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Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
581 www.globalbizresearch.org
An Empirical Study on Identifying Opinion Leaders in the Online
Communities of Consumption
YU WANG,
Department of Economic and Management,
Tohoku University, Japan.
E-mail: [email protected]
___________________________________________________________________________
Abstract
Nowadays, the Internet users begin to search and share electronic word-of-mouth (eWOM)
information online. Meanwhile, they begin to rely on online opinion leaders who can filter the
eWOM information. Considering the importance and influence of online opinion leaders
increasing, the identification of opinion leaders is crucial to marketers and researchers.
Previous researches show that three kinds of approaches, including the user attributes analysis,
the text mining analysis, and the network structure analysis, are widely used for identifying
online opinion leaders. However, litter research is about identifying opinion leaders in the
online communities of consumption, let alone in the online communities of consumption in
which they cannot be identified directly. Hence, this article had one of the first empirical studies
on identifying the opinion leaders in such online communities. The result confirmed the
applicability of selected approach, called Social Network Analysis, for identifying the opinion
leaders in such online communities of consumption, and provided theoretical and practical
implications for marketers and researchers.
___________________________________________________________________________
Key Words: Electronic word-of-mouth (eWOM), Online communities of consumption, Opinion
leaders, Social Network Analysis (SNA)
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
582 www.globalbizresearch.org
1. Introduction
Nowadays, Internet users get used to interacting with others and sharing eWOM information
online in various online platforms, such as bulletin boards, discussion forums, chatrooms,
emails, newsgroups, blogs, microblogs and so on. In particular, Internet users with similar
interests or habits gather and interact online, leading to the form and popular of the online
communities. For example, the potential or actual consumers gather in the online communities
of consumption for sharing the information towards products or services (Hagel & Armstrong,
1997).
However, limited by time, it is impossible for Internet users to check all the information.
Hence, they begin to rely on the recommendations from opinion leaders who filter the
information and pass the selected ones to the public. With the number of eWOM information
increasing and the opinion leaders becoming popular, researchers began to notice the influences
of opinion leaders during the process of spreading eWOM (Summers, King, Martin, & Jackson,
1976). These opinion leaders can efficiently convey the marketing messages and meanings to
a wider population (Kozinets, 2010), and can affect the purchase behavior of consumers (Stern
& Gould, 1988; Goldsmith et al., 2003; Rogers, 2003; Valente & Pumpuang, 2007).
Considering the importance and influence of opinion leaders, the companies, marketers and
the online communities begin to utilize opinion leaders as tools for marketing (Stern & Gold,
1988).
Before utilizing opinion leaders, they need to identify the opinion leaders first. In some
online forums, the attributes of the members, such as the number of followers, are shown. The
public can judge whether an individual is the opinion leaders or not by their number of followers
or others directly. However, many online communities do not have such function. Although for
the insiders, it may be easy to identify the opinion leaders whom they like, for outsiders, such
as marketers, it will be difficult for them to judge the influential individuals, let along utilizing
them for marketing strategies.
Under such situation, how to identify opinion leaders in the online communities of
consumption in which they cannot be identified directly becomes a question.
Prior researches have shown that researchers have had many empirical studies on this issue
and that the approaches for identifying online opinion leaders can be summarized into three
categories: 1) the user attributes analysis; 2) the text mining analysis; and 3) network structure
analysis.
However, little research is about how to identify the opinion leaders in the online
communities of consumption, let alone in the online communities of consumption in which they
cannot be identified directly.
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
583 www.globalbizresearch.org
Hence, in order to fill in this research gap and provide theoretical and practical implications
for future study, this article is going to identify the opinion leaders in the online communities
of consumption in which they cannot be identified directly. The rest of this article is organized
as follows: in the second section, a literature review of the approaches for identifying online
opinion leaders was provided. After the discussion, SNA was selected as the approach and the
specific indicators were pointed out. In the third section, the selected sample and the process of
data collection were introduced. In the fourth section, the specific data analysis was explained
and the opinion leaders were identified. The fifth section provided the discussion and
conclusion and the final section outlined the limitation and future study.
