Skip to main content

No project description provided

Project description

subset2evaluate

Package to select informative samples to human-evaluate for NLG tasks such as machine translation or summarization. It is based on a paper by Vilém Zouhar, Peng Cui, and Mrinmaya Sachan from ETH Zürich.

Selecting Examples to Efficiently Human-Evaluate Models: Researchers create test sets to evaluate models with human annotations, which are the gold standard as opposed to automated metrics. Natural language generation, a rapidly evolving field, has a recurring need for new test sets. Oftentimes, to fit the budgetary constraints, only a random subset of the test set is chosen for evaluation. This is grossly inefficient and in this work we provide methods to strategically select the most informative samples to be evaluated. We describe variance- and diversity-based methods for when we know the system outputs and their evaluation with automated metrics beforehand. These methods consistently outperform random subset selection, the most common approach. We introduce PreCOMET to make our methods applicable to blind test sets, where the systems are unknown in advance. The model is trained to predict item utility for human evaluation just based on the source alone. We show on two natural language generation tasks, machine translation and summarization, that these methods make human evaluation more efficient and reduce costs without burdening annotators.

Usage

In short, you put list of items in the package and the package sorts the list in descending order (first is better) based on how suitable each item is for evaluation, such as with human annotations. In addition to the sorting, the package also returns the item utility stored in the subset2evalute_utility field of each item. General recommendations based on MT evaluation:

When to use? What is it? How to use?
Good automated metric available, such as MetricX-23. Variance in metric scores. method="metric_var", metric="MetricX-23"
Metric not available but system outputs available. Diversity of system outputs. method="diversity_bleu"
System outputs not available, only sources. Estimated diversity in system outputs. method="precomet_diversity"

The package supports multiple methods. We show benchmark of the methods on machine translation evaluation:

Method Requirements Cluster count Accuracy
Random 91.0% 2.25
Output-based selection
MetricX-23 var MetricX-23 scores 92.0% 3.22
MetricX-23 avg MetricX-23 scores 91.8% 3.16
Diversity BLEU Outputs 92.1% 2.99
Diversity unigram Outputs 91.1% 2.62
IRT diff.×disc. MetricX-23 scores 91.2% 3.14
Source-based selection
PreCOMET var model Sources 91.2% 2.58
PreCOMET avg model Sources 91.1% 2.68
PreCOMET diversity [model] Sources 92.1% 2.86
PreCOMET diff.×disc. [model1, model2] Sources 93.1% 3.22

And benchmark of the methods for summarization:

Method Requirements Cluster count Accuracy
Random 90.5% 2.00
Output-based selection
Coverage var Coverage scores 92.2% 2.30
Coverage avg Coverage scores 91.8% 2.20
IRT diff.×disc. Coverage scores 92.6% 2.44
Diversity BLEU Outputs 89.3% 2.90
Diversity unigram Outputs 87.2% 2.80

Example for Machine Translation

Install the package and download WMT data:

pip3 install subset2evaluate
# optionally these two packages for IRT and PreCOMET based selections
pip3 install git+https://github.com/zouharvi/PreCOMET.git git+https://github.com/zouharvi/py-irt.git
bash experiments/01-get_wmt_data.sh

Then in Python we compute the baseline:

import subset2evaluate

data_full = subset2evaluate.utils.load_data("wmt23/en-cs")
len(data_full)
> 1098

# take only top 100 segments to "human-evaluate"
data_new = subset2evaluate.select_subset.run_select_subset(data_full, method="random")
subset2evaluate.utils.eval_system_clusters(data_new[:100])
> 1

# compare it to something better:
data_new = subset2evaluate.select_subset.run_select_subset(data_full, method="metric_var" metric="MetricX-23")
subset2evaluate.utils.eval_system_clusters(data_new[:100])
> 3

Example for Summarization

import subset2evaluate

data_full = subset2evaluate.utils.load_data("summeval")
len(data_full)
> 100

# take only top 25 segments to "human-evaluate"
data_new = subset2evaluate.select_subset.run_select_subset(data_full, method="random")
subset2evaluate.utils.eval_system_clusters(data_new[:25], metric="human_relevance")
> 2

data_new = subset2evaluate.select_subset.run_select_subset(data_full, method="diversity_bleu")
subset2evaluate.utils.eval_system_clusters(data_new[:25], metric="human_relevance")
> 3

