A Study of the Effect of Online Reviews on Cruise Travel Purchase
Intentions
Shengjun Gan
a
and Zhen Jia
*b
School of Economics and Management, Shanghai Maritime University, Shanghai, China
*
Corresponding author
Keywords: Online Reviews, Cruise Consumers, Purchase Intentions.
Abstract: The Internet has accelerated the development of e-commerce, and online reviews have become an important
data resource for companies to analyze their product competitiveness. By verifying the empirical analysis of
the relevant characteristics of online reviews affecting purchase intentions, the service and quality of cruise
products can be optimized. Based on information adoption theory and SOR theory, the survey data were
collected through scenario simulation, and structural equation empirical tests were conducted using SPSS and
AMOS software. The validation results show that the review quality, Comment valence, Commenter
credibility and product involvement have significant effects on purchase intention among online review-
related features, and online reviews have significant effects on perceived usefulness and perceived risk
through the mediating role of consumer perception. Cruise lines can analyze consumers' cruise experience
through online reviews and give reference suggestions for cruise lines to improve their own brands.
1 INTRODUCTION
In the latest 48th Statistical Report on the
Development of the Internet in China released by the
China Internet Network Information Center, as of
November 2021, 99.7% of China's Internet users used
cell phones to access the Internet and 782 million
online shoppers, accounting for 79.1% of all Internet
users (Information on: China Internet Network
Information Center, 2021). The rapid development of
the Internet has provided a convenient way for
consumers to communicate with other consumers
through the Internet, and most online shoppers rely
heavily on online reviews when making purchase
decisions when they are more concerned or
unfamiliar with the products they buy, giving
consumers more ways to understand the products and
make better understanding and selection of their
target products.
Cruise tourism attracts the experience of travel
enthusiasts and promotes the generation of cruise
tourism consumption behavior. In recent years, the
world cruise market has experienced a period of rapid
growth and significant changes, and in 2020, the new
a
https://orcid.org/0000-0003-0356-164X
b
https://orcid.org/0000-0002-9271-2157
crown epidemic caused the cruise tourism industry to
suffer an unprecedented blow, but the relevant
experts said that after the epidemic, the long-term
positive development trend of the Chinese cruise
market has not changed, and tourists are greatly eager
for the resumption of cruises, and the enthusiasm for
cruise tourism has only increased. Due to the late start
of China's cruise industry, a more mature cruise
culture has not been formed in China, and domestic
tourists have a biased perception of cruise products,
relying on online websites and travel agencies to sell
tickets. Tourists can pre-judge the product and
consider their own purchase decisions through online
evaluations on ticketing websites. See-To, E.W.K et
al. (2013) mentioned that when potential consumers
are exposed to a large number of negative online
reviews, they form negative expectations about the
product.
2 LITERATURE REVIEW
From the available research papers, the existing
literature mainly focuses on studies that demonstrate
Gan, S. and Jia, Z.
A Study of the Effect of Online Reviews on Cruise Travel Purchase Intentions.
DOI: 10.5220/0011210200003440
In Proceedings of the International Conference on Big Data Economy and Digital Management (BDEDM 2022), pages 675-683
ISBN: 978-989-758-593-7
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
675
the comprehensive study of factors influencing
visitors' purchase intentions or behaviors, the number
of comments, comment quality, product involvement,
consumer's level of expertise on it, review tone, and
Comment valence. Online reviews are used by
consumers as a form of word-of-mouth
communication to reduce uncertainty about the
quality of a service or product and to guide consumer
attitudes and behaviors. The impact of online reviews
on cruise travel purchases on ticketing websites has
been less addressed in numerous studies. Based on
information adoption theory and SOR theory, this
paper analyzes how online review features influence
potential cruise consumers' purchase intentions
through the mediating effect of consumer
perceptions, using major ticketing websites as a
perspective.