2. Literature Review
2.1 Opinion Leader
The opinion leaders are first defined as the individuals who pass the information from the
mass media to the public with adding their own understandings (Lazarsfeld et al., 1944).
Rogers and Cartano (1962) deemed them as individuals “who exert an unequal amount of
influence on the decision of others ...those individuals from whom others seek advice and
information”.
Glock and Nicosia (1963) considered them as the individuals who act as both channels of
information and a source of social pressure toward choices.
Kotler (2001) defined them as the individuals affecting members in the social community
because of their special techniques, knowledge, personalities and other features.
2.2 Identification Approaches for Online Opinion Leaders
Prior researches show that for identifying online opinion leaders, the approaches can be
classified into three categories as follows.
1) User attributes analysis
Many researchers have analyzed the attributes of users, such as the number of concerns, the
number of fans, the number of texts and others, so as to identify online opinion leaders (Wang
et al., 2006; Ding & Wang, 2010; Ding et al., 2010; Xu & Chen, 2010; Zhu et al., 2011; Liu et
al., 2011; Li et al., 2013; Zhang et al., 2014).
2) Text mining analysis
Many researchers have focused on the contents of the posts and analyze the influences of
the words inside the contents so as to identify opinion leaders (Matsumura et al., 2002; Shi et
al., 2008; Agarwal et al., 2008; Song et al., 2012; Fan et al., 2013).
3) Network structure analysis
This approach is to analyze the structure of the network for identifying opinion leaders. The
related researches include two categories:
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
584 www.globalbizresearch.org
The first one is to utilize the classical network topology analysis, such as the PageRank, to
identify the opinion leaders. PageRank is a computing technology of web page rank to calculate
the number of hyperlinks among different web pages and thus to identify opinion leaders (Page
et al., 1998). The PageRank and the new algorithms based on it are used to identify the opinion
leaders in BBS (e.g. Ning & Wan, 2013), in a network (Zhou et al., 2009), in a blog (Song et
al., 2007), in microblog (Weng et al., 2010), in BBS (Yu et al., 2010), in twitter (Lin et al.,
2013), and so forth.
The second approach is to use social network analysis (SNA) to identify opinion leaders.
Social network analysis (SNA) refers to the process of investigating social structures
through the use of network and graph theories (Liu, 2004). It is to investigate social structures
by using network and graph theories (Wasserman & Faust, 1994).
Previous researches show that SNA is widely used to identify opinion leaders in BBS (Gao
& Yang, 2007), in blogs (Chen & Liu, 2015); in Microblogs (Wang & He, 2013; Zhao, 2013),
in college student groups (Luo & Xi, 2012), in social networks (Cho et al., 2012), in an online
community of knowledge (Wang & Ma, 2009; Liu et al., 2014).
2.3 The Approach Chosen for this Study—SNA
The literature review show that few research focuses on identifying opinion leaders in the
online communities of consumption, let alone in the online communities of consumption in
which they can not be identified directly. Hence, this part aims at having an empirical study on
identifying the opinion leaders in such online communities. With this research purpose, the user
attributes analysis and the text mining analysis are not suitable.
On one hand, the user attributes analysis is to utilize the basic attributes of individuals for
judging whether these people are opinion leaders are not. Because this research focuses on the
online communities of which fail to provide the functions of showing the attributes of
individuals so as to identify opinion leaders directly, the user attributes analysis is not suitable.
On the other hand, the text mining analysis is to utilize the texts in the posts or replies to
identify the opinion leaders, but neglects the relationships of different posts or the interactive
relationships among individuals. Since individuals are interacting with others in the online
communities of consumption, the text mining analysis is also not suitable.
For this research, because of two reasons, SNA is more suitable.
On one hand, in the traditional cases, the network analysis is also utilized to identifying
opinion leaders in the communities (Berelson & Steiner, 1964; Scott, 1992; Wasserman &
Faust, 1994).
On the other hand, using SNA has the unique advantages because that it can analyze the
pattern of interpersonal communication, scrutinizes relationships with the directions and
strength of the relationships (F. Li & Du, 2011; Valente, 1995).
