3.2. Enforcement Case Presentation
In the process of hidden property analysis of a judgment debtor, case presentation mainly presents the historical enforcement cases and the target enforcement case according to a specific format, which provides the basis for the CBR process. Therefore, the appropriate and effective case presentation is essential for hidden property analysis. An appropriate case presentation method can improve the efficiency of extracting historical enforcement cases and enhance the accuracy of the results of hiding property analysis. The enforcement case presentation is as follows:
The CBR-based hidden property analysis approach includes historical enforcement cases and target cases. The case can be presented as “Case = {Enforcement case situation, hidden property analysis result}.”
Case: and represent the set of historical enforcement cases and the target enforcement case, respectively, where represents the ith historical enforcement case, . In the target case , the result of hidden property analysis is unknown, which needs to be solved by the proposed method.
Enforcement case situation: Let , , be the collection of the attributes of enforcement cases, historical enforcement cases, and target enforcement cases, respectively, where , , , respectively, represent the jth attribute of enforcement cases, historical enforcement cases, and target enforcement cases, . Let be the weight vector of the attributes of the enforcement case, where is the weight of the jth attribute of the enforcement case.
Meanwhile, the attribute values of target enforcement cases and the attribute of historical enforcement cases can be expressed in the form of crisp symbols, crisp numbers, interval numbers, and fuzzy linguistic variables. For example, when the attribute is “gender”, the value can be expressed as male or female. The value of the attribute “annual income” can be expressed as a crisp number. When describing the value of the attribute “frozen property,” it is impossible to accurately estimate the exact amount of frozen property such as houses and vehicles. An interval value is more reasonable than describing the attribute by a crisp number. Meanwhile, considering there are no unified quantitative methods to express attributes such as credibility, consumption level, and work, fuzzy linguistic variables provide a suitable tool for presenting the attribute values given by the expert judges.
To distinguish between different data types, the attribute set of the enforcement case includes four subsets: crisp symbol attribute set , crisp number attribute set , interval number attribute set , and fuzzy linguistic variable attribute set , satisfying , where ,,,, and the corresponding subscript sets are , , , , satisfying .
Hidden property analysis result: Let be the attribute set of the results of hidden property analysis, where represents the th attribute of the result, . Let and be the eigenvalue vectors of the judgment results of the hidden property of historical enforcement case and target enforcement case , then needs to be solved in the problem.
To sum up, the presentation of historical enforcement case
and target enforcement case
is shown in
Table 1, in which
X represents the results of hidden property analysis in target enforcement case
.
3.3. Hybrid Similarity Measure between Historical Enforcement Cases and the Target Enforcement Case
In enforcement cases, the attribute values mainly include four data types: crisp symbols, crisp numbers, interval numbers, and fuzzy linguistic variables. The similarity measures of different data types are also different. Here, we introduce the similarity measures of attribute values of the four different data types.
- (1)
Crisp symbols
When the attribute value is a crisp symbol, that is,
, all the possible values of the attribute can be provided by a simple enumeration method. For example, when the attribute is “gender,” the value can be expressed as male or female. Let
,
be the attribute values of historical enforcement case
and target enforcement case
, respectively, represented by crisp symbols; then, similarity measure
under attributes
between historical enforcement case
and target enforcement case
is defined as follows:
- (2)
Crisp numbers
When the attribute value is a crisp number, that is,
, if
,
are, respectively, the attribute values of historical enforcement case
and target enforcement case
represented by the crisp number, the calculation formula of the different degree under attribute
between historical enforcement case
and target enforcement case
is as follows.
where
,
.
Under attribute
, similarity measure
between historical enforcement case
and target enforcement case
is based on the distance measure considering the reflexivity, symmetry, and other properties of the similarity and constructed using the negative exponential function [
40,
41,
42]. Therefore, the calculation formula is as follows:
- (3)
Interval numbers
When the attribute value is an interval number, that is,
, the interval number has certain advantages in describing the uncertainty of the attribute value. For example, when representing the attribute value of “frozen property,” the specific amount of frozen property, such as houses and vehicles, cannot be accurately estimated according to the market circulation value. Generally, the attribute value is expressed with an interval number, which is more reasonable than the crisp number. Suppose
and
are the attribute values of historical enforcement case
and target enforcement case
expressed by interval numbers, where
,
; then, the calculation formula of the different degree between historical enforcement case
and target enforcement case
is as follows:
where
,
.
Under attribute
, similarity measure
is as follows:
- (4)
Fuzzy linguistic variables
When the attribute values are fuzzy linguistic variables, that is,
, fuzzy linguistic variables have certain advantages in the expression of uncertainty and fuzziness of the attribute values. For example, there is no unified quantitative standard for the attribute “credibility,” and fuzzy linguistic variables such as “poor,” “medium,” and “good” are usually used. Suppose that
and
are the attribute values of historical enforcement case
and target enforcement case
represented by fuzzy triangular numbers, respectively, where
,
. Different degree
between historical enforcement case
and target enforcement case
is as follows:
where
,
.
Under attribute
, similarity measure
is
- (5)
Calculate the hybrid similarity measure between historical enforcement cases and the target enforcement case
Using Equations (1)–(7), similarity measure of attribute Qj between historical enforcement case and target enforcement case can be obtained, and the hybrid similarity measure can be obtained by aggregating similarity measure of attribute Qj.
Suppose that
is the hybrid similarity measure between historical enforcement case
and target enforcement case
; then, the calculation formula of the hybrid similarity measure is as follows:
Obviously, and the larger , the higher the similarity between historical case and target case .
3.5. Generation of Recommendations for Hidden Property Analysis
As a result of hidden property analysis, the attribute value can be composed of crisp symbols, crisp numbers, interval numbers, or fuzzy linguistic variables. When the attribute value is a crisp symbol, the most frequent opinion is considered the recommendation opinion. For example, among the five similar enforcement cases extracted, in four of the extracted cases, the judgment debtors concealed property. In one of the extracted cases the judgment debtor had no hidden property. Therefore, we can judge that the judgment debtor in the target case also concealed their property. When the attribute value is a crisp number, an interval number, or a fuzzy linguistic variable, the attribute of the recommendation of hidden property analysis is aggregated with the attribute values from similar enforcement cases, and the weight of each similar historical case is converted using the hybrid similarity measure. The calculation method of the attribute value as a result of hidden property analysis in the target enforcement case is as follows:
(1) If attribute value
of the result of hidden property analysis is a crisp symbol, attribute value
is defined as follows
(2) If attribute value
of the results of the analysis of the possibility of hidden property is a crisp number, an interval number, or a fuzzy linguistic variable, attribute value
is defined as follows:
To sum up, the steps of the CBR approach for hidden property analysis of a judgment debtor are as follows:
Step 1: calculate similarity measure sim(Ci,C0) of attribute Qj between historical enforcement cases Ci and target enforcement case C0 using Equations (1)–(7).
Step 2: give the weight vector W of the attributes of the enforcement case situation.
Step 3: calculate hybrid similarity measure Sim(Ci,C0) between historical enforcement cases Ci and target enforcement case C0, using Equation (8).
Step 4: ensure similarity threshold with Equation (9).
Step 5: extract historical cases with vital reference significance according to the extraction rules of similar enforcement cases (Equation (10)) and construct set of similar historical enforcement cases.
Step 6: using Equation (11) or (12), calculate attribute value of the results of hidden property analysis and give optimal recommendation.