Both word-of-mouth online reviews and online
reviews are part of information, and consumers tend
to make certain changes in their purchases of
products and services as a result of the influence of
this information, which is a form of information
adoption. The change in purchase behavior adopted
by consumers after being influenced by word-of-
mouth information is also a manifestation of
information adoption. The process of information
adoption is actually a process in which users
subconsciously seek and use relevant information, in
which Xueyan Song (Song, 2010) mentioned that the
act of information adoption is essentially a kind of
decision making, and in the process of making
adoption decisions, in order to make the right
decision, information users inevitably have to carry
out further information seeking, retrieval, selection,
evaluation and other activities, and the final The final
result of information adoption behavior is reflected in
the absorption and utilization of information (Song,
2010).
Stimulus-Organism-Response (S-O-R) theory
explains the influence of the environment on
individual behavior from a psychological
perspective, arguing that the environment stimulates
individual emotions and ultimately influences
individual behavioral responses. In the online
shopping environment, the interaction between
consumers and the website, the seller and the
consumer (extrinsic stimulation) affects their sense of
presence (intrinsic perception) and ultimately affects
consumers' trust in the merchant (consumer
behavior). Therefore, in this paper, the comment
quality, comment valence, commenter credibility and
consumer product involvement of online review
features are considered as the influence signals of
external information on potential cruise consumers,
and when consumers receive external stimulus
signals, they judge them through self-perception and
then react with purchase intention. Based on the
information adoption theory and SOR theory, this
paper will use structural equations to demonstrate that
the characteristics related to online reviews affect the
purchase intention of potential cruise consumers
through the mediating role of consumer perception.
3 RESEARCH MODEL
3.1 The Relationship between Online
Review Features and Perceived
Usefulness
The quality of online reviews is reflected on the
performance, price, and self-perception of the
product, and high-quality reviews are comprehensive,
objective, detailed, and persuasive. If a review
contains understandable and objective comments
with specific reasons for recommendation, it is
relatively more persuasive than a review expressing
feelings and recommendations without specific
reasons (Park, Lee, Han 2007), making consumers
feel helpful, but the quality of negative reviews can
make consumers feel risky with suspicion. Chen, Li-
Mei et al. (2019) verified that online comment quality
positively affects consumer attitudes and that
consumers are more strongly motivated to evaluate
information when online reviews are of higher quality
(Chen, Huang, Chen 2019). The higher the quality of
review content, the greater the impact on consumer
purchase decisions.
The validity of reviews refers to the direction of
the reviews, which can be positive, negative and
neutral, with neutral reviews only providing
consumers with descriptive information about the
target object, but without any evaluative guidance,
negative reviews have a higher perceived usefulness
than positive reviews.
The source of information is an important factor
affecting the usefulness and credibility of
information, and the quality and competence of
online reviewers can largely affect consumers'
perception of review information, being that online
reviews do not have the interpersonal factors of
traditional word-of-mouth and the weak connectivity
of the internet, which can prevent consumers from
assessing the real situation of reviewers. Ji (Ji, 2016)
argues that whether a reviewer has credibility mainly
examines the number of online purchases made by
the reviewer on that e-commerce website, is
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676
registration and real name authentication, credit
rating level, and the reviewer's knowledge related to
the product (Ji, 2016). With higher professionalism
and greater activity and influence of reviewers,
reviews of consumers with high credit rating are
considered to have higher credibility, their reliability
is higher, and the quality of published reviews is
higher, and reliable and high-quality information can
have a significant impact on consumers' attitudes.
Numerous studies related to product involvement
confirm that it plays a crucial role in consumer
behavior and that the level of consumer involvement
in online products directly affects attitudes and
affective tendencies. Wang Wei's (2014) study on
product involvement shows that consumers with high
product involvement invest more time and effort in
evaluating their chosen products, which leads to a
more complex purchase decision process (Wang,
2014). In the information processing and
comprehension stage, consumers with a high
involvement level evaluate the content of information
reviews thoroughly and thus obtain information of
practical value. The following hypothesis is therefore
proposed.
