2.1.1. Data Source
The data used in this study were obtained from a field survey that was conducted in October 2019 among herders in two counties (Menyuan and Qilian) of the Qinghai Province, both of which are typical pastoral counties in the alpine rangeland. Both counties are located in the northeast of Qinghai, with an average altitude of more than 3500 m above sea level and an annual mean precipitation of 400–500 mm. The main bred livestock are Tibetan sheep and yak, both of which adapt well to the hypoxia and cold climate on the plateau.
In total, four villages in Menyuan and two in Qilian were surveyed. In order to construct the social network of the villagers, the survey targeted all households in the villages, although ultimately, about one-third of the families were not surveyed because they left the area for various reasons during the survey period. A face-to-face survey method was applied, and the questions covered basic information about households and household heads, household loans and income, livestock production, as well as the social network. A total of 333 household questionnaires were distributed. After excluding questionnaires with missing data and obvious inconsistencies in their answers, 278 questionnaires were deemed valid, with an effective recovery rate of 83.48%.
Following the typology developed by Borgatti et al. [
32], three types of social ties were surveyed: (1) affections, including kinship, friends, and other relations with whom the respondents had an emotional attachment; (2) membership, which referred to an affiliation with the same organization, such as government agencies, firms, cooperatives, etc.; and (3) interaction, including cooperative production, information and resource exchanges, etc. Having considered the possibility that the respondents may have forgotten some important contacts, the roster method was used. With the assistance of local village cadres, a full list of households in the villages was compiled before the field survey. Each respondent was required to identify seven households, which represented their most important contacts for each category of social tie. Each respondent was requested to rate the relational strength according to a scale which ranged from 1 (the least) to 5 (the highest). After that, the three types of interactions were aggregated into a single social network by equally weighting each type of social ties.
2.1.2. Descriptive Statistics of the Sample
The heads of surveyed households were mainly male, about 70% of whom were aged between 40 and 60 years old; their education level was relatively low, and 93.17% had a middle school education level or below; the majority of the respondents had an abundance of experience in grazing, and about 90% had more than 15 years of grazing experience (
Table 1).
In terms of household characteristics, most families had a credit certificate; 71.22% of households stated that more than 75% of their labor force was engaged in animal husbandry, which indicated that animal husbandry is still the main livelihood source for most families; 60.07% of households had 500–1999 mu (15 mu = 1 ha) of grassland, which was significantly higher than the farmland size held by an average farmer in farming regions; overall, the breeding scale was not high, as only 5.75% of households fed more than 500 standard sheep units (SU) (the numbers of all species of animals were converted into standard sheep units (SU); the conversion rule was set as: 1 Tibetan sheep/sheep/goat = 1 SU; 1 yak = 4 SU; 1 cattle/cow = 5 SU; 1 horse = 6 SU) and 29.14% were found to have a livestock number of less than 150 SU. Despite these observations, the livestock production is generally a lucrative business, and 37.05% of the surveyed families had a mean annual income of more than 100,000 Yuan (7 Yuan = 1 US
$) in the last three years, and 5.40% of these households earned more than 200,000 Yuan (
Table 1). This annual income is even higher than that earned from crop farming in certain more developed areas of southeast China, which may be attributed to the sustained rising price of meats due to the continuous growth in consumption demand in recent years.
When it comes to fund borrowing, 73.74% of families had a loan worth more than 50,000 Yuan, and 33.45% had borrowed more than 200,000 Yuan. Most of these families borrowed money from formal financial institutions, while 50.85% of households used formal financial institutions as their only borrowing channels, and 38.98% used both formal and informal channels (
Table 1).
2.1.3. Social Network Characteristics
Using a social network visualization software package, Pajek version 5.08, the social network was constructed, with the nodes representing the herder households, and the linkages representing their social ties. The networks of the two counties are shown in
Figure 1 and
Figure 2, respectively. Comparing the networks between the two counties and those between villages, it can be seen that there are obvious regional discrepancies. The relational density of Menyuan County is much higher than that of Qilian County, which may be explained by the observation that more individual interactions take place in the former rather than the latter. Alternatively, it may simply be due to the fact that we collected more samples in the former than in the latter. Nonetheless, in both counties, individual interactions were mainly concentrated in their own villages and obvious subgroups were identified. This is consistent with the theory of “differential patterns” developed by Whyte [
33], who argued that the relational closeness of traditional rural Chinese villagers and others showed a distinct declining gradient corresponding to blood lineage and geographical proximity. In spite of this, there are still a number of cross-village linkages, and such linkages are much more prevalent in Menyuan than in Qilian, suggesting that cross-village interactions occur more frequently in Menyuan than in Qilian.
