lags.  
Table 2: Optimum Lag selection criteria  
Lag LL  
LR  
df P  
FPE  
AIC  
HQIC  
SBIC  
0
1
2
3
4
-433.982  
5.0e+09  
33.6909  
33.6955  
33.9387  
33.3023  
33.7466  
33.9741  
34.4403  
34.0268  
33.8845*  
34.6632  
35.6806  
35.8184  
-418.041 31.881  
-405.203 25.677  
-380.929 48.546  
16 0.010 5.2e+09  
16 0.059 7.3e+09  
16 0.000 5.1e+09  
-339.487 82.885* 16 0.000 1.3e+09* 31.3451* 32.2926* 34.6355  
(*) Indicates that the selected lag criteria that is statistically significant at 95 percent confident interval.  
Source: Author, 2022  
Page 5540  
Stationarity  
The results of the table 3 below indicate that the null hypothesis of unit root of inflation, unemployment,  
money supply growth rate, and government expenditure growth rate cannot be rejected at a level of  
significance of 5 percent. This would imply that non-stationary variables such as inflation, unemployment,  
money supply, and government expenditure all have a unit root. The findings presented in table 3 indicate that  
the ARDL bounds test should be carried out to determine whether or not there is a level relationship.  
Table 3: Stationarity results  
Variable  
Test Statistic 1% Critical Value 5% Critical Value 10% Critical Value  
Inflation  
-3.314  
-3.402  
-2.813  
-4.343  
-4.362  
-4.352  
-4.343  
-3.584  
-3.592  
-3.588  
-3.584  
-3.230  
-3.235  
-3.233  
-3.230  
Unemployment  
Money Supply  
Government Expenditure -4.896  
Source: Author, 2022  
Cointegration  
As can be seen in the table above, the null hypothesis that there is no level relationship was not accepted. The  
reason for this is that the F statistics, which came in at a value of 9.177, were higher than the critical value of  
the upper bound (I 1), which was 4.85. Based on these findings, it appears that there was a level relationship  
among the variables, and as a result, there was a relationship over the long term. The results were consistent,  
according to the t statistics. As a consequence of these findings, it was decided that the model would be  
estimated by the use of the ARDL Error Correction Model (ECM) in order to determine the variables' long-  
term connection.  
Table 4: Cointegration results  
(I_0)  
(I_1) (I_0)  
(L_1)  
(I_0)  
(I_1)  
K-2  
(L_1) (L_1)  
(L_05)  
(L_05) (L_01)  
(L_01)  
F-Statistic Case  
t-statistics  
(9.177*)  
3.17  
4.14  
-3.21  
3.79  
4.85  
5.15  
6.36  
(-5.240*)  
-2.57  
-2.86  
-3.53  
-3.43  
-4.10  
Source: Author, 2022  
Autocorrelation  
The outcomes of both the Breusch Godfrey Lm test and the DW test for serial correlation are presented in the  
table 5 below. Since the p value that corresponds to chi-square in the preceding table is 0.3470, which is greater  
than the level of significance of 5% (0.05), the null hypothesis that there is no serial correlation is consequently  
accepted. The null hypothesis that there is no serial correlation is supported further by the statistic obtained  
from the Durbin Watson test, which is 2.299125. If the values of the test statistic are in the range of 1.5 to 2.5,  
it is safe to assume that there is no serial correlation. This is the rule of thumb that is generally followed.  
Page 5541  
Table 5: Autocorrelation results  
Source  
chi2  
Df Prob>chi2  
Breusch Godfrey LM test for Autocorrelation(lags(1)) 0.844 1  
Durbin Watsin Test d statistic  
0.3470  
2.299125  
Source: Author, 2022  
Heterescedasticity  
According to the findings of this test, which are outlined in Table 6, the residuals of the model are of a  
homoscedastic distribution. This is substantiated by the p values that correspond to the chi-square test statistics  
of 0.8312, which is greater than the criterion of significance of 5 percent (0.05). As a consequence of this, it  
can be deduced that the model's residuals have a constant variance.  
Table 6: Heterescedasticity results  
Source  
chi2 Df Prob>chi2  
Heteroscedasticity 8.19 13 0.8312  
Source: Author, 2022  
Multicollinearity  
A check for multicollinearity in the model was carried out with the use of the variance inflation factor (VIF).  
The VIF is a metric that analyzes how the independent variables in a model are connected to one another.  
When it comes to multi-collinearity, a good rule of thumb to follow is that numbers that are larger than 10  
suggest that there is multi-collinearity present in the model, whilst values that are less than 10 indicate that  
there is not multi-collinearity present in the model. The results of multicollinearity are displayed in the table  
7 below. The VIF for is 1.31, which is less than the generally accepted rule of thumb of 10, indicating that  
there is no multicollinearity among the independent variables.  
