Cyberbullying is a widespread problem that impacts millions of people globally,
especially young people who use social media. A rising number of people are
interested in creating artificial intelligence (AI) technologies to identify and
solve the issue of cyberbullying because of how common it is. AI-based solutions
may assist in locating instances of cyberbullying and provide prompt responses
to shield the victims from damage. Nevertheless, there are difficulties in the
creation and use of AI technologies for cyberbullying detection. An overview of
artificial intelligence's role in combating cyberbullying is given in this
article, along with information on the advantages and disadvantages of AI-based
solutions.
The definition of cyberbullying, its prevalence, and its effects on people and
society are covered in the first section of the article. The use of computer
vision, natural language processing, and machine learning methods in AI-based
systems to identify and handle cyberbullying is then explored. The ethical and
legal ramifications of using AI to identify cyberbullying are also covered in
the essay, including privacy issues and the possibility of false positives.
The paper goes on to discuss some of the drawbacks and limitations of AI-based
methods for the identification of cyberbullying. These include the potential for
prejudice and discrimination, the need for vast and varied datasets to train AI
models, and the possibility of using AI to harass or threaten people. The
significance of multidisciplinary cooperation among computer scientists, social
scientists, and politicians in creating ethical and successful AI-based
solutions for cyberbullying detection is also covered in the essay.
In conclusion, the paper offers some suggestions for further study and
advancement in the field of AI-based cyberbullying detection. These include the
need for further studies on the efficacy of AI-based therapies, the creation of
AI tools that are user-centered and sensitive to cultural differences, and the
need for more responsibility and transparency when using AI to identify
cyberbullying. This article offers a thorough analysis of the application of AI
to the problem of cyberbullying, stressing both the advantages and disadvantages
of AI-based solutions. We can solve this widespread problem and provide safer
online settings for everyone by comprehending the possibilities and limitations
of artificial intelligence.
Definition Of Cyber Bullying:
India does not have particular legislation against cyberbullying, but, the
Information Technology Act, 2000, and the Indian Penal Code (IPC) have sections
that may be used to combat this problem. In 2015, the Supreme Court invalidated
Section 66A of the IT Act for infringing on the freedom of expression. This
section imposed penalties for transmitting annoying offensive, or insulting
messages using digital and information communication technology.
Nevertheless, cyberbullying can be addressed using other provisions of the IT Act, such as
Section 66C, which pertains to the punishment for dishonest or fraudulent use of
another person's electronic signature, password, or identification feature, and
Section 66D, which pertains to the punishment for cheating through personation
using any communication device[1]. Section 66E of the IT Act, which was included
in the Information Technology (Amendment) Act of 2008, addresses privacy
violations and carries a penalty of up to three years in jail or a fine of up to
one lakh rupees. Section 507 of the Indian Penal Code (IPC) addresses the issue
of criminal intimidation via anonymous communication. This section may also be
used to address cyberbullying, since it encompasses offences related to
anti-bullying and cyberbullying. The consequences for engaging in cyberbullying
may span from monetary penalties to incarceration, and the seriousness of the
offence determines the extent of the penalty. Individuals must possess awareness
about the repercussions of cyberbullying and exercise responsible usage of
technology[2].
Forms of cyberbullying
Cyberbullying is an escalating issue in India that manifests in many ways, such
as harassment, cyberstalking, trolling, fraping, impersonating, exclusion,
outing, and abuse. Harassment is the act of continually sending cruel, hostile,
and disrespectful messages or remarks to a person, which causes emotional
distress and suffering. Cyberstalking is the act of closely observing and
tracking someone's online actions with the purpose of causing embarrassment or
initiating a physical encounter, posing a significant risk to their personal
security and confidentiality.