Example for Custom Dataset

The intended usage is for your own custom datasets where you wish to choose which to evaluate. The input to subset2evaluate needs to be a list of items. What each item needs to contain depends on the method. For example, diversity requires tgt on each item such that the output diversity can be computed. As another texample var requires scores/metric on each item such that the metric variance can be computed. The item can contain any additional extra fields even if they're not explicitly used. As an example, look at the existing loaders:

import subset2evaluate
import json
data = subset2evaluate.utils.load_data("wmt23/en-de")

len(data)
> 549

json.dumps(data[0], indent=2)
> {
>   "i": 0,
>   "src": "Police arrest 15 after violent protest outside UK refugee hotel",
>   "ref": "Polizei verhaftet 15 Menschen nach gewalttätigen Protesten vor einer Flüchtlingsunterkunft in Großbritannien",
>   "tgt": {
>     "Lan-BridgeMT": "Polizei verhaftet 15 nach gewalttätigem Protest vor britischem Flüchtlingshotel",
>     "NLLB_MBR_BLEU": "Polizei verhaftet 15 nach gewaltsamen Protesten vor einem britischen Flüchtlingshotel",
>     "ZengHuiMT": "Die Polizei verhaftet 15 Personen nach gewalttätigem Protest vor britischem Flüchtlingshotel.",
>     "ONLINE-A": "Polizei nimmt 15 nach gewalttätigen Protesten vor britischem Flüchtlingshotel fest",
>     "ONLINE-W": "Polizei nimmt 15 Personen nach gewaltsamen Protesten vor einem britischen Flüchtlingshotel fest",
>     "ONLINE-B": "Polizei verhaftet 15 Personen nach gewalttätigem Protest vor britischem Flüchtlingshotel",
>     "NLLB_Greedy": "Polizei verhaftet 15 nach gewalttätigen Protesten vor einem Flüchtlingshotel in Großbritannien",
>     "ONLINE-M": "Polizei verhaftet 15 nach gewalttätigem Protest vor britischem Flüchtlingshotel",
>     "AIRC": "Polizeiverhaftung 15 nach gewaltsamen Protesten außerhalb des britischen Flüchtlingshotels",
>     "ONLINE-Y": "Die Polizei verhaftet 15 Personen nach gewaltsamen Protesten vor einem britischen Flüchtlingshotel",
>     "GPT4-5shot": "Die Polizei nimmt 15 Personen nach gewalttätigen Protesten vor einem britischen Flüchtlingshotel fest.",
>     "ONLINE-G": "Polizei verhaftet 15 nach gewalttätigem Protest vor britischem Flüchtlingshotel"
>   },
>   "time": 0.2119810263850096,
>   "domain": "news",
>   "doc": "aj-english.33941",
>   "scores": {
>     "Lan-BridgeMT": {
>       "human": 0.9175257731958762,
>       "XCOMET-XL": 0.9867596612701105,
>       "f200spBLEU": 0.2759278681802151,
>       ...
>     },
>     "GPT4-5shot": {
>       "human": 0.9948453608247423,
>       "XCOMET-XL": 0.988012809964431,
>       "f200spBLEU": 0.3275118410766353,
>       ...
>     },
>     "ONLINE-G": {
>       "human": 0.8762886597938144,
>       "XCOMET-XL": 0.9867596612701105,
>       "f200spBLEU": 0.2759278681802151,
>       ...
>     }
>   }
> }

Command-line Interface

We recommend using the Python interface but the package can also be used from the command line:

subset2evaluate wmt23/en-cs --method var --args "{'metric': 'MetricX-23'}" > wmt23_encs_sorted.jsonl
subset2evaluate-eval wmt23/en-cs wmt23_encs_sorted.jsonl 
> Clusters: 2.30
> Accuracy: 86.7%

Contact & Contributions

We are look forward to contributions, especially (1) using subset2evaluate for other tasks, (2) adding new methods, (3) finding bugs and increasing package usability. Please file a GitHub issue or send us an email.

The repository is structured as follows:

  • subset2evaluate/ contains the primary package and all methods
  • experiments/ contains scripts to run experiments in the paper

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

subset2evaluate-0.0.1a0.tar.gz (20.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

subset2evaluate-0.0.1a0-py3-none-any.whl (19.3 kB view details)

Uploaded Python 3

File details

Details for the file subset2evaluate-0.0.1a0.tar.gz.

File metadata

  • Download URL: subset2evaluate-0.0.1a0.tar.gz
  • Upload date:
  • Size: 20.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.0.0 CPython/3.11.4

File hashes

Hashes for subset2evaluate-0.0.1a0.tar.gz
Algorithm Hash digest
SHA256 a26a9d131b27b1ea69d442b839350bd914fc3d7fecd7d4278cf2d7a1340908d2
MD5 26e92b9a1890aa50983fb37bb2bbe56f
BLAKE2b-256 7baae7b1848d6417e83194ed2ec9423fe8bd7a56401340be5abbe75f02d88aaa

See more details on using hashes here.

File details

Details for the file subset2evaluate-0.0.1a0-py3-none-any.whl.

File metadata

File hashes

Hashes for subset2evaluate-0.0.1a0-py3-none-any.whl
Algorithm Hash digest
SHA256 1801c1a342747f350ae11346926c2dd4c4e4be4577c4a8ab1eaf0cb769ca9d65
MD5 143f56bf80a3399da63e25175df3217c
BLAKE2b-256 ee65e5f08fe57a048a69b269f00207eb2679b5be7a9f36c517f21eb82ea91693

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page