Difference between revisions of "Enhanced Object-Based Production Conference"

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==Event Date and Venue ==
 
==Event Date and Venue ==
  
''More information forthcoming''
+
May 13 – 14, 2020
  
Venue: Washington, DC
+
SAIC Rosslyn Office
 
+
1901 Ft. Myer Drive
Date: May, 2020
+
Arlington, VA 22207
  
 
== Organizer and Contact==
 
== Organizer and Contact==
 +
For information or to register contact:
 +
 
[https://davidglimbaugh.com David G. Limbaugh] dglimbau@buffalo.edu
 
[https://davidglimbaugh.com David G. Limbaugh] dglimbau@buffalo.edu
  
== Conference Description ==
+
== Schedule of Topics and Speakers ==
  
'''Conference Purpose:''' This conference aims (1) to identify the lessons learned from the [http://www.referent-tracking.com/RTU/reftrackparadigm.html Referent Tracking] methodology, (2) to explore how these lessons might be translated to the domain of intelligence analysis, (3) to identify potential benefits relating to semantic technology, and (4) to explore how these benefits can enhance OBP.
+
Wednesday May 13, 2020
  
'''The Problem:''' Ever increasing quantities of disaggregated data pose a problem for intelligence analysis. The problem is magnified when much of the data is sparse, obscure, or ever-changing. A key contributor to this problem is the inconsistency of data management policies. Mutually incompatible data management solutions have been and continue to be adopted not only by organizations but also by different departments within organizations. Data, as a result, is difficult to aggregate, and difficult to discover and to interpret, sometimes even difficult to interpret by those who created the data in the first place. This problem of too-much data inconsistently handled has an analogue in medicine in the realm of patient data. Electronic Health Records, for example, are collections of data about patients which grow and change in ways which make it difficult to track the medical state of a patient as it changes over time, for example as patients move between hospitals.
+
'''Day One: Referent Tracking and Object Based Production
 +
'''
 +
'''Part I'''
  
'''The Research:''' Intelligence data is useful only if it is available to decision makers when they need it. The subject of this conference is an Intelligence Community (IC) inter-organizational data architecture that has the potential to rapidly handle the enormous amounts of data collected continuously by the IC. The data architecture –– called ‘Enhanced Object-Based Production’ (E-OBP) –– is based on the Referent Tracking (RT) approach developed and tested in the medical domain over some 15 years [http://www.referent-tracking.com/RTU/papers.html]. E-OBP takes the object-oriented approach of Object-Based Production (OBP) but expands ‘object’ to any salient portion of reality. This allows traditional OBP to be transformed into an expressive, flexible, and scalable, data architecture.
+
9:00am – 9:45am (45 minutes) Introduction to Basic Formal Ontology
  
The governing principle of E-OBP is to structure data that objectively mirrors reality in a way that allows tracking. Reality is made of unique entities with shared features and relationships indexed to locations and times. E-OBP uses 1) unique identifiers to refer to unique entities, 2) terms from a controlled vocabulary to represent features, relationships, times, and places, and 3) time-indexed, first-order logic expressible, assertions to represent when an entity has some feature or some relationship to other entities.
+
Barry Smith, Director, National Center for Ontological Research (NCOR)
  
E-OBP applies not only to data about first-order reality tanks, people, missions, economic transactions, and so on – but also to data about these data, which it tracks using the same information infrastructure. It tracks when data become available, who made it available, the methods by which it was obtained, and whether it should be trusted [https://buffalo.box.com/s/jryzqr7nh85eu41k0skz1jk8xex9fne8]. It also records when data is discovered to be inaccurate, in a way that allows for more sophisticated error tracking. All of these data are brought together by the system to form a gigantic evolving graph, which forms a comprehensive and continuously adjusted picture of reality structured to allow zooming on identified threats, sensitive areas, government actions, and so forth.
+
9:45am 10:45am (60 minutes) Using the Common Core Ontologies
  
== Presenters ==
+
Ron Rudnicki, Senior Ontologist, CUBRC
[https://scholar.google.com/citations?hl=en&user=icGNWj4AAAAJ Barry Smith] (University at Buffalo)
+
  
[https://davidglimbaugh.com David G. Limbaugh] (University at Buffalo)
+
10:45am – 11:00am (15 minutes) BREAK
  
[https://scholar.google.com/citations?user=JLM7L2EAAAAJ&hl=en Ron Rudnicki] (CUBRC, Inc.)
+
'''Part II'''
  
Timothy Lebo (Air Force Research Laboratory)
+
11:00am – 12:00pm (60 minutes) Object Based Production and Living Intelligence
  
[http://www.referent-tracking.com/RTU/ceusters_vita.html Werner Ceusters] (University at Buffalo)
+
SAIC
  