Hence, this study chooses to use SNA.
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
585 www.globalbizresearch.org
When utilizing SNA to identify opinion leaders, the concepts of network location is crucial
(Liu,2004). The nodes taking central positions and the structural hole positions are always
deemed as the individuals who are more able to be opinion leaders. The nodes taking the central
positions refer to the individual actors in a social network who have many connections with
other members and who are in the center of the network. The structural hole position refers to
the location of a third party who can connect two individuals who otherwise will be separate.
However, only utilizing the central positions or the structural hole positions to judge whether
an individual is opinion leader or not is not enough (Van der Merwe & Van Heerden, 2009;
Xie, 2010).
Consequently, in this article, these two positions will be integrated for identifying the
opinion leaders. Namely, the indicators of opinion leadership used in this article include:
InDegree
OutDegree
Betweenness
inFarness and outFarness
EffSize
ConStraint
Here, the first to the fourth indicators are for measuring the degree to which one individual
is taking the central positions, and the fifth to sixth indicators are for measuring the degree to
which the individual is taking the structural hole positions. To be more specific, the InDegree
centrality is to measure the number of the replies received by the posters from the repliers and
the OutDegree centrality is to measure the number of the repliers sent by a specific node to
others. The Betweenness centrality is to measure the control degree of the node towards the
overall resources inside the network. The Closeness centrality is to measure how close a node
is to other actors in the network. The Effect Size is to measure the effective size of ego's
network. The Constraint is to measure the extent to which the ego is connected with others.
3. Research Design
3.1 The Sample
Considering that China is very representative, the sample of this thesis was chosen randomly
among the online communities of consumption in China.
To be more specific, on one hand, the scale of overall net citizens in China increases greatly.
According to the 39th China Internet Network Development State Report, published by China
Network Information Center(CNNIC), as of December 2016, the Internet users in China
increased to 731 million, increased by a total of 42.99 million throughout the year. The Internet
penetration rate was 53.2% and increased 2.9% When compared with the amount of it in 2015.
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
586 www.globalbizresearch.org
On the other hand, more and more individuals get used to make transaction and
communicate online. according to the 39th China Internet Network Development State Report,
as of December 2016, the Internet consumers in China increased to 467 million, which took up
63.8% of the total number of Chinese netizens.
Hence, this article randomly selected Changsha Tong, an online community of consumption
in China and this online community also meet with the requirement that the opinion leaders
cannot be identified directly. This community is divided into six parts, including the parts about
shopping, wearing, panic purchasing, parenting, foods and group buying. The shopping part is
the biggest part. The members inside this community are sharing their shopping experiences
and leaving recommendations of products or services. According to its introduction, its average
Page View per day reached 200 thousand, and IP per day reached 30 thousand in the August,
2013. Until August, 2013, the registered members reached 530 thousand, and they were mainly
aging from 23 years old to 35 years old.
3.2 Data Collection
This article selected the members in the shopping part of the Changsha Tong as the research
target. Since it is different to get the details of all the members inside the whole website, this
article chose to use the snowball sampling to collect the data of the members and selected the
posts in a week as the data sources.
In one week, from 26th, Dec, 2016 to 1st, Jan, 2017, this shopping part had 1193 pieces of
new posts. The posts related to shopping was selected and others were deleted, such as the posts
only for chatting. Finally, 408 posts were selected and 1024 members were involved.
Taking the large number of members of Changsha Tong into account, the number of 408
indicates that most members were silent. Without leaving messages, the silent members are
considered to be unlikely to affect others. Hence, lacking the data of these members will not
affect the results of this article.
4. Data Analysis
4.1 Analysis of Degree Centrality
By using Ucinet 6, the results of Degree centrality are shown in the Table 1.
