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Chargeback fraud is growing – can AI and Big Data stem the tide?

Monica Eaton, Founder of Chargebacks911
Monica Eaton, Founder of Chargebacks911

According to our research, 60% of all chargeback claims will be fraudulent in 2023. This means not just that merchants have to consider that chargebacks claims are more likely to be fraudulent than legitimate, but that individual merchants and the anti-fraud industry need to lay the groundwork to collect and analyze data that will show them what fraud looks like in real-time.

By Monica Eaton, Founder of Chargebacks911

While many industries are benefiting from so-called ‘big data’ – the automated collection and analysis of very large amounts of information – chargebacks face a problem. The information that is given to merchants concerning their chargeback claims tends to be very limited, being based on response codes from card schemes (‘Reason 30: Services Not Provided or Merchandise Not Received’), meaning that merchants would have to do a great deal of manual work to reconcile the information that the card schemes supply with the information that they have on hand.

While Visa’s Order Insight, Mastercard’s Consumer Clarity, and the use of chargeback alerts have reduced the number of chargebacks, merchants still have very little data on chargeback attempts. This article will look at how merchants can improve the level of data they receive on chargebacks and how they can use this data to create actionable insights on how to improve their handling of chargebacks.

What is big data?

2023’s big tech story is undoubtedly AI – specifically generative AI. Big data refers to the large and complex data sets that are generated by various sources, including social media, internet searches, sensors, and mobile devices. The data is typically so large and complex that it cannot be processed and analyzed using traditional data processing methods.

In recent years, big data has become a crucial tool for businesses and organizations looking to gain insights into customer behavior, improve decision-making, and enhance operational efficiency. To process and analyze big data, companies are increasingly turning to advanced technologies like artificial intelligence (AI) and machine learning.

One example of a company that is using big data to drive innovation is ChatGPT, a large language model trained by OpenAI. ChatGPT uses big data to learn and understand language patterns, enabling it to engage in natural language conversations with users. To train ChatGPT, OpenAI used a large and diverse data set of text, including books, websites, and social media posts. The data set included over 40 gigabytes of text, which was processed using advanced machine-learning algorithms to create a language model with over 175 billion parameters.

By using big data to train ChatGPT, OpenAI was able to create a language model that is more accurate and effective at understanding and generating responses than previous models. This has enabled ChatGPT to be used in a wide range of applications, including customer service chatbots, language translation services, and virtual assistants. Currently, technology very similar to ChatGPT is being used by Bing to replace traditional web searches, with mixed results, but, like self-driving cars, it is a matter of ‘when’, not ‘if’ this technology will become widespread.

AI and fraud

Chargeback fraud is a growing problem for businesses of all sizes. The National Retail Federation estimates that retailers lose $50 billion annually to fraud, with chargeback fraud making up a significant portion of that total. With the significant rise of online shopping, this type of fraud has become even more prevalent, as it is much easier for fraudsters to make purchases using stolen credit card information, forcing victims of fraud to then dispute the charges with their credit card issuer.

Chargeback fraud occurs when a customer disputes a valid charge made on their credit card, claiming that they did not make the purchase or that the merchandise they received was not as described. If the dispute is upheld, the merchant is forced to refund the money to the customer, along with any associated costs, and is typically charged a penalty fee by their payment processor. This not only results in a financial loss for the merchant but can also damage their reputation and lead to increased scrutiny from payment processors.

Where can machine-learning technology help with fraud? To understand this, we have to first understand its limitations. ChatGPT and Large Language Models (LLMs) like it are not Artificial General Intelligence (AGI) – the sci-fi trope of a thinking computer like HAL 9000. Although they can pass the Turing Test, they do so not by thinking about the given information and answering accordingly, but by matching what looks like an appropriate answer from existing text.

This means that while they can produce perfect text by copying existing text rather than ‘thinking’ about the substance of the question, they are prone to producing errors. This is something that isn’t acceptable when it comes to fields like fraud prevention – nonsense answers with a veneer of truth won’t work in the binary world of whether a particular transaction was fraudulent and unfounded accusations of fraud can damage a merchant’s reputation.

