Demand Calendar Blog by Anders Johansson

Hotel Revenue Management: What could possibly go wrong?

Written by Anders Johansson | 30 May 2024
In this blog post, we will address four challenges in revenue management: incomplete data, the influence of cognitive biases on decision-making, the effects of knowledge and skill gaps, and the issues associated with black-box systems. We will explore the potential risks posed by each challenge and offer practical advice for revenue managers and hotel CEOs to safeguard their financial performance. Many hotel CEOs are happy with how revenue managers work and never question if there are better ways of protecting and growing total revenue, so let's start with the action list for hotel CEOs.

Why CEOs Need to Pay Attention

A CEO's grasp of revenue management challenges directly impacts the hotel's financial health. By understanding the four pitfalls, CEOs can empower their revenue managers to make better decisions, leading to the following:
  • Increased Revenue: Avoid leaving money on the table due to pricing errors or missed opportunities.
  • Improved Profitability: Optimize costs and maximize returns by addressing inefficiencies.
  • Enhanced Reputation: A well-run revenue management strategy translates to happy guests and positive reviews.
  • Reduced Stress: Give revenue managers the tools and knowledge they need to succeed, fostering a more productive work environment.

The Four Critical Challenges

  1. Incomplete Data: Decisions made on inaccurate or incomplete data are doomed to fail. We'll explore how to ensure your revenue management team has the correct information at their fingertips.
  2. Cognitive Biases: Human biases can cloud judgment, leading to suboptimal pricing or inventory decisions. We'll discuss strategies to mitigate these biases and promote more objective decision-making.
  3. Knowledge and Skills Gaps: A lack of expertise can undermine the effectiveness of revenue management initiatives. We'll delve into training and development opportunities to keep your team sharp.
  4. Black-Box Systems: Opaque algorithms can make understanding how systems make decisions difficult. We'll examine ways to increase transparency and ensure your revenue management tools work for you, not against you.

Don't Let Pitfalls Derail Your Success

By addressing these challenges head-on, hotel CEOs can pave the way for a more profitable and sustainable future. Let's examine each pitfall to better understand the problem, its impact, and best practices.

1. Lack of Data

Revenue managers often struggle with insufficient data, leading to inaccurate forecasting and poor decision-making. The lack of data can be due to fragmented systems, incomplete data capture, outdated technology, or a combination of the above. The immediate solution is to collect data manually and input everything in Excel. Using a spreadsheet is a quick fix rather than a solid long-term solution.
Albert Einstein famously said, "If I have one hour to solve a problem, I would spend 55 minutes understanding the problem and 5 minutes finding the solution." This principle is particularly relevant when addressing the issue of data insufficiency in revenue management. A deep understanding of the problem reveals multiple layers of complexity.

Understanding the Problem

  1. Fragmented Systems:
    • Siloed Data Sources: Hotels use multiple systems, such as a PMS, RMS, benchmarking, rate shopping, meeting & events, POS, spa, parking, golf, etc., to capture transactional data generated by guests or systems. When these systems do not communicate effectively, data remains siloed. This fragmentation prevents revenue managers from obtaining a unified view of the hotel's performance, pick-up, on-the-books, and customer/guest behavior.
    • Inconsistent Formats: Different systems may store data in varying formats, making it difficult to consolidate and analyze the information cohesively. This inconsistency can lead to errors and omissions in data interpretation.
  2. Incomplete Data Capture:
    • Manual Data Entry: Reliance on manual data entry can result in human errors and incomplete data. Important information may be missed or inaccurately recorded, leading to gaps in the dataset.
    • Limited Data Points: Some hotels may only capture essential data points such as occupancy and average daily rates (ADR) and often only aggregated data that cannot explain the whole picture. However, more granular data like booking lead times, pick-up, and cancellation patterns are crucial for accurate forecasting.
  3. Outdated Technology:
    • Legacy Systems: Many hotels still rely on outdated legacy systems that cannot handle modern data demands. These systems do not support real-time data processing or advanced analytics, limiting the ability to respond swiftly to market changes.
    • Lack of Integration: Older technologies often do not integrate well with newer systems and platforms, creating data flow and analysis bottlenecks.