Table 1: Analysis of Degree Centrality
Number ID 1 2 3 4
OutDegree InDegree NrmOutDeg NrmInDeg
150 蔡大婶 96 81 0.722 0.609
152 沐小言 96 79 0.722 0.594
93 大小眼 79 0 0.594 0
174 咦~嘿嘿 79 0 0.594 0
175 泡泡不是彩色的 72 71 0.541 0.534
128 跟屁虫 67 161 0.504 1.211
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An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
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120 微微筱 67 42 0.504 0.316
29 Amy1234 64 19 0.481 0.143
18 铃铛小亚 63 75 0.474 0.564
95 yachne 60 0 0.451 0
Notes. (Limited by the space, only the information of first 10 members is shown)
In the table, the analysis of every member is shown. The first column in the table indicates
the original number of the members and the second column indicates the ID of the members.
The third column is the Outdegree of the members and the four column is the InDegree of them.
The fifth column is the NrmOutDeg, which represents the standard value of the OutDegree and
the sixth column is the NrmInDeg, which represents the standard value of the InDegree. Here,
the higher the InDegree is, the more prestigious the member is and the more he or she is in the
core position.
Because the minimum of OutDegree and of InDegree were all equal to 0, it indicates that
the isolated nodes existed. The standard deviation of OutDegree was 10.432, much smaller than
the standard deviation of InDegree. It indicates that the values of OutDegree was not so
different from the mean of it and the values of InDegree was comparatively different from the
mean of InDegree. It also indicates that the numbers of the posts were even, but the numbers of
received replies were uneven. Namely, there were some posts which received more pieces of
comments than other posts.
4.2 Clustering Analysis of the Indegree and of the Outdegree
By using SPSS 23 to have a clustering analysis of the InDegree and OutDegree of the
members, the results are shown in the Table 2 and Table 3.
Table 2: Part 1 of Clustering analysis of the InDegree and of the OutDegree
Clustering Analysis
Clustering
1 2 3 4 5
InDegree 27.93 70.24 2.19 291.00 164.33
OutDegree 66.80 28.72 3.73 48.00 45.33
Table 3: Part 2 of Clustering analysis of the OutDegree and of the InDegree
Number of nodes in every cluster
clustering 1 15.000
2 29.000
3 976.000
4 1.000
5 3.000
effective 1024.000
missing .000
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
588 www.globalbizresearch.org
Through the clustering analysis, the members were divided into 5 categories.
The first one included 15 members. They had high values of OutDegree, but their InDegree
were not comparatively high. The InDegree centrality represents the number of the replies
received by the posters from the repliers, and the OutDegree centrality represents the number
of the repliers sent by a specific node to others. Hence, these 15 members always replied others,
but they did not reply so much replies.
The second one included 29 members. They had high values of InDegree and of OutDegree.
Hence, these 29 members always replied other and got many replies. Their relationships with
some other members were comparatively strong.
The third one included 976 members, which took up 95% of the total members. These
members had low values of InDegree and of OutDegree. Hence, they did not reply many posts
and they receive a few replies. These members were lacking of the interaction with others.
The fourth one included only 1 member. Compared to all other members, this member had
the highest values of InDegree and of OutDegree. Hence, this member replied a lot and received
the most replies.
The fifth one included 3 members. They had relatively high values of InDegree and their
values of OutDegree were also high. Hence, these 3 members replied many members and
received the comparatively high number of replies.
All in all, compared to other members, the members in the first, second, fourth and fifth
categories interacted more with others and were comparatively active. These 34 members may
be the opinion leaders. The number of them were: “380”, “23”, “128”, “20”, “56”, “2”, “113”,
“225”, “267”, “77”, “188”, “41”, “150”, “152”, “18”, “92”, “13”, “175”, “3”, “162”, “415”,
“420”, “400”, “114”, “619”, “52”, “270”, “418”, “106”, “88”, “121”, “173”, “189”, and “394”.
Their ID were : “苏大大大大大”, “康康砣”, “跟屁虫”, “临去秋波”, “败家的甘小妞妞”, “倩
倩砣”, “小小樱桃”, “miss 柚子”, “白将军”, “潇湘猫猫”, “芳芳”, “莫小喵”, “蔡大婶”, “沐
小言”, “铃铛小亚”, “雅笛”, “yyyyyyyyy”, “泡泡不是彩色的”, “dengya_wen”, “夏沫冬至”,
“懒 xiao 白”, “五五呀”, “木槿花微眠”, “安南妈”, “A 灰太狼 a”, “Soga”, “蜜蜂 fffff”,
“fish727”, “Sunshy7”, “十八大姨妈”, “俊妈咪小 P”, “晶晶 dsuger”, “5.27 向日葵”, and “翁
羽西”.
