Datasets:
authors sequencelengths 1 41 | survey_title stringlengths 24 120 | year stringdate 2019-01-01 00:00:00 2023-01-01 00:00:00 | date timestamp[ns, tz=UTC]date 2019-01-03 03:20:55 2023-12-18 07:47:33 | category stringclasses 23 values | abstract stringlengths 0 2.64k | structure listlengths 6 212 | survey_id int64 0 204 | all_cites sequencelengths 0 359 | Bertopic_CD float64 0.36 2.57 ⌀ |
|---|---|---|---|---|---|---|---|---|---|
[
"Fang Liu",
"Guoming Tang",
"Youhuizi Li",
"Zhiping Cai",
"Xingzhou Zhang",
"Tongqing Zhou"
] | A Survey on Edge Computing Systems and Tools | 2019 | 2019-11-07T08:16:40 | cs.DC | Driven by the visions of Internet of Things and 5G communications, the edge computing systems integrate computing, storage and network resources at the edge of the network to provide computing infrastructure, enabling developers to quickly develop and deploy edge applications. Nowadays the edge computing systems have received widespread attention in both industry and academia. To explore new research opportunities and assist users in selecting suitable edge computing systems for specific applications, this survey paper provides a comprehensive overview of the existing edge computing systems and introduces representative projects. A comparison of open source tools is presented according to their applicability. Finally, we highlight energy efficiency and deep learning optimization of edge computing systems. Open issues for analyzing and designing an edge computing system are also studied in this survey. | [
{
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"prefix_titles": [
[
"title",
"A Survey on Edge Computing Systems and Tools"
]
],
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[
"David Ahmedt-Aristizabal",
"Mohammad Ali Armin",
"Simon Denman",
"Clinton Fookes",
"Lars Petersson"
] | A Survey on Graph-Based Deep Learning \\ for Computational Histopathology | 2021 | 2021-07-01T07:50:35 | cs.LG | " With the remarkable success of representation learning for prediction problems, we have witnessed (...TRUNCATED) | [{"cite_extract_rate":0.0,"cites":[],"content":"","id":"01a5d650-4933-4e6e-b664-6a6a8f2896ea","level(...TRUNCATED) | 1 | [8845,6936,262,553,885,6938,6935,8305,550,6937,6940,6939,6943,6945,6942,6941,6944,8460,6948,6946,694(...TRUNCATED) | 1.185043 |
["Jakob Gawlikowski","Cedrique Rovile Njieutcheu Tassi","Mohsin Ali","Jongseok Lee","Matthias Humt",(...TRUNCATED) | A Survey of Uncertainty in Deep Neural Networks | 2021 | 2021-07-07T16:39:28 | cs.LG | " Over the last decade, neural networks have reached almost every field of science and became a cruc(...TRUNCATED) | [{"cite_extract_rate":0.0,"cites":[],"content":"","id":"039eb0dd-a257-4d85-a714-ad5fc65c6f0b","level(...TRUNCATED) | 41 | [4601,4598,4606,4612,4617,8806,7755,4596,4590,1828,3289,2441,4594,759,8807,4610,4600,4607,1044,3288,(...TRUNCATED) | 0.976169 |
[
"Mokanarangan Thayaparan",
"Marco Valentino",
"André Freitas"
] | A Survey on Explainability in Machine Reading Comprehension | 2020 | 2020-10-01T13:26:58 | cs.CL | " This paper presents a systematic review of benchmarks and approaches for \\textit{explainability} (...TRUNCATED) | [{"cite_extract_rate":0.0,"cites":[],"content":"","id":"03ca5aea-6a90-479f-934f-d9ab95896c40","level(...TRUNCATED) | 42 | [456,444,1798,439,460,4274,8761,4275,4277,2396,4276,4278,7802,7801,4279,7303,1147,8626,4281,4280,876(...TRUNCATED) | 0.948755 |
[
"Saim Ghafoor",
"Noureddine Boujnah",
"Mubashir Husain Rehmani",
"Alan Davy"
] | MAC Protocols for Terahertz Communication: A Comprehensive Survey | 2019 | 2019-04-25T16:34:35 | cs.NI | " Terahertz communication is emerging as a future technology to support Terabits per second link wit(...TRUNCATED) | [{"cite_extract_rate":0.0,"cites":[],"content":"","id":"068ac4ba-0bb0-453c-9e5f-1071f02038e9","level(...TRUNCATED) | 43 | [] | null |
