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consumers' individual characteristic (6 variables), health functions<br />

of the products (2 variables), consumers' behavior (5 variables) and<br />

marketing factors (3 variables). The model assumes that y obeys<br />

the binomial distribution, the probability y = 1 is equal to P,<br />

consumers' definite answers are represented by 1, negative<br />

answers are represented by 0. The probability distribution functions<br />

of y is expressed as follows:<br />

f<br />

y ( y)<br />

= p ( 1−<br />

p)<br />

( 1−y)<br />

, y = 0,<br />

1<br />

The probability of consumers' willingness to pay for C. sativus can<br />

be calculated according to the following equation:<br />

⎛ m ⎞ ⎡ ⎛ m ⎞⎤<br />

p( y)<br />

= f ⎜α<br />

β jχ<br />

⎟ ij ⎢ ⎜ α β jχ<br />

⎟<br />

⎜<br />

+ ∑ ⎟<br />

= 1/<br />

1+<br />

exp<br />

⎜<br />

− + ∑ ij ⎟⎥<br />

+ μi<br />

⎝ j=<br />

1 ⎠ ⎢⎣<br />

⎝ j=<br />

1 ⎠⎥⎦<br />

In this equation, P(y) is the probability of consumers' willingness to<br />

pay for C. sativus, χij is independent variables of No.j influencing<br />

factors, βj is the regression coefficients of No.j influencing factors, m<br />

is the number of the influencing factors, α is the regression<br />

intercept, µi is the random disturbance term of No.i observed<br />

objects. All the data analyses were carried out using SPSS17.0<br />

software.<br />

RESULTS<br />

A total of 467 respondents from the survey returned the<br />

completed questionnaires (response rate 46.7%). 138 of<br />

the respondents would pay for C. sativus, which<br />

accounted for 29.6%. Statistical description of the survey<br />

sample is presented in Table 2. In consumers' individual<br />

characteristic, gender, age, education, family monthly<br />

income, marital status and profession were investigated.<br />

The survey results demonstrate that the male<br />

respondents constitute 51.8% of the respondents while<br />

female respondents constitute 48.2% of it. 53.1% of the<br />

respondents are high school graduates and below, 33.6%<br />

of the respondents are university graduates and 13.3% of<br />

the respondents are post graduates. Average monthly<br />

income of sampled households which is less than 4000<br />

RMB accounts for 30.6%, 4001 to 7000 RMB accounts<br />

for 19.9%, 7001 to 10000 RMB accounts for 16.7%,<br />

10001 to 13000 RMB accounts for 13.9%, and more<br />

than13001 RMB accounts for 18.8%. In health functions<br />

of the products, consumer attitudes of health functions<br />

and active ingredient content are surveyed. Survey<br />

results revealed that 62.9% of the respondents consider<br />

health functions important or very important and 68.1% of<br />

it believes active ingredient content is important or very<br />

important. In consumers' behaviour, taste of the products,<br />

brand image, comparative purchasing behavior, gifts and<br />

package are surveyed. Survey results indicate that 82.0%<br />

of the respondents consider taste of the products<br />

important or very important and 73.0% of it believes<br />

brand image is important or very important. In marketing<br />

factors, price, place and media advertisement are<br />

investigated. The survey results demonstrate that 37.0%<br />

of the respondents consider price as unimportant or fairly<br />

unimportant while 31.9% of it believe price is important or<br />

(1)<br />

(2)<br />

Hong et al. 4425<br />

very important.<br />

KMO is a measure of sampling adequacy that indicates<br />

the proportion of common variance that might be caused<br />

by underlying factors. High KMO values (close to 1)<br />

generally indicate that factor analysis may be useful,<br />

which is the case in this study: KMO = 0.727, if the KMO<br />

test value is less than 0.5, factor analysis will not be<br />

useful. Bartlett’s test of sphericity indicates whether the<br />

correlation matrix is an identity matrix, indicating that<br />

variables are unrelated. A significance level less than<br />

0.05 indicates that there are significant relationships<br />

among variables, which is the case in this study: χ2<br />

=5206.487 (P=0.000). The Cronbach's alpha coefficient<br />

represents the degree of internal consistency of items<br />

within a test, and values can theoretically range from 0<br />

(zero internal consistency) to 1 (perfect internal<br />

consistency). In this study, the value of Cronbach's alpha<br />

is 0.108, when Cronbach's alpha value is up to 0.542<br />

after deleting A6 and D3. So, A6 and D3 were deleted;<br />

the remaining 14 items were selected to evaluate<br />

consumers' willingness to pay for C. sativus. In order to<br />

get 467 consumers' cross-sectional data, we used the<br />

logistic regression analysis. In the course of data<br />

processing, taking all the variables into it, obtained test<br />

results are shown in Table 3. Nagelkerke R² and Cox and<br />

Snell R² statistics attempt to quantify the amount of<br />

variance explained by the logistic regression model. The<br />

probability of the observed results, given the estimated<br />

parameters, is known as the “likelihood”. Since likelihood<br />

is a small number of less than one, it is customary to use<br />

“-2LL” (−2 log likelihood) as a measure of the model's<br />

goodness of fit. A good model is one in which there are<br />

high values of Nagelkerke R² and Cox and Snell R²<br />

statistics (the closer the values are to the unit, the higher<br />

is the variability of the endogenous variables ability to be<br />

explained) as well as high likelihood of the observed<br />

results (that is, with a low value of -2LL). In this study,<br />

Nagelkerke R² is 0.373, Cox and Snell R² is 0.262 and -<br />

2LL is 424.821. Model can better fit the overall sample<br />

data; independent variables have a good explanation for<br />

dependent variable.<br />

DISCUSSION<br />

Consumer preferences for certain food attributes are<br />

important for government agencies and manufacturers<br />

(Gao and Schroeder, 2009). In the past, different<br />

preference elicitation methods have been used by<br />

economists and market researchers to obtain the<br />

willingness to pay for certain product attributes. In this<br />

study, consumers' gender has a significant positive<br />

impact on willingness to pay for C. sativus. The survey<br />

results illustrate that female consumers are more willing<br />

to pay for C. sativus. They accept more information about<br />

C. sativus and are prone to purchase impulsively.<br />

Moreover, they are more sensitive to the advertisement,<br />

store promotions, packaging and so on. Therefore,

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