4.3 Analysis of Betweenness Centrality
By using Ucinet 6, the results of Betweenness centrality are shown in the Table 4.
Table 4: Analysis of Betweenness
Number ID 1 2
Betweenness nBetweenness
380 苏大大大大大 154350.547 14.763
23 康康砣 121755.336 11.646
128 跟屁虫 87438.781 8.363
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
589 www.globalbizresearch.org
20 临去秋波 85143.242 8.144
188 芳芳 68944.75 6.594
164 dark_darky 57067.199 5.458
174 咦~嘿嘿 51500.48 4.926
77 潇湘猫猫 51276.117 4.904
41 莫小喵 49169.605 4.703
225 miss 柚子 47165.516 4.511
Notes. (Limited by the space, only the information of first 10 members is shown)
In the table, the analysis of every member is shown. The first column in the table indicates
the original number of the members and the second column indicates the ID of the members.
The third column is the Betweenness of the members and the four column is the nBetweenness
of them. From the table, it can be seen that the top one was the member called “苏大大大大
大”. The Betweenness of this member was 154350.547 and it means that this member was on
the shortcut to many nodes inside the network. Namely, this member usually served as an
intermediary member and many information was flowed to others through this member. Hence,
this member had a very important position inside the network.
Meanwhile, there were many members who have the Betweenness being 0 (the data was
not shown in this table). It is between that these members were in the position of hanging out,
namely they just had relationships with one member inside the communities. They were not in
the shortcut of any two members and thus their values of Betweenness was 0.
4.4 Analysis of Closeness Centrality
By using Ucinet 6, the results of Closeness centrality are shown in the Table 5.
Table 5: Analysis of Closeness Centrality
Number ID 1 2 3 4
inFarness outFarness inCloseness outCloseness
821 熙、小贝 5252 1047552 19.478 0.098
380 苏大大大大大 5255 2195 19.467 46.606
128 跟屁虫 5285 2260 19.357 45.265
150 蔡大婶 5298 2251 19.309 45.446
164 dark_darky 5326 2270 19.208 45.066
152 沐小言 5349 2312 19.125 44.247
174 咦~嘿嘿 5365 2310 19.068 44.286
161 飞飞 1815 5405 2379 18.927 43.001
29 Amy1234 5406 2346 18.923 43.606
2 倩倩砣 5429 2378 18.843 43.019
Notes. (Limited by the space, only the information of first 10 members is shown)
In the table, the analysis of every member is shown. The first column in the table indicates
the original number of the members and the second column indicates the ID of the members.
The third column is the inFarness of the members and the four column is the outFarness of
them. The inFarness represents the sum of the distance from this node to other information
receivers and the outFarness represents the sum of the distance from the information senders to
this node. From the table, the member called “苏大大大大大” had the shortest distance to
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
590 www.globalbizresearch.org
other members. It means that this member might be in contact with most of the members of the
network or be able to contact the other members of the network at a very short distance. It also
can be seen that this member had the minimal control when they want to get information from
other members.
4.5 Analysis of Structure Holes
By using Ucinet 6, the results of structure holes are shown in the Table 6.