What is needed then are AI solutions built specifically for chargebacks. Companies like Chargebacks911 have been working on this for years now, and their solutions are based on big data models that have been built up over that time. Because of their extensive experience working in that field, they are the ideal partner to work with to bring AI up to speed and address the problem of chargebacks.

CategoriesAnalytics IBSi Blogs

The economic downturn will see greater innovation in FinTech: Three tips to thrive

Hannah FitzsimonsIt’s no secret that FinTech businesses have been fighting an uncertain economic environment over recent years. Landslide economic challenges have put every British business under extreme pressure, but our industry has shown its resilience. It’s the ability to adapt. To evolve. And ultimately, to continue to thrive despite uncertainty.

Hannah Fitzsimons, CEO, Cashflows

In fact, according to the latest CBS Insights report, FinTech companies are still thriving in the marketplace. And bigger businesses are taking note of the industry’s strength. Take Apple and its high-yield savings account for example. The company is actively seeking to increase and establish its fintech presence – and I wouldn’t be surprised if we see other Big Tech companies follow suit.

Why is FinTech maintaining its resilience?

People will always need to spend money, and with online payments being the second most common payment method in the UK, the opportunity for FinTechs is huge. Consider Buy Now Pay Later (BNPL); before the pandemic, BNPL was a term that many consumers likely hadn’t heard of, with a transaction value of just £34 million globally. In 2023, it’s predicted to reach a global transaction value of £300 million – a more than ten-fold increase – supporting consumers to access the products they love in a way that works for their financial situation.

Amongst wider economic challenges, fintechs need to continue this evolution. To consider the needs and wants of British consumers and design and deploy services that do not just meet but exceed expectations. In my experience, diamonds are made under pressure, and FinTech businesses need to harness this opportunity to not only survive but thrive.

Navigating the storm: Why strong leadership is essential

Strong leadership is essential to fostering innovation, especially in challenging economic times. Leaders must be able to navigate uncertainty, quickly identify emerging trends and be able to pivot strategies to stay ahead of the curve. To be able to execute this requires a strong, creative team. People are the most important part of a business, and as such, need to be supported through challenging times by business leaders.

To foster a culture of innovation where every employee feels valued, heard, and appreciated, FinTech leaders need to inspire their employees. They must be bought into the company’s innovation journey and feel passionate about its success.

The leaders who establish these relationships and build agility into the business from the top down can not only weather economic downturns but emerge from them stronger and more innovative than ever before.

The power of understanding consumers

In my opinion, innovation needs to make a real difference to the end user. Whether that’s giving a SMB rapid access to its business payments, or providing real-time spending behavior insights, the ultimate innovation measurement is the end impact.

However, before we can get to impact, businesses first need to identify the opportunity: understanding consumer behaviour and spending trends.

For example, at Cashflows, we’re always looking to innovate in line with our customers’ needs. To understand those needs, we surveyed small and medium businesses to understand their hesitations about switching payment providers. The research found that of the businesses that had switched merchant acquirers in the past, two in five experienced frustrations during the process. Companies cited challenges such as needing to submit significant amounts of documentation (61%) and having to share the same information multiple times (54%).

Using this insight, we created AI-powered fast onboarding to streamline merchant onboarding. Listening to customers influenced our decision-making and in turn, allowed us to create and invest in an innovation that would yield the greatest impact for not only our customers but our business.

From Insight to action: Creating and delivering a winning strategy

In business, you’ll hear how important a well-crafted strategy is almost every other day. Yet, many businesses are still yet to put a truly cohesive strategy in place. With the economic downturn changing customer behaviors and market conditions evolving rapidly, I think every business should have a comprehensive strategy to guide their product roadmap and effectively communicate a route through tough times.

When looking at innovation, particularly in an uncertain economic climate, a sound strategy will help FinTech day-to-day to adapt to changes and prioritize investments in initiatives that align with the company’s long-term goals and missions. In hard economic times, it’s easy to get lost in the day to day running of the business, fighting fires as they arise. However, by investing the time to develop a comprehensive strategy, FinTech businesses can boost productivity, stay ahead of the curve, and emerge stronger from economic downturns.

