Automated decision-making
Automated decision-making (ADM) involves the use of data, machines and algorithms to make decisions in a range of contexts, including public administration, business, health, education, law, employment, transport, media and entertainment, with varying degrees of human oversight or intervention. ADM involves large-scale data from a range of sources, such as databases, text, social media, sensors, images or speech, that is processed using various technologies including computer software, algorithms, machine learning, natural language processing, artificial intelligence, augmented intelligence and robotics. The increasing use of automated decision-making systems (ADMS) across a range of contexts presents many benefits and challenges to human society requiring consideration of the technical, legal, ethical, societal, educational, economic and health consequences.[1][2]
Overview[]
There are different definitions of ADM based on the level of automation involved. Some definitions suggests ADM involves decisions made through purely technological means without human input,[3] such as the EU’s General Data Protection Regulation (Article 22). However ADM technologies and applications can take many forms ranging from decision-support systems that make recommendations for human decision-makers to act on, sometimes known as augmented intelligence[4] or 'shared decision-making',[1] to fully automated decision-making processes that make decisions on behalf of individuals or organizations without human involvement.[5] Models used in automated decision-making systems can be as simple as checklists and decision trees through to artificial intelligence and deep neural networks (DNN).
Since the 1950s computers have gone from being able to do basic processing to having the capacity to undertake complex, ambiguous and highly skilled tasks such as image and speech recognition, game play, scientific and medical analysis and inferencing across multiple data sources. ADM is now being increasingly deployed across all sectors of society and many diverse domains from entertainment to transport.
An ADM system (ADMS) may involve multiple decision points, data sets, and technologies (ADMT) and may sit within a larger administrative or technical system such as a criminal justice system or business process.
Data[]
Automated decision-making involves the use of data as an input, either to be analysed within a process, model or algorithm, or for learning and generating new models.[6] ADM systems may use and connect a wide range of data types and sources depending on the goals and contexts of the system, for example sensor data for self-driving cars and robotics, identity data for security systems, demographic and financial data for public administration, medical records in health, criminal records in law. This can sometimes involve vast amounts of data and computing power.
Data quality[]
The quality of the data that is available and able to be used in ADM systems is fundamental to the outcomes and is often highly problematic for many reasons. Datasets are often highly variable, large-scale data may be controlled by corporations or governments, restricted for privacy or security reasons, incomplete, biased, limited in terms of time or coverage, measuring and describing terms in different ways, and many other issues.
For machines to learn from data, large corpuses are often required which can be difficult to obtain or compute, however where available, have provided significant breakthroughs, for example in diagnosing chest x-rays.[7]
ADM Technologies[]
Machine learning[]
Machine learning (ML) involves training computer programs through exposure to large data sets and examples to learn from experience and solve problems.[1] Machine learning can be used to generate and analyse data as well as make algorithmic calculations and has been applied to image and speech recognition, translations, text, data and simulations. While machine learning has been around for some time, it is becoming increasingly powerful due to recent breakthroughs in training deep neural networks (DNNs), and dramatic increases in data storage capacity and computational power with GPU coprocessors and cloud computing.[1]
Automated decision-making technologies (ADMT) are software-coded digital tools that automate the translation of input data to output data, contributing to the function of automated decision-making systems.[6] There are a wide range of technologies in use across ADM applications and systems.
ADMTs involving basic computational operations
- Search (includes 1-2-1, 1-2-many, data matching/merge)
- Matching (two different things)
- Mathematical Calculation (formula)
ADMTs for assessment and grouping:
- User profiling
- Recommender systems
- Clustering
- Classification
- Feature learning
- Predictive analytics (includes forecasting)
ADMTs relating to space and flows:
- Social network analysis (includes link prediction)
- Mapping
- Routing
ADMTs for processing of complex data formats
- Image processing
- Audio processing
- Natural Language Processing (NLP)
Other ADMT
Applications[]
ADM is being used to replace or augment human decision-making by both public and private-sector organisations for a range of reasons including to help increase consistency, improve efficiency, reduce costs and enable new solutions to complex problems.[8]
Debate[]
Research and development are underway into uses of technology to assess argument quality,[9][10][11] assess argumentative essays[12][13] and judge debates.[14][15][16][17] Potential applications of these argument technologies span education and society. Scenarios to consider, in these regards, include those involving the assessment and evaluation of conversational, mathematical, scientific, interpretive, legal, and political argumentation and debate.
