I used Orange GUI and trained a RandomForest model that i later saved using the SaveModel widget.
Orange saves its models with pickle, therefore I went and wrote the following python script:
import Orange, pickle
model = pickle.load(open('model', 'rb'))
The problem is, I extensively searched the web yesterday. And couldn't find any example to make a prediction with my data (which is the same format as the data I used in the Orange GUI) or sufficient documentation on how to use the model.
Upon later research I found that I could supposedly evaluate a pre-trained model that was unpickled with the following code
results = Orange.evaluation.testing.TestOnTestData(data, test, [lambda testdata: model])
The thing is to load data I'm supposed to do:
data = Orange.data.Table('trainingData.csv');
test = Orange.data.Table('testData.csv');
And I haven't been able to find documentation regarding how to differentiate between the target and the features in these *.csv
files.
Appart from that even if I'm able create this files. I would have to do some gimmick where testData.csv
would need to be only one line long (the line I want to predict) with a target value of 1. And I would see what the model predicted by checking if the score was 100%
or 0%
So I know my questions are multiple but I could really use some help on the follwing points:
- How to define in a
*.csv
file what is the target among the features for theOrange.data.Table()
function - How to use a pickled Orange RandomForest model to make a prediction instead of using a gimmicked evaluation to make a prediction. (So that i could predict more than one item at a time..)
Thank you very much for your time