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Toy interacting Model
Fabrizio Troilo (1067418), Hatice Kubra Bayram (1068770), Haleem ur Rahman (1067542)
June 30, 2016
1 The Model
The model represents an artificial toy economy, populated by n firms which produce a homogeneous
good. Firm individual output is based on a stochastic component which is normalized through the
average of firm shocks. Firm use all their net-worth in production.
Kit = NWit (1)
Thus, firm i net-worth (NWit) at time t is used as capital (Kit) for the production process. Potential
production depends on productivity (φ):
yit = φKit (2)
Revenues are given by an individual idiosyncratic shock (uit), normalized by the mean of the
idiosyncratic shocks that hit all the j firms.
(3)
The idiosyncratic shock is a random variable extracted from a uniform distribution:
uit ∼ U[umin,umax] (4)
Firm profit (πit) is given by revenues minus linear production costs (gKit) and a fixed component (F).
πit = yˆit − gKit – F (5)
Net-worth evolution depends on profits:
NWi,t+1 = NWi,t + πit (6)
If a firm has a non-positive net-worth, it exits from the economy and it is substituted by a new firm with
the initial net-worth value.
1.1 Model change: introducing dividends on profits
In a second moment, the original model has been modified introducing dividends on profits.
We assumed initially that 10% of profits are paid out to investors. As a result, the Net-worth of the
profitable companies will be reduced by 10% as compared to the original model, since not all the
profits will be reinvested in the production process.
As only profitable companies can yield dividends, we modified the model adding the following lines:
---------------------------------------
# firm profit
M$profit=M$effectiveSupply-g*M$netWorth-F
# introduce dividends on profits
ndiv=0;
for (i in 1:nfirm){
if (M$profit[i]>0){ #we look for the profitable firms only
ndiv=ndiv+1 #profitable firms counter for each cycle
M$profit[i]=M$profit[i]- δ*M$profit[i] #profits are reduced by δ% before being addedd to the NetWorh
}}
# equities update
M$netWorth=M$netWorth+M$profit #we reinvest only (1- δ)% of the profits
------------------------------------------
2. Original model analysis
We begin our analysis with the original model (with no dividends) in order to compare it with a toy
economy where profitable firms pay out dividends to investors.
The parameters values we used for the original model are the followings:
Table 1. Parameters (original model)
Parameters Values
nfirm 100
phi 1
F 0.1
g 0.99
netWorthInitial 10
ncycle 100
nrun 10
Umin 0.8
Umax 1.2
From run number 1 to run number 10, is possible to see two main patterns of the aggregate
production levels. Almost half of the runs present, initially, a decreasing trend in the level of aggregate
production (from cycle number 1 to about half of the cycles) and then a strongly increasing trend (from
the second part of the distribution onward). This kind of path is well represented by the graph of run
number 2. The other half of the runs instead, seem to have an ever-increasing trend, as represented
by the charter of run number 9.
Table 2 – Aggregate Production, Run 2 Table 3 – Aggregate Production, Run 9
As far as the standard deviation is concerned, it generally tends to go up as the aggregate production
level goes up. This is not the case in the first part of run 2 where higher volatility is associated with a
drop in the aggregate production level.
Table 3 – Standard Deviation, Run 2 Table 4 – Standard Deviation, Run 9
0.00
50.00
100.00
150.00
200.00
250.00
300.00
350.00
400.00
0 2 4 6 8 10 12
Standard deviation
800
900
1000
1100
1200
1300
1400
0 2 4 6 8 10 12
Average Production
The relation high standard deviation/high aggregate output seems to hold through all the runs. As we
can see from the charters below, the runs with higher average production are associated with higher
standard deviation peaks, following a similar cyclical path. Both average production level and standard
deviation have the highest values in the first run and the lowest in the second. From the third run
onward they seem to have an increasing trend but with a cyclical path.
Run Std.Deviation
Run Avg.Production
1 343.89
2 81.39
3 139.51
4 155.91
5 194.00
6 117.14
7 113.38
8 225.68
9 249.12
10 213.08
Avg 183.31
Std 78.34
1 1347.81
2 1018.29
3 1070.92
4 1108.23
5 1116.93
6 1046.4
7 1114.55
8 1132.95
9 1224.26
10 1178.46
Avg 1135.88
Std 95.55
2.1 Net-worth distribution
Table 5 – Net-worth Distribution run 4, T=1
The Net-worth distribution through all the runs show a
similar pattern. We take as examples the distributions of run
4 at t=1, t=50 and t=100.
