AIO (AI Optimization) Strategies That Retail and E-Commerce Companies Must Address Now—How to Respond to the Era of “Consumers Who Do Not Search” in the Age of AI

Insight
Apr 6, 2026
  • Retail/Distribution
  • AI
1149029916

We are now at a turning point where the very “decision-maker” in the purchasing process is undergoing a fundamental change. Until now, purchasing decisions were ultimately made by “people.” Consumers searched, compared, read reviews, and decided to purchase on e-commerce sites or in physical stores. The starting point of this process was search engines, and companies competed to “rank highly in search results” through investments in Search Engine Optimization and advertising.

However, consumer information-gathering behavior is now changing significantly. Instead of “searching,” consumers are increasingly “consulting” AI, including their objectives and preconditions. They ask conversational AI such as ChatGPT and Gemini in natural language, for example, “Please recommend camping gear for beginners,” or “What time-saving home appliances would you recommend for dual-income households?” Rather than returning a list of links, AI presents options as recommendations accompanied by reasons.
The change occurring here is not merely an evolution of search behavior. It is a structural transformation in which AI is being incorporated as a new decision-making entity within the purchasing decision process itself.

In this article, we position this change as a management issue for the retail industry and propose “AIO (AI Optimization)” as the next theme after Search Engine Optimization. AIO refers to initiatives for information design and structural design that enable AI to understand, compare, and recommend. Today, retail companies are being asked whether they can evolve into entities that are chosen by AI before they are chosen by consumers.

About the Author

  • Masaharu Nagahara

    Director
  • Miho Yoshida

    Miho Yoshida

    Senior Expert
  • Kaito Koguchi

    Kaito Koguchi

    Consultant

The Starting Point of Purchasing Shifts to AI—The Decision-Making Process Transitions from Search to Dialogue

In this chapter, we organize the structural shift in which the starting point of the purchasing process is moving from “web searches” to “dialogue with AI.” This change is not simply an evolution of channels. Its essence lies in the fact that, as AI intervenes in the early stages of purchasing decision-making, the competitive environment itself is being transformed.

From “Keyword Search” to “Purpose-Based Consultation”

Until now, the mainstream purchasing process began with search engines or e-commerce sites, following the flow of “keyword search → comparison → selection.” Consumers entered words such as product names, category names, usage purposes, and price ranges, read through the displayed links and reviews themselves, and made final decisions. Accordingly, companies invested in Search Engine Optimization and advertising placements to appear at the top of search results and thereby secure opportunities to be considered.
However, with the widespread adoption of conversational AI, information-gathering styles are clearly changing. Consumers no longer input isolated words but instead “consult” AI by including background and intent.

  • Not “low-priced products,” but “items that last a long time and offer good cost performance”
  • Not “for beginners,” but “items that are safe and easy to use because I do not want to make a mistake”

In this way, questions that include not only conditions and usage scenarios but also values and anxieties are being posed to AI in natural language. Many readers may already have experience consulting conversational AI when choosing products.
What is important here is that AI is no longer merely a tool for retrieving information; it is increasingly becoming the “entry point of decision-making” that determines the direction of options before consumers enter the purchasing decision stage.

An Era in Which AI Becomes the “First Sales Floor”

Consumers review detailed information from among the candidates presented by AI and proceed to purchase. Purchasing experiences in which AI narrows down options in advance—before consumers even browse lists of search results—are beginning to become a reality. This represents a decisive change in the purchasing process.
Previously, as long as a company appeared somewhere in the list of search results, a certain level of consideration opportunity was secured. However, when AI becomes the starting point, the candidates presented themselves are limited. If a company is not included in the recommendation list, it may not even enter the consumer’s field of vision.
AI evaluates not only price and specifications but also factors such as suitability for use, comparative advantages over other products, and alignment with usage scenarios in a comprehensive manner. If the information provided by companies is vague or fragmented, they risk missing opportunities to be recommended by AI. The shift of the first point of contact in purchasing from search engines to conversational AI is not merely a replacement of channels. For retail companies, it means that the “first sales floor” is moving from e-commerce sites or search results to AI in digital space.
In this sales floor, it is not people but AI that provides customer service, and what is evaluated is not store presentation or advertising creative. Instead, the question is what information companies prepare and in what structure. An era is dawning in which the very “structure of information” determines competitiveness.

Figure 1. Changes in the purchasing process

In this chapter, we organize the differences between Search Engine Optimization and AIO and clarify how the target of optimization is changing. The logic of optimization that was effective in a search-engine-centric era is not necessarily sufficient in an environment where AI becomes the starting point of purchasing. What is happening now is not an evolution of measures but a transformation of the competitive axis itself.