The key to success is the strategy execution. The strategy plays a crucial role in establishing the business’s direction; however, the execution of that strategy is what brings tangible changes throughout the company. This is where the workforce comes into play. To effectively implement a strategy, it is vital to engage employees and align them with the business’s vision and objectives. By fostering a culture of engagement between employees and the company, the organization will thrive, especially during challenging times.

Strong leaders, customer understanding, and a clear strategy. The points seem so simple yet foster huge opportunities for fintech businesses battling the economic downturn. We’ve already shown the amazing impact fintech innovations can have on supporting people and businesses through times of hardship. By taking stock and prioritizing strategic decision-making, the fintech industry will continue to thrive. I’m excited to see the next innovation that revolutionizes spending.

CategoriesAnalytics Artificial Intelligence IBSi Blogs IBSi Flagship Offerings Loans

Specified user FinTechs are helping lenders ride the AI wave for origination and underwriting

Raman Vig and Sudipta K Ghosh co-founders of Roopya
Raman Vig and Sudipta K Ghosh co-founders of Roopya

The Indian digital lending industry is undergoing a major transformation due to its unprecedented pace of growth. As per the recent stats – more than 200m people have availed of retail loans in a year and this is growing at 20% CAGR.

By Raman Vig and Sudipta K Ghosh co-founders of Roopya

The significant rise in the disbursement volume not only exhibits the uptick in the number of borrowers but also demonstrates the emergence of digital lending players in the market.

Many FinTech companies are overshadowing brick-and-mortar lending institutions by digitising every aspect of the lending process. This can be attributed to the rapid adoption of Artificial Intelligence (AI) and Machine Learning (ML) models that expedite and enhance the lending process. Given the scenario, the new-age lenders are moving from traditional risk models to a data-backed approach to be more relevant in the market.

A major step towards addressing gaps in the lending ecosystem

Data is the most critical element for any AI / ML model. In lending, credit bureau data and alternate data becomes the base for any propensity model for loan origination, preparing scorecards for underwriting, or even creating early warning signals on existing portfolio.

Hence data becomes the most powerful and significant force that drives the digital lending industry. In the present ambiguous scenario, the Indian lending industry has flagged several concerns on the dynamics of the data distribution of borrowers among lenders.

India has more than 1200 active lenders, out of which, only 1% have access to advanced data and analytics tools. This creates a significant gap on the supply side as small and mid-sized lenders lose out on the data-driven lending race. The new-age loan origination and underwriting tools which are accessible only to large-sized lenders create a huge disparity in data intelligence. Consequently, these lenders have to incur high acquisition and underwriting costs, ultimately leading to high-interest rates for borrowers.

Grappling with an unregulated lending scenario, the Reserve Bank of India (RBI) planned to put a guardrail on the ecosystem. The apex bank announced the appointment of a new set of FinTech companies as ‘Specified Users’ of Credit Information Companies (CICs) under the Credit Information Companies (Amendment) Regulations Act, 2021 based on stringent eligibility criteria. These Specified User FinTechs get access to credit data, run analytics and help digital lenders make data-driven decisions.

The appointment of Specified User FinTech players has not only regulated credit data distribution but also resulted in more streamlined and secure digital loan processing.

AI underwriting models

Every year, over 15 million ‘New to Credit’ borrowers enter the credit ecosystem. This makes loan underwriting a tricky process for lenders under the existing conventional models. Every customer or borrower has unique financial circumstances which bring uncertainty many inches closer to making credit decisions.

If an underwriting practice is not backed by data and analytics, it can lead to economic meltdowns for lenders. And that’s where Specified User FinTechs come to the rescue, providing lenders with the ability to interpret enormous data amounts much faster and more accurately than conventional underwriting practices. It equips lenders with AI and ML-backed underwriting models, adding an extra layer of better oversight on how data sets can be used strategically to come up with personalized solutions for each borrower.

