Dontopedia

train_df

From Dontopedia, the open, paraconsistent wiki. (Last updated 2026-06-09.)

train_df has 9 facts recorded in Dontopedia across 3 references, with 2 live disagreements.

9 facts·5 predicates·3 sources·2 in dispute

Mostly:rdf:type(3), used by(2), is training data for(1)

Maturity scale raw canonical shape-checked rule-derived certified

Inbound mentions (6)

Other subjects in dontopedia point AT this entity as a value. These are inverse relationships — e.g. "X motherOf this subject" — and answer questions the forward facts can't. Grouped by predicate.

hasParameterHas Parameter(2)

derivedFromDerived From(1)

splitsIntoSplits Into(1)

trainsOnTrains on(1)

usesDataUses Data(1)

Other facts (8)

The long tail: predicates that appear too rarely to warrant their own section. Filter or scroll to find a specific one. Each row links to its source.

8 facts
PredicateValueRef
Rdf:typeData Frame[1]
Rdf:typeTraining Dataset[1]
Rdf:typeData Frame[3]
Used byModel Training[1]
Used byModel.fit[2]
Is Training Data forSparse Model[2]
Is Output ofSplit Data Statement[2]
Has ColumnLabel Column[3]

Timeline

Timeline axis is valid_time — when each source says the fact was true in the world, not when Dontopedia learned about it. Retracted rows are kept for provenance; coloured stripes indicate the context kind.

typebeam/b3bf4b36-b6fb-4f89-a967-2ebf362c0106
ex:DataFrame
labelbeam/b3bf4b36-b6fb-4f89-a967-2ebf362c0106
train_df
typebeam/b3bf4b36-b6fb-4f89-a967-2ebf362c0106
ex:TrainingDataset
usedBybeam/b3bf4b36-b6fb-4f89-a967-2ebf362c0106
ex:model-training
isTrainingDataForbeam/f64ce046-3d3f-49b8-999c-3ceaeca8f188
ex:sparse-model
usedBybeam/f64ce046-3d3f-49b8-999c-3ceaeca8f188
ex:model.fit
isOutputOfbeam/f64ce046-3d3f-49b8-999c-3ceaeca8f188
ex:split-data-statement
typebeam/9669963d-f7d7-452d-a9ec-0cf09ed6be1d
ex:DataFrame
hasColumnbeam/9669963d-f7d7-452d-a9ec-0cf09ed6be1d
ex:label-column

References (3)

3 references
  1. ctx:claims/beam/b3bf4b36-b6fb-4f89-a967-2ebf362c0106
    • full textbeam-chunk
      text/plain1 KBdoc:beam/b3bf4b36-b6fb-4f89-a967-2ebf362c0106
      Show excerpt
      # Train the model model = SparseModel() model.fit(train_df) # Make predictions predictions = model.predict(test_df) # Calculate the recall score recall = recall_score(test_df['label'], predictions) print(f'Recall score: {recall:.3f}') ```
  2. ctx:claims/beam/f64ce046-3d3f-49b8-999c-3ceaeca8f188
    • full textbeam-chunk
      text/plain1 KBdoc:beam/f64ce046-3d3f-49b8-999c-3ceaeca8f188
      Show excerpt
      # Load the data df = pd.read_csv('data.csv') # Split the data into training and testing sets train_df, test_df = df.split(test_size=0.2, random_state=42) # Train the model model = SparseModel() model.fit(train_df) # Make predictions pred
  3. ctx:claims/beam/9669963d-f7d7-452d-a9ec-0cf09ed6be1d
    • full textbeam-chunk
      text/plain1 KBdoc:beam/9669963d-f7d7-452d-a9ec-0cf09ed6be1d
      Show excerpt
      predictions.append(predicted_label) return predictions # Make predictions predictions = predict_labels(test_df, bm25, train_df) # Calculate the recall score recall = recall_score(test_df['label'], predictions, average='binary'

See also

Keep researching

Missing something or suspicious of what's here? Kick off a research session — a Claude agent will investigate, cite its sources, and file new facts into a dedicated context you can review before accepting into the shared view.