4.1. Results for Simple Linear Regression Analysis without Any Controls
In this subsection, we will conduct simple linear regression analysis without any controls to investigate the fractal characteristics of size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area.
According to the log-log rank-size model (8) for size distribution of regional tourism central plases, based on the data in
Table 1, we need to draw the double logarithmic plots of the rank-size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area over the years 2008–2021, and then identify whether there exists monofractal, bifractal or multifractal in the double logarithmic plots. At last, we analyze the characteristics of the size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area.
In order to describe the detailed process, we take the data from the year 2019 as an example. According to the size of the total number of overnight tourists received in 2019 from each of the 11 tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area, we obtain the table by showing the rank size of tourism central places in Guangdong Province in 2019 (see
Table 2). Since the power function relation is equivalent to the logarithmic linear relation, once the 11 points (ln
r, ln
P(
r)) (where
P(
r) denotes the size of the tourism central place ranked
r) in the double logarithmic plot fit a straight line well, it shows that the size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area in 2019 abides by Zipf’s rank-size rule and has the typical fractal characteristic [
18,
21].
Taking ln
P(
r) as the ordinate and ln
r as the abscissa, and using the data indicated in
Table 2, we can make the scatter plot, and then the linear regression is carried out via Excel to obtain the double logarithmic figure of the size distribution of Guangdong tourism central places in 2019 (see
Figure 3).
Similarly, we can also get double logarithmic plots of the size distribution of tourism central places in the other years. All the double logarithmic plots of the size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area in the years 2008–2021 are as shown in
Figure 4.
According to
Figure 4, the regression equations, Zipf’s dimensions
q and fractal dimensions
D for the size distribution of 11 tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area over the years 2008–2021 are obtained. The results of the regression analysis are shown in
Table 3.
4.3. Fractal Analysis on the Size Distribution of Regional Tourism Central Places
It can be clearly seen from
Table 3 that the change in the fractal dimension
D value over the years. During the 14 years from 2008 to 2021, the fractal dimension
D of the size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area fluctuated to a certain extent, and gradually increased from 2008 to 2019 from the general trend; because of the influences of the new crown epidemic on tourism, the fractal dimension
D dropped abruptly from 1.3916 in 2019 to 0.7353 in 2020, and then continued to decrease to 0.5723 in 2021.
According to the change in the fractal dimension
D of the size distribution of the tourism central places in the Guangdong-Hong Kong-Macao Greater Bay Area (see
Table 3) and the scatter point distribution of the double logarithmic plots over the years (see
Figure 4), the development process of the size distribution of the tourism central places in the Guangdong-Hong Kong-Macao Greater Bay Area from 2008 to 2021 can be recognized as three stages:
The first stage (from 2008 to 2019): In this stage, the fractal dimension
D value of the tourism size distribution generally increased but occasionally fluctuated, that is, although the fractal dimension
D of the tourism size distribution decreased slightly in 2010, 2014, 2015 and 2019, but in general it was in a trend of gradual increase, which shows that the tourism size of small- and medium-scale tourism central places is faster than that of large-scale tourism central places, such as Guangzhou and Shenzhen. For example, the size of tourism in Guangzhou in 2019 was 67.732 million, less than double the 35.278 million in 2008, whereas the size of tourism in mid-sized cities such as Huizhou, Dongguan, Zhongshan, Jiangmen in 2019 was so high that they were almost four times of that in 2008. For example, the size of tourism of Jiangmen was 33.37 million person-times in 2019; it was 3.98 times of that (8.394 million person-times) in 2008. There is only one scale-free area at this stage, and 11 tourist centers are all on the scale-free area, indicating that the rank-size distribution of the tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area has a kind of monofractal structure [
51].
The second stage (2020): Due to the impact of COVID-19, global tourism has been hit hard, and the tourism industry in Guangdong-Hong Kong-Macao Greater Bay Area has been severely influenced.
As can be seen from
Figure 4m, the rank-size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area in 2020 has three scale-free areas. The regression analysis results showing these three scale-free areas are shown in
Figure 5.
It can be seen from the scatter diagram in
Figure 4m that the 3 points ranked 1, 2 and 3 are located in the first scale-free area; the 5 points ranked 4, 5, 6, 7 and 8 are located in the second scale-free area; the 3 points ranked 8, 9 and 10 are located in the third scale-free area; and the point ranked 11 is not located in any scale-free area (see
Figure 5). If the data for all these 11 points are used to conduct regression analysis as a whole, the regression coefficient is determined to be 0.9647, and the fractal dimension
D is 1.5678. If this data fitting is divided into the above three segments, then the regression coefficient and the fractal dimension are changeable accordingly. In fact, if the regression analysis is conducted only for the 3 points ranked 1, 2 and 3, then the regression coefficient is determined to be 0.9951, and the fractal dimension
D is 4.3783; if the regression analysis is conducted only for the 5 points ranked 4, 5, 6, 7 and 8, then the regression coefficient is determined to be 0.9889, and the fractal dimension
D is 0.7686; if the regression analysis is conducted only for the 3 points ranked 8, 9 and 10, then the regression coefficient is determined to be 0.9948, and the fractal dimension
D is 0.3522 (see
Figure 5 and
Table 17).
