No. The Parameter Estimates table tests each estimate against the null hypothesis that the true parameter equals zero. That is all it tells you.
You might use other information to interpret the meaning of these effects. For example, the Prediction Profiler allows you to change the settings and see the updated predicted probability for each of the response levels. I do not have an example like yours. I used Big Class and fit the nominal response Age against the continuous Weight and Height predictors. Here is the profiler for this model:
You can also save the probability formulas. JMP saves the linear predictor, the transformed probabilities, and the most likely level given the probabilities. Here is the group of linear predictors for the log odds.
Here is the formula for the first linear predictor:
The numbers are the parameter estimates. The next group of formula columns transforms the log odds back to probability:
Here is the formula for the first probability transformation:
Finally, the predicted response level is the response level with the highest probability: