引用
比較入選機率分組與其他加權方法對電話調查樣本的調整:上網率的推估
A Comparison of Propensity Score Sub-classification and other Calibration Methods based on a Telephone Sample to Estimate Internet Usage
作者:杜素豪(Su-Hao TU) | 首次發表於 2020-05-28 | 第 56 期 June 2015
DOI:https://dx.doi.org/10.6786/TJS.201506_(56).0003
研究紀要(Research Notes)
論文資訊 | Article information
摘要 Abstract
傳統的事後分層與多重反覆加權法可以降低抽樣誤差,但在改進推估偏差的效果仍然有限。本研究採用「入選機率調整法(propensity score adjustment, PSA)」,對2008年的電話訪問樣本進行18歲以上臺灣民眾之上網率的推估,進行上述兩種加權方法以及其納入PSA前後之估計效果的比較。在幾種入選機率值(propensity scores, PS)的調整方法中,本研究採用次樣本分組法,因此也同時比較四到十個分組之間估計效果的差異。
本研究以同一時段蒐集的「臺灣地區社會變遷基本調查五期四次全球化組」為PSA的參考樣本;(前)行政院研究考核委員會執行的「數位落差調查」所推估的全臺灣民眾的上網率為擬母體黃金標準,亦即PSA與兩種傳統加權之估計效果的比較基準。結果證實納入原調查權數(來自事後分層與多重反覆加權)後,在五個次樣本分組時,上網率的估計值最接近數位落差調查的估計值。比起納入事後分層權數,納入多重反覆加權權數的PSA在估計誤差上相對較小。

關鍵詞:事後分層、多變項反覆加權、入選機率調整法、次樣本分組
While post-stratification and raking calibration methods can reduce sampling errors, they have estimation limitations. The author adopts propensity score adjustment (PSA) to estimate Internet usage based on data collected from a 2008 telephone sample. Comparisons were made among post-stratification, raking, post-stratification PSA, and raking PSA. Stratification was used to produce PS weights and to compare estimated Internet usage for seven sub-classifications. The Taiwanese Social Change Survey conducted during the same period was used as the reference sample for PSA, while official statistics based on a Digital Divide Survey as the benchmark for bias reduction comparisons. Results indicate that (a) Internet usage estimates based on PSA adjusted according to base weight (i.e., survey weight from post-stratification or raking) using five sub-classes were more accurate than other estimates, and (b) bias reduction based on PSA adjusted by raking exceeded that of PSA adjusted by post-stratification.

Keywords: Post-Stratification, Raking, Propensity Score Adjustment, Sub-Classification