Scores on benchmarks

Model rank shown below is with respect to all public models.
.421 average_language rank 4
5 benchmarks
.421
0
ceiling
best
median
.476 neural_language rank 4
4 benchmarks
.476
0
ceiling
best
median
.750 Pereira2018-ridge rank 4
2 benchmarks
.750
0
ceiling
best
median
.870 Pereira2018.243sentences-ridge v1 rank 3
.870
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.631 Pereira2018.384sentences-ridge v1 rank 8
.631
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.054 Blank2014-ridge v1 rank 11
.054
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.624 Fedorenko2016-ridge v3 rank 5
.624
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.366 behavior_language rank 5
1 benchmark
.366
0
ceiling
best
median
.366 Futrell2018-pearsonr v1 [reference] rank 5
.366
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.536 engineering_language rank 13
30 benchmarks
.536
0
ceiling
best
median
.536 SyntaxGym [reference] rank 13
30 benchmarks
.536
0
ceiling
best
median
1.0 syntaxgym-center_embed v1 [reference] rank 1
1 benchmark
1.0
0
ceiling
best
median
1.0 syntaxgym-center_embed_mod v1 [reference] rank 1
1.0
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.974 syntaxgym-npi_orc_any v1 [reference] rank 7
.974
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
1.0 syntaxgym-npi_orc_ever v1 [reference] rank 1
1.0
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.974 syntaxgym-npi_src_any v1 [reference] rank 5
.974
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
1.0 syntaxgym-npi_src_ever v1 [reference] rank 1
1.0
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.737 syntaxgym-number_orc v1 [reference] rank 4
.737
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.895 syntaxgym-number_prep v1 [reference] rank 1
.895
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.789 syntaxgym-number_src v1 [reference] rank 4
.789
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.579 syntaxgym-reflexive_orc_fem v1 [reference] rank 2
.579
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
1.0 syntaxgym-reflexive_orc_masc v1 [reference] rank 1
1.0
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.632 syntaxgym-reflexive_prep_fem v1 [reference] rank 2
.632
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.842 syntaxgym-reflexive_prep_masc v1 [reference] rank 4
.842
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.316 syntaxgym-reflexive_src_fem v1 [reference] rank 8
.316
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.789 syntaxgym-reflexive_src_masc v1 [reference] rank 3
.789
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.783 syntaxgym-subordination v1 [reference] rank 14
3 benchmarks
.783
0
ceiling
best
median
.957 syntaxgym-subordination_orc-orc v1 [reference] rank 12
.957
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.957 syntaxgym-subordination_pp-pp v1 [reference] rank 11
.957
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9
.870 syntaxgym-subordination_src-src v1 [reference] rank 16
.870
0
ceiling
best
median
sample 0 sample 1 sample 2 sample 3 sample 4 sample 5 sample 6 sample 7 sample 8 sample 9

How to use

from brainscore_language import load_model
model = load_model("opt-6.7b")
model.start_task(...)
model.start_recording(...)
model.look_at(...)

Brain Encoding Response Generator (BERG)

Through the BERG you can easily generate neural responses to text sentences of your choice using any Brain-Score language model.

For more information on how to use BERG, see the documentation and tutorial.

Benchmarks bibtex

@proceedings{futrell2018natural,
  title={The Natural Stories Corpus},
  author={Futrell, Richard and Gibson, Edward and Tily, Harry J. and Blank, Idan and Vishnevetsky, Anastasia and
          Piantadosi, Steven T. and Fedorenko, Evelina},
  conference={International Conference on Language Resources and Evaluation (LREC)},
  url={http://www.lrec-conf.org/proceedings/lrec2018/pdf/337.pdf},
  year={2018}
}
        @inproceedings{gauthier-etal-2020-syntaxgym,
    title = "{S}yntax{G}ym: An Online Platform for Targeted Evaluation of Language Models",
    author = "Gauthier, Jon and Hu, Jennifer and Wilcox, Ethan and Qian, Peng and Levy, Roger",
    booktitle = "Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics: System Demonstrations",
    month = jul,
    year = "2020",
    address = "Online",
    publisher = "Association for Computational Linguistics",
    url = "https://www.aclweb.org/anthology/2020.acl-demos.10",
    pages = "70--76",
    abstract = "Targeted syntactic evaluations have yielded insights into the generalizations learned by neural network language models. However, this line of research requires an uncommon confluence of skills: both the theoretical knowledge needed to design controlled psycholinguistic experiments, and the technical proficiency needed to train and deploy large-scale language models. We present SyntaxGym, an online platform designed to make targeted evaluations accessible to both experts in NLP and linguistics, reproducible across computing environments, and standardized following the norms of psycholinguistic experimental design. This paper releases two tools of independent value for the computational linguistics community: 1. A website, syntaxgym.org, which centralizes the process of targeted syntactic evaluation and provides easy tools for analysis and visualization; 2. Two command-line tools, {`}syntaxgym{`} and {`}lm-zoo{`}, which allow any user to reproduce targeted syntactic evaluations and general language model inference on their own machine.",
}
        

Layer Commitment

No layer commitments found for this model. Older submissions might not have stored this information but will be updated when evaluated on new benchmarks.

Visual Angle

None degrees