Table 6: Analysis of Structure Holes
No. ID Structural Hole Measures
1 2 3 4 5 6 7 8 9 10
Degree EffSize Efficienc Constrain Hierarchy EgoBet
Ln(Co
nstr
Indirec
ts
Densit
y Numholes
1 满天都是
馨馨 17.000 14.401 0.847 0.200 0.165 73.833 -1.611 0.605 0.195 219.000
2 倩倩砣 88.000 82.611 0.939 0.054 0.177 2451.707 -2.927 0.752 0.072 7102.000
3 dengya_w
en 64.000 58.932 0.921 0.079 0.190 1105.298 -2.534 0.793 0.097 3639.000
4 老傅 9.000 8.333 0.926 0.249 0.230 0.000 -1.389 0.311 0.083 66.000
5 teroyo 4.000 3.667 0.917 0.392 0.006 0.000 -0.936 0.250 0.167 10.000
6 lovejamt 15.000 13.022 0.868 0.202 0.123 0.000 -1.601 0.589 0.205 167.000
7 xixihaha86 5.000 3.400 0.680 0.700 0.441 0.000 -0.356 0.511 0.300 14.000
8 细鱼嫩子 8.000 7.692 0.962 0.207 0.182 23.000 -1.575 0.154 0.036 54.000
9 chy901 1.000 1.000 1.000 1.000 1.000 0.000 0.000 0.000 0.000
10 zcx 1.000 1.000 1.000 1.000 1.000 0.000 0.000 0.000 0.000
Notes. (Limited by the space, only the information of first 10 members is shown)
From the Table 6, the analysis of every members is shown. The first column in the table
indicates the original number of the members and the second column indicates the ID of the
members. From the third column, there are some structural hole measures. The most important
and the second important values are the EffSize and Constrain. The EffSize represents the
nonredundant contacts of a node. The higher the EffSize is, the more nonredundant contacts
does the node have. Meanwhile, the ConStraint measures the extent to which the node’s
network limits his or her time and energy. The lower the Constraint is, the opener the network
will be and the more possible to have structural holes.
4.6 Analysis of the indicators’ data and identification
From the section 4.2, the result of the clustering analysis of the OutDegree and of the
InDegree has shown that 34 members might be the opinion leaders. Hence, the calculated data
of these 34 members were listed in the Table 7 and the possibility of their being opinion leaders
were discussed.
Table 7: Analysis of the indicators’ data
No. ID In
Degree
Out
Degree
EffSize Constrain Betweenness inFarness outFarness
380 苏大大大
大大
291 48 161.921 0.032 154350.547 5255 2195
23 康康砣 189 33 117.542 0.037 121755.336 5430 2375
128 跟屁虫 161 67 110.211 0.045 87438.781 5285 2260
20 临去秋波 143 36 125.176 0.032 85143.242 5538 2442
56 败家的甘
小妞妞
128 22 67.745 0.077 38835.934 5614 2556
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
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2 倩倩砣 121 57 82.611 0.054 45835.426 5429 2378
113 小小樱桃 114 33 73.079 0.057 5541 2488
225 miss 柚子 109 23 73.295 0.064 47165.516 5566 2512
267 白将军 102 36 71.422 0.067 39184.133 5511 2425
77 潇湘猫猫 99 34 71.635 0.056 51276.117 5572 2508
188 芳芳 90 34 75.384 0.044 68944.75 5507 2466
41 莫小喵 87 15 66.755 0.05 49169.605
150 蔡大婶 81 96 74.514 0.057 40815.316 5298 2251
152 沐小言 79 96 64.986 0.069 34886.75 5349 2312
18 铃铛小亚 75 63 54.672 0.077 25664.84 5462 2411
92 雅笛 73 38 55.72 0.075 30097.926
13 yyyyyyyy
y
72 50 42.767 0.095 15683.476 5483 2418
175 泡泡不是
彩色的
71 72 58.281 0.071 20294.611 5462 2402
3 dengya_w
en
71 48 58.932 0.079 28336.488 5499 2441
162 夏沫冬至 65 58 45.142 0.083 15418.374 5435 2380
415 懒 xiao 白 64 12 32.767 0.129
420 五五呀 62 24 46.424 0.071 16388.652
400 木槿花微
眠
60 17 56.157 0.067 40839.59 5597 2530
114 安南妈 59 24 48.051 0.093 22950.369
619 A 灰太狼a
59 6 33.579 0.084
52 soga 58 10 42.816 0.059 21221.381
270 蜜蜂 fffff 55 44 42.159 0.089 5581 2533
418 fish727 53 7 25.704 0.122 17923.656
106 Sunshy7 51 19 39.029 0.374
88 十八大姨
妈
49 19 28.004 0.137
121 俊妈咪小P
47 10 29.88 0.143
173 晶 晶dsuger
46 17 29.632 0.101
189 5.27 向日
葵
44 34 37.015 0.116 16618.361
394 翁羽西 44 13 35.524 0.079 16905.506
Notes. (*Table 4 lists the information of Betweenness of first 40 members. Table 5 lists the information
of both inFarness and outFarness of first 40 members. If the 34 members’ ID were not shown in the Table
4, their Betweenness are not reported in the table above. Similarly, if the 34 members’ ID were not shown
in the Table 5, their inFarness and outFarness are not reported in the table above.)
