To plan a pilot I am using Ngene to generate an efficient design with 24 choice situations which will be presented to participants in blocks of six per participant.
Utility functions for the two alternatives are identical; priors for main effects are estimations based on the literature. Specifically, for categorical attribute B preferences are assumed to be 1>2>3>4, and for P 1>2>3, therefore the defined dummy priors in the code. "A" is a risk factor, therefore, generates disutility. Parameters for the interaction effects are completely unknown; therefore, the zeroes as priors for b51 to b102.
My problem is that when generating designs using the code below, I frequently get clearly dominant alternatives in the suggested choice situations.
To give an example, Ngene suggests the following choice situation where alt2 is clearly dominant:
alt1: W=75 / B=3 / P=1 / A=30
alt2: W=130 / B=2 / P=1 / A=30
Can you help/explain to me what I am doing/coding wrong?
I would highly appreciate it!
- Code: Select all
Design
;alts = alt1, alt2
;rows = 24
;block = 4
;eff = (mnl, wtp(ref1))
;wtp = ref1(*/b1)
;model:
U(alt1) = b1[0.01] * W[75,100,115,130] + b2.dummy[0.3|0.2|0.1]* B[1,2,3,4]
+ b3.dummy[0.2|0.1] * P[1,2,3] + b4[-0.01] * A[30,45,60]
+ b51[0] * W*B.dummy[1] + b52[0] * W*B.dummy[2] + b53[0] * W*B.dummy[3]
+ b61[0] * W*P.dummy[1] + b62[0] * W*P.dummy[2]
+ b7[0]*W*A
+ b811[0] * B.dummy[1]*P.dummy[1] + b812[0] * B.dummy[1]*P.dummy[2]
+ b821[0] * B.dummy[2]*P.dummy[1] + b822[0] * B.dummy[2]*P.dummy[2]
+ b831[0] * B.dummy[3]*P.dummy[1] + b832[0] * B.dummy[3]*P.dummy[2]
+ b91[0] * B.dummy[1]*A + b92[0] * B.dummy[2]*A + b93[0] * B.dummy[3]*A
+ b101[0] * P.dummy[1]*A + b102[0] * P.dummy[2]*A
/
U(alt2) = b1 * W + b2.dummy * B + b3.dummy * P + b4 * A
+ b51 * W*B.dummy[1] + b52 * W*B.dummy[2] + b53 * W*B.dummy[3]
+ b61 * W*P.dummy[1] + b62 * W*P.dummy[2]
+ b7*W*A
+ b811 * B.dummy[1]*P.dummy[1] + b812 * B.dummy[1]*P.dummy[2]
+ b821 * B.dummy[2]*P.dummy[1] + b822 * B.dummy[2]*P.dummy[2]
+ b831 * B.dummy[3]*P.dummy[1] + b832 * B.dummy[3]*P.dummy[2]
+ b91 * B.dummy[1]*A + b92 * B.dummy[2]*A + b93 * B.dummy[3]*A
+ b101 * P.dummy[1]*A + b102 * P.dummy[2]*A
$