Triple
T15511902
| Position | Surface form | Disambiguated ID | Type / Status |
|---|---|---|---|
| Subject | Christopher Manning |
E368728
|
entity |
| Predicate | hasTaughtCourse |
P3295
|
FINISHED |
| Object |
CS224N: Natural Language Processing with Deep Learning
CS224N: Natural Language Processing with Deep Learning is a popular Stanford graduate-level course that teaches modern natural language processing techniques using deep learning methods.
|
E1160183
|
NE FINISHED |
How this triple was built (4 steps)
Every LLM step that produced this triple, in pipeline order — named-entity classification, the disambiguation choices (the exact options shown, with the pick highlighted), and the generated description. The batch + timestamp of each is in the Provenance table below.
NER
Named-entity recognition
gpt-5-mini
Instruction
Given a phrase, classify it is english named entity (e.g., persons, organizations, works of art) in Latin script, or not (e.g., literals, dates, URLs, verbose phrases). For disambiguation, the statement where the phrase occurs as object is also given. Please return a JSON object with `phrase` (string, the phrase being analyzed) and `is_ne` (boolean, indicating whether the phrase is a Named Entity).
Input
Phrase: CS224N: Natural Language Processing with Deep Learning | Statement: [Christopher Manning, hasTaughtCourse, CS224N: Natural Language Processing with Deep Learning]
NED1
Entity disambiguation (via context triple)
gpt-5-mini-2025-08-07
Target entity: CS224N: Natural Language Processing with Deep Learning Context triple: [Christopher Manning, hasTaughtCourse, CS224N: Natural Language Processing with Deep Learning]
-
A.
Distributed Representations of Sentences and Documents
"Distributed Representations of Sentences and Documents" is a seminal machine learning paper that introduced the Paragraph Vector (Doc2Vec) method for learning continuous vector representations of variable-length text such as sentences, paragraphs, and documents.
-
B.
Efficient Estimation of Word Representations in Vector Space
Efficient Estimation of Word Representations in Vector Space is the influential 2013 paper that introduced the word2vec models for learning distributed word embeddings, significantly advancing natural language processing.
-
C.
Deep contextualized word representations
Deep contextualized word representations is a seminal NLP paper that introduced ELMo, a deep bidirectional language model that produces context-sensitive word embeddings and significantly advanced performance on many language understanding tasks.
-
D.
Sequence to Sequence Learning with Neural Networks
"Sequence to Sequence Learning with Neural Networks" is a seminal 2014 paper that introduced the sequence-to-sequence (seq2seq) neural network framework for tasks like machine translation, laying the groundwork for many modern NLP models.
-
E.
Connectionist Temporal Classification
Connectionist Temporal Classification is a neural network training algorithm designed for sequence labeling tasks where input and output lengths differ and alignments are unknown, widely used in speech and handwriting recognition.
- F. None of above. chosen
- G. Unsure - the case is ambiguous/there is not enough information to decide.
NEDg
Description generation
gpt-5.1
Instruction
Generate a one-sentence description of the target entity. You are given a context triple in the form (subject, predicate, object), where the object is the target entity. # Instructions Use the triple to infer relevant information about the entity. Describe the entity based on what is most defining, well-known. Avoid repeating the information from the triple, unless really essential. # Response Format Return only the sentence: "Description: [one-sentence description of the target entity]"
Input
Entity: CS224N: Natural Language Processing with Deep Learning Triple: [Christopher Manning, hasTaughtCourse, CS224N: Natural Language Processing with Deep Learning]
Generated description
CS224N: Natural Language Processing with Deep Learning is a popular Stanford graduate-level course that teaches modern natural language processing techniques using deep learning methods.
NED2
Entity disambiguation (via description)
gpt-5-mini-2025-08-07
Target entity: CS224N: Natural Language Processing with Deep Learning Target entity description: CS224N: Natural Language Processing with Deep Learning is a popular Stanford graduate-level course that teaches modern natural language processing techniques using deep learning methods.
-
A.
Distributed Representations of Sentences and Documents
"Distributed Representations of Sentences and Documents" is a seminal machine learning paper that introduced the Paragraph Vector (Doc2Vec) method for learning continuous vector representations of variable-length text such as sentences, paragraphs, and documents.
-
B.
Efficient Estimation of Word Representations in Vector Space
Efficient Estimation of Word Representations in Vector Space is the influential 2013 paper that introduced the word2vec models for learning distributed word embeddings, significantly advancing natural language processing.
-
C.
Deep contextualized word representations
Deep contextualized word representations is a seminal NLP paper that introduced ELMo, a deep bidirectional language model that produces context-sensitive word embeddings and significantly advanced performance on many language understanding tasks.
-
D.
Sequence to Sequence Learning with Neural Networks
"Sequence to Sequence Learning with Neural Networks" is a seminal 2014 paper that introduced the sequence-to-sequence (seq2seq) neural network framework for tasks like machine translation, laying the groundwork for many modern NLP models.
-
E.
Connectionist Temporal Classification
Connectionist Temporal Classification is a neural network training algorithm designed for sequence labeling tasks where input and output lengths differ and alignments are unknown, widely used in speech and handwriting recognition.
- F. None of above. chosen
Provenance (5 batches)
The batch behind each pipeline step, in order, with when it ran. Timestamps are batch-level — stages were processed in waves, so the object chain (NER → NED1 → NEDg → NED2) reads in order, but predicate / elicitation batches can sit in a different wave.
| Step | Stage | Batch ID | Status | When |
|---|---|---|---|---|
| creating | Elicitation | batch_69d85a1794cc8190b0b428716296e63e |
completed | April 10, 2026, 2:01 a.m. |
| NER | Named-entity recognition | batch_69e04030c0208190a1931ea130075603 |
completed | April 16, 2026, 1:49 a.m. |
| NED1 | Entity disambiguation (via context triple) | batch_69ff3671a4448190b81edae6ff2669a7 |
completed | May 9, 2026, 1:28 p.m. |
| NEDg | Description generation | batch_69ff3725d74081908603d9970857c8b6 |
completed | May 9, 2026, 1:31 p.m. |
| NED2 | Entity disambiguation (via description) | batch_69ff37ce835c81909d4538fa4cbfe91f |
completed | May 9, 2026, 1:34 p.m. |
Created at: April 10, 2026, 3:56 a.m.