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The Two Levels of Advertising and Why Dealers Should Advertise on Both

by James Maguire 2 min read January 31, 2018

At their heart, car dealers have always been marketers. It’s part of learning the trade and understanding the business to gain natural insight into modern marketing and advertising practices. One could even argue that the experience gained through knowledge passed down, trial and error, and exposure to the automotive game itself can yield better strategies than a marketing degree.

With all that said, it’s still important to have the right data to guide the decisions as well as the tools necessary to decipher the data. Although we have a vast amount of information at our fingertips, it’s very possible to truly build on “actionable data” and allow it to define the parameters for a dealership’s marketing strategy.

One of the most important things to consider when you’re building and enhancing your strategies is that the data allows for decision making on the macro and micro levels. We see trend reports, analytics, and test cases that can influence decisions on both sides of the spectrum.

Making decisions on the macro level means wholesale changes or additions. For example, the overall effectiveness of a particular classified advertising website can be broken down to determine whether or not it’s making the right type of impact. Dealers have so many options today to advertise both online and offline, so making sure that any particular venue is effective is key to success.

On the micro level, decisions can be made about how to position the dealership within the individual venues. You may be a big believer in search pay-per-click advertising, for example, and data can help to guide you or your vendor partners to position the dealership properly on search. Knowing which messages about individual cars are effective can be a guide. Then, understanding what zip codes have the highest opportunity level for the individual model can mold your PPC spend, while demographic data can drive effective messaging and help you optimize campaign creative and landing pages.
Having access to the data is only the first step. Looking at the data appropriately is an important second step that many dealers are missing. Putting it all together into a decision-driving model is the step that almost every dealer should embrace to allow them to make the best decisions, macro or micro.

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Model inventories are rapidly expanding. AI-enabled tools are entering workflows that were once deterministic and decisioning environments are more interconnected than ever. At the same time, regulatory scrutiny around model risk management continues to intensify. In many institutions, classification determines validation depth, monitoring intensity, and escalation pathways while informing board reporting. If classification is wrong, every downstream control is misaligned. And, in 2026, model classification is no longer just about assigning a tier, but rather about understanding data lineage, use case evolution, interdependencies, and governance accountability in a decentralized, AI-driven environment. We recently spoke with Mark Longman, Director of Analytics and Regulatory Technology, and here are some of his thoughts around five blind spots risk and compliance leaders should consider addressing now. 1. The “Set It and Forget It” Mentality The Blind Spot Model classification frameworks are often designed during a regulatory remediation effort or inventory modernization initiative. Once documented and approved, they can remain largely unchanged for years. However, model risk management is an ongoing process. “There’s really no sort of one and done when it comes to model risk management,” said Longman. Why It Matters Classification is not merely descriptive, it’s prescriptive. It drives the depth of validation, the frequency of monitoring, the intensity of governance oversight and the level of senior management visibility. As Longman notes, data fragmentation is compounding the challenge. “There’s data everywhere – internal, cloud, even shadow IT – and it’s tough to get a clear view into the inputs into the models,” he said. When inputs are unclear, tiering becomes inherently subjective and if classification frameworks are not reviewed regularly, governance intensity can become misaligned with real exposure. Therefore, static classification is a growing risk, especially in a world of rapidly expanding AI use cases. In a supervisory environment that continues to scrutinize model definitions, particularly as AI tools proliferate, a dynamic, periodically refreshed classification process can demonstrate institutional vigilance. 2. Assuming Third-Party Models Reduce Governance Accountability The Blind SpotThere is often an implicit belief that vendor-provided models carry less governance burden because they were developed externally. Why It Matters Vendor provided models continue to grow, particularly in AI-driven solutions, but supervisory expectations remain firm. “Third-party models do not diminish the responsibility of the institution for its governance and oversight of the model – whether it’s monitoring, ongoing validation, just evaluating drift model documentation,” Longman said. “The board and senior managers are responsible to make sure that these models are performing as expected and that includes third-party models.” Regulators consistently emphasize that institutions remain responsible for the outcomes produced by models used in their decisioning environments, regardless of origin. If a vendor model influences credit approvals, pricing, fraud decisions, or capital calculations, it directly affects customers, financial performance and compliance exposure. Treating third-party models as inherently lower risk can also distort internal tiering frameworks. When vendor models are under-classified, validation depth and monitoring rigor may be insufficient relative to their true impact. 3. Limited Situational Awareness of Model Interdependencies The Blind Spotfeed multiple downstream models simultaneously. Why It Matters Risk often flows across interdependencies. When upstream models degrade in performance or introduce bias, downstream models inherit that exposure. If multiple material decisions depend on the same data transformation or feature engineering process, concentration risk emerges. Without visibility into these dependencies, tiering assessments may underestimate cumulative risk, and monitoring frameworks may fail to detect systemic vulnerabilities. “There has to be a holistic view of what models are being used for – and really somebody to ensure there’s not that overlap across models,” Longman said. Supervisors are increasingly interested in understanding how model risk propagates through business processes. When institutions cannot articulate how models interact, it raises broader concerns about situational awareness and control effectiveness. Therefore, capturing interdependencies within the classification framework enhances more than documentation. It enables more accurate tiering, more targeted monitoring and more informed governance oversight. 4. Excluding Models Without Defensible Rationale The Blind SpotGray-area tools frequently sit outside formal inventories: rule-based engines, spreadsheet models, scenario calculators, heuristic decision aids, or emerging AI tools used for analysis and summarization. These tools may not neatly fit legacy definitions of a “model,” and so they are sometimes excluded without robust documentation. Why It Matters Regulatory definitions of “model” have broadened over time. What creates risk is the absence of defensible reasoning and documentation. Longman describes the risk clearly: “Some [teams] are deploying AI solutions that are sort of unbeknownst to the model risk management community – and almost creating what you might think of as a shadow model inventory.” Without visibility, institutions cannot confidently characterize use, trace inputs, or assign appropriate tiers, according to Longman. It also undermines the credibility of the official inventory during examinations. A well-governed program can articulate why certain tools fall outside model risk management scope, referencing documented criteria aligned with regulatory guidance. Without that evidence, exclusions can appear arbitrary, suggesting gaps in oversight. 5. Inconsistent or Subjective Classification Frameworks The Blind SpotAs inventories scale and governance teams expand, classification decisions are often distributed across reviewers. Over time, discrepancies can emerge. Why It Matters Inconsistency undermines both risk management and regulatory confidence. If two models with comparable use cases and impact profiles are assigned different tiers without clear justification, it signals that the framework is not being applied uniformly. AI adds even more complexity. When it comes to emerging AI model governance versus traditional model governance, there’s a lot to unpack, says Longman: “The AI models themselves are a lot more complicated than your traditional logistic or multiple regression models. The data, the prompting, you need to monitor the prompts that the LLMs for example are responding to and you need to make sure you can have what you may think of as prompt drift,” Longman said. As frameworks evolve, particularly to incorporate AI, automation, and new regulatory interpretations, institutions must ensure that changes are cascaded across the entire inventory. Partial updates or selective reclassification introduce fragmentation. Longman recommends formalizing classification through a structured decision tree embedded in policy to ensure consistent outcomes across business units. Beyond clear documentation, a strong classification program is applied consistently, measured objectively, and periodically reassessed across the full portfolio. BONUS – 6. Elevating Classification with Data-Level Visibility Some institutions are extending classification discipline beyond models to the data layer itself. Longman describes organizations that maintain not only a model inventory, but a data inventory, mapping variables to the models they influence. This approach allows institutions to quickly assess downstream effects when operational or environmental changes occur including system updates or even natural disasters affecting payment behavior. In an AI-driven environment, traceability may become a competitive differentiator. Conclusion Model classification is foundational. It determines how risk is measured, monitored, escalated, and reported. In a rapidly evolving regulatory and technological environment, it cannot remain static. Institutions that invest now in transparency, consistency, and data-level visibility will not only reduce supervisory friction – they will build a governance framework capable of supporting the next generation of AI-enabled decisioning. Learn more

