Knowledge Discovery from Unstructured Data in Finance

  • 2,971

    Total downloads

  • 20k

    Total views and downloads

About this Research Topic

Submission closed

Background

Global financial institutions hold a vast array of data the majority of which (~80%) is unstructured. It is at the nexus of traditional and alternative unstructured data sources that there is most potential for next-generation financial models. For example, younger retail investors increasingly rely on social media to find investment strategies. By so doing, they may impact the financial markets, such as the recent GameStop mania due to users of Reddit’s WallStreetBets. Despite their potential, extracting value from unstructured data has several unique challenges when compared to structured data. On top of these challenges are the significant pre-processing efforts needed to convert unstructured data into a structured representation for downstream analysis. Given the challenges they present, unstructured data have historically been underutilized to support critical decisions in the financial industry. 
Traditional data analytics in finance mostly relies on manual knowledge discovery and understanding processes, which is inefficient, error-prone, inconsistent, and challenging to scale. Also, in this traditional approach, valuable knowledge may be adulterated by human bias, such as fake news, which can lead to distortions in strategies and decisions to both institutional and retail investors. Recent advances in Artificial Intelligence (AI) methods and, more specifically, in natural language processing and knowledge understanding, have improved the ability to extract knowledge from unstructured data sources over the past decades. However, many contemporary knowledge extraction and representation efforts focus on singular modalities of textual data: news, web, social media, etc. Significantly less work has been performed on knowledge extraction and representation across multiple unstructured data modalities. The latter presents huge challenges for the financial services industry, which consistently generates immense amounts of unstructured data in a variety of formats and from a variety of financial (SEC filings, loan documents, industry reports, etc.) and alternative sources. Furthermore, unstructured data frequently come from alternative data sources (e.g. social media feeds on Twitter, Reddit, and Facebook). 
The goal of this Research Topic is to bring together AI research with applications to any aspect of financial analysis including knowledge discovery, extraction, understanding, representation, and, finally, utilizing knowledge from previous processes to drive decision marking. We understand that the design and implementation of these techniques to resolve real problems in financial services require a joint effort between academic researchers and industry practitioners across different disciplines. We particularly welcome academic and industry researchers and practitioners to submit articles that focus on knowledge discovery and understanding from unstructured data in the financial services domain. The scope of this Research Topic includes, but is not limited to, the following areas:
● Representation learning, distributed representations learning, and encoding in natural language processing for financial documents● Synthetic or genuine financial datasets and benchmarking baseline models● Transfer learning application on financial data, knowledge distillation as a method for compression of pre-trained models or adaptation to financial datasets● Search and question answering systems designed for financial corpora● Named-entity disambiguation, recognition, relationship discovery, ontology learning, and extraction in financial documents● Knowledge alignment and integration from heterogeneous data● Using multi-modal data in knowledge discovery for financial applications● AI-assisted data tagging and labeling● Data acquisition, augmentation, feature engineering, and analysis for investment and risk management● Automatic data extraction from financial filings and quality verification● Event discovery from alternative data and impact on organization equity price● AI systems for relationship extraction and risk assessment from legal documents● Accounting for Black-Swan events in knowledge discovery methods● Big data analytics and knowledge discovery from financial transactions, sensors, mobile devices, satellites, social media, etc.
The Topic Editor Sameena Shu is employed by JP Morgan while the Topic Editor Xiaomo Liu is employed by S&P Global. All other Topic Editors declare no competing interests with regards to the Research Topic subject.

Keywords: big data analytics, data science, data mining, machine learning, Financial Documents, financial data analytics, computational finance, financial datasets, financial corpora, financial applications

Important note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.

Frequently asked questions

  • Frontiers' Research Topics are collaborative hubs built around an emerging theme.Defined, managed, and led by renowned researchers, they bring communities together around a shared area of interest to stimulate collaboration and innovation.

    Unlike section journals, which serve established specialty communities, Research Topics are pioneer hubs, responding to the evolving scientific landscape and catering to new communities.

  • The goal of Frontiers' publishing program is to empower research communities to actively steer the course of scientific publishing. Our program was implemented as a three-part unit with fixed field journals, flexible specialty sections, and dynamically emerging Research Topics, connecting communities of different sizes and maturity.