[https://hobi.med.ufl.edu/about/faculty-directory-2/hogan-bill/ William Hogan] (University of Florida)
+
12:00pm – 1:00pm LUNCH
  
William S. Mandrick (SAIC)
+
'''Part III'''
 +
 
 +
1:00pm – 3:10pm (130 minutes) Recording Reality Using Referent Tracking
 +
 
 +
Werner Ceusters, Division Chief, Biomedical Ontology, Department of Biomedical Informatics, Jacobs School of Medicine and Biomedical Sciences, University at Buffalo
 +
 
 +
William Hogan, Professor, Health Outcomes and Biomedical Informatics, College of Medicine, University of Florida
 +
 
 +
3:10pm – 3:25pm (15 minutes) BREAK
 +
 
 +
'''Part IV'''
 +
 
 +
3:25pm – 5:00pm (95 minutes) Referent Tracking Theory Applied to Object Based Production
 +
 
 +
David Limbaugh, Intelligence Community Postdoc, University at Buffalo
 +
 
 +
Alan Ruttenberg, Director of Clinical and Translational Data Exchange, University at Buffalo
 +
 
 +
Timothy Lebo, Cyber Operations Branch, Air Force Research Laboratory
 +
 
 +
Nicholas Del Rio, Command and Control Branch, Air Force Research Laboratory
 +
 
 +
Thursday, May 14, 2020
 +
 
 +
'''Day Two: Intelligence Community Ontology Foundry
 +
'''
 +
9am – 12:00pm (180 minutes)
 +
 
 +
Purpose: The goal of this session is to continue work on establishing an Intelligence Community Ontology Foundry initiative. Referent Tracking and Object Based Production assume a shared semantic foundation across the intelligence community, which allows for more detailed datasets and a higher potential for knowledge gain.
 +
 
 +
== Conference Description ==
 +
 
 +
'''Conference Purpose:''' This conference aims (1) to identify the lessons learned from the [http://www.referent-tracking.com/RTU/reftrackparadigm.html Referent Tracking] methodology, (2) to explore how these lessons might be translated to the domain of intelligence analysis, (3) to identify potential benefits relating to semantic technology, and (4) to explore how these benefits can enhance OBP.
 +
 
 +
'''The Problem:''' Ever increasing quantities of disaggregated data pose a problem for intelligence analysis. The problem is magnified when much of the data is sparse, obscure, or ever-changing. A key contributor to this problem is the inconsistency of data management policies. Mutually incompatible data management solutions have been and continue to be adopted not only by organizations but also by different departments within organizations. Data, as a result, is difficult to aggregate, and difficult to discover and to interpret, sometimes even difficult to interpret by those who created the data in the first place. This problem of too-much data inconsistently handled has an analogue in medicine in the realm of patient data. Electronic Health Records, for example, are collections of data about patients which grow and change in ways which make it difficult to track the medical state of a patient as it changes over time, for example as patients move between hospitals.
 +
 
 +
'''The Research:''' Intelligence data is useful only if it is available to decision makers when they need it. The subject of this conference is an Intelligence Community (IC) inter-organizational data architecture that has the potential to rapidly handle the enormous amounts of data collected continuously by the IC. The data architecture –– called ‘Enhanced Object-Based Production’ (E-OBP) –– is based on the Referent Tracking (RT) approach developed and tested in the medical domain over some 15 years [http://www.referent-tracking.com/RTU/papers.html]. E-OBP takes the object-oriented approach of Object-Based Production (OBP) but expands ‘object’ to any salient portion of reality. This allows traditional OBP to be transformed into an expressive, flexible, and scalable, data architecture.
 +
 
 +
The governing principle of E-OBP is to structure data that objectively mirrors reality in a way that allows tracking. Reality is made of unique entities with shared features and relationships indexed to locations and times. E-OBP uses 1) unique identifiers to refer to unique entities, 2) terms from a controlled vocabulary to represent features, relationships, times, and places, and 3) time-indexed, first-order logic expressible, assertions to represent when an entity has some feature or some relationship to other entities.
 +
 
 +
E-OBP applies not only to data about first-order reality – tanks, people, missions, economic transactions, and so on – but also to data about these data, which it tracks using the same information infrastructure. It tracks when data become available, who made it available, the methods by which it was obtained, and whether it should be trusted [https://buffalo.box.com/s/jryzqr7nh85eu41k0skz1jk8xex9fne8]. It also records when data is discovered to be inaccurate, in a way that allows for more sophisticated error tracking. All of these data are brought together by the system to form a gigantic evolving graph, which forms a comprehensive and continuously adjusted picture of reality structured to allow zooming on identified threats, sensitive areas, government actions, and so forth.
  
