In this paper we consider the relationship between profit and inflation movements in the Australian manufacturing sector. Our goal is to determine whether there is a clearly defined long-term relationship between profit and inflation, and that influence short-term (cyclical) changes in the supply relationship. Pricing is most commonly associated with an abbreviated form of an equation models seen various Phillips curve. Phillips curve, the relationship between inflation and the inflation of inflation or, after some manipulation, the relationship between inflation and its own lagged values are expressed. In what form is presented, the basic model is assumed, that is after taking into account the inflation of transportation or autoregressive structure of the process there is a stable relationship between inflation and some measure of excess demand or supply. This study focuses on the nominal yield that much of the literature, the relationship between real yields and inflation are discussed. Both aspects are important in analyzing the effects of inflation.
Analysis
Frequency distribution for the variable profit before tax:
profit before income tax (Binned)
Frequency
Percent
Valid Percent
Cumulative Percent
Valid
<= 156
1
.5
.5
.5
157 - 3213
127
63.2
63.2
63.7
3214 - 6270
48
23.9
23.9
87.6
6271 - 9327
12
6.0
6.0
93.5
9328 - 12385
8
4.0
4.0
97.5
12386 - 15442
3
1.5
1.5
99.0
15443 - 18499
1
.5
.5
99.5
18500+
1
.5
.5
100.0
Total
201
100.0
100.0
Statistics
profit before income tax (Binned)
N
Valid
201
Missing
0
Mean
2.59
Median
2.00
Mode
2
Std. Deviation
1.022
The above shows the descriptive statistics for the variable “profit before income tax”, it can be seen that the mean value for this variable is 2.56 and the standard deviation is 1.02 which shows that data is not too much scattered.
From above histogram it can be found out that the distribution has been distributed positively.
a. Is there evidence of different profit across the different type of industry?
Ho: there is an evidence of different profit across the different type of industry
H1: there is not evidence of different profit across the different type of industry
level of significance: 0.05
We need to perform one way ANOVA:
ANOVA
profit before income tax
Sum of Squares
df
Mean Square
F
Sig.
Between Groups
7.803E8
4
1.951E8
30.416
.000
Within Groups
1.257E9
196
6413272.878
Total
2.037E9
200
From the above table It can be seen that the p value is les than level of significance which lead us to conclude that there is an evidence of different profit across the different type of industry
b. Excluding the mining industry and the manufacturing industry, is there evidence of different profit among the retail trade industry, information media and telecommunication industry, and rental, hiring and real estate industry?
ANOVA
selctedind
Sum of Squares
df
Mean Square
F
Sig.
Between Groups
1.209E7
2
6047066.670
10.820
.000
Within Groups
6.036E7
108
558858.075
Total
7.245E7
110
From the above table It can be seen that the p value is les than level of significance which lead us to conclude that there is an evidence of different profit across the different type of industry
Q: Between the mining industry and manufacturing industry, is there any evidence to suggest that the mining industry has higher profit before income tax than the manufacturing industry?
Ho: the mining industry has higher profit before income tax than the manufacturing industry
H1: the mining industry has not higher profit before income tax than the manufacturing industry