ned-graphs's Issues
Have problem
Error
Seek information regarding the input parameters for the test setting
We seek information from your side to understand what are the input parameters in the test phase of the model:
- Let's assume we have an input sentence "Michelle is walking on the street". Michelle is the surface form which has Its correct Wikidata ID is Q13133 (Michelle Obama)
- while you test the model on the test set, what is the input? Do you just pass the sentence "Michelle is walking on the street" and directly predict its correct Wikidata Q id? Or you pass the sentence "Michelle is walking on the street" and also assume that Michelle as the recognized entity and pass sentence plus "Michelle" surface form as input and predicts the correct Wikidata ID?
We are a bit confused about the input values for the test cases. For the training, it is quite clear.
Clarification on inputs to test the model
Error while parsing the rdf files to extract triplets.
Any data for the KG triplets available?
I was wondering whether any information about the KG triplets was available anywhere?
I noticed that you're a using GCN
s, thus I assume you should have constructed the graph associated to the entity linking task somewhere, am I right?
Indeed, I believe all the scipts implementing the SPARQL
queries can be found in the corresponding wikidata_query
directories, how am I supposed to use those to retrieve the triplets and build the Knowledge Graph?
Cannot reproduce results as mentioned in paper
I am unable to reproduce the results as mentioned in your paper on the same dataset, code and embeddings.
I have followed the exact steps mentioned in the readme and run the model "wikidata_entity_linking_with_attentive_rnn_triplets".
I haven't made any changes in the code and am using glove embeddings as mentioned, still the results do not match.
Kindly look into the issue.
Have probrem ..
error
thank you fore response
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