Attributes do not match
Hello, I wanted to create multi-label classifier with 13 labels and I successfully did the training and testing phases. But the problem when I loaded the model, as shown in below image, there was an error message that attributes do not match.
I attached the model development as well to make sure all good.
Thanks in advance!
I attached the model development as well to make sure all good.
Thanks in advance!
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Probably you have not done the same exact preprocessing ETL in the model development set as in the new data you are trying to apply the model to. You need to make sure you do all the same transformations, etc., otherwise your model may be trying to use attributes that don't exist or have been modified from their raw form.
Well, somehow RapidMiner determines that the attributes are not the same, since that is what the error is telling you. You should do a row by row comparison of the attributes in both files and double check things like attribute names and data types (sometimes a data type will come in one file as numeric and another file as polynominal, or other similar problems).
I will explain how I did it to ensure I'm on the right road. All labels were sat as binomial before importing them. Then I use multi label classification binary relevance (0, 1) in training phase. In application phase, I provide only the texts alongside labels to let machine predict (0 or 1) for each label. As I said I follow the exact preprocessing
Hi @Nawaf,
In order we can reproduce what you observe and thus understand what is going on, can you please share your process and data ?
Regards,
Lionel
In order we can reproduce what you observe and thus understand what is going on, can you please share your process and data ?
Regards,
Lionel
@Nawaf,
To be honest, the pictures you shared are too small to be read, thus these pictures are unusable :
Can you please share :
- your RM process (.rmp file) via File -> Export Process
- your different data files (a priori Excel files)
Thank you for your understanding,
Regards,
Lionel
To be honest, the pictures you shared are too small to be read, thus these pictures are unusable :
Can you please share :
- your RM process (.rmp file) via File -> Export Process
- your different data files (a priori Excel files)
Thank you for your understanding,
Regards,
Lionel
click on the wheel of your psot and click on "Edit" and delete what you want to delete
Regards,
Lionel :
PS : I'm working on your process, I think that you did not connect the wordlist got from your training process (that you Store) to the
word input port of your Process documents from data of your "prediction process".
This way the word attributes are strictly the same in your "training process" and in your "prediction process" which is a mandatory condition for your "prediction process" to work as explained by @Telcontar120...
Regards,
Lionel :
PS : I'm working on your process, I think that you did not connect the wordlist got from your training process (that you Store) to the
word input port of your Process documents from data of your "prediction process".
This way the word attributes are strictly the same in your "training process" and in your "prediction process" which is a mandatory condition for your "prediction process" to work as explained by @Telcontar120...
@Nawaf
Please try this "prediction process" (in attached file) with your real data.
You will see that I connected the wordlist that you store in your "training process" to the wordlist input port of your Process Documents from Data of your "prediction process".
Please try it and tell me if the prediction process is working fine now ….
Regards,
Lionel
PS : Note that this process will still raise an error because you have only missing values on your testing excel file...
Please try this "prediction process" (in attached file) with your real data.
You will see that I connected the wordlist that you store in your "training process" to the wordlist input port of your Process Documents from Data of your "prediction process".
Please try it and tell me if the prediction process is working fine now ….
Regards,
Lionel
PS : Note that this process will still raise an error because you have only missing values on your testing excel file...
@Nawaf,
The model I shared is for unseen data prediction (to be executed AFTER execution of the training process)
Regards,
Lionel
The model I shared is for unseen data prediction (to be executed AFTER execution of the training process)
Regards,
Lionel
lionelderkrikor
Sorry for the confusion but if you check both files, you can see I divided this model into two phases and did the wordlist connection in prediction file
Sorry for the confusion but if you check both files, you can see I divided this model into two phases and did the wordlist connection in prediction file
@Nawaf ,
I think I understood: it is linked to the fact that you did not give a "special role" to the attributes you want to predict (the labels) :
To be sure to understand you want to predict all your attributes (surveillance, compulsion etc. ) based on your "Text" attribute" ,right ?
Regards,
Lionel
I think I understood: it is linked to the fact that you did not give a "special role" to the attributes you want to predict (the labels) :
To be sure to understand you want to predict all your attributes (surveillance, compulsion etc. ) based on your "Text" attribute" ,right ?
Regards,
Lionel
@Nawaf,
You can find in attached file a "training process" which gives a special role to all attributes you want to predict (with a Loop attributes operator).
Please run this "training" process first and then run your "Prediction.rmp" process. In my case, this last process is working fine.
Hope this helps,
Regards,
Lionel
You can find in attached file a "training process" which gives a special role to all attributes you want to predict (with a Loop attributes operator).
Please run this "training" process first and then run your "Prediction.rmp" process. In my case, this last process is working fine.
Hope this helps,
Regards,
Lionel
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@Nawaf,
You can find in attached file a "training process" which gives a special role to all attributes you want to predict (with a Loop attributes operator).
Please run this "training" process first and then run your "Prediction.rmp" process. In my case, this last process is working fine.
Hope this helps,
Regards,
Lionel
You can find in attached file a "training process" which gives a special role to all attributes you want to predict (with a Loop attributes operator).
Please run this "training" process first and then run your "Prediction.rmp" process. In my case, this last process is working fine.
Hope this helps,
Regards,
Lionel