Trolling refers to sending remarks online to anger
any random person or persons, typically targeting prominent figures like
celebrities and politicians. Fraping happens when one's social media accounts
are hacked into and used to publish insulting information, resulting to
harassment and harm to the account holder's reputation. Masquerading entails
making a phoney social media account to befriend someone and acquire their
confidence, only to distribute their personal information in their personal
groups to discredit or humiliate them. Exclusion happens when people are
purposely left out of group activities or invitations, generating feelings of
solitude and poor self-esteem.
Outing includes releasing and spreading sensitive
facts about a person without their agreement, causing shame and humiliation.
Abuse may take numerous forms, including threatening, bombarding with bothersome
communications, and defaming the victim[3].
These types of cyberbullying may have serious impacts on the mental and
emotional health of victims, including psychological agony, reputational damage,
and, in extreme circumstances, suicide. It is becoming a greater concern
worldwide, including India, due to the increased utilisation of social media and
digital technologies. While India has recognised the need to fight cyberbullying
and has legislation in place to handle it, there is still more to be done in
terms of increasing awareness and ensuring that the law is followed. It is
necessary for society to work together to combat cyberbullying and make the
internet a safer environment for everyone[4].
Role of AI in Detecting Cyberbullying
Artificial Intelligence (AI) has emerged as a possible way to identify and
counteract cyberbullying, which is an increasing problem in today's digital age.
AI-powered systems can scan enormous quantities of data and find patterns that
are indicative of cyberbullying behavior. This article analyses the importance
of AI in identifying cyberbullying, concentrating on natural language processing
(NLP) for text analysis, sentiment analysis approaches, and picture and video
identification algorithms.
Natural Language Processing (NLP) for Text Analysis
NLP is an area of AI that deals with the interaction between computers and
people via natural language. In the context of cyberbullying detection, NLP may
be used to analyze text-based communications and find patterns that are
indicative of cyberbullying activity. Srivastava, Khan, and Maddikunta (2022)[5]
suggested a cyberbullying detection method based on deep learning architectures,
which employs NLP to evaluate text-based communications and identify
cyberbullying behaviour. The suggested approach attained an accuracy of 92% in
recognising cyberbullying activity.
Sentiment Analysis Techniques
Sentiment analysis, often known as opinion mining, is a method used to assess
the emotional tone of a text. It is a subclass of AI that examines text to
identify emotional tone, which might be positive, negative, or neutral.
Sentiment analysis may be accomplished using many methodologies, including
rule-based, machine learning, and neural network approaches.
Sentiment analysis
covers a broad variety of applications, including social media, product creation
and innovation, and competitive analysis. In social media, comments on social
media sites like Instagram are examined and classified as good, negative, and
neutral. In product development and innovation, analysing consumer sentiment
helps discover features and characteristics of their goods or services that are
well-received or not. In competitor evaluation, sentiment analysis helps
organisations match their offers with consumer desires[6].
Image and Video Recognition Algorithms
Image and video recognition algorithms are a significant part in detecting
cyberbullying in digital media. These algorithms can recognise certain items,
patterns, or behaviors in photos and videos, making them effective for
identifying cyberbullying in many circumstances.
One prominent image identification technique is YOLO (You Only Look Once)[7],
which splits an image into a grid and predicts bounding boxes and class
probabilities for each grid cell in a single run. YOLO is an object detection
technique that may be used for detecting cyberbullying, such as recognising
certain items, patterns, or behaviors in photos or videos that are suggestive of
cyberbullying.
In addition to image identification, video recognition algorithms may also be
used to identify cyberbullying in videos. These algorithms can evaluate video
material and detect certain actions, such as physical assault, verbal abuse, or
harassment. For example, researchers have constructed a large-scale visual
dictionary using an initial set of neural network features to handle the tough
issue of content-based retrieval of pictures for image recognition online
applications[8].
AI-Powered Prevention and Intervention Strategies
Artificial intelligence (AI) is rapidly being utilised to prevent and intervene
in different sectors, including cybersecurity, healthcare, and education.
