2 questions concerning machine learning algorithms like linear / logistic regression, ANN, SVM:

The models in these algorithms are dealing with data sets where each example has a no. of features and one output possible value (ex : getting price of house with features f) but what if the features are enough to produce more than one piece of information about the item of interest which means more than one output?! consider this as an example: a data set about cars where each example (car) has the following features (initial velocity, acceleration, and time), in real world these features are enough to know two variables: velocity via

`v = v_i + at`

and distance via`s = (v_i * t ) + (0.5 * a *t^2 )`

so I want example`X`

with features`(x1 , x2 , ... , xn)`

to have output`y1`

and`y2`

in the same step so that after training the model, if a new car example is given with initial velocity and acc. and time, the model will be able to predict the velocity and distance at the same time, is this possible?in the houses' price prediction example where example

`X`

given with features`(x1, x2, x3)`

the model predicts the price, can the process be reversed by any means? meaning if I give the model example`X`

with features`x1`

,`x2`

with price`y`

can it predict the feature`x3`

?