Hello every one. I am working on analysis of pooled survey data for my project. The hypothesis that I am interested in is exploring is assessing whether the COVID pandemic and related restrictions affected modern contraceptive use among married women of reproductive age in Ethiopia. It is suggested that I use poison link if used as a proportion at cluster level, the cluster level here would be enumeration area (EA_ID). The goal is show whether the trends (slopes) varied between pre-post period. It is suggested to use interaction term as well with year X pre-post and check whether the slopes varied. I need guidance whether in such GEE is the right model with family link poison. The dependent variable here is MCP which is binary while independent variable is year.
. dataex year EA_ID household marital_status mcp
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Listed 100 out of 74111 observations
Use the count() option to list more
.
I availed many options but am nit satisfied with it. would love to take your guidance.
. dataex year EA_ID household marital_status mcp
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Code:
* Example generated by -dataex-. To install: ssc install dataex clear input float year long EA_ID int household long marital_status float mcp 2015 2260 1 1 1 2015 2294 3 5 1 2015 2308 1 1 1 2015 2738 55 1 0 2015 2759 2 1 1 2015 2915 8 2 0 2015 2085 1 5 0 2015 2373 6 1 1 2015 2248 2 3 0 2015 2231 1 1 0 2015 2013 1 1 1 2015 2215 2 5 0 2015 2853 2 3 0 2015 2853 1 5 0 2015 2855 1 1 0 2015 2797 1 2 0 2015 2963 1 5 0 2015 2276 1 5 0 2015 2798 1 5 0 2015 2387 1 1 0 2015 2799 1 5 0 2015 2894 145 5 0 2015 2837 98 1 0 2015 2853 1 5 0 2015 2853 1 1 1 2015 2294 8 1 0 2015 2271 3 3 1 2015 2175 1 1 0 2015 2563 2 1 1 2015 2433 1 5 0 2015 2954 1 1 1 2015 2391 1 1 0 2015 2097 1 5 0 2015 2896 1 1 1 2015 2216 1 4 1 2015 2091 1 1 0 2015 2002 1 3 0 2015 2215 1 1 1 2015 2522 1 1 0 2015 2659 1 5 0 2015 2008 1 1 0 2015 2119 1 1 1 2015 2882 2 3 1 2015 2620 1 1 1 2015 2756 4 1 0 2015 2853 1 1 0 2015 2295 2 1 1 2015 2896 6 2 1 2015 2539 1 1 0 2015 2557 1 1 0 2015 2615 1 1 0 2015 2879 1 1 0 2015 2225 1 1 0 2015 2808 1 1 0 2015 2538 8 1 0 2015 2051 3 5 0 2015 2003 8 1 1 2015 2429 1 5 0 2015 2570 1 1 0 2015 2299 1 1 1 2015 2385 1 1 0 2015 2442 4 1 0 2015 2119 1 1 1 2015 2076 1 5 0 2015 2543 1 1 0 2015 2601 1 1 0 2015 2557 1 1 0 2015 2541 1 4 0 2015 2648 1 2 1 2015 2559 2 5 0 2015 2879 1 1 0 2015 2801 2 5 0 2015 2841 1 5 0 2015 2508 1 1 0 2015 2344 1 1 1 2015 2994 1 5 0 2015 2894 112 5 0 2015 2799 1 4 0 2015 2716 1 5 0 2015 2491 1 5 0 2015 2595 1 5 0 2015 2673 1 1 0 2015 2283 1 1 0 2015 2645 1 4 0 2015 2907 2 1 0 2015 2673 1 1 1 2015 2125 1 1 0 2015 2308 1 1 0 2015 2630 1 1 0 2015 2756 1 4 0 2015 2661 1 5 0 2015 2231 5 5 0 2015 2153 2 1 1 2015 2048 1 1 1 2015 2113 1 1 1 2015 2080 1 5 0 2015 2813 1 1 1 2015 2281 1 5 0 2015 2383 3 5 0 2015 2615 2 1 0 end label values marital_status marital_status_list label def marital_status_list 1 "1. Currently married", modify label def marital_status_list 2 "2. Currently living with partner", modify label def marital_status_list 3 "3. Divorced or separated", modify label def marital_status_list 4 "4. Widow or widower", modify label def marital_status_list 5 "5. Never married", modify label values mcp yes_no_list label def yes_no_list 0 "0. No", modify label def yes_no_list 1 "1. Yes", modify
Listed 100 out of 74111 observations
Use the count() option to list more
.
I availed many options but am nit satisfied with it. would love to take your guidance.