AI-powered cybersecurity technologies can identify abnormalities and suspicious
activity suggestive of AI-based attacks, allowing quick reaction and mitigation
. In healthcare, AI is being used to customise technology-based therapies to
adolescents, improving their health outcomes . In education, AI is being
utilised to train tomorrow's generation to harness the global AI revolution to
India's advantage.
Cybersecurity is a crucial area where AI is being utilised
to prevent and intervene in cyber attacks. AI-powered cybersecurity systems can
monitor network data, detect irregularities, and even forecast prospective
attacks . Adopting a layered security strategy, leveraging AI-powered security
technologies, installing strong authentication and permission rules, training
personnel, and remaining up-to-date on the newest threats are critical tactics
to protect against AI-based cyber assaults[9].
In recent years, the application of Artificial Intelligence (AI) has attracted
substantial interest in several domains, including education and cybersecurity.
In the context of cyberbullying, AI may be utilised to prevent and intervene in
cyberbullying situations in India. Here are some ways AI may be utilised for
cyberbullying prevention and intervention:
Automated Content Moderation on Social Media Platforms:
Automated content moderation solutions utilise AI algorithms to analyse and
filter user-generated material on social media sites. These programmes may
automatically identify and delete improper or dangerous information, including
cyberbullying posts, comments, and photographs. By recognising and eliminating
cyberbullying material rapidly, automatic moderation helps establish a safer
online environment for users, particularly victims of cyberbullying[10].
Chatbots and Virtual Agents for Providing Support to Victims:
Chatbots and virtual agents powered by AI can give rapid support and aid to
cyberbullying victims. These AI-driven solutions may give information,
assistance, and emotional support to persons facing cyberbullying. Chatbots may
connect with victims, give information on reporting cyberbullying instances, and
provide coping skills to help them cope with the problem successfully[11].
AI-Driven Education and Awareness Campaigns:
AI may be leveraged to construct educational campaigns and awareness initiatives
to educate folks against cyberbullying. AI-powered technologies may construct
individualised learning platforms to improve awareness about cyberbullying and
its consequences. By integrating AI in education and awareness initiatives,
people may develop a better knowledge of cyberbullying, its ramifications, and
how to avoid and treat it effectively[12].
Collaborations between AI Researchers and Mental Health Professionals:
Collaborations between AI researchers and mental health professionals may lead
to the creation of creative ways to combat cyberbullying in India. AI
researchers may engage with mental health practitioners to produce AI-driven
solutions for early diagnosis and intervention in cyberbullying instances. By
merging knowledge in AI technology and mental health, these partnerships may
increase support systems for cyberbullying victims while boosting mental health
outcomes in the context of cyberbullying episodes[13].
Challenges and Limitations:
- Adversarial attacks: Sophisticated attackers might create strategies to escape AI-powered security systems by altering input data to confuse AI models, resulting in misclassifications or false negatives.
- Data privacy and bias: To train AI models properly, vast datasets are necessary. However, guaranteeing the privacy and integrity of sensitive data creates ethical challenges. Organizations must achieve the proper balance between utilizing data to enhance AI systems and respecting people's privacy. Moreover, biases in the training data might lead to biased AI algorithms, thereby harming the fairness and efficacy of cybersecurity solutions[14].
- Explainability and trust: AI algorithms generally function as black boxes, making it difficult to grasp their decision-making processes. This lack of transparency might undermine confidence and restrict adoption in crucial cybersecurity fields where explainability is vital[15].
- Skill gap and workforce readiness: The fast advancement of AI technology necessitates a professional workforce capable of building, deploying, and overseeing AI systems for cybersecurity. Bridging the talent gap and providing cybersecurity workers with the requisite knowledge and competence in AI is critical[16].
- False positives: AI-powered security systems may yield false positives, leading to wasted resources and probable overlooked dangers. Reducing false positives is critical for the efficient usage of AI in cybersecurity.
- Lack of skilled workforce: The use of AI in cybersecurity demands a competent workforce capable of building, deploying, and handling AI systems. Organizations badly require cybersecurity personnel that understand AI technology and can manage the related difficulties.