In contrast to the whole social network, an ego network refers to the network that is directly connected with an individual node. There are many structural indicators that can be used to reflect the characteristics of an ego network. According to the two most prominent theories concerning social networks, namely, the Strength of Weak Ties Theory proposed by Granovetter [
34] and the Structural Holes Theory by Burt [
35], the network size, positional centrality and structural holes occupied by a node are the most important aspects affecting individual behaviors. Therefore, we selected corresponding indicators to represent the characteristics of ego networks. The software package UCINET 6.365 was used to calculate the indicators, and the results are shown in
Table 2.
(1) Network size. The network size of a node refers to the total number of linkages contained in the node’s ego network, that is, the relational size of an individual herder in the whole social network. The network size reflects the number of channels that an individual can use to acquire information and resources through the network.
Table 2 shows that 261 nodes had a network size of less than or equal to 10, accounting for 93.88% of the total number of nodes; only 17 nodes had a network size greater than 10, accounting for 6.12%. This result implied that self-identified strong social ties were mainly concentrated among a small number of individual herders. As indicated by the survey data, such individuals included those of village cadres, town government officials, grassland rangers, and local entrepreneurs.
(2) Structural holes. According to the Structural Holes Theory proposed by Burt [
35], when two nodes that have no direct connection are connected by a third node, the third node is deemed to occupy a structural hole. The more structural holes occupied by a node, the greater the corresponding individual’s ability to manipulate the information and resources that flow through it. Two indicators (i.e., the effective size and the degree of constraint) were chosen to measure the structural holes occupied by individual herders. The former refers to the non-redundant factors in one node’s ego network; the latter refers to the ability of a node to manipulate the structural holes in its ego network; the formulas are constructed as follows:
where Equation (1) indicates the effective size and Equation (2) reveals the degree of constraints. In addition,
represents the ego node,
represents the nodes that have a direct linkage with node
, and
represents all nodes other than
and
in the ego network of node
. Moreover,
represents the relational proportion that node
contributed to node
and
denotes the marginal strength of the relationship between
j and
q, which is equal to the value of the relationship between
j and
q divided by the maximum value of the relationship between
j and other nodes. As a result,
denotes the redundancy between node
and node
. Thus, the effective size of node
is equal to the ego network size of node
minus the network redundancy. The larger the effective size of a node, the lower the redundancy of the node’s ego network, which means that it could manipulate a greater number of structural holes.
Similarly, is the relational proportion that node contributed to node , and represents the proportion that node contributed to . Accordingly, indicates the direct relational input of to , and expresses the indirect relational input of to . Therefore, measures the degree of dependence of node on all other nodes, that is, the constraint that results from other nodes. The larger the degree of constraint, the more the node is dependent on other nodes, which means that the node is less capable of manipulating structural holes.
According to the measurement results, 95.32% of herdsmen had an effective size of less than 10 (
Table 2), which is basically consistent with the results of the network size. This suggests that, overall, there was a rather higher relational redundancy in the social network, and there was a great possibility that structural holes would appear and be manipulated. Correspondingly, 87.41% of herdsmen had a degree of constraint which was less than 0.6 (
Table 2), indicating that most herders had a relatively high ability to manipulate the structural holes.
(3) Network centrality. Indicators of network centrality include degree centrality, betweenness centrality, and closeness centrality. This paper selected closeness centrality to measure the network centrality of individual herdsmen, which is most suitable for analyzing the independence and effectiveness of information transmission. The formula is expressed as follows:
where
is the distance of the shortcut between node
and node
, i.e., the number of linkages contained in the shortcut. As a result, the closeness centrality of node
is defined as the sum of its shortcut distances with all other nodes in the network. Hence, closeness centrality reflects the degree of closeness between one node and all other nodes in the network, and the lower the closeness centrality, the closer a node is to all other nodes, meaning that it occupies a more central position in the network.
No herdsmen showed a closeness centrality of less than 10, and only 22.66% were found to have a closeness centrality of less than 15 (
Table 2), which indicates that the social ties in the study area were relatively decentralized. This finding is consistent with the fact that the geographical distribution of herder households was rather scattered across the vast pastoral area.