by Stefani Wendel 2 min read March 20, 2026

Experian Automotive Series | What Auto Marketers Are Prioritizing in the Second Half of 2025 As we close out our four-part series on what auto marketers are prioritizing in the second half of 2025, we’re shifting gears from strategy to execution. It’s time to explore how marketers are operationalizing data, seeking clarity, and building emotional connections that deepen relationships with customers. With the end of the year’s competitive automotive landscape, clarity and connection aren’t just buzzwords—they’re the cornerstones of growth and loyalty for 2026. Let’s start by exploring how clarity empowers today’s marketers to steer their strategies with control. Clarity: Putting marketers in the driver’s seat Data-guided auto marketers who leverage data insights have a clearer understanding of where consumers are on their car-buying journey. You can learn whether car buyers are gearing up for: A longer commute and want an electric vehicle (or a hybrid vehicle).1 Expanding their family and want a top-tier safety rating with cargo space. Factoring in market trends and wanting to be more economical.2 Creating a new and loyal customer base requires dealers, marketers, and OEMs to focus on clarity and connection. This will be more relevant than ever in the final days of 2025. Gone are the days when dealers and agencies used platforms and tools they did not understand. More businesses are simplifying their services and products by offering guides, Artificial Intelligence (AI) tools, tutorials, consultants, and webinars. At Experian Automotive, we're here to do just that, bringing clarity to our auto solutions, such as the Experian Marketing Engine (EME). While the EME tool has robust and dynamic data, two of our most widely used features — AutoAudiences and AutoInsights — stand out for their impact. Let’s break them down in the simplest way: AutoInsights helps marketers define where, what, and how. AutoAudiences helps reach who to target and when they might be in the market. For further clarification, savvy marketers leverage AutoInsights to strategize and understand their market, then activate AutoAudiences to curate marketing opportunities. With these tools empowering clarity, it’s equally important to focus on building genuine connections with car shoppers. Connection: Personalized experiences that drive sales Building a strong connection starts by truly understanding what consumers need and where they are on their car-buying journey. It’s important to know how consumers plan to use their vehicle and how they have serviced their cars in the past (or how they plan to service them in the future). By focusing on these details, marketers and dealerships can create more meaningful relationships and deliver helpful, relevant experiences that customers value. On the journey to better connections, consider your customers’ communication preferences, 2026 plans, and affordability.3 “Human connection...separates good stores from great ones,” notes Dealer Principal, Matt Birckhead at Sir Walter Chevrolet4 , while General Manager, Michael Wood at Jaguar Land Rover Virginia Beach collaborates with his Digital Director, Ryan Montville, to generate vehicle specs and feature descriptions that connect emotionally with target buyers 5 Key Takeaway: Automotive marketers who leverage data-informed clarity and authentic customer connection are best positioned to drive growth and loyalty in the final days of 2025 into 2026. By using innovative tools like Experian Marketing Engine, focusing on consumer needs, and personalizing every interaction, dealerships, agencies, and OEMs can optimize campaigns and foster lasting relationships. Mastering clarity with data and building emotional connections are the keys to success in automotive marketing today. Ready for clarity and connection with Experian data? Lead the way in creating customer-first experiences that fuel long-term growth. Connect with Experian Automotive and start driving measurable impact. Learn More https://www.coxautoinc.com/insights-hub/q3-2025-ev-sales-report-commentary/ https://www.experian.com/automotive/auto-credit-webinar-form https://news.dealershipguy.com/p/inside-q4-s-new-vehicle-trends-and-how-dealers-are-adjusting-2025-10-28 https://news.dealershipguy.com/p/one-price-vs-negotiation-what-four-operators-say-really-builds-trust-and-gross-2025-10-16 https://news.dealershipguy.com/p/5-powerful-chatgpt-hacks-car-dealers-are-using-to-supercharge-their-business-insights-2025-09-19