Law[]
In legal systems around the world, algorithmic tools such as (RAI), are being used to supplement or replace the human judgment of judges, civil servants and police officers in many contexts.[18] In the United States RAI are being used to generate scores to predict the risk of recidivism in pre-trial detention and sentencing decisions,[19] evaluate parole for prisoners and to predict “hot spots” for future crime.[20][21][22] These scores may result in automatic effects or may be used to inform decisions made by officials within the justice system.[18] In Canada ADM has been used since 2014 to automate certain activities conducted by immigration officials and to support the evaluation of some immigrant and visitor applications.[23]
Economics[]
Automated trading systems use computer programs to create buy and sell orders and automatically submit the orders to market centers or exchanges. Computer programs can automatically generate orders based on predefined set of rules using trading strategies which are based on technical analyses, advanced statistical and mathematical computations, or inputs from other electronic sources.
Media and Entertainment[]
Digital media and entertainment platforms, information services increasingly provide content to audiences via automated recommender systems based on demographic information, previous selections, collaborative filtering or content-based filtering.[24] This includes music and video platforms, publishing, health information, product databases and search engines. Many recommender systems also provide some agency to users in accepting recommendations and incorporate data-driven algorithmic feedback loops based on the actions of the system user.[5]
Online advertising is closely integrated with many digital media platforms, websites and search engines and often involves automated delivery of display advertisements in diverse formats. 'Programmatic’ online advertising involves automating the sale and delivery of digital advertising on websites and platforms via software rather than direct human decision-making.[24] This is sometimes known as the waterfall model which involves a sequence of steps across various systems and players: publishers and data management platforms, user data, ad servers and their delivery data, inventory management systems, ad traders and ad exchanges.[24] There are various issues with this system including lack of transparency for advertisers, unverifiable metrics, lack of control over ad venues, audience tracking and privacy concerns.[24] Internet users who dislike ads have adopted counter measures such as ad blocking technologies which allow users to automatically filter unwanted advertising from websites and some internet applications. In 2017, 24% of Australian internet users had ad blockers. [25]
Social Services[]
Governments have been implementing digital technologies to provide more efficient administration and social services since the early 2000s, often referred to as e-government. Many governments around the world are now using automated, algorithmic systems for profiling and targeting policies and services including algorithmic policing based on risks, surveillance sorting of people such as airport screening, providing services based on risk profiles in child protection, providing employment services and governing the unemployed.[26] A significant application of ADM in social services relates to the use of predictive analytics – eg predictions of risks to children from abuse/neglect in child protection, predictions of recidivism or crime in policing and criminal justice, predictions of welfare/tax fraud in compliance systems, predictions of long term unemployment in employment services. Historically these systems were based on standard statistical analyses, however from the early 2000s machine learning has increasingly been developed and deployed. Key issues with the use of ADM in social services include bias, fairness, accountability and explainability which refers to transparency around the reasons for a decision and the ability to explain the basis on which a machine made a decision.[26] For example Australia's federal social security delivery agency, Centrelink, developed and implemented an automated processes for detecting and collecting debt which led to many cases of wrongful debt collection in what became known as the RoboDebt scheme.[27]
Transport and Mobility[]
Connected and automated mobility (CAM) involves autonomous vehicles such as self-driving cars and other forms of transport which use automated decision-making systems to replace various aspects of human control of the vehicle.[28] This can range from level 0 (complete human driving) to level 5 (completely autonomous).[1] At level 5 the machine is able to make decisions to control the vehicle based on data models and geospatial mapping and real-time sensors and processing of the environment. Cars with levels 1 to 3 are already available on the market in 2021. In 2016 The German government established an ‘Ethics Commission on Automated and Connected Driving’ which recommended connected and automated vehicles (CAVs) be developed if the systems cause fewer accidents than human drivers (positive balance of risk). It also provided 20 ethical rules for the adaptation of automated and connected driving.[29] In 2020 the European Commission strategy on CAMs recommended that they be adopted in Europe to reduce road fatalities and lower emissions however self-driving cars also raise many policy, security and legal issues in terms of liability and ethical decision-making in the case of accidents, as well as privacy issues.[30] Issues of trust in autonomous vehicles and community concerns about their safety are key factors to be addressed if AVs are to be widely adopted.[31]
Surveillance[]
Automated digital data collections via sensors, cameras, online transactions and social media have significantly expanded the scope, scale, and goals of surveillance practices and institutions in government and commercial sectors.[32] As a result there has been a major shift from targeted monitoring of suspects to the ability to monitor entire populations.[33] The level of surveillance now possible as a result of automated data collection has been described as surveillance capitalism or surveillance economy to indicate the way digital media involves large-scale tracking and accumulation of data on every interaction.
