Table 7 Effect Sizes (f?) of Structural Model Based on the decision criterion, all the independent variables possess a of the dependent variable (Cohen, 1988; Henseler et al., 2009). Finally, t its predictive relevance via blindfolding (q?). Stone-Geisser Predictive re larger than 0 (0 <) indicates that exogenous constructs have predictive re smaller effect size on evance suggests that (Stone, 1974; Geisser, 1974; Hair et al., 2017). The blindfolding of Construct Cross validated results in a 0.149 Q2 value well above the threshold value of 0. It implies has significant predictive relevance over women empowerment. he variance he structural model is assessed fot he Q2 value evance over endogenous construc’ Redundancy hat the contribution of cooperatives Based on the decision criterion, all the independent variables possess a smaller effect size on the variance The effect size (f#) of the PLS algorithm is the next measure of the structural model. The effect size is definec as "the increase in R? relative to the proportion of variance of the endogenous latent variable that remains unexplained" (Cohen, 1988; Henseler et al., 2009). Hair et al. (2017) and Cohen (1988) noted > 0.35 — f value is regarded as larger effect size, > 0.15 - f? value: medium effect size and > 0.02 f2 value equal to smaller effect size. Table 7 contains the effect size of corresponding latent constructs. smaller effect size. Table 7 contains the effect size of corresponding latent constructs.