by Chanté O’Neill 2 min read November 11, 2025

In today’s digital lending landscape, fraudsters are more sophisticated, coordinated, and relentless than ever. For companies like Terrace Finance — a specialty finance platform connecting over 5,000 merchants, consumers, and lenders — effectively staying ahead of these threats is a major competitive advantage. That is why Terrace Finance partnered with NeuroID, a part of Experian, to bring behavioral analytics into their fraud prevention strategy. It has given Terrace’s team a proactive, real-time defense that is transforming how they detect and respond to attacks — potentially stopping fraud before it ever reaches their lending partners. The challenge: Sophisticated fraud in a high-stakes ecosystem Terrace Finance operates in a complex environment, offering financing across a wide range of industries and credit profiles. With applications flowing in from countless channels, the risk of fraud is ever-present. A single fraudulent transaction can damage lender relationships or even cut off financing access for entire merchant groups. According to CEO Andy Hopkins, protecting its partners is a top priority for Terrace:“We know that each individual fraud attack can be very costly for merchants, and some merchants will get shut off from their lending partners because fraud was let through ... It is necessary in this business to keep fraud at a tolerable level, with the ultimate goal to eliminate it entirely.” Prior to NeuroID, Terrace was confident in its ability to validate submitted data. But with concerns about GenAI-powered fraud growing, including the threat of next-generation fraud bots, Terrace sought out a solution that could provide visibility into how data was being entered and detect risk before applications are submitted. The solution: Behavioral analytics from NeuroID via Experian After integrating NeuroID through Experian’s orchestration platform, Terrace gained access to real-time behavioral signals that detected fraud before data was even submitted. Just hours after Terrace turned NeuroID on, behavioral signals revealed a major attack in progress — NeuroID enabled Terrace to respond faster than ever and reduce risk immediately. “Going live was my most nerve-wracking day. We knew we would see data that we have never seen before and sure enough, we were right in the middle of an attack,” Hopkins said. “We thought the fraud was a little more generic and a little more spread out. What we found was much more coordinated activities, but this also meant we could bring more surgical solutions to the problem instead of broad strokes.” Terrace has seen significant results with NeuroID in place, including: Together, NeuroID and Experian enabled Terrace to build a layered, intelligent fraud defense that adapts in real time. A partnership built on innovation Terrace Finance’s success is a testament to what is  possible when forward-thinking companies partner with innovative technology providers. With Experian’s fraud analytics and NeuroID’s behavioral intelligence, they have built a fraud prevention strategy that is proactive, precise, and scalable. And they are not stopping there. Terrace is now working with Experian to explore additional tools and insights across the ecosystem, continuing to refine their fraud defenses and deliver the best possible experience for genuine users. “We use the analogy of a stream,” Hopkins explained. “Rocks block the flow, and as you remove them, it flows better. But that means smaller rocks are now exposed. We can repeat these improvements until the water flows smoothly.” Learn more about Terrace Finance and NeuroID Want more of the story? Read the full case study to explore how behavioral analytics provided immediate and long-term value to Terrace Finance’s innovative fraud prevention strategy. Read case study

by Allison Lemaster 2 min read September 3, 2025

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