From the table 7, the opinion leaders inside this community could be identified.
Nodes with numbers of “380”, “23”, “128”, “20”, “56”, “2”, “225”, “267”, “77”, “188”,
“150”, “152”, “18”, “13”, “175”, “3”, “162” and “400” could considered as the opinion
leaders.
Their were “苏大大大大大”, “康康砣”, “跟屁虫”, “临去秋波”, “败家的甘
小妞妞”, “倩倩砣”, “miss 柚子”, “白将军”, “潇湘猫猫”, “芳芳”, “蔡大婶
”, “沐小言”, “铃铛小亚”, “yyyyyyyyy”, “泡泡不是彩色的”, “dengya_wen”,
“夏沫冬至” and “木槿花微眠”.
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
592 www.globalbizresearch.org
Because they had the comparatively highest values of InDegree, OutDegree, EffSize,
Betweenness and lowest values of Constrain, inFarness and outFarness, they could be
considered as the opinion leaders in this online community.
5. Discussion and Conclusion
Opinion leaders is considered to affect the flow of eWOM information and the purchase
choice of consumer through eWOM communication greatly. Hence, how to identify the online
opinion leaders has been one of the hottest questions for researchers. For this research, the
opinion leaders in the online communities of consumption in which they cannot be identified
directly were focused.
This article begins with a literature review of the approaches of identifying the online
opinion leaders and pointed out that SNA is suitable for identifying the online opinion leaders
in the social network. Then an empirical study by utilizing SNA to identifying the randomly
selected online community of consumption in China is held. The results show that 18 opinion
leaders in this communities are identified.
Theoretically, this empirical study provides one of the first empirical studies towards the
application of SNA on identifying the opinion leaders inside the online communities of
consumption in which they cannot be identified directly and fill in the research gap that little
researches focus on identify the online opinion leaders in such online communities.
Practically, for the organizers of online communities of consumption or marketers, they can
utilize SNA to identify the opinion leaders in those communities which fail to distinguish
opinion leaders from other members at first. Then they can make full use of these opinion
leaders for the marketing strategies.
6. Limitation and Future Study
Although the author collected and analyzed the relevant researches and had the empirical
analyses, the limited time, limited resources, limited research abilities and others lead to the
limitations of this thesis. It is these limitations that provides the directions for future researches.
The limitations include: 1) The randomly selected online community of consumption in this
article may fail to represent all other online communities of consumption. 2) The sample of
China may not enough to explain all the situations in other countries. 3) The time period of data
was only one week and the opinion leadership may change in the long time. 4) The snowball
sampling is useful for collecting data in a short time, but it will be difficult to collect data in a
long-time period. 4) The indicators for identifying online opinion leaders including the
indicators of central positions and of structure holes, are actually subjective, out of the author’
choice.
Consequently, future research can improve the samples by investigating more online
communities, choosing other counties and collecting the data in the long-time period.
Global Journal of Emerging Trends in e-Business, Marketing and Consumer Psychology (GJETeMCP)
An Online International Research Journal (ISSN: 2311-3170)
2018 Vol: 4 Issue: 1
593 www.globalbizresearch.org
Meanwhile, future research can choose some efficient approaches to collect data, such as
designing some algorithms. Furthermore, future research can improve the research method by
not only limited to calculating the indicators of central positions and of the structure hole
position.
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