H1a: Online comment quality positively
affects perceived usefulness.
H2a: Online comment valence positively
affects perceived usefulness.
H3a: Commenter credibility positively affects
perceived usefulness.
H4a: Product involvement positively affects
perceived usefulness.
3.2 The Relationship between Online
Review Features and Perceived
Risk
When the consumers who intend to purchase cruise
tourism products have generated the perceived risk,
they will browse other tourists' reviews through the
website in order to avoid the perceived risk, so online
reviews have a great influence on consumers. In the
big data environment, online reviews about cruise
tourism are consequently visible in major online
platforms, consumers' access to tourism information
is very easy, and a large number of online reviews
will generate information overload, and consumers
will then pay attention to the evaluation of
information. In a study of cruise tourists' intention to
revisit based on perceived value and risk, consumers'
perceived risk is their uncertainty about the outcome
of cruise tourism product selection implicit in the
process of choosing and understanding cruise
tourism. When consumers browse to review
information posted by reviewers with high
credibility, the higher their trust in them, which in
turn reduces the perceived risk. Based on the fine-
grained processing likelihood model, Chen, Li-Mei et
al. showed that consumers use Comment valence as
an important cue for edge paths to influence
consumers' attitudes and behaviors (Chen, Huang,
Chen 2019). In general, the first thing that consumers
focus on when browsing a travel product is the overall
rating of that product. When tourists consider cruise
tourism, considering the characteristics of cruise
tourism can cause financial, functional, and other
perceived risks to the tourists' psyche, and tourists
will do everything possible to gather information to
reduce these risks to reduce uncertainty. Based on the
above analysis, the following hypothesis is proposed.
H1b: Online comment quality negatively
affects perceived risk.
H2b: Online comment valence negatively
affects perceived risk.
H3b: Commenter credibility negatively
affects perceived risk.
H4b: Product involvement negatively affects
the perceived risk.
3.3 The Impact of Online Reviews on
Cruise Tourism Purchase
Intentions
Due to the intangible nature of cruise products and
services and the simultaneous nature of production
and consumption, consumers search for information
about a large number of tourism products in order to
reduce uncertainty and risk when making cruise
travel decisions. sparks (2011) et al. verified that
characteristics such as the number of online travel
reviews, review quality, comment valence, and
review timeliness had a significant effect on
consumers' intention to order
0
(Sparks, Browning
2011). Based on the above analysis, the following
hypotheses are proposed.
H1c: Online comment quality positively
affects cruise travel purchase intention.
H2c: Online comment validity positively
influences cruise travel purchase intention.
H3c: Commenter credibility positively affects
the willingness to purchase cruise tourism.
H4c: Product involvement positively
influences cruise purchase intention.
A Study of the Effect of Online Reviews on Cruise Travel Purchase Intentions
677
3.4 The Impact of Online Reviews on
Cruise Tourism Purchase
Intentions
When reviews are perceived as useful, it is the recall
of positive and negative review information that
influences the formation of consumer attitudes and
intentions through the impressions it creates on the
object. When information about a cruise tourism
product's reviews and recommendations is positive,
then consumers will have a positive attitude towards
the cruise tourism product, and conversely, when
information about a cruise tourism product's reviews
and recommendations is negative, then a negative
attitude will follow. From the perspective of
perceived usefulness, consumers' attitudes and
perceived usefulness will jointly influence their
behavioral intentions. The perceived usefulness of
online reviews of service-oriented products has a
significant positive impact on consumers' purchase
intention. Therefore, hypothesis H5 is proposed.
H5: Perceived usefulness positively affects
cruise tourism purchase intention.
3.5 The Influence of Perceived Risk on
Cruise Tourism Purchase Intention
Potential consumers, as rational economic agents,
consider the existence of risks before purchasing a
product and then effectively avoid them during the
purchase process. Several scholars have identified
factors that influence the perceived usefulness of
individual consumer reviews, including source
credibility, product type, argumentation, validity and
ratings (Park, Lee, Han 2007). Therefore, online
reviews provide such opportunities for faster access
to information.
