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Information Engineering

A method for restoring the anthropometric database of elderly women for design

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Pages 456-471 | Received 13 Mar 2023, Accepted 29 Jan 2024, Published online: 01 Apr 2024
 

ABSTRACT

In order to solve the problem of missing data from anthropometric database, this paper proposes a weighted regression method that can better repair the database. Through data classification and correlation analysis, least squares method and weighted regression method optimal setting and fitting effect analysis, the proposed “algorithm” was used to predict three data samples with different missing degrees. The results show that (1) the optimal setting for the least squares method is when the X and Y counts are both 1, and for the weighted regression method,is when the X and Y counts are both 1 and the weight decay factor is 90%. (2) The individual comparison effect indicator T ≤ 1 and the overall comparison effect indicator G = 0.68 < 1 both indicate that the weighted regression method has a better fitting performance. (3) The mean errors of the least squares method for the three samples with small missing data were 3.6, 1.16, and 1.11 times that of the weighted regression method. For with medium missing data, were 1.27, 1.16, and 1.05 times. For with large missing data,were 1.15, 1.42, and 1.25 times. In summary, the weighted regression method can provide better prediction results.

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Nomenclature

E=

Error mean

G=

The overall comparison effect indicator

Q=

The mean square error

R2=

The difference between the predicted and original data indicator formula

RP2=

The best-fit effect indicator of the least square method

RT2=

The best-fit effect indicator of the weighted regression method

S=

Sample number

T=

The comparison effect indicator

ρX,Y=

The Pearson correlation coefficient

τ=

The weight decay rate

yˆ=

The mean square

wi=

The weight decay factor

Disclosure statement

No potential conflict of interest was reported by the author(s).

Additional information

Funding

The work was supported by the Natural Science Foundation of Fujian Province [2020J01286].

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