No statistical significance but observable trends
I have a general inference question regarding scenarios when results from data are not statistically significant but there appears to be an observable trend.
For example, treatment A
and treatment B
are applied to 2 independent populations. Using a ttest to analyze the resulting data (lets say the data is total revenue), the p value == .2, so the effect of treatment on revenue was not statistically significant. However, the total revenue from treatment A
was observably higher in treatment B
. What can I say in this regard?
I've had academic advisors recommend saying 'While the effect of treatment was not significant, a trend was observed', and then one would go on describing the trend. Is this an adequate viewpoint, or a statistical folly? What conclusions would a data scientist in industry draw and present to stakeholders from a scenario like this?
Topic data-analysis ab-test experiments
Category Data Science