    Research Topics originate from the scientific community. Many of our Research Topics are suggested by existing editorial board members who have identified critical challenges or areas of interest in their field.

  • As an editor, Research Topics will help you build your journal, as well as your community, around emerging, cutting-edge research. As research trailblazers, Research Topics attract high-quality submissions from leading experts all over the world.

    A thriving Research Topic can potentially evolve into a new specialty section if there is sustained interest and a growing community around it.

  • Each Research Topic must be approved by the specialty chief editor, and it falls under the editorial oversight of our editorial boards, supported by our in-house research integrity team. The same standards and rigorous peer review processes apply to articles published as part of a Research Topic as for any other article we publish.

    In 2023, 80% of the Research Topics we published were edited or co-edited by our editorial board members, who are already familiar with their journal's scope, ethos, and publishing model. All other topics are guest edited by leaders in their field, each vetted and formally approved by the specialty chief editor.

  • Publishing your article within a Research Topic with other related articles increases its discoverability and visibility, which can lead to more views, downloads, and citations. Research Topics grow dynamically as more published articles are added, causing frequent revisiting, and further visibility.

    As Research Topics are multidisciplinary, they are cross-listed in several fields and section journals – increasing your reach even more and giving you the chance to expand your network and collaborate with researchers in different fields, all focusing on expanding knowledge around the same important topic.

    Our larger Research Topics are also converted into ebooks and receive social media promotion from our digital marketing team.

  • Frontiers offers multiple article types, but it will depend on the field and section journals in which the Research Topic will be featured. The available article types for a Research Topic will appear in the drop-down menu during the submission process.

    Check available article types here 

  • Yes, we would love to hear your ideas for a topic. Most of our Research Topics are community-led and suggested by researchers in the field. Our in-house editorial team will contact you to talk about your idea and whether you’d like to edit the topic. If you’re an early-stage researcher, we will offer you the opportunity to coordinate your topic, with the support of a senior researcher as the topic editor. 

    Suggest your topic here 

  • A team of guest editors (called topic editors) lead their Research Topic. This editorial team oversees the entire process, from the initial topic proposal to calls for participation, the peer review, and final publications.

    The team may also include topic coordinators, who help the topic editors send calls for participation, liaise with topic editors on abstracts, and support contributing authors. In some cases, they can also be assigned as reviewers.

  • As a topic editor (TE), you will take the lead on all editorial decisions for the Research Topic, starting with defining its scope. This allows you to curate research around a topic that interests you, bring together different perspectives from leading researchers across different fields and shape the future of your field. 

    You will choose your team of co-editors, curate a list of potential authors, send calls for participation and oversee the peer review process, accepting or recommending rejection for each manuscript submitted.

  • As a topic editor, you're supported at every stage by our in-house team. You will be assigned a single point of contact to help you on both editorial and technical matters. Your topic is managed through our user-friendly online platform, and the peer review process is supported by our industry-first AI review assistant (AIRA).

  • If you’re an early-stage researcher, we will offer you the opportunity to coordinate your topic, with the support of a senior researcher as the topic editor. This provides you with valuable editorial experience, improving your ability to critically evaluate research articles and enhancing your understanding of the quality standards and requirements for scientific publishing, as well as the opportunity to discover new research in your field, and expand your professional network.

  • Yes, certificates can be issued on request. We are happy to provide a certificate for your contribution to editing a successful Research Topic.

  • Research Topics thrive on collaboration and their multi-disciplinary approach around emerging, cutting-edge themes, attract leading researchers from all over the world.

  • As a topic editor, you can set the timeline for your Research Topic, and we will work with you at your pace. Typically, Research Topics are online and open for submissions within a few weeks and remain open for participation for 6 – 12 months. Individual articles within a Research Topic are published as soon as they are ready.

    Find out more about our Research Topics

  • Our fee support program ensures that all articles that pass peer review, including those published in Research Topics, can benefit from open access – regardless of the author's field or funding situation.

    Authors and institutions with insufficient funding can apply for a discount on their publishing fees. A fee support application form is available on our website.

  • In line with our mission to promote healthy lives on a healthy planet, we do not provide printed materials. All our articles and ebooks are available under a CC-BY license, so you can share and print copies.