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DSMM 2018 will explore the challenges of macro- modeling with financial
and economic datasets. The workshop will also showcase the '''Financial
the -. will the [https://..////.]
Entity Identification and Information Integration (FEIII) Challenge'''.
ir. nist. gov/ dsfin/ ]
Financial big data and FINTECH applications are in the vanguard of
activities around the deployment of Open Knowledge Networks.
[http:// ichs. ucsf.edu/open-knowledge-network/]
The Proceedings of ACM DSMM 2016 are available here: [https://dl.acm.org/citation.cfm?id= 2951894].
Proceedings of ACM DSMM 2014 are available here: [https://dl.acm.org/citation.cfm?id= 2630729].
Two trends are providing data -rich opportunities for macro-modeling of
financial and economic
ecosystems. First, public data is becoming
increasingly available from a variety of sources (CRSP, EDGAR, FRED).
Economists have used longitudinal datasets ( US Census, Labor, etc.)
drive econometric and statistical research. The advent of Big Data
infrastructures and analytical tools can support the required
data financial and economic . , data is , , . () to and . of tools support -, and to financial and economic , data-driven .
information fusion, as well as macro- modeling with diverse datasets,
can potentially lead to the exploration of complex financial and
ecosystems. Although integrating datasets may pose technical
and policy/privacy challenges, the potential benefits are immense.
For example, social media data often contains features that could enhance
macroeconomic statistics derived from traditional survey-driven datasets.
The resulting enriched datasets could explore hypotheses with a different
focus or level of granularity.
financial world is a closely interlinked Web of financial entities
The of, and and the of , and for or . include and .
and networks, supply chains and ecosystems. Analysts, regulators and
researchers must address the challenges of monitoring, integrating, and
analyzing at scale. Technical challenges include entity identification;
entity classification; learning relationships among entities. The benefits
of addressing these challenges may result in improved tools for
regulators to monitor financial systems or to set fiscal policy. Additional
benefits may include fundamentally new designs of market mechanisms, new
ways to reach consumers and to exploit the wisdom of the crowds.
We expect attendees with an interest in information integration, data
We expect attendees with an interest in information integration, data mining, knowledge representation, network and visual analytics, stream data processing, etc.
mining, knowledge representation, network and visual analytics, stream
data processing, etc.
Due to the COVID-19 outbreak, SIGMOD 2020 will be an online event. In response, DSMM will be scheduled as an online event on June 14th starting at 11 a.m. EASTERN TIME. Call in details and the schedule are here:
DSMM 2020 will explore the challenges of macro-modeling with financial and socio-economic datasets. The workshop will also showcase the Financial Entity Identification and Information Integration (FEIII) Challenge and will involve a challenge task over small business data.
Past Proceedings are available here:
The engines of commerce and industry continuously generate rich heterogeneous data that reflect financial and economic activity. Unfortunately, this complex data is often not captured or curated in machine understandable form, or readily integrated across resources and data streams, presenting an obstacle for research, policy and industry use. The Business Open Knowledge Network (BOKN) is an effort to harness and exploit this data. BOKN is envisioned as a shared resource of curated knowledge, with tools to support large-scale data analysis, and interfaces to allow access to additional repositories. BOKN will create unprecedented opportunities for financial and socio-economic research, will inform data-driven fiscal and economic policy, and will empower innovators and entrepreneurs.
The DSMM workshop will explore technical challenges relevant to BOKN which includes combining state-of-the-art computational approaches for extracting, representing, linking, and analyzing data with complex and nuanced knowledge about the business domain. Domain-specific tools can leverage a wealth of unstructured data on the Web, as well as semi- structured data and time series datasets provided for regulatory or legal purposes, and reference datasets with standard identifiers and metadata that enable cross-resource federation. BOKN will include a hybrid knowledge graph that supports traditional symbolic knowledge representation enhanced by high-dimensional vector space embeddings capturing temporal evolution and semantic relationships that support machine learning applications.
We expect attendees with an interest in information integration, data mining, knowledge representation, network and visual analytics, stream data processing, etc. to participate.