Based on facts above we see the regression coefficients (namely, 0.9951, 0.9889 and 0.9948) of the three data fitting are significantly higher than the regression coefficient (namely, 0.9647) of the overall fitting, and the fractal dimension values (namely, 4.3783, 0.7686 and 0.3522) for the three segments are significantly different. Hence, the rank-size distribution of the tourism central places of Guangdong-Hong Kong-Macao Greater Bay Area has a multifractal structure.
According to the results of the regression analysis shown in
Figure 5 and
Table 4, Guangzhou, Shenzhen and Dongguan, which are the top three central places in terms of tourism size, constitute the first scale-free area; the second scale-free area consists of the five central places ranked 4–8 in terms of tourism size, namely, Foshan, Huizhou, Zhuhai, Zhongshan, and Jiangmen; the third scale-free area consists of the three central places ranked 8–10 in tourism size, namely, Jiangmen, Zhaoqing, and Macau, of which Jiangmen, ranked 8, is located at the intersection of the two scale-free areas, whereas Hong Kong is not located in any scale-free area due to its very small tourism size. It can be also seen from
Table 4 that the fractal dimension
D of the first scale-free area is 4.3783, which is significantly higher than that of 1.3919 of the first one in 2019, indicating that the difference of the tourism sizes of the three central places in the first scale-free area, Guangzhou, Shenzhen and Dongguan, is still shrinking since the fractal dimension is larger than 1. Moreover, the fractal dimension
D of the second scale-free area is 0.7686 less than 1, which indicates that the difference of the tourism sizes of the five central places included in the second scale-free area (i.e., Foshan, Huizhou, Zhuhai, Zhongshan and Jiangmen) is large. In addition, the fractal dimension
D of the third scale-free area is 0.3522, less than 1, and it is very small, which reveals that the difference in the tourism sizes of the three central places included in the third scale-free area (i.e., Jiangmen, Zhaoqing, and Macao) that are included in the scale-free area is very large.
As is shown in
Figure 5, Hong Kong, the size of which is smallest, did not fall into any scale-free area; it is in a relatively independent position. Therefore, the size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area in 2020 has a multifractal structure [
51].
The third stage (2021): As can be seen from
Figure 6, two scale-free areas existed in the size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area in 2021.
Among these eleven tourism central places, the top three central places in terms of tourism size are Guangzhou, Shenzhen and Dongguan and they are located in the first scale-free area. Moreover, Foshan, Huizhou, Zhuhai, Zhongshan, Jiangmen, Macao, and Zhaoqing, which rank 4–10 in terms of tourism size, are located in the second scale-free area, whereas Hong Kong, the size of which ranks last, is not within any scale-free area because of its too small tourism size (noting that Hong Kong has a tourism size of 89,000 person-times due to the severe impact of COVID-19 epidemic, which is 1.44% of the 6.181 million person-times in Zhaoqing which ranks 10 in terms of tourism size). It can be seen from
Table 5 that the three central places located in the first scale-free area are consistent with those in 2020, but the fractal dimension
D is reduced from 4.3783 in 2020 to 2.710 in 2021, which shows that the difference in tourism sizes of the three centers, namely, Guangzhou, Shenzhen and Dongguan, in the first scale-free area increased after one year, and the trend was along the direction from being greater than 1 to approaching to 1. For the first scale-free area, the regression coefficient was 0.9427, which indicated that the data fit was good and the conclusion was reliable. The seven central places (i.e., Foshan, Huizhou, Zhuhai, Zhongshan, Jiangmen, Macao and Zhaoqing) included in the second scale-free area in 2021 are exactly the same as the total central places located in the first and second scale-free area in 2020, and the fractal dimension
D (0.9443) is larger than each of the fractal dimensions
D of the first scale-free area and the second scale-free area in 2020 (
D is 0.7686 and 0.3522 respectively), which shows that the difference of the tourism size of the seven central places in the second scale-free area becomes smaller after one year, and the trend is along the direction from being less than 1 to approaching to 1, and the regression coefficient is greater than 0.98, indicating that the data fits well and the conclusion is reliable.
Based on the above arguments, we assert that the size distribution of tourism central places in Guangdong-Hong Kong-Macao Greater Bay Area in 2021 has a kind of bifractal structure.