Optimization to “Be Found”—The Logic of Search Engine Optimization

Search Engine Optimization is optimization premised on “people searching.” It involves anticipating the keywords consumers input, developing content accordingly, and designing structures that are evaluated by search algorithms. Keyword design, content volume, internal link structures, and backlink measures—all are initiatives aimed at ranking higher in search results.
The important point is that the final decision-maker was always the consumer. As long as a company appeared in search results, comparison, consideration, and selection were performed by humans. For companies, the ultimate goal was to “enter the list of consideration results and step onto the field of comparison.”

Optimization to “Be Recommended”—The Logic of AIO

In contrast, AIO is optimization premised on “AI recommending.” Here, matching words or sheer exposure volume is not sufficient. AI seeks to understand context, organize decision criteria, and compare multiple options horizontally before recommending and evaluating them with accompanying reasons.
For example, when consulted about “running shoes for beginners,” AI does not simply line up products that include the keyword “beginner.” Instead, it comprehensively evaluates elements such as the following:

  • The definition of “beginner” (running distance, frequency, purpose)
  • Product functional characteristics (cushioning, stability, lightness)
  • Price range
  • Comparative advantages over other products
  • Usage scenarios
  • The reasons why the product is recommended

If these elements are not organized as a semantic structure, AI cannot make appropriate recommendations. The more fragmented the information, the lower the likelihood that it will be incorporated into AI’s recommendation logic.
In other words, AIO is not simply about “adding AI-compatible tags.” It is about “structuring information on the premise that AI can compare, judge, and explain.” If Search Engine Optimization was an initiative to “be found,” AIO is a design philosophy to “be understood, compared, and chosen.”

Figure 2. Comparison of Search Engine Optimization and AIO

What Is AIO?—A Design Philosophy for Being “Understood, Compared, and Recommended” by AI

In this chapter, we organize a concrete picture of AIO and clarify the form of information design required of companies. AIO is not merely a digital initiative. It is a design philosophy that questions how companies should reconstruct their information assets in an era where AI becomes the decision-maker.

The Essence of AIO—Becoming a “Company That AI Can Judge”

The essence of AIO lies in “becoming a company that AI can judge.” The information handled by retail companies spans a wide range, including products, inventory, promotions, stores, and customer service histories. In many cases, however, this information is fragmented by department, with inconsistent granularity and update rules. Information that humans can supplement through experience or intuition is, for AI, nothing more than a collection of uncontextualized fragments.
Especially in physical stores, important information that influences purchasing decisions often remains in the minds of individual staff members as experience, intuition, or the atmosphere of the sales floor.
AI cannot make appropriate recommendations based solely on a list of product specifications. What matters is whether information exists in a “meaningfully interpreted and organized state.”

What Kind of Information Structure Enables Recommendations?

To be understood, compared, and recommended by AI, at least the following elements must be structured:

  • Target customers (for whom the product is intended)
  • Usage scenarios (in what situations it is used)
  • Comparison axes (what are its strengths and weaknesses)
  • Reasons for recommendation (why the product is suitable)
  • Updatability (whether information is kept current)

These types of information inherently exist within store operations, merchandising, and marketing departments. However, unless they are systematized and disseminated under common rules and standards, AI cannot perform cross-sectional comparisons. Generative AI decomposes consultation content into conditions, collects relevant information, compares multiple options horizontally, and recommends them with reasons. In doing so, it is insufficient for information to merely be presented as text.
For example:

  • Are specifications and advantages and disadvantages organized under consistent rules?
  • Are reviews structured by themes or emotional axes?
  • Are price, performance, durability, and delivery conditions defined under common items?
  • Are data sources and update frequencies clearly indicated?

Only when such organization is in place can AI understand these elements as “features” for comparison and judgment and interpret them in a comparable format. Even more important is customer service knowledge accumulated in stores and the voices of customers.

“This product reassures beginners when explanations are provided carefully.”
“In this category, safety is valued more than price.”

Such tacit knowledge has traditionally been accumulated through the experience of veteran employees. In the age of AI, however, articulating this knowledge, organizing it as semantic structures, and disseminating it significantly affects recommendation accuracy.

What Does It Mean to Be “Organized Under the Same Decision Axes”?