Variable  
VIF 1/VIF  
Government expenditure 1.14 0.875756  
Money supply  
Dummy  
1.43 0.700689  
1.19 0.843225  
1.50 0.667955  
1.31  
Inflation  
Mean VIF  
Source: Author, 2022  
Model stability  
We used the CUSUM test to check for internal consistency among the model's variables. It allowed for  
monitoring the changing estimates of the coefficients under consideration as the sample size of the underlying  
data grew. There are two error bars, one on each side of the estimated coefficients. A sign of system instability  
is a large coefficient shift after adding new information to the estimating equation. If the blue line is found to  
be outside of the two red lines, then stability is not present. A closer look at the graph revealed that the blue  
lines were situated within the red lines. This indicates that the variables that were utilized in the model were  
consistent over the course of time. The graph of the residuals of the variables that were employed in the model  
can be found in Figure 5. The variables' residuals are moving in a circular fashion around the mean. This  
satisfies the requirement that the mean of the residuals be zero, which is a prerequisite for the normalcy  
assumption.  
Page 5542  
1.6  
1.2  
0.8  
0.4  
0.0  
-0.4  
2010  
2011  
2012  
2013  
2014  
2015  
2016  
2017  
2018  
2020  
CUSUM of Squares  
5% Significance  
Figure 5: Cusum sum of squares model stability check  
Correlation  
Table 7 summarizes correlation findings. Even though the independent variables have a high R-squared, they  
can still cause large standard errors, low t-statistics, and unexpected coefficient sign or magnitude changes, so  
their correlation is evaluated. The pair-wise correlation matrix in the table below shows no highly correlated  
independent variables. The empirical model prevents multicollinearity by separating pairs in equations.  
Results in table below indicate that unemployment rate is negatively related with inflation rate(r = -0.3689, p  
< 0.05). Consequently the higher the unemployment rate the lower the inflation rate in Kenya. The results also  
indicate that money supply growth rate is positively related with inflation rate in Kenya(r = 0.4883, p <  
0.05).As a result the higher the money supply growth rate, the higher the inflation rate in Kenya.  
Table 7: Correlation results  
Money Supply Government Expenditure  
Variable  
Inflation  
1.0000  
Unemployment  
1.0000  
Growth rate  
Growth rate  
Inflation  
-0.3689*  
0.0449  
Unemployment  
0.4883*  
0.0062  
-0.3443  
0.0624  
Money supply  
1.0000  
0.1915  
0.3108  
-0.1465  
0.4397  
0.3249  
0.0798  
Government expenditure  
1.0000  
Source: Author, 2022  
Page 5543  
ARDL Results  
Table 8: ARDL results  
ARDL (4,4,4,4) regression  
Number of obs =  
R-squared  
Adj R-squared =  
Root MSE  
30  
=
0.9011  
0.5877  
0.5859  
Log Likelihood = -3.9295623  
=
D.unemployment  
Adj  
Coef.  
Std. Err.  
z
p>t  
[95% Conf. Interval]  
Unemployment L1.  
Long run  
2.629128  
1.11057  
2.37  
0.056  
-.0883384  
5.346595  
Inflation (β1)  
.0082862  
.0092107  
.0388848  
.0025216  
0.21  
3.65  
0.838  
0.011  
-.0868614  
.0030406  
-.2906508  
.1034339  
.0153807  
.0059354  
Money supply growth rate(β2)  
Government expenditure growth rate (β3) -.1482931 .0581785  
-2.55 0.044  
Short run  
Unemployment (β4)  
LD.  
-3.663381 1.119456  
5.285639 3.988249  
-3.27 0.017  
-6.40259  
-4.473256  
-8.443046  
-.924172  
15.04453  
3.833328  
L2D.  
1.33  
0.233  
L3D.  
-2.304859 2.508544  
-0.92 0.394  
Inflation (β5)  
D1.  
-.0177863 .0925396  
-.0186329 .0857892  
-0.19 0.854  
-0.22 0.835  
-.2442226  
-.2285516  
-.141024  
.20865  
LD.  
.1912858  
.3048553  
.1075079  
L2D.  
.0819157  
.010665  
.0911106  
.0395776  
0.90  
0.27  
0.403  
0.797  
L3D.  
-.0861779  
Money supply growth rate (β6)  
D1.  
.0399291  
.0128954  
.0191759  
.0142915  
.0096731  
.0069432  
2.79  
1.33  
2.76  
0.031  
0.231  
0.033  
.0049591  
-.0107738  
.0021864  
-.0213033  
.0748992  
.0365647  
.0361653  
.0130049  
LD.  