H6: Perceived risk negatively affects cruise
travel purchase intentions.
Based on the above research hypotheses H1 to
H6, the hypothesis framework model shown in Figure
I is proposed. The interpretation of this model is that
the relevant features of online reviews of cruise
related product websites have an impact on the
willingness of potential cruise consumers by
influencing their psychological perceptions.
Figure 1: Conceptual model of the impact of online reviews on cruise travel purchase intentions.
4 RESEARCH DESIGN AND
ANALYSIS
4.1 Measuring Scale
This research is carried out by designing scenario
simulations. It is assumed that the choice of cruise
travel will affect consumers’ perceptions through the
characteristics of online reviews. Afterwards, data
were collected through questionnaire stars, WeChat,
and interviewees filling in on-site. In order to ensure
the authenticity and validity of the answers to the
questionnaire, the questionnaire will be screened for
a certain period of time, and the questionnaire will be
eliminated if the time is too short. According to the
set of questions, this research will distribute as much
as possible more than the number of questions X10
questionnaires. Before conducting a full-scale survey,
the questionnaire data collected in the pre-survey
should be tested with the software SPSS25. After
passing the preliminary investigation, a large sample
collection is carried out. A total of 440 questionnaires
were collected online and On site, of which 423 were
valid questionnaires. The questionnaire effective rate
reached 96.1%. The occupations are mainly 62% of
white-collar workers and 16% of students. In terms of
gender characteristics, 221 males and 202 females
accounted for 52.2% and 47.83% of the total sample,
respectively. The gender ratio of the sample subjects
is very close, and the age ratio meets the requirements
of this study. The seven latent variables in this study
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678
are all measured using the American psychologist
Likert’s five-level scale and designed in conjunction
with relevant research results at home and abroad. A
total of 24 items are involved, involving the four
characteristics of online reviews and the perceived
usefulness of tourists. Three aspects: gender,
perceived risk and willingness to buy. Among them,
the characteristic variables of online reviews: the
measurement items of review quality are based on
Chatterjee (Chatterjee 2001) on the quality of reviews
(Chatterjee 2001), the measurement items of
comment valence and commenter credibility mainly
refer to Cheung and Sia (2009) based on the research
of online review valence affecting consumers'
purchasing decision and purchasing behavior
intention, the credibility of the reviewer is measured
from two dimensions of the professional ability and
reliability of the reviewer (Cheung, Luo, Sia, etal,
2009). The measurement items of product
involvement are mainly based on the literature of
these scholars such as Antil (Antil 1984) and
Zaichkowsky (Zaichkowsky 1985) (Antil 1984),
(Zaichkowsky 1985), second, the intermediary
variables include perceived usefulness and perceived
risk, and the measurement of perceived usefulness
The items refer to the maturity scale of Park et al.
(2007), and three measurement items are obtained
through improvement (Park, Lee, Han 2007), the
items of the perceived risk measurement items refer
to the research results of Jacoby (Jacoby 1972) on
consumer perception risks(Park, Lee, Han 2007),
(Cheung, Luo, Sia, etal, 2009). Third, with regard to
the measurement items of cruise travel purchase
intention, mainly refer to the scale developed by
Kassem et al. (2003), which was formed on the basis
of minor modifications (Nada, Kassem, Jerry, 2003).
4.2 Figures and Tables
4.2.1 Reliability Test
This paper uses SPSS25.0 and Amos26.0 software to
test the reliability and validity of the measurement
model. First, perform reliability test analysis on the
above seven main variables, using reliability test
indicators: Cronbach (reliability) coefficient, average
variance extraction value and combined reliability.