What exactly does it mean to be “organized under the same decision axes”? For example, even within the same product category, it is not uncommon for product introduction pages to describe:

  • Product A as “high quality”
  • Product B as “cost-performance focused”
  • Product C as “recommended for beginners”

At first glance, this may not appear problematic, but here the axes for comparison are not aligned. When AI is asked, “Which products are suitable for beginners, last a long time, and are reasonably priced?” it becomes difficult to perform cross-sectional comparisons if each product is described under different decision axes.
On the other hand, if products within the same category are organized under common evaluation axes such as:

  • Price range
  • Durability
  • Suitability for beginners
  • Weight
  • Warranty period

AI can compare them horizontally and logically narrow down products that meet the conditions. Being organized under the same decision axes means that “all products are explained using the same measuring stick.”
Furthermore, inconsistencies such as a product being labeled “for beginners” on an e-commerce site but “for intermediate to advanced users” on a store introduction page also complicate judgment. If brand messages, product descriptions, and store characteristics are not unified under the same semantic system, AI cannot determine which information to prioritize. Humans can supplement ambiguous expressions, but AI compares based on aligned axes. If this prerequisite is not met, information may be treated as “difficult to judge.”
What AIO demands is not a large volume of information, but a structure that is organized under the same measuring stick and enables cross-sectional comparison.

Figure 3. Differences between unaligned and aligned decision axes

“Pre-Trained” and “Search-Linked” Models—Where Should Companies Focus in Practice?

Here, it is important to organize a point that is extremely significant in practice. Current conversational AI can broadly be divided into the following two-layer structure:

  1. Pre-trained models
  2. Search-linked (externally referenced) models

Pre-trained models learn a collection of web information up to a certain point in time. Even if companies organize their information, when and to what extent it is incorporated into the model cannot be externally controlled. There is no guarantee of immediacy or certainty.
In contrast, search-linked models reference search engines or external databases each time a question is asked. In this case, whether information is included in search indexes, whether its semantic structure is clear, and whether it is comparable directly affect AI output. In practice, retail companies should prioritize addressing the latter.
This is because, in search-linked models:

  • Information updates are reflected relatively quickly
  • The effects of structuring directly influence output
  • Improvement cycles can be run

AIO is not an initiative that waits for information to “eventually be learned by models.” A realistic strategy is to intentionally prepare information in a state that AI can easily reference and to create structures that are readily incorporated into the judgment logic of search-linked AI.

Is “Strong in Search = Strong in AI” Really True?

Here, let us organize a common misconception. The question is whether companies that are strong in search are also inherently strong in AI.
The conclusion is that this is half true and half false. Companies with high evaluations in search engines are advantageous in that they are more likely to be referenced by AI. With high domain credibility and well-organized information, they are more likely to serve as information sources for search-linked AI. However, there is a decisive difference.
Simply put, Search Engine Optimization is a competition to “enter the list.” AIO, on the other hand, is a competition to “enter the recommendation list.”
In Search Engine Optimization, once a company appears in search results, the final comparison and decision are made by consumers. AI, however, compares multiple options horizontally and narrows them down with accompanying reasons. What matters in this process is not the number of keywords but the clarity of meaning and comparability.
For example, in states where:

  • Target customers are not clearly defined
  • Usage scenarios are not organized
  • Strengths and weaknesses are not defined
  • Comparison axes with other products do not exist

Even if a company ranks highly in search, AI cannot make appropriate recommendations.
In other words, companies that are weak in search are likely to be weak in AI as well. However, companies that are strong in search are not necessarily strong in AI.

If Search Engine Optimization is “optimization of exposure,” AIO is “optimization of judgment structures.” Understanding this difference reveals that AIO is not merely a digital initiative but a theme that reexamines corporate information design itself.

AIO Is a Management Theme, Not “AI Countermeasures”

AIO is not limited to tagging for AI or metadata maintenance. It is an initiative to redefine information assets across the company, streamline them, and reconstruct them into an updatable state. The more consistently companies can organize product strategies, brand design, store characteristics, and customer data into a unified semantic system, the more understandable they become to AI.
Therefore, AIO is not only an issue for marketing departments. It is a company-wide management theme that involves redefining and reconstructing information assets. Whether a company is chosen by AI is no longer determined by the size of its advertising budget, but by the maturity of its information design.

Physical Stores Are Also Evaluated by AI—Why AIO Is Not Limited to E-Commerce

In this chapter, we discuss why AIO is not a theme limited to the e-commerce domain. As AI becomes the starting point of purchasing, what is evaluated is not only product information. Companies themselves, as well as physical stores, become entities that are understood and compared by AI.

Stores Also Become “Objects of Recommendation”

AI does not only recommend products.

“Which nearby store provides careful guidance for beginners?”
“Which store is safe to shop at with children?”
“Which store has staff with extensive expertise?”

In response to such consultations, AI may compare stores horizontally and present candidates that meet the conditions. In other words, physical stores also become “objects of recommendation.” Traditionally, store evaluations have relied heavily on location, brand recognition, and word-of-mouth in the real world. However, in a world where AI intervenes, the question becomes how well a store’s value is structured and articulated.

  • Which customer segments does the store specialize in?
  • Which categories does it have expertise in?
  • How are customer service policies and service levels defined?
  • What content do review trends focus on?

