{"title":"Human Machine Interaction and Security in the era of modern Machine Learning","authors":"A. Leventi-Peetz","doi":"10.54941/ahfe1002963","DOIUrl":null,"url":null,"abstract":"It is realistic to describe Artificial Intelligence (AI) as the most important of\n emerging technologies because of its increasing dominance in almost every field of\n modern life and the crucial role it plays in boosting high-tech multidisciplinary\n developments integrated in steady innovations. The implementation of AI-based solutions\n for real world problems helps to create new insights into old problems and to produce\n unique knowledge about intractable problems which are too complex to be efficiently\n solved with conventional methods. Biomedical data analysis, computer-assisted drug\n discovery, pandemic predictions and preparedness are only but a few examples of applied\n research areas that use machine learning as a pivotal data evaluation tool. Such tools\n process enormous amounts of data trying to discover causal relations and risk factors\n and predict outcomes that for example can change the course of diseases. The growing\n number of remarkable achievements delivered by modern machine learning algorithms in the\n last years raises enthusiasm for all those things that AI can do. The value of the\n global artificial intelligence market was calculated at USD 136.55 billion in 2022 and\n is estimated to expand at an annual growth rate of 37.3% from 2023 to 2030. Novel\n machine-learning applications in finance, national security, health, criminal justice,\n transportation, smart cities etc. justify the forecast that AI will have a disruptive\n impact on economies, societies and governance. The traditional rule-based or expert\n systems, known in computer science since decades implement factual, widely accepted\n knowledge and heuristic of human experts and they operate by practically imitating the\n decision making process and reasoning functionalities of professionals. In contrast,\n modern statistical machine learning systems discover their own rules based on examples\n on the basis of vast amounts of training data introduced to them. Unfortunately the\n predictions of these systems are generally not understandable by humans and quite often\n they are neither definite or unique. Raising the accuracy of the algorithms doesn't\n improve the situation. Various multi-state initiatives and business programs have been\n already launched and are in progress to develop technical and ethical criteria for\n reliable and trustworthy artificial intelligence. Considering the complexity of famous\n leading machine learning models (up to hundreds of billion parameters) and the influence\n they can exercise for example by creating text and news and also fake news, generate\n technical articles, identify human emotions, identify illness etc. it is necessary to\n expand the definition of HMI (Human Machine Interface) and invent new security concepts\n associated with it. The definition of HMI has to be extended to account for real-time\n procedural interactions of humans with algorithms and machines, for instance when faces,\n body movement patterns, thoughts, emotions and so on are considered to become available\n for classification both with or without the person's consent. The focus of this work\n will be set upon contemporary technical shortcomings of machine learning systems that\n render the security of a plethora of new kinds of human machine interactions as\n inadequate. Examples will be given with the purpose to raise awareness about\n underestimated risks.","PeriodicalId":383834,"journal":{"name":"Human Interaction and Emerging Technologies (IHIET-AI 2023): Artificial\n Intelligence and Future Applications","volume":"25 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"1900-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Human Interaction and Emerging Technologies (IHIET-AI 2023): Artificial\n Intelligence and Future Applications","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.54941/ahfe1002963","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
Human Machine Interaction and Security in the era of modern Machine Learning
It is realistic to describe Artificial Intelligence (AI) as the most important of
emerging technologies because of its increasing dominance in almost every field of
modern life and the crucial role it plays in boosting high-tech multidisciplinary
developments integrated in steady innovations. The implementation of AI-based solutions
for real world problems helps to create new insights into old problems and to produce
unique knowledge about intractable problems which are too complex to be efficiently
solved with conventional methods. Biomedical data analysis, computer-assisted drug
discovery, pandemic predictions and preparedness are only but a few examples of applied
research areas that use machine learning as a pivotal data evaluation tool. Such tools
process enormous amounts of data trying to discover causal relations and risk factors
and predict outcomes that for example can change the course of diseases. The growing
number of remarkable achievements delivered by modern machine learning algorithms in the
last years raises enthusiasm for all those things that AI can do. The value of the
global artificial intelligence market was calculated at USD 136.55 billion in 2022 and
is estimated to expand at an annual growth rate of 37.3% from 2023 to 2030. Novel
machine-learning applications in finance, national security, health, criminal justice,
transportation, smart cities etc. justify the forecast that AI will have a disruptive
impact on economies, societies and governance. The traditional rule-based or expert
systems, known in computer science since decades implement factual, widely accepted
knowledge and heuristic of human experts and they operate by practically imitating the
decision making process and reasoning functionalities of professionals. In contrast,
modern statistical machine learning systems discover their own rules based on examples
on the basis of vast amounts of training data introduced to them. Unfortunately the
predictions of these systems are generally not understandable by humans and quite often
they are neither definite or unique. Raising the accuracy of the algorithms doesn't
improve the situation. Various multi-state initiatives and business programs have been
already launched and are in progress to develop technical and ethical criteria for
reliable and trustworthy artificial intelligence. Considering the complexity of famous
leading machine learning models (up to hundreds of billion parameters) and the influence
they can exercise for example by creating text and news and also fake news, generate
technical articles, identify human emotions, identify illness etc. it is necessary to
expand the definition of HMI (Human Machine Interface) and invent new security concepts
associated with it. The definition of HMI has to be extended to account for real-time
procedural interactions of humans with algorithms and machines, for instance when faces,
body movement patterns, thoughts, emotions and so on are considered to become available
for classification both with or without the person's consent. The focus of this work
will be set upon contemporary technical shortcomings of machine learning systems that
render the security of a plethora of new kinds of human machine interactions as
inadequate. Examples will be given with the purpose to raise awareness about
underestimated risks.