Table I shows that the KMO value of each latent
variable is basically above 0.7, except for the
perceived usefulness of the 7 main test variables, the
combined reliability (CR) of the remaining variables
is all above 0.8, Cronbach'sα coefficient except for
the perceived usefulness All others are greater than
0.8, and AVE is greater than 0.5. This shows that the
survey data has good reliability.
Table 1: Model reliability and convergence validity test results.
Latent variable
Measured
Variables
Normalized
factor loading
Cronbach's
α
CR AVE
KMO
value
Sig
Comment quality
(Cq)
QA1 0.811
0.881 0.885 0.658 0.827 0
QA2 0.742
QA3 0.832
QA4 0.855
Comment valence
(Cv)
QB1 0.741
0.806 0.807 0.582 0.714 0
QB2 0.775
QB3 0.772
Commenter
credibility
(Cc)
QC1 0.839
0.834 0.839 0.635 0.713 0
QC2 0.720
QC3 0.826
Product
involvement
(Pi)
QD1 0.826
0.85 0.855 0.596 0.813 0
QD2 0.731
QD3 0.79
QD4 0.736
Perceived
usefulness
(Pu)
QE1 0.809
0.789 0.798 0.569 0.697 0
QE2 0.713
QE3 0.737
Perceived risk
(Pr)
QF1 0.802
0.828 0.829 0.618 0.721 0
QF2 0.766
QF3 0.789
Purchase intention
(Gy)
QG1 0.807
0.875 0.879 0.645 0.82 0
QG2 0.789
QG3 0.745
QG4 0.866
A Study of the Effect of Online Reviews on Cruise Travel Purchase Intentions
679
4.2.2 Validity Test
Table 2 shows that the AVE of each factor is greater
than 0.5 and the arithmetic square root of the AVE is
greater than the correlation coefficient of the other
factors, which indicates that the scale has good
convergent and discriminant validity (see Table II).
Table 2: Convergent and discriminant validity tests.
Comment
quality
Comment
valence
Commenter
credibility
Product
involvement
Perceived
usefulness
Perceived
risk
Purchase
Intention
Comment quality
0.811
Comment valence
.355** 0.763
Commenter credibility
.335** .306** 0.797
Product involvemen
t
.317** .302** .337** 0.772
Perceived usefulness
.377** .314** .441** .387** 0.754
Perceived risk
-.448** -.449** -.387** -.483** -.311** 0.786
Purchase Intention
.611** .564** .622** .625** .592** -.646** 0.803
4.3 Model Fitness Test
Through the reliability test, this study was suitable for
analysis using the structural equation model. The
results of the analysis with the help of Amos 26.0
software are as follows: the combined reliability (CR)
and Cronbach's alpha are greater than 0.7 and the
average variance extracted (AVE) is greater than 0.5
as seen in Table I, which indicates that the scale has
good internal consistency and convergent validity.
Table 3: Values of the fit indicators for the structural
equation model.
Fit
index
Recommended
value
fitted
value
Goodness
of fit
X2/df <3.0 2.038 Goo
d
GFI >0.9 0.914 Goo
d
AGFI >0.8 0.891 Goo
d
RMSEA <0.08 0.05 Reasonable
NNFI >0.9 0.916 Goo
d
IFI >0.9 0.956 Goo
d
CFI >0.9 0.955 Goo
d
A comparison of the main fitness indicators
obtained from the structural model test in Table III
with the recommended values shows that the fitted
values of the data in this paper are all within the range
of the recommended values, the fit is relatively good
and the model fit is at a superior level. This shows
that the setting of the present theoretical model is
acceptable.
4.4 Model Parameter Estimation
Through the Amos26.0 software, the overall path
fitting results of the model are shown in Table IV.
From this, the following conclusions can be drawn:
using the Bootstrap method to estimate the structural
equation model parameters, test the significance of
the path coefficients of the impact of comment
quality, comment valence, commenter credibility and
product involvement on purchase intention. (See
Table IV)
Table 4: Parameter estimation results of structural equation model.