From table 4, we can see that at t=1, the aggregate net
worth is distributed quite homogeneously among the 100
firms of the economy with the distribution slightly
concentrated toward the left, meaning, for example, that
there are more firms with a Net-worth lower than or equal to
10 than there are with a Net-worth greater then 10.
As we move forward to t=50 and t=100 this feature emerges
more clearly, showing a trend toward a fat-tailed distribution.
Table 6 – Net-worth Distribution run 4, T=50 Table 7 – Net-worth Distribution run 4,
T=100
The implication is that as time goes by, fewer and fewer firms are able to cumulate profits.
At time t=50, the majority of the firms (more than 60% of the total) have a Net-worth equal to 10
whereas at time t=100 the share of the firms with Net-worth equal or lower to 20 is 80%.
In fact, at time t=100 only 20% of the firms where able to cumulate profits for more than the double of
their initial Net-worth.
3. Second step: introducing dividends on profits
The second step of our analysis aimed at identifying the evolution of the toy economy when
introducing dividends on profits. We start off by setting to 10% the share of the profits paid off to
shareholders for each cycle. Our intuition is that, since the Net-worth of the profitable companies will
accumulate at a rate 10% slower as compared to the original model, the economy might be more
sensitive to shocks and the aggregate production level of the economy will be lower at any given time.
Table 1. Parameters (original model)
Parameters Values
nfirm 100
phi 1
F 0.1
g 0.99
netWorthInitial 10
ncycle 100
nrun 10
Umin 0.8
Umax 1.2
δ 0.1
We can see that in this model similar features emerge for each runs, as compared to the original
model, but with a tendency of the economy to have lower average production levels (995 versus 1135
of the original model) and higher sensitivity to shocks.
For example, we noticed that, similarly to the first model, about half of the runs show an initial
downward trend toward the middle of the distribution of each run (as shown in table 8), but in this
model the downward trend is steeper, resembling more a sudden drop. The other half of the runs
instead, seem to have an ever-increasing trend (despite volatility episodes) with a light initial slow
down and the aggregate production rate growing at a faster rate after the middle of the distribution (as
shown in table 9).
Table 8 – Aggregate Production, Run 9 Table 9 – Aggregate Production, Run 6
As far as the standard deviation is concerned we can see a pattern similar to the original model, with
the higher values concentrated toward the end of the distribution where the production level are higher
and other peaks linked with sudden drops in the level of the aggregate production, as shown in table
10 between time t=40-60 and in table 11 between time t=0-20.
Table 10 – Standard Deviation, Run 9
Table 11 – Standard deviation, Run 6
800.00
850.00
900.00
950.00
1000.00
1050.00
1100.00
1150.00
1200.00
0 2 4 6 8 10 12
Average Production
0
50
100
150
200
250
0 2 4 6 8 10 12
Deviazione Standard
Again, runs with higher average production are associated with higher standard deviation peaks.
Run Avg.Production
Run Std.Deviation
1 1162.52
2 894.10
3 942.90
4 969.80
5 978.31
6 926.00
7 988.00
8 990.83
9 1063.97
10 1035.43
Avg 995.19
Std 76.80
1 215.19
2 57.92
3 82.07
4 76.97
5 117.46
6 79.94
7 61.85
8 143.17
9 147.28
10 136.10
Avg 111.79
Std 49.51
3.1 Net-worth distribution
Table 12 – Net-worth t=1, Run 9
As we move from t=0 to t=50 and t=100, emerges
a trend toward a fat-tailed distribution.
As time goes by, fewer and fewer firms are able to
cumulate profits: by time t=50, 70% of the firms do
not have a Net-Worth greater than 10.
At time t=100, the average aggregate production
level is higher as compared to t=50 and t=0,
however, the majority of the firms will still be
concentrated toward the lower bands of Net-worth
with only 20% of the firms being able to increase
their level of initial Net-worth by at least the
double.