L2D.  
L3D.  
-.0041492 .0070105  
-0.59 0.576  
Government expenditure growth rate (β7)  
D1.  
-.2948736 .1152707  
-2.56 0.043  
-2.79 0.032  
-2.27 0.063  
-2.52 0.045  
-2.43 0.051  
-.5769309  
-.3331041  
-.2345737  
-.1911102  
-41.6009  
-.0128164  
-.0215659  
.0086278  
-.0026848  
.1362792  
LD.  
-.177335  
.0636595  
L2D.  
L3D.  
_cons (β0)  
-.1129729 .0496956  
-.0968975 .0385027  
-20.73231 8.528541  
Source: Author, 2022  
DISCUSSION OF THE FINDINGS  
Table 8 above shows the findings of relationship between inflation rate and unemployment rate in Kenya in  
the short run and long run. The results indicate that the inflation had an insignificant positive relationship with  
unemployment in the long run (β1) = .0082862, ρ>0.05) and an insignificant negative relationship with  
unemployment in short run (β5 = -.0177863, ρ>0.05). The results of this study were in contradiction with that  
done by Blanchard (2016) that concluded that low unemployment had an effect of pushing inflation high and  
high unemployment had a decreasing effect on inflation just as was predicted by Phillips (1958). This finding  
therefore suggests that Phillips proposition does not hold in the Kenyan economy.  
Page 5544  
Table 8 above also shows the findings of relationship between money supply growth rate and unemployment  
rate in Kenya in the short run and long run. The results indicate that the money supply growth rate had a  
significant positive relationship with unemployment in the long run (β2) = .0092107, ρ<0.05) and a significant  
positive relationship with unemployment in short run (β6 = .0399291, ρ<0.05). The results of this study were  
in agreement with those done by Mankiw & Nordhaus, (1999) that outlines that monetary policy and other  
factors that determine aggregate demand have significant effects not just on long-run but also on short-run  
fluctuations in unemployment rates.  
Table 8 above also shows the findings of relationship between inflation rate and unemployment rate in Kenya  
in the short run and long run. The results indicate that the inflation had an insignificant positive relationship  
with unemployment in the long run (β3) = .0082862, ρ>0.05) and a significant positive relationship with  
unemployment in short run (β7 = .0399291, ρ>0.05). The results of this study were in agreement with those  
done by Rendahl (2016) that proposes that it is necessary to achieve a state of equilibrium in the dynamics of  
unemployment. Expansionary government expenditure boosts output and reduces the jobless rate in the  
aftermath of a shock that puts the economy in a liquidity trap. The consequences of present expenditure persist  
into the future, resulting in a lasting increase in income due to the persistence of fluctuations in unemployment.  
Because a sustained gain in income leads to increased private demand, an increase in government expenditure  
triggers a positive employment-spending cycle that has far-reaching implications on macroeconomic  
aggregates.  
CONCLUSION AND RECOMMENDATION  
The results of this study revealed that there is a positive insignificant relationship between unemployment and  
inflation. These results suggest that it is difficult for policy makers in Kenya to employ inflation targeting  
policy mechanism to control and counter unemployment as suggested by Phillips curve. This result therefore  
concludes that inflation targeting by monetary authorities in Kenya cannot yield positive results of curbing  
unemployment. The analysis of the study also suggests that NAIRU cannot participate more directly in the  
formulation of policies. The NAIRU may be particularly significant in an inflation targeting program since it  
aids in future inflation forecasting. The NAIRU's measurements are significant because they can assist  
policymakers in determining how far the economy is from reaching capacity and what this means for wage  
growth, inflation, and the results of the labor market. The results of the study however indicate that NAIRU is  
insignificant and therefore cannot be relied upon.  
The study recommends that when the Kenyan economy is about to enter a recession or experiencing sluggish  
economic growth, policymakers should employ an expansionary government spending policy. This type of  
fiscal strategy involves raising spending on the government, or doing both to counteract the effects of a  
recession. Governments primarily employ this when attempting to stabilize the business cycle's contraction  
phase. Increasing government spending on public projects (such building schools and roads) and providing  
tax breaks to citizens of the economy in order to boost their purchasing power in order to counteract a decline  
in aggregate demand are two common examples of expansionary fiscal policy measures.  
Additionally, the government should develop expansionary monetary policy strategies that target a sustainable  
level of inflation in the economy rather than targeting unemployment level in the economy. This is because  
reducing unemployment level below the natural rate of unemployment would lead to more inflationary  
pressures in the economy. Finally, the government should come up with a supplementary policy of cushioning  
the economy against the harsh effects of structural breaks in the economy. These supplementary policies would  
gradually adjust the recovery process to stability in the economy by maintaining unemployment levels at a  
sustainable level and inflation level at their targeted levels.  