[
"Liang Zhao"
] | Event Prediction in the Big Data Era: A Systematic Survey | 2020 | 2020-07-19T23:24:52 | cs.AI | " Events are occurrences in specific locations, time, and semantics that nontrivially impact either (...TRUNCATED) | [{"cite_extract_rate":0.0,"cites":[],"content":"","id":"06b41427-1045-4fd8-b025-95b34ab2f969","level(...TRUNCATED) | 44 | [340,339,341,8342,344,343,166,342,8343,8344,9104,345,346,9105,347,59,9106,348,349,352,351,353,350,35(...TRUNCATED) | 1.42435 |
[
"Rahul Mishra",
"Hari Prabhat Gupta",
"Tanima Dutta"
] | A Survey on Deep Neural Network Compression: Challenges, Overview, and Solutions | 2020 | 2020-10-05T13:12:46 | cs.LG | " Deep Neural Network (DNN) has gained unprecedented performance due to its automated feature extra(...TRUNCATED) | [{"cite_extract_rate":0.0,"cites":[],"content":"","id":"06f26bac-bd30-4095-9869-55d16cc27805","level(...TRUNCATED) | 45 | [6312,6311,6313,688,6319,841,6315,504,4354,4628,8150,7634,8389,6318,6317,6314,6316,6320,9139,4351,63(...TRUNCATED) | 0.751906 |
[
"Andrea Bandini",
"José Zariffa"
] | Analysis of the hands in egocentric vision:\\ A survey | 2019 | 2019-12-23T14:30:02 | cs.CV | " Egocentric vision (a.k.a. first-person vision -- FPV) applications have thrived over the past few (...TRUNCATED) | [{"cite_extract_rate":0.0,"cites":[],"content":"","id":"08af7ca6-1a67-48c9-9735-3113b8e18727","level(...TRUNCATED) | 46 | [4255,4254,4256,4257,4258,4259,4262,4261,3807,2571,4260,810,825,1766,514,4263,520,4265,206,2671,802,(...TRUNCATED) | 1.064549 |
["Surangika Ranathunga","En-Shiun Annie Lee","Marjana Prifti Skenduli","Ravi Shekhar","Mehreen Alam"(...TRUNCATED) | Neural Machine Translation for Low-Resource Languages: A Survey | 2021 | 2021-06-29T06:31:58 | cs.CL | " Neural Machine Translation (NMT) has seen a tremendous spurt of growth in less than ten years, and(...TRUNCATED) | [{"cite_extract_rate":0.0,"cites":[],"content":"","id":"109ef38f-b3f2-41dd-a765-4a141b2d87cf","level(...TRUNCATED) | 47 | [4965,303,2339,7873,2489,7874,4967,4968,4966,4969,4970,7875,4974,4973,4972,7200,4971,4975,168,38,498(...TRUNCATED) | 0.746959 |
[
"Rui Wang",
"Rose Yu"
] | Physics-Guided Deep Learning for Dynamical Systems: A Survey | 2021 | 2021-07-02T20:59:03 | cs.LG | " Modeling complex physical dynamics is a fundamental task in science and engineering. Traditional (...TRUNCATED) | [{"cite_extract_rate":0.0,"cites":[],"content":"","id":"11aa860a-a47f-4799-8633-7727b5a3edae","level(...TRUNCATED) | 48 | [6360,6356,6364,6355,6359,6363,6358,6362,6361,9004,6357,9003,6368,6370,9006,6369,6367,9005,6365,4714(...TRUNCATED) | 0.85337 |
SurGE
Welcome to the official Hugging Face repository for SurGE, a benchmark and dataset for end-to-end scientific survey generation in the computer science domain.
SurGE provides a comprehensive resource for evaluating automated survey generation systems through both a large-scale dataset and a fully automated evaluation framework.
More information at: https://github.com/oneal2000/SurGE
Overview
SurGE is designed to push the boundaries of automated survey generation by tackling the complex task of creating coherent, in-depth survey articles from a vast academic literature collection. Unlike traditional IR tasks focused solely on document retrieval, SurGE requires systems to:
- Retrieve: Identify relevant academic articles from a corpus of over 1 million papers.
- Organize: Construct a structured and hierarchical survey outline.
- Synthesize: Generate a coherent narrative with proper citations, reflecting expert-authored surveys.
The benchmark includes 205 carefully curated ground truth surveys, each accompanied by detailed metadata and a corresponding hierarchical structure, along with an extensive literature knowledge base sourced primarily from arXiv.