- Job displacement and unemployment: As AI technology progresses, there is a risk that numerous positions and functions presently done by humans might be automated, possibly leaving many people jobless or with employment instability. To prevent these dangers, companies and researchers need to continue to actively work on building AI solutions with built-in security safeguards such as strong authentication, encryption, and anomaly detection[17].
Conclusion.
In conclusion, the incorporation of Artificial Intelligence (AI) in tackling
cyberbullying gives a viable route for building a safer online environment.
AI-powered solutions such as automated content moderation, chatbots for victim
assistance, and AI-driven education campaigns provide powerful tools to
identify, prevent, and intervene in cyberbullying events. These technologies
utilise machine learning techniques, natural language processing, and picture
identification to detect and reduce dangerous online behaviors.
Collaborations between AI researchers and mental health practitioners play a
significant role in creating multidisciplinary methods to cyberbullying
identification and intervention. By merging experience in AI technology and
psychology, novel models for identifying cyberbullying may highlight practical
consequences for families, therapists, and overall preventive measures .
Despite the developments in AI technology for cybersecurity, difficulties such
as bias, vulnerability to assaults, false positives, cybersecurity skills gap,
cost, and job displacement persist. Addressing these limits needs continual
research, cooperation, and investment to establish a robust defensive ecosystem
that adapts to the shifting threat scenario and protects the security of digital
assets . Overall, the application of AI in preventing cyberbullying underlines
the significance of multidisciplinary cooperation, ethical concerns, and
continual innovation to build a safer and more inclusive online world for all
users. By utilising the potential of AI technology and forging collaborations
across multiple disciplines, we may strive to a future where cyberbullying is
efficiently recognised, avoided, and reduced, supporting a good and respectful
online community.
Reference:
- Swati Shalini, What is Cyber Bullying or Anti-Bullying Laws in India, ( 29 September 2019 )
- Cyberbullying: Laws and Policies in India, ParentCircle (July 11, 2017)
- Priyanka Sangani, 85% of Indian children have been cyberbullied, highest globally: McAfee, The Economic Times (Aug. 9, 2022)
- Nirali Bhatia, Types of Cyberbullying – CYBER B.A.A.P., https://www.cyberbaap.org/resources/types-of-cyberbullying/
- (Apr. 20, 2024), https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9321314/
- What is Sentiment Analysis?, GeeksforGeeks (July 10, 2020)
- Gaudenz Boesch, Image Recognition: The Basics and Use Cases (2024 Guide) - viso.ai, Viso.Ai (Dec. 10, 2023)
- Juan G Zambrano, Search Algorithm for Image Recognition Based on Learning Algorithm for Multivariate Data Analysis, IntechOpen (Feb. 13, 2013)
- The power of AI in wildfire prediction and prevention, World Economic Forum (June 9, 2023)
- Martin Kandlhofer, Education and Awareness for Artificial Intelligence, SpringerLink (May 7, 2021)
- (Apr. 20, 2024), https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8455229/
- Ark, AI Privacy Concerns in Schools: A Guide for School Leaders, The Ark HQ (Apr. 13, 2023)
- Artificial intelligence in education, UNESCO https://www.unesco.org/en/digital-education/artificial-intelligence
- Risks of AI & Cybersecurity, Check and Protect Your Digital Footprint
- Ashwani Paliwal, AI in cybersecurity: Pros and Cons | SecOps® Solution, SecOps Solution (Dec. 26, 2023)
- Tijana Milosevic, Artificial Intelligence to Address Cyberbullying, Harassment and Abuse: New Directions in the Midst of Complexity, International Journal of Bullying Prevention (Feb. 1, 2020)
- Milosevic, T., Verma, K., Carter, M., Vigil, S., Laffan, D., Davis, B., & O'Higgins Norman, J. (2023). Effectiveness of Artificial Intelligence–Based Cyberbullying Interventions From Youth Perspective. Social Media + Society, 9(1)
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