Hypothesis Standardization factor S.E. C.R. P conclusion
Perceived
usefulness
<------- Comment quality 0.177 0.055 2.975 ** support
Perceived
usefulness
<------- Comment valence 0.109 0.066 1.742 0.082 Not supported
Perceived
usefulness
<------- Commenter credibility 0.32 0.056 5.144 ***
suppor
t
Perceived
usefulness
<------- Product involvement 0.221 0.055 3.706 ***
suppor
t
Perceived risk <------- Comment
q
ualit
y
-0.232 0.058 -4.296 *** su
pp
or
t
Perceived risk <------- Comment valence -0.278 0.07 -4.776 *** su
pp
or
t
Perceived risk <------- Commenter credibilit
y
-0.138 0.056 -2.524 0.012 su
pp
or
t
Perceived risk <------- Product involvemen
t
-0.331 0.059 -6.008 *** su
pp
or
t
Purchase Intention <------- Comment
q
ualit
y
0.217 0.038 6.189 *** su
pp
or
t
Purchase Intention <------- Comment valence 0.215 0.046 5.622 *** su
pp
or
t
Purchase Intention <------- Commenter credibilit
y
0.262 0.039 7.009 *** su
pp
or
t
Purchase Intention <------- Product involvemen
t
0.253 0.041 6.658 *** su
pp
or
t
Purchase Intention <------- Perceived usefulness 0.201 0.045 5.153 *** su
pp
or
t
Purchase Intention <------- Perceived risk -0.177 0.045 -3.923 *** su
pp
or
t
BDEDM 2022 - The International Conference on Big Data Economy and Digital Management
680
comment quality, commenter credibility and product
involvement all have a significant positive effect on
perceived usefulness, supporting hypotheses H1a,
H3a and H4a. The effect of comment valence on
perceived usefulness does not pass the significance
test and hypothesis H2a is rejected, indicating that its
effect on perceived usefulness is relatively weak.
This paper concludes that the perceived usefulness of
online reviews can be improved if the content of the
reviews is sufficiently detailed, truthful and diverse
in its presentation. The higher the rating, the more
trust consumers will have. Cruise tourists express
their satisfaction through online reviews, and the
higher their satisfaction, the higher the rating. At the
same time, the degree of involvement of the
consumer in the cruise product can be used as a
measure of the importance of cruise tourism to the
consumer, with higher involvement indicating greater
importance.
From Table IV, it is concluded that comment
quality, comment valence, commenter credibility and
product involvement all have a significant negative
effect on perceived riskiness, so the hypotheses H1b,
H2b, H3b and H4b are supported.
Both perceived usefulness and perceived risk
have a significant effect on cruise ship purchase
intention, so hypotheses H5 and H6 are supported.
4.5 Analysis of Model Mediation
Effects
From the above analysis, it can be seen that perceived
usefulness and perceived risk play a mediating role
between review quality, Comment valence,
commenter credibility, product involvement and
cruise ship purchase intention, and the determination
of whether this is a full or partial mediating effect
needs to be further explored. In this study, the
mediation effect was tested using bootstrap
confidence interval estimation and the results are
shown in Table V.
Table 5: Parameter estimation results of structural equation model.
Standardized
effect values
Bias-Corrected
Percentile
95%CI
95%CI
Lower Upper Lower Upper
Total effects
Cq→Gy 0.233 0.167 0.293 0.168 0.294
Cv→Gy 0.239 0.168 0.301 0.170 0.305
Cc→Gy 0.291 0.207 0.367 0.209 0.369
Pi→Gy 0.291 0.210 0.366 0.211 0.368
Indirect effects
Cq→Pu→Gy 0.03 0.008 0.066 0.007 0.063
Cv→Pu→Gy 0.019 -0.010 0.058 -0.012 0.055
Cc→Pu→Gy 0.058 0.017 0.128 0.015 0.123
Pi→Pu→Gy 0.038 0.008 0.087 0.007 0.085
Cq→Pr→Gy 0.035 0.011 0.077 0.008 0.072
Cv→Pr→Gy 0.046 0.015 0.101 0.012 0.095
Cc→Pr→Gy 0.017 -0.006 0.068 -0.01 0.058
Pi→Pr→Gy 0.051 0.016 0.115 0.013 0.106
direct effects
Cq→Gy 0.127 0.06 0.191 0.056 0.188
Cv→Gy 0.165 0.087 0.233 0.091 0.236
Cc→Gy 0.151 0.049 0.240 0.046 0.239
Pi→Gy 0.143 0.039 0.224 0.041 0.225
The above table shows that the total effect does
not include 0 in the interval between the values of
Lower and Upper for Bias-Corrected and Percentile
95% CI, indicating the presence of a total effect.