Table 13 – Net-worth t=50, Run 9 Table 14 – Net-worth t=100, Run 9
In addition, from the following charter, we can get an idea about the evolution of the number of
profitable firms over time. Besides the general trend, showing a slight reduction of the number of
profitable firms over time, we can also notice how high the variability is in each cycle. This explain how
the shocks make it difficult for the firms to keep their profitability over time and cumulate Net-worth.
Table 15 – Number of profitable firms, run 10
4. Sensitivity analysis
Lastly, we performed a sensitivity analysis in order to evaluate the impact of the parameter if we increased it by the double. The following data therefore, are produced by a model identical to the previous one except from the parameter δ that has been increased from 0.1 to 0.2.
Table 16. Parameters (original model)
Parameters Values
nfirm 100
phi 1
F 0.1
g 0.99
netWorthInitial 10
ncycle 100
nrun 10
Umin 0.8
Umax 1.2
δ 0.2
As we can see from table 16 and 17, which can be thought as representative for all the runs, the
aggregate production starts from the initial level of 1000 and suddenly goes down to a minimum level
(generally below 700) around time t=40 from which gradually recover but with high volatility episodes.
In this model, the economy is not able to reach the initial level of aggregate production by time t=100.
The implication is that, in a model with frequent shocks, a quick Net-worth accumulation would be very
useful for preventing long-lasting recessions. Dividends paid out to investors cannot be used to
overcome shocks, therefore the economy is more subject to sudden drops in production levels as
compared the previous models (with lower dividend yield or none) where the capital accumulation is
quicker.
Table 17 – Aggregate production, Run 1
Table 18 – Aggregate production, Run 5
680.00
700.00
720.00
740.00
760.00
780.00
800.00
0 2 4 6 8 10 12
Average Production
70.00
80.00
90.00
100.00
110.00
120.00
130.00
140.00
0 2 4 6 8 10 12
Deviazione Standard
Moreover, a peculiar feature of this model, is that the levels of average production seems to follow an
opposite path with respect to standard deviation peaks throughout all the runs.
In the runs where there is a peak in the aggregate production we find a drop in the standard deviation
level, which is the opposite of what we found in the previous two models.
Runs Avg. Production
Runs Std. Deviation
1 79.96
2 131.24
3 117.94
4 107.55
5 113.03
6 127.79
7 101.70
8 113.03
9 91.78
10 99.33
Avg 108.34
Std 15.79
1 785.87
2 689.37
3 697.85
4 715.07
5 724.07
6 703.60
7 731.06
8 715.67
9 758.30
10 739.51
Avg 723.14
Std 29.25
4.1 Net-worth distribution
Table 19 – Net-worth t=1, Run 5
Also the Net-worth distribution for this model seems to
be peculiar. At time t=1, contrary to the previous
models, the distribution is more concentrated toward
the right. For example, we can see that there are more
firms with a net-worth greater than 9.5 than
lower.However, this is not a general trend toward all
the runs.
From time t=50 and t=100 instead, we can see again
the typical fat-tailed distribution of the previous models
but with a difference. At time t=100 the number of
firms with a net worth between 0 and 5 seem to be
reduced and those with net-worth between 10 and 20
seem to be increased as compared to time t=50.
The distribution seems to tend again toward the right with respect to time t=50. However, also this trend is
not a common feature for all the runs. Table 20 – Net-worth t=50, Run 5 Table 21 – Net-worth t=100, Run 5
5. Concluding remarks
In this paper we presented an artificial toy economy in order to investigate the impact of idiosyncratic shocks on the production and the net-worth of firms. We then introduced dividends on profits to see what evolutions could emerge. Since the net-worths for of each period are given by the net-worth of the previous period plus profits, dividends reduce the ability of profitable firms to cumulate net-worth over time hence producing less over the same period with respect to the firms of the original model. We have seen that, with a dividend level of 0.1, the economy decrease on average its aggregate production level and it is more sensitive to shocks. This feature emerges even more clearly from the sensitivity analysis. Increasing dividends from 0.1 to 0.2, the economy experience a sudden drop and is not even able to go back to the initial level of aggregate production by time t=100. Dividends paid out to investors cannot be used to overcome shocks, therefore the economy is more subject to sudden drops in production levels as compared the previous models (with lower dividend yield or none) where the capital accumulation is quicker.
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