3.3. Determining the Number of Thresholds in the Nonlinear Effect
Given that
has a nonlinear impact on
, the next step is to verify the characteristics of the nonlinear effect in the context of regime transition. We adopt the Likelihood Ratio test (LR) statistics [
32] to test the number of thresholds for the variables in the nonlinear effect. The LR statistics are constructed as follows:
in which
is the covariance matrix assuming there are
thresholds in the model, and
is the covariance matrix assuming there are
thresholds in the model. We test for the hypothesis of no threshold, one threshold and two thresholds sequentially, and the results are shown in
Table 3.
According to the results reported in
Table 2, in Case 2 the LR statistics value is 61.4425, thus we reject the null hypothesis of no threshold under the 5% significance level. This indicates that there may exist one or two thresholds in the nonlinear effect of
on
. The result in Case 3 further rejects the null hypothesis of one threshold. In summary,
has a one-way nonlinear impact on
, and this nonlinear impact can be characterized by two thresholds.
3.4. Results of the STR Model
Given the characteristics of the nonlinear impact of
on
, we then use STR model to further investigate this nonlinear impact. The first step is to determine the form of a basic linear dynamic model. Following the method in Zhao and Fan [
33], we use the 1st–4th order lag terms of
, and the 0th–3rd order lag terms of
as the candidates for the linear model. After comparing the sixteen combinations, we finally conclude that in the basic linear dynamic model the best order of lags for
is 2, and
does not need to contain any lags (see
Table 4).
In this linear model, all the estimated coefficients pass the
t-test at the significance level of 5%; and the Durbin-Watson (DW) statistics is 2.1867, indicating no autocorrelation among the residuals. The result of estimation is
The next step is to determine the transition variable. The results are given in
Table 5.
When the transition variable is time
, there exists regime transition for the impact of
on
under the significance level of 5%. We then test the STR model using
as the transition variable. The results are shown in
Table 6.
In
Table 6,
,
,
are rejected under the 5% significance level. The p-value for rejecting
is the smallest, thus the STR model should take the form of LSTR2 [
34]. Then we use point searching method proposed by Teräsvirta to estimate the initial value of the transition function. The range for
and
is set as [1.0000, 29.0000] and the range for
is set as [0.5000, 15.0000]. In each range we take 50 points with equal distance to their neighboring points, constructing 12,500 combinations of parameters. For each combination of
,
and
, we calculate the sum of square for the residuals. The parameter combination with the smallest sum of square for the residuals is set as the initial parameters, as shown in
Table 7.
The initial values of
,
and
fall within their ranges respectively. This result is required by Teräsvirta for further optimization of these parameters. We then adopt the Newton-Raphson iteration algorithm to maximize the conditional likelihood function to get the estimation for the model parameters. After eliminating insignificant independent variables, the corresponding parameters of the LSTR2 model are presented in
Table 8.
The final expression of the LSTR2 model is:
in which
.
The model divides the impact of on into two parts. One part is , which is linear. The other part is , which is nonlinear. According to the definition of the LSTR2 model, the influence of on is converted by . When the transition function is close to one, the influence of on is the overlap of the two parts. The formula is . In this situation, the intensity of ’s influence on is 0.5719. When is close to zero, the influence of on is just the linear part. In this situation, the intensity of ’s influence on is 0.1067. After comparison, we found the carbon productivity grows faster as the GDP per capita increases in the nonlinear part, thus we label this regime as the high regime. On the other hand, when approaches zero, the carbon productivity grows slower as the GDP per capita increases, hence we label this regime as the low regime.
In the LSTR2 model,
and
are the threshold parameters, which describe the time of regime transition. When transition variable is less than
or when transition variable is more than
, the transition function
is close to one. When transition variable is between
and
,
is close to zero. We depict the transition dynamics in
Figure 1, where we observe that the impact of
on
experiences a transition from the high regime to the low regime, and back to the high regime again. There exist an obvious two-regime transition pattern. More specifically, the economic-growth-to-carbon-productivity relationship was in high regime from 1987 to 1998, and was in low regime from 1999 to 2010, and turned to high regime again from 2011 to 2015 in Hubei Province. We conjecture that the underlying reasons for high and low regimes are variations in economic structure and technology upgrade. The first high regime in Hubei may be the result of a combination of a weak secondary industry and a growing tertiary industry. The low regime coincided with the period of massive infrastructure investment. The second high regime may be driven by technology upgrade. We will provide further comments on these underlying reasons in the discussion section. The value of the smooth transition coefficient
is large, indicating a fast transition. In
Figure 1, the transitions between high regime and low regime finish within about three years.
At last we verify whether the residuals of the LSTR2 model satisfies the model assumption. The results show that the residuals have homoscedasticity of variance, no serial correlation and subject to normal distributions. Therefore, the LSTR2 model describing the nonlinear relationship of to is robust.
The LSTR2 model outperforms simple linear models in fitting the data.
Table 9 compares the fitness and the standard deviation of residuals for the LSTR2 model and the linear model. LSTR2 model has higher
and significantly smaller standard deviation of residuals. Hence the LSTR2 model fits the data better than the linear model.
3.5. Results of the MRS Model
According to the results of the STR model, there are two regimes in the nonlinear relationship between economic growth and carbon productivity in Hubei, and the transitions are finished in a short time. The result fits the assumption required by the MRS model that transitions happen instantly. Hence it is appropriate to apply the two-regime MRS model to investigate the probability of regime transitions that can be used to predict future status. The transition probability matrix is calculated and shown in
Table 10.
If the impact of on is in the low regime in a certain period, then in the next period the probability of staying in the low regime is 0.8009, and the probability of jumping to the high regime is 0.1991. Meanwhile, if the impact of on is in the high regime, then in the next period the probability of staying in the high regime is 0.9523, and the probability of jumping to the low regime is 0.0477. The high regime is more sustainable than the low regime.
We derive the expected duration of the high regime and the low regime using the formula . The variable represents the probability of staying in the previous regime. For Hubei province, the expected duration of staying in the low regime is 5 periods, and the expected duration of staying in the high regime is 20 periods. The high regime is more stable.