FinTech players are one of the early adopters of technology. The advent of Specified User FinTechs helped lenders to venture into segments that were deemed high-risk by conventional lenders. Simply put, they have been successful in bridging the accessibility gap for underserved lenders, making them ride the wave of AI.

Predictive algorithm to streamline the lending process

In practical terms, AI works intuitively like predicting defaulted or paid loans. Specified User FinTech combines AI algorithms with ML classification mechanisms to create probability models for lenders to have better credit decision ability. The technologies are applied to improve credit approval, and risk analysis and measure the borrowers’ creditworthiness, which further helps small and mid-sized lenders scale with ease.

FinTech companies that are recognized as Specified Users have competencies to store huge amounts of credit data and build AI and ML models on structured and unstructured data sets. This provides more streamlined and better insights for borrower segmentation, predicting loan repayment, and helping in building better collection strategies. Besides this, Specified User FinTechs are helping lenders to be on top of automation whether in loan underwriting or pricing for personalized offerings.

On a similar backdrop, lenders’ ability to recognize early warning signs proves to be highly beneficial for lenders with credit risk management. Recognized by RBI, lenders can be certain of the credibility of Specified User FinTechs in terms of data and analytics.

Specified User FinTechs leverage the intuitive yet data-backed behavior that detects any suspicious borrower and red flags as fraud. Unlike traditional tools of analysis, it can alleviate the possibility of human errors arising from biases, discrimination, or exhaustive processing practices. By utilizing NLP (Natural Language Processing), lenders can accurately generate warning signals instantly.

Final Thoughts

The landscape of digital lending in India is continuing to evolve. Lenders can reap the benefits of data hygiene performed by AI and ML infrastructure established at the Specified User FinTech’s end. By automating and bringing all significant practices to one place, lenders are empowered to improve customer experience, take leverage of predictive analysis, enhance risk assessment, and improve credit decisions and breakthrough sales bottlenecks.

CategoriesAnalytics IBSi Blogs venture capital

Surviving and Thriving: How Indian FinTech start-ups can insulate against funding winter

Rahul Tandon, Chief Product Officer, Safexpay
Rahul Tandon, Chief Product Officer, Safexpay

A funding winter is a period of reduced venture capital funding during which investors become cautious and risk-averse, resulting in a lack of funds for new businesses. The global economic meltdown has had some knock-off effect on the Indian FinTech industry as well. But the rate of adoption of Indian FinTech is still rising and shining. As per the Economic Survey 2022-23, Indian FinTech companies witnessed a staggering adoption rate of 87% across various sects of users including the underserved and those who belong to the bottom most stratum.

By Rahul Tandon, Chief Product Officer, Safexpay

This beats the global average by 23%. With over 2100+ FinTech companies, India is the third-largest FinTech ecosystem in the world. Despite the challenges, Indian FinTech start-ups attracted investments worth $1.2 billion in Q1 2023, a sharp jump of 126% compared with $523 million raised in Q4 of 2022, according to a report compiled by market intelligence platform Tracxn.

However, the total funds raised were 55% lower than $2.6 billion raised in Q1 2022. The number of funding rounds in Q1 2023 also experienced a drop of 77% and 39% against Q4 2022 and Q1 2022, respectively. The ecosystem has remained resilient, promoting innovation, improving operational efficiency, and prioritising regulatory compliance to succeed.

FinTechs Modifying Business Model

In the Indian financial services industry, partnerships have played a vital role in sustaining operations and generating cash flow. To adapt, businesses have adjusted their models, forming alliances and collaborations. FinTech companies often collaborate with banks, NBFCs, and insurance firms, leveraging their customer base and accessing resources. Such collaborations enable them to expand their offerings, such as digital lending platforms and payment solutions. FinTechs have also taken steps to conserve cash by scaling back on activities like marketing, prioritising cost-effective approaches. By aligning expenses with revenue streams, start-ups aim for sustainable growth and attracting investor interest.