Ethical and legal issues[]
There are many social, ethical and legal implications of automated decision-making systems. Concerns raised include lack of transparency and contestability of decisions, incursions on privacy and surveillance, exacerbating systemic bias and inequality due to data and algorithmic bias, intellectual property rights, the spread of misinformation via media platforms, administrative discrimination, risk and responsibility, unemployment and many others.[34] [35] As ADM becomes more ubiquitous there is greater need to address the ethical challenges to ensure good governance in information societies.[36]
ADM systems are often based on machine learning and algorithms which are not easily able to be viewed or analysed, leading to concerns that they are 'black box' systems which are not transparent or accountable.[1]
A report from Citizen lab in Canada argues for a critical human rights analysis of the application of ADM in various areas to ensure the use of automated decision-making does not result in infringements on rights, including the rights to equality and non-discrimination; freedom of movement, expression, religion, and association; privacy rights and the rights to life, liberty, and security of the person.[23]
Legislative responses to ADM include:
- The European General Data Protection Regulation (GDPR), introduced in 2016, is a regulation in EU law on data protection and privacy in the European Union (EU). Article 22(1) enshrines the right of data subjects not to be subject to decisions, which have legal or other significant effects, being based solely on automatic individual decision making.[37][38] GDPR also includes some rules on the right to explanation however this only covers the local aspect of interpretability.
Bias[]
ADM may incorporate algorithmic bias arising from:
- Data sources, where data inputs are biased in their collection or selection[35]
- Technical design of the algorithm, for example where assumptions have been made about how a person will behave[39]
- Emergent bias, where the application of ADM in unanticipated circumstances creates a biased outcome[39]
Explainability[]
Questions of biased or incorrect data or algorithms and concerns that some ADMs are black box technologies, closed to human scrutiny or interrogation, has led to what is referred to as the issue of explainability, or the right to an explanation of automated decisions and AI. This is also known as Explainable AI (XAI), or Interpretable AI, in which the results of the solution can be analysed and understood by humans. XAI algorithms are considered to follow three principles - transparency, interpretability and explainability.
Information asymmetry[]
Automated decision-making may increase the information asymmetry between individuals whose data feeds into the system and the platforms and decision-making systems capable of inferring information from that data. On the other hand it has been observed that in financial trading the information asymmetry between two artificial intelligent agents may be much less than between two human agents or between human and machine agents.[40]
Research fields[]
Many academic disciplines and fields are increasingly turning their attention to the development, application and implications of ADM including business, computer sciences, human computer interaction (HCI), law, public administration, and media and communications. The automation of media content and algorithmically driven news, video and other content via search systems and platforms is a major focus of academic research in media studies.[24]
The ACM Conference on Fairness, Accountability, and Transparency (ACM FAccT) was established in 2018 to study transparency and explainability in the context of socio-technical systems, many of which include ADM and AI.
Key research centres investigating ADM include:
- Algorithm Watch, Germany
- ARC Centre of Excellence for Automated Decision-Making and Society, Australia
- Citizen Lab, Canada
- Informatics Europe
See also[]
- Automation
- Algorithms
- Algorithmic bias
- Decision-making software
- Ethics of artificial intelligence
- Government by algorithm
- Machine learning
- Recommender systems
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- Science and technology studies
- Automation
- Digital technology
- Machine learning