language: en
datasets:
- squad_v2
license: cc-by-4.0
model-index:
- name: autoevaluate/roberta-base-squad2
results:
- task:
type: question-answering
name: Question Answering
dataset:
name: squad_v2
type: squad_v2
config: squad_v2
split: validation
metrics:
- name: Exact Match
type: exact_match
value: 79.9309
verified: true
- name: F1
type: f1
value: 82.9433
verified: true
- name: exact
type: exact
value: 79.9309
verified: true
- name: f1
type: f1
value: 82.9433
verified: true
- name: total
type: total
value: 11869
verified: true
- name: HasAns_exact
type: HasAns_exact
value: 79.9309
verified: true
- name: HasAns_f1
type: HasAns_f1
value: 82.9433
verified: true
- name: HasAns_total
type: HasAns_total
value: 11869
verified: true
- name: best_exact
type: best_exact
value: 79.9309
verified: true
- name: best_exact_thresh
type: best_exact_thresh
value: 0
verified: true
- name: best_f1
type: best_f1
value: 82.9433
verified: true
- name: best_f1_thresh
type: best_f1_thresh
value: 0
verified: true
roberta-base for QA
Note: this is a clone of
roberta-base-squad2
for internal testing.
This is the roberta-base model, fine-tuned using the SQuAD2.0 dataset. It's been trained on question-answer pairs, including unanswerable questions, for the task of Question Answering.
Overview
Language model: roberta-base
Language: English
Downstream-task: Extractive QA
Training data: SQuAD 2.0
Eval data: SQuAD 2.0
Code: See an example QA pipeline on Haystack
Infrastructure: 4x Tesla v100
Hyperparameters
batch_size = 96
n_epochs = 2
base_LM_model = "roberta-base"
max_seq_len = 386
learning_rate = 3e-5
lr_schedule = LinearWarmup
warmup_proportion = 0.2
doc_stride=128
max_query_length=64
Using a distilled model instead
Please note that we have also released a distilled version of this model called deepset/tinyroberta-squad2. The distilled model has a comparable prediction quality and runs at twice the speed of the base model.
Usage
In Haystack
Haystack is an NLP framework by deepset. You can use this model in a Haystack pipeline to do question answering at scale (over many documents). To load the model in Haystack:
reader = FARMReader(model_name_or_path="deepset/roberta-base-squad2")
# or
reader = TransformersReader(model_name_or_path="deepset/roberta-base-squad2",tokenizer="deepset/roberta-base-squad2")
For a complete example of roberta-base-squad2
being used for Question Answering, check out the Tutorials in Haystack Documentation
In Transformers
from transformers import AutoModelForQuestionAnswering, AutoTokenizer, pipeline
model_name = "deepset/roberta-base-squad2"
# a) Get predictions
nlp = pipeline('question-answering', model=model_name, tokenizer=model_name)
QA_input = {
'question': 'Why is model conversion important?',
'context': 'The option to convert models between FARM and transformers gives freedom to the user and let people easily switch between frameworks.'
}
res = nlp(QA_input)
# b) Load model & tokenizer
model = AutoModelForQuestionAnswering.from_pretrained(model_name)
tokenizer = AutoTokenizer.from_pretrained(model_name)
Performance
Evaluated on the SQuAD 2.0 dev set with the official eval script.
"exact": 79.87029394424324,
"f1": 82.91251169582613,
"total": 11873,
"HasAns_exact": 77.93522267206478,
"HasAns_f1": 84.02838248389763,
"HasAns_total": 5928,
"NoAns_exact": 81.79983179142137,
"NoAns_f1": 81.79983179142137,
"NoAns_total": 5945
Using the official question answering notebook from transformers
yields:
{'HasAns_exact': 77.93522267206478,
'HasAns_f1': 83.93715663402219,
'HasAns_total': 5928,
'NoAns_exact': 81.90075693860386,
'NoAns_f1': 81.90075693860386,
'NoAns_total': 5945,
'best_exact': 79.92082877116145,
'best_exact_thresh': 0.0,
'best_f1': 82.91749890730902,
'best_f1_thresh': 0.0,
'exact': 79.92082877116145,
'f1': 82.91749890730917,
'total': 11873}
which is consistent with the officially reported results. Using the question answering Evaluator
from evaluate
gives:
{'HasAns_exact': 77.91835357624831,
'HasAns_f1': 84.07820736158186,
'HasAns_total': 5928,
'NoAns_exact': 81.91757779646763,
'NoAns_f1': 81.91757779646763,
'NoAns_total': 5945,
'best_exact': 79.92082877116145,
'best_exact_thresh': 0.996823787689209,
'best_f1': 82.99634576260925,
'best_f1_thresh': 0.996823787689209,
'exact': 79.92082877116145,
'f1': 82.9963457626089,
'latency_in_seconds': 0.016523243643392558,
'samples_per_second': 60.52080460605492,
'total': 11873,
'total_time_in_seconds': 196.18047177799986}
which is also consistent with the officially reported results.
Authors
Branden Chan: branden.chan@deepset.ai
Timo M枚ller: timo.moeller@deepset.ai
Malte Pietsch: malte.pietsch@deepset.ai
Tanay Soni: tanay.soni@deepset.ai
About us
deepset is the company behind the open-source NLP framework Haystack which is designed to help you build production ready NLP systems that use: Question answering, summarization, ranking etc.
Some of our other work:
- Distilled roberta-base-squad2 (aka "tinyroberta-squad2")
- German BERT (aka "bert-base-german-cased")
- GermanQuAD and GermanDPR datasets and models (aka "gelectra-base-germanquad", "gbert-base-germandpr")
Get in touch and join the Haystack community
For more info on Haystack, visit our GitHub repo and Documentation.
We also have a community open to everyone!
Twitter | LinkedIn | Slack | GitHub Discussions | Website
By the way: we're hiring!