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1-2 of 2
Keywords: Bias
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Journal Articles
Journal:
Human Development
Human Development (1991) 34 (1): 35–54.
Published Online: 15 January 2010
... imitation reports subject loss of 63%, a rate that they say is normal in research on very young babies. Analyses of the differences between ba bies who do and do not complete experimen tal tasks confirm that important biases may be produced by subject loss. Fagen et al. [ 1987] compared 65 completers...
Journal Articles
Journal:
Human Development
Human Development (1991) 34 (2): 61–80.
Published Online: 15 January 2010
... that Gilligan s web rests on 4 assumptions, each in need of support. Assumption 1: Gender and Justice Bias. To hold that justice bias is mainly due to gender bias. Gilligan must assume that other causal influences are weaker. This can only be shown by comparative interpretation and analysis of (biasing) causal...