In the indirect effect, neither Bias-Corrected nor
Percentile 95% CI for Lower and Upper contain 0,
indicating the existence of an indirect effect, from
Table 5, it can be seen that review quality, commenter
credibility and product involvement play a mediating
role in influencing purchase intentions through
perceived usefulness. This indicates that the indirect
effect exists, suggesting that not only does online
review usefulness indirectly affect purchase
intention,
but also directly affects the latter. This suggests that
A Study of the Effect of Online Reviews on Cruise Travel Purchase Intentions
681
reviewers' attitudes towards online review
information do not indirectly influence purchase
intentions through perceived usefulness.
Similarly, comment quality, commenter
credibility and product involvement play a mediating
role in purchase intentions through perceived risk.
Commenter credibility does not indirectly affect
purchase intentions by affecting perceived risk.
Among the direct effects, the direct effects of
comment quality, comment valence, commenter
credibility and product involvement on purchase
intentions can be judged from Table 5 to be present,
directly affecting purchase intentions.
5 CONCLUSION AND
IMPLICATIONS
This paper further corroborates that the perceived
usefulness and perceived risk of consumers'
psychological perceptions play a mediating effect
between online reviews and cruise tourism
consumers' purchase intentions, enriching to some
extent the research on the influence of online reviews
on cruise tourism purchase intentions. The empirical
test analysis shows that online reviews have an
important influence on cruise tourists' purchase
intention, and it is very necessary for cruise lines,
travel agencies and online websites selling cruise
tickets to keep abreast of consumer reviews on their
own websites, understand consumers' cruise
experience, and make timely service remedies to
improve consumers' satisfaction. The findings of this
study have important implications for cruise lines,
online ticket selling websites and travel agents using
website consumer reviews to market cruise tourism
products.
Firstly, in the face of a complex and changing
marketing environment characterized by mobile and
virtualization, which is a major challenge for cruise
companies, cruise companies should strengthen the
use of the Internet for online marketing planning and
management, and can open an online review section
for their products on their official websites, invest
amounts of money to track the effectiveness of the
information content of cruise tourism online reviews,
interact with them in a timely manner, understand
consumers' psychological perceptions This will
enable them to understand consumers' psychological
perceptions and purchase motivations, consciously
develop their online marketing capabilities, provide
effective information that will help them make
purchase decisions and ultimately increase their
willingness to buy.
Secondly, we need to strengthen and enhance our
own brand characteristics, the Chinese cruise market
is huge, due to the cultural differences caused by the
consumer's experience does not meet the
psychological expectations, and this dissatisfaction
through the company's website comments and cause
brand loss, so cruise companies should use Chinese
cultural elements to enhance their own brand
recognition, and constantly improve the level of
cruise tourism services, pay attention to listen to and
appropriately adopt the tourists' suggestions, for
example The cruise line should use Chinese cultural
elements to enhance its own brand recognition and
continuously improve its cruise tourism services by
listening to and appropriately adopting tourists'
suggestions, for example, increasing the time spent
on shore visits to allow tourists to experience the
customs and traditions of the destination, so that
tourists have a high level of satisfaction with both the
cruise experience and destination tourism.
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