Innovation is not only in products and services but also in business models. The reason being that entrepreneurs often get funding in a 12-18 month period, those who have not secured consecutive rounds of funding may have a limited runway. As a result, it is critical for FinTechs to run a business, which is sustainable and open to adaptation. Overspending on client acquisition and other unnecessary areas could be fatal for the growth and sustenance of the business. Focus should be on improving unit economics and being conservative with the initial funding. Start-ups, especially in FinTech, can boost their prospects of long-term success by implementing these actions.

Fostering Innovation

Innovation has been a driving force for Indian FinTech start-ups to attract investors and differentiate themselves in a highly competitive landscape. These start-ups have embraced cutting-edge technologies and developed innovative solutions to address the evolving needs of consumers. For instance, they have leveraged artificial intelligence, machine learning, and blockchain to create secure and efficient financial services platforms.

Government support has played a crucial role in fostering a culture of innovation and securing funding during challenging times. The Indian government has introduced initiatives like the “Digital India” campaign and the “Start-up India” program, which provide support and incentives for FinTech start-ups. Such government initiatives have encouraged entrepreneurs to develop innovative solutions, attract investors, and contribute to the growth of the FinTech ecosystem. Furthermore, ongoing innovations such as differentiated banking and insurance licenses, the introduction of Central Bank Digital Currency (CBDC), the implementation of Account Aggregator, the emergence of the Open Credit Enablement Network (OCEN), the integration of Digilocker, and the establishment of the Open Network for Digital Commerce (ONDC) are fuelling continuous progress in the sector.

Enhancing Operational Efficiency

Indian FinTech startups recognise the importance of optimising their operations to save money and exhibit profitability potential. Leveraging technology to increase operational efficiency is a key strategy for fintech companies. By automating manual processes, implementing artificial intelligence and machine learning algorithms, and utilizing big data analytics, FinTech firms can streamline their operations and reduce costs. For example, digital on boarding processes can significantly reduce the time it takes to open an account or process a money transfer. Additionally, chatbots can provide customer service around the clock, freeing up staff time for more complex tasks. These innovations not only lower operational expenses but also improve consumer experience, attracting a wider user base.

Credibility and Regulatory Compliance

FinTech and payment companies in India face a complex and evolving regulatory environment. Compliance requirements include obtaining licenses, adhering to data protection rules, complying with AML and KYC regulations, ensuring secure technology infrastructure, maintaining accurate records, submitting reports to regulators, and undergoing audits.

For FinTech start-ups to receive finance, trust and regulatory compliance are critical. They realise the need of preserving clients’ data, employing effective security measures, and adhering to relevant regulations. With data breaches and privacy concerns on the rise, start-ups have prioritised data security measure while maintaining transparency and responsibility in their operations.

Furthermore, forging solid alliances with banks, financial institutions, and regulatory agencies boosts the legitimacy of the whole ecosystem. Collaborative efforts to build regulatory frameworks, encourage responsible lending practises, and defend consumer interests foster a trust and confidence ecosystem.

The future of regulatory compliance in Indian FinTech and payments looks promising with the government’s push towards digitisation and financial inclusion. The apex bank has been working towards creating a more robust regulatory framework to ensure that the growing FinTech industry remains compliant with regulations. One of the key initiatives taken by RBI is the creation of a regulatory sandbox, which allows FinTech companies to test their products in a controlled environment before launching them in the market.

Way forward

The future of Indian FinTech industry is in position for growth and resilience, overcoming the challenges posed by the funding winter. To attract investor interest, FinTech companies should adapt their business models, forge strategic partnerships, and prioritise sustainable growth. Innovation will remain a crucial factor in setting them apart from competitors, with a focus on building scalable and profitable enterprises while optimising operational efficiency through technology integration.

Upholding credibility and regulatory compliance become paramount, encompassing data security, transparency, and responsible practices. By collaborating with banks, financial institutions, and regulatory bodies, FinTech firms can foster a reliable ecosystem. With government support and regulatory initiatives, the future looks promising for the Indian FinTech and payments industry, as it continues to drive financial inclusion and digital transformation across the nation.

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