scholarly journals Analytic Provenance as Constructs of Behavioural Markers for Externalizing Thinking Processes in Criminal Intelligence Analysis

Author(s):  
Junayed Islam ◽  
B. L. William Wong ◽  
Kai Xu
Author(s):  
Pragya Paudyal ◽  
B.L. William Wong

In this paper we introduce the problem of algorithmic opacity and the challenges it presents to ethical decision-making in criminal intelligence analysis. Machine learning algorithms have played important roles in the decision-making process over the past decades. Intelligence analysts are increasingly being presented with smart black box automation that use machine learning algorithms to find patterns or interesting and unusual occurrences in big data sets. Algorithmic opacity is the lack visibility of computational processes such that humans are not able to inspect its inner workings to ascertain for themselves how the results and conclusions were computed. This is a problem that leads to several ethical issues. In the VALCRI project, we developed an abstraction hierarchy and abstraction decomposition space to identify important functional relationships and system invariants in relation to ethical goals. Such explanatory relationships can be valuable for making algorithmic process transparent during the criminal intelligence analysis process.


1975 ◽  
Vol 19 (2) ◽  
pp. 232-238
Author(s):  
Douglas H. Harris

Criminal intelligence is a law enforcement function that supports investigators, decision-makers, and policymakers in their attempt to prevent and control crime. This paper describes recent efforts to improve the effectiveness of criminal intelligence through the development and implementation of analytical methods. The intelligence analysis cycle is defined, programs to enhance analytical capabilities within law enforcement agencies are summarized, and a new computer-based program for intelligence analysis is described.


2021 ◽  
Vol 11 (3-4) ◽  
pp. 1-35
Author(s):  
Sam Hepenstal ◽  
Leishi Zhang ◽  
Neesha Kodagoda ◽  
B. l. william Wong

The adoption of artificial intelligence (AI) systems in environments that involve high risk and high consequence decision-making is severely hampered by critical design issues. These issues include system transparency and brittleness, where transparency relates to (i) the explainability of results and (ii) the ability of a user to inspect and verify system goals and constraints; and brittleness, (iii) the ability of a system to adapt to new user demands. Transparency is a particular concern for criminal intelligence analysis, where there are significant ethical and trust issues that arise when algorithmic and system processes are not adequately understood by a user. This prevents adoption of potentially useful technologies in policing environments. In this article, we present a novel approach to designing a conversational agent (CA) AI system for intelligence analysis that tackles these issues. We discuss the results and implications of three different studies; a Cognitive Task Analysis to understand analyst thinking when retrieving information in an investigation, Emergent Themes Analysis to understand the explanation needs of different system components, and an interactive experiment with a prototype conversational agent. Our prototype conversational agent, named Pan, demonstrates transparency provision and mitigates brittleness by evolving new CA intentions. We encode interactions with the CA with human factors principles for situation recognition and use interactive visual analytics to support analyst reasoning. Our approach enables complex AI systems, such as Pan, to be used in sensitive environments, and our research has broader application than the use case discussed.


Author(s):  
Peter J. Passmore ◽  
Simon Attfield ◽  
Neesha Kodagoda ◽  
Celeste Groenewald ◽  
B. L. William Wong

2018 ◽  
Vol 14 (2) ◽  
pp. 312-324 ◽  
Author(s):  
Mark Harrison ◽  
Patrick F Walsh ◽  
Shane Lysons-Smith ◽  
David Truong ◽  
Catherine Horan ◽  
...  

Abstract Australian governments, academia, and law enforcement agencies have recognized the need to improve intelligence capabilities in order to adapt to the increasingly complex criminal and security environments. In response, the Australian Criminal Intelligence Commission (ACIC), the Australian Federal Police (AFP) and other Australian policing agencies have adopted several reform measures to improve intelligence capability support. While some have focused on developing specific criminal intelligence doctrine, others have sought to improve more challenging aspects of intelligence capability such as analytical and field collection workforce planning. The complexity of the current and emerging criminal environment and a growing professionalization of policing practice more broadly has resulted in a uniquely new strategic approach to developing the analytical and field collection workforce. This article surveys the development of an Australian Criminal Intel Training and Development Continuum (CITDC). The continuum is an end-to-end continuing professional development framework for criminal intelligence analysts and field intelligence officers that monitor proficiency, competence, and knowledge achievement through pre-entry aptitude testing, rigorous class room, and workplace mentoring. The continuum is designed at the post-graduate level and articulates with Charles Sturt University’s MA (Intelligence Analysis). The article argues that both the philosophy of rigorous standards and the learning underpinning the continuum are having demonstrable and positive outcomes for intelligence practitioners and the investigative workforce they support.


2018 ◽  
Vol 7 (2.28) ◽  
pp. 187
Author(s):  
M A. Jalil ◽  
F Mohd ◽  
C P. Ling ◽  
N M. M. Noor

Nowadays, community security is an issue which is given higher priority by all agencies, aiming to reduce crime incidence. As knowledge representation is the appropriate way to apply on complex crime analysis information, hence ontology-based case matching model is proposed to represent the relationships among the knowledge. Therefore, in this study, the ontology model is developed using semantic web modelling tool, TopBraid Composer Standard Edition in order to represent the crime information with the well-defined classes and relationships. The advantage of TopBraid is the ability in offering comprehensive supports for building, managing and testing the configuration of ontology and Resource Description Framework (RDF) graphs. 


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