REFERENCES  
1. Acar, S., Voyvoda, E., & Yeldan, A. E. (2018). Patterns of growth in dual economies: challenges of  
development in the 21st century. In Macroeconomics of climate change in a dualistic economy: a  
regional general equilibrium analysis (pp. 13-63). Academic Press.  
Page 5545  
2. Adelowokan, O. A., Maku, O. E., Babasanya, A. O., & Adesoye, A. B. (2019). Unemployment, poverty  
and economic growth in Nigeria. Journal of Economics & Management, 35, 5-17.  
3. Akyüz, Y. (2006). From liberalization to investment and jobs: lost in translation. Turkish Economic  
Association.  
4. Alexius,  
A.,  
& Holmlund,  
B.  
(2007). Monetary policy and  
Swedish unemployment  
fluctuations. Economics Discussion Paper, (2007-34).  
5. Ball, L., Mankiw, N. G., & Nordhaus, W. D. (1999). Aggregate demand and long-run  
unemployment. Brookings papers on economic activity, 1999(2), 189-251.  
6. Beaudry, P., Hou, C., & Portier, F. (2020). Monetary Policy when the Phillips Curve is Locally Quite  
Flat.  
7. Benazić, M., & Rami, J. (2016). Monetary policy and unemployment in Croatia. Economic research-  
Ekonomska istraživanja, 29(1), 1038-1049.  
8. Blanchard, O. (2016). The Phillips Curve: Back to the'60s?. American Economic Review, 106(5), 31-  
34.  
9. Clifton, E., Leon, G., & Wong, C. H. (2001). Inflation targeting and the unemployment-inflation trade-  
off.  
10. Choudhry, M. T., Marelli, E., & Signorelli, M. (2012). Youth unemployment rate and impact of financial  
crises. International journal of manpower.  
11. Edwards, S. (2006). The relationship between exchange rates and inflation targeting revisited.  
12. Epstein, G., & Yeldan, A. E. (2009). Beyond inflation targeting: assessing the impacts and policy  
alternatives. In Beyond Inflation Targeting. Edward Elgar Publishing.  
13. Feriyanto, N., El Aiyubbi, D., & Nurdany, A. (2020). The impact of unemployment, minimum wage,  
and real gross regional domestic product on poverty reduction in provinces of Indonesia. Asian  
Economic and Financial Review, 10(10), 1088-1099.  
14. Gaspar, V., Amaglobeli, M. D., Garcia-Escribano, M. M., Prady, D., & Soto, M. (2019). Fiscal policy  
and development: Human, social, and physical investments for the SDGs. International Monetary Fund.  
15. Hammond, G. (2012). State of the art of inflation targeting. Handbooks.  
16. Heffetz, O., & Reeves, D. (2021). Measuring unemployment in crisis: Effects of COVID-19 on potential  
biases in the CPS (No. w28310). National Bureau of Economic Research.  
17. Kamau, P. (2021). Kenyans Grow more Discontent with Country's Economic Performance.  
18. Mashele, J. G. (2012). Appropriateness of inflation targeting in South Africa (Doctoral dissertation,  
University of Pretoria).  
19. Mitchell, W. F., & Mosler, W. (2001). Unemployment and fiscal policy. Unemployment: the Tip of the  
Iceberg, 219-232.  
20. Mouly, J., & Costa, E. (2022). Employment policies in developing countries: a comparative analysis.  
Taylor & Francis.  
21. Muhammad, S. A. L. I. M. O. V. (2020). The impact of inflation targeting on inflation  
volatility (Doctoral dissertation, Ritsumeikan Asia Pacific University).  
22. Rendahl, P. (2016). Fiscal policy in an unemployment crisis. The Review of Economic Studies, 83(3),  
1189-1224.  
23. Setterfield, M. (2006). Is inflation targeting compatible with Post Keynesian economics?. Journal of  
Post Keynesian Economics, 28(4), 653-671.  
24. Siekmann, H. (2022). Inflation, price stability, and monetary policy: On the legality of inflation targeting  
by the Eurosystem (No. 172). IMFS Working Paper Series.  
25. Svensson, L. E. (2010). Inflation targeting. In Handbook of monetary economics (Vol. 3, pp. 1237-  
1302). Elsevier.  
26. Thorbecke, W. (2004). Inflation Targeting and the Natural Rate of Unemployment.  
27. Wagner, A. (1958). Three extracts on public finance. In Classics in the theory of public finance (pp. 1-  
15). Palgrave Macmillan, London.  
Page 5546