Multi QA MPNet base model for Semantic Search
This is a sentence-transformers model: It maps sentences & paragraphs to a 768 dimensional dense vector space and was designed for semantic search. It has been trained on 215M (question, answer) pairs from diverse sources.
This model uses mpnet-base
.
Training Data
We use the concatenation from multiple datasets to fine-tune this model. In total we have about 215M (question, answer) pairs. The model was trained with MultipleNegativesRankingLoss using Mean-pooling, cosine-similarity as similarity function, and a scale of 20.
Dataset | Number of training tuples |
---|---|
WikiAnswers Duplicate question pairs from WikiAnswers | 77,427,422 |
PAQ Automatically generated (Question, Paragraph) pairs for each paragraph in Wikipedia | 64,371,441 |
Stack Exchange (Title, Body) pairs from all StackExchanges | 25,316,456 |
Stack Exchange (Title, Answer) pairs from all StackExchanges | 21,396,559 |
MS MARCO Triplets (query, answer, hard_negative) for 500k queries from Bing search engine | 17,579,773 |
GOOAQ: Open Question Answering with Diverse Answer Types (query, answer) pairs for 3M Google queries and Google featured snippet | 3,012,496 |
Amazon-QA (Question, Answer) pairs from Amazon product pages | 2,448,839 |
Yahoo Answers (Title, Answer) pairs from Yahoo Answers | 1,198,260 |
Yahoo Answers (Question, Answer) pairs from Yahoo Answers | 681,164 |
Yahoo Answers (Title, Question) pairs from Yahoo Answers | 659,896 |
SearchQA (Question, Answer) pairs for 140k questions, each with Top5 Google snippets on that question | 582,261 |
ELI5 (Question, Answer) pairs from Reddit ELI5 (explainlikeimfive) | 325,475 |
Stack Exchange Duplicate questions pairs (titles) | 304,525 |
Quora Question Triplets (Question, Duplicate_Question, Hard_Negative) triplets for Quora Questions Pairs dataset | 103,663 |
Natural Questions (NQ) (Question, Paragraph) pairs for 100k real Google queries with relevant Wikipedia paragraph | 100,231 |
SQuAD2.0 (Question, Paragraph) pairs from SQuAD2.0 dataset | 87,599 |
TriviaQA (Question, Evidence) pairs | 73,346 |
Total | 214,988,242 |
Technical Details
In the following some technical details how this model must be used:
Setting | Value |
---|---|
Dimensions | 768 |
Produces normalized embeddings | Yes |
Pooling-Method | Mean pooling |
Suitable score functions | dot-product, cosine-similarity, or euclidean distance |
Note: This model produces normalized embeddings with length 1. In that case, dot-product and cosine-similarity are equivalent. dot-product is preferred as it is faster. Euclidean distance is proportional to dot-product and can also be used.
Usage and Performance
The trained model can be used like this:
from sentence_transformers import SentenceTransformer, util
question = "That is a happy person"
contexts = [
"That is a happy dog",
"That is a very happy person",
"Today is a sunny day"
]
# Load the model
model = SentenceTransformer('navteca//multi-qa-mpnet-base-cos-v1')
# Encode question and contexts
question_emb = model.encode(question)
contexts_emb = model.encode(contexts)
# Compute dot score between question and all contexts embeddings
result = util.dot_score(question_emb, contexts_emb)[0].cpu().tolist()
print(result)
#[
# 0.60806852579116820,
# 0.94949364662170410,
# 0.29836517572402954
#]
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