If these elements are not organized, AI cannot appropriately compare or recommend stores.
In other words, value that is not understood by AI is effectively the same as “nonexistent” on AI platforms. Physical stores were once places where value was conveyed only after customers visited. In the age of AIO, however, unless experiential value is articulated before visits, even excellent customer service or expertise will not become objects of recommendation. To achieve this, experiential value must be translated into comparable indicators such as “waiting time,” “expertise,” “customer service quality,” and “trial environment,” structured, and disseminated.

Stores with Organized Information Transcend Geography

Conversely, if store information is structured, new opportunities arise. Traditionally, trade areas have been strongly constrained by geographic conditions. However, when AI recommends stores in advance, being selected as a “store that meets the conditions” itself becomes a motivation to visit. If specific expertise or customer service styles are clearly articulated, stores are recognized not merely as “nearby stores” but as “stores that suit me.” This leads to differentiation along axes different from price competition or location competition.

AIO Is a Company-Wide Design Challenge

As described above, AIO is not a measure confined to the e-commerce channel. It requires organizing product information, store information, customer service knowledge, and brand messages into a consistent semantic system.
Rather than thinking in terms of online versus offline, AIO is an initiative to redesign company-wide information dissemination and knowledge organization. What is evaluated by AI is not individual products but the structure of the company itself. We are entering an era in which corporate structures themselves become objects of evaluation.

Where Should Retail Companies Start Now?—Steps to Put AIO into Practice

In this chapter, we present first steps to move AIO from concept to execution. AIO may sound like a grand digital transformation. However, its essence lies in organizing company information and preparing it in a state that AI can judge.

Step1: Diagnose Whether Company Information Is “Judgable by AI”

The first step is to diagnose the current state of company information. Whether a company is recommended by AI depends, before algorithmic measures, on whether information is organized as semantic structures.
For example, can you clearly answer the following questions?

  • Is product information organized in a way that allows comparison with other products?
  • Are target customers and usage scenarios clearly defined?
  • Are strengths and weaknesses defined?
  • Are store characteristics and customer service policies articulated?
  • Is there a mechanism for continuously updating information?

If these points remain ambiguous, AI has no basis for judgment.
The starting point is to take inventory from the perspective of “Is our company explainable to AI?”

Step2: Define Priority Areas and Start Small

The second important point is to define priority areas rather than attempting a company-wide rollout all at once.
Start with high-impact areas such as core categories or strategic brands, and trial information structure development and incorporation into recommendation logic. By horizontally expanding the insights gained there, the initiative can be extended company-wide in a manageable manner.
AIO is not something to be completed all at once. Creating a successful model and expanding it step by step is a realistic design.

Step3: Consider Operational Design as Well

The third indispensable element is operational design. AIO does not end with one-time preparation. Products change, inventory moves, and customer needs evolve. Information preparation for being chosen by AI circulates in conjunction with store experiences, customer data, and review evaluations.

  • Organize primary customer data obtained in stores
  • Update product and brand information based on those insights
  • Improve the accuracy of AI recommendations
  • Attract customers with higher suitability
  • Accumulate further experiential value

Companies that can design this cycle are those that continue to be “chosen by AI.” To achieve this, rules for data updates, evaluation indicator design, and systems to run improvement cycles must be built in advance. What matters is clearly defining “who” updates “which information” and “how frequently.” AIO is not technology implementation but the creation of a mechanism for continuous information management.

Figure 4. AIO cycle model

Whether You Act Now Becomes the Turning Point

AIO is not a distant future concept. As the starting point of purchasing shifts to dialogue, whether companies begin preparation now will determine future competitive advantage. Rather than waiting for AI to evolve, companies should organize their information on the premise of being judged by AI. That first step can be taken today.

Closing Remarks

In an era where AI intervenes in purchasing decision-making, retail companies face new questions.

  • Is our company structured in a way that AI can understand?
  • Are we presenting information that AI can appropriately recommend?
  • And are our strengths and philosophies organized in meaningful forms?

Realizing AIO is not merely about introducing technology. It requires redesigning information structures, establishing data governance, articulating on-site knowledge, and building operational systems that continuously drive improvement. This demands design capabilities that cut across strategy, operations, and technology.
ABeam Consulting has consistently supported retail companies from structuring information assets through implementing AI utilization and establishing ongoing operations. Rather than ending with proof of concept, our strength lies in accompanying clients to build AIO foundations that take root in the field and lead to business outcomes.
Redesigning information on the premise of being evaluated by AI is not a one-time effort but a challenge that requires continuous implementation and operation. We will not stop at the conceptual stage; with execution and adoption in mind, we will work together with companies to rebuild competitiveness.


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