Data Release
This repository contains all necessary components for working with the SurGE dataset:
Dataset Files & Formats:
- Ground Truth Surveys: Each survey includes metadata fields such as title, authors, publication year, abstract, hierarchical structure, and citation lists.
- Literature Knowledge Base: A corpus of 1,086,992 academic papers with key fields (e.g., title, authors, abstract, publication date, and category).
- Auxiliary Mappings: Topic-to-publication mappings to support systematic survey generation.
The complete dataset can be downloaded from this Google Drive folder.
Then you will get the folder data .
Ground Truth Survey
A ground truth survey contains the full content of a survey and its citation information. However, due to space constraints, we cannot display it in its entirety here.
All ground truth surveys are available in data/surveys.json
A survey consists of the following fields:
| Field | Description |
|---|---|
| authors | List of contributing researchers. |
| survey_title | The title of the survey paper. |
| year | The publication year of the survey. |
| date | The exact timestamp of publication. |
| category | Subject classification following the arXiv taxonomy. |
| abstract | The abstract of the survey paper. |
| structure | Hierarchical representation of the survey’s organization. |
| survey_id | A unique identifier for the survey. |
| all_cites | List of document IDs cited in the survey. |
| Bertopic_CD | A diversity measure computed using BERTopic. |
Literature Knowledge Base
The corpus containing all literature articles is available in: data/corpus.json
Example : Here, we present how articles are organized in the knowledge base. Overly long abstract has been appropriately shortened.
{
"Title": "Information Geometry of Evolution of Neural Network Parameters While Training",
"Authors": [
"Abhiram Anand Thiruthummal",
"Eun-jin Kim",
"Sergiy Shelyag"
],
"Year": "2024",
"Date": "2024-06-07T23:42:54Z",
"Abstract": "Artificial neural networks (ANNs) are powerful tools capable of approximating any arbitrary mathematical function, but their interpretability remains limited...",
"Category": "cs.LG",
"doc_id": 1086990
}
The following are explanations of each field:
| Key | Description |
|---|---|
| Title | The title of the research paper. |
| Authors | A list of contributing researchers. |
| Year | The publication year of the paper. |
| Date | The exact timestamp of the paper’s release. |
| Abstract | The abstract of the paper. |
| Category | The subject classification following the arXiv taxonomy. |
| doc_id | A unique identifier assigned for reference and retrieval. |
Auxiliary Mappings:
The mapping containing all queries and their corresponding articles is available in: data/queries.json
Each query in data/queries.json corresponds to a section or paragraph from the ground truth surveys with high citation extraction quality. The associated articles are the references cited in that part of the survey.
Below is an example, Overly long content has been appropriately shortened.
{
"original_id": "23870233-7f5b-4ef1-9d38-e6f3adb0fa48",
"query_id": 486,
"date": "2020-07-16T09:23:13Z",
"year": "2020",
"category": "cs.LG",
"content": "}\n{\nMachine learning classifiers can perpetuate and amplify the existing systemic injustices in society . Hence, fairness is becoming another important topic. Traditionally...",
"prefix_titles": [
[
"title",
"Learning from Noisy Labels with Deep Neural Networks: A Survey"
],
[
"section",
"Future Research Directions"
],
[
"subsection",
"{Robust and Fair Training"
]
],
"prefix_titles_query": "What are the future research directions for robust and fair training in the context of learning from noisy labels with deep neural networks?",
"cites": [
7771,
4163,
3899,
8740,
8739
],
"cite_extract_rate": 0.8333333333333334,
"origin_cites_number": 6
}
The following are explanations of each field:
| Key | Description |
|---|---|
| original_id | The identifier for the section where this query is from. |
| query_id | The ID associated with the specific query. |
| content | The content of the section. |
| prefix_titles | A hierarchical list of titles of the section/subsection/paragraph |
| prefix_titles_query | The question this passage is relevant to. The goal of the question is to retrieve relevant documents. |
| cites | A list of document IDs that are cited within this section. |
| cite_extract_rate | The ratio of extracted citations to the total number of citations in the original document. |
| origin_cites_number | The total number of citations originally present in the section. |
Note: Not every section in the ground truth surveys has a corresponding entry in queries.json. Only sections with a high citation extraction rate are included.
These entries can be used to train retrieval models, where prefix_titles_query serves as the query and cites contains the relevant document IDs.
The data in queries.json has not been pre-split into training and development sets—you may divide it manually as needed.
License
This project is licensed under MIT License. Please review the LICENSE file for more details.
license: mit task_categories: - text-generation language: - en
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