 
== Participants ==
 
== Participants ==
  
 
TBA
 
TBA

Latest revision as of 19:10, 4 December 2019


Event Date and Venue

May 13 – 14, 2020

SAIC Rosslyn Office 1901 Ft. Myer Drive Arlington, VA 22207

Organizer and Contact

For information or to register contact:

David G. Limbaugh dglimbau@buffalo.edu

Schedule of Topics and Speakers

Wednesday May 13, 2020

Day One: Referent Tracking and Object Based Production Part I

9:00am – 9:45am (45 minutes) Introduction to Basic Formal Ontology

Barry Smith, Director, National Center for Ontological Research (NCOR)

9:45am – 10:45am (60 minutes) Using the Common Core Ontologies

Ron Rudnicki, Senior Ontologist, CUBRC

10:45am – 11:00am (15 minutes) BREAK

Part II

11:00am – 12:00pm (60 minutes) Object Based Production and Living Intelligence

SAIC

12:00pm – 1:00pm LUNCH

Part III

1:00pm – 3:10pm (130 minutes) Recording Reality Using Referent Tracking

Werner Ceusters, Division Chief, Biomedical Ontology, Department of Biomedical Informatics, Jacobs School of Medicine and Biomedical Sciences, University at Buffalo

William Hogan, Professor, Health Outcomes and Biomedical Informatics, College of Medicine, University of Florida

3:10pm – 3:25pm (15 minutes) BREAK

Part IV

3:25pm – 5:00pm (95 minutes) Referent Tracking Theory Applied to Object Based Production

David Limbaugh, Intelligence Community Postdoc, University at Buffalo

Alan Ruttenberg, Director of Clinical and Translational Data Exchange, University at Buffalo

Timothy Lebo, Cyber Operations Branch, Air Force Research Laboratory

Nicholas Del Rio, Command and Control Branch, Air Force Research Laboratory

Thursday, May 14, 2020

Day Two: Intelligence Community Ontology Foundry 9am – 12:00pm (180 minutes)

Purpose: The goal of this session is to continue work on establishing an Intelligence Community Ontology Foundry initiative. Referent Tracking and Object Based Production assume a shared semantic foundation across the intelligence community, which allows for more detailed datasets and a higher potential for knowledge gain.

Conference Description

Conference Purpose: This conference aims (1) to identify the lessons learned from the Referent Tracking methodology, (2) to explore how these lessons might be translated to the domain of intelligence analysis, (3) to identify potential benefits relating to semantic technology, and (4) to explore how these benefits can enhance OBP.

The Problem: Ever increasing quantities of disaggregated data pose a problem for intelligence analysis. The problem is magnified when much of the data is sparse, obscure, or ever-changing. A key contributor to this problem is the inconsistency of data management policies. Mutually incompatible data management solutions have been and continue to be adopted not only by organizations but also by different departments within organizations. Data, as a result, is difficult to aggregate, and difficult to discover and to interpret, sometimes even difficult to interpret by those who created the data in the first place. This problem of too-much data inconsistently handled has an analogue in medicine in the realm of patient data. Electronic Health Records, for example, are collections of data about patients which grow and change in ways which make it difficult to track the medical state of a patient as it changes over time, for example as patients move between hospitals.

The Research: Intelligence data is useful only if it is available to decision makers when they need it. The subject of this conference is an Intelligence Community (IC) inter-organizational data architecture that has the potential to rapidly handle the enormous amounts of data collected continuously by the IC. The data architecture –– called ‘Enhanced Object-Based Production’ (E-OBP) –– is based on the Referent Tracking (RT) approach developed and tested in the medical domain over some 15 years [1]. E-OBP takes the object-oriented approach of Object-Based Production (OBP) but expands ‘object’ to any salient portion of reality. This allows traditional OBP to be transformed into an expressive, flexible, and scalable, data architecture.

The governing principle of E-OBP is to structure data that objectively mirrors reality in a way that allows tracking. Reality is made of unique entities with shared features and relationships indexed to locations and times. E-OBP uses 1) unique identifiers to refer to unique entities, 2) terms from a controlled vocabulary to represent features, relationships, times, and places, and 3) time-indexed, first-order logic expressible, assertions to represent when an entity has some feature or some relationship to other entities.

E-OBP applies not only to data about first-order reality – tanks, people, missions, economic transactions, and so on – but also to data about these data, which it tracks using the same information infrastructure. It tracks when data become available, who made it available, the methods by which it was obtained, and whether it should be trusted [2]. It also records when data is discovered to be inaccurate, in a way that allows for more sophisticated error tracking. All of these data are brought together by the system to form a gigantic evolving graph, which forms a comprehensive and continuously adjusted picture of reality structured to allow zooming on identified threats, sensitive areas, government actions, and so forth.

Participants

TBA