Impact

When revenue managers lack comprehensive data, they risk making pricing and inventory decisions based on incomplete or incorrect information. Lack of data can result in:
  • Inaccurate Room Rates: Setting optimal room rates becomes challenging without accurate data, potentially leading to either underpricing (resulting in lost revenue) or overpricing (leading to decreased occupancy).
  • Suboptimal Inventory Allocation: Misunderstanding demand patterns can cause poor inventory distribution across different channels, missing opportunities to maximize revenue.
  • Missed Revenue Opportunities: Insufficient data hinders identifying and capitalizing on high-demand periods, special events, or emerging market trends.
  • Ineffective Customer Segmentation: Without detailed guest data, creating targeted marketing campaigns and personalized experiences becomes difficult, reducing the effectiveness of promotional efforts and guest satisfaction.
  • Manual Reporting: Too much time spent collecting, compiling, and formatting data into Excel-based reports to respond to information requests from top management.

Best Practices

  • Modern Technology: Update all systems to cloud-based with an open API to enable integrations and modern data management.
  • Data Collection: Implement robust systems to gather comprehensive data from all touchpoints, including data from property management systems (PMS), RMS, benchmarking, rate shopping, and other relevant sources.
  • Data Integration: Ensure seamless data integration into a centralized platform from various sources. This enables a holistic view of the hotel's performance and customer/guest behavior, facilitating more informed decision-making.
  • Data Quality Management: Regularly audit data for accuracy and completeness. Utilize data cleansing tools to rectify inconsistencies and ensure that the data used for analysis is reliable.
  • Advanced Analytics: Leverage advanced analytics to process large datasets and extract meaningful insights. This helps identify trends, forecast demand, and optimize pricing strategies.
By addressing the lack of data, revenue managers can make more accurate and informed decisions, leading to improved profitability and a better understanding of their customers.

2. Biases in Decision Making

Cognitive biases often influence revenue managers' decisions, leading to suboptimal outcomes. Cognitive biases such as anchoring, overconfidence, recency effects, and confirmation bias can skew their judgment and hinder effective decision-making. To combat biases effectively, it's crucial to delve into the various forms of biases and their root causes.

Understanding the Problem

  1. Anchoring Bias:
    • Initial Information: Revenue managers may emphasize the first piece of information they receive (the "anchor"), such as historical room rates or past performance metrics, without adequately considering current market conditions or new data.
    • Fixed Mindsets: Relying heavily on anchors can lead to resistance to change, causing managers to stick to outdated strategies even when market dynamics shift.
  2. Overconfidence Bias:
    • Excessive Trust in Intuition: Revenue managers might overestimate their ability to predict market trends based on personal experience or gut feelings, leading to overconfidence in their forecasts and strategies. One example is that many revenue managers think they have a better forecast than the revenue management system.
    • Ignoring Data: Overconfident managers may ignore data that contradicts their beliefs, resulting in decisions not grounded in comprehensive analysis.
  3. Recency Effect:
    • Short-Term Focus: The tendency to give more weight to recent events or trends can lead revenue managers to react to short-term fluctuations rather than considering long-term patterns and historical data.
    • Volatile Decisions: This bias can cause erratic pricing and inventory decisions, which may not align with overall strategic goals.
  4. Confirmation Bias:
    • Selective Data Use: Revenue managers might favor information that confirms their preexisting beliefs or hypotheses while disregarding data that challenges them. This selective attention can lead to skewed analysis and poor decision-making.
    • Reinforcing Mistakes: Continuously seeking out data supporting previous decisions can reinforce mistakes and prevent learning from past errors, leading to repeated misjudgments.

Impact

Cognitive biases can significantly distort revenue management decisions, leading to:
  • Mispriced Room Rates: Anchoring past rates or relying on intuition rather than data can result in prices that are not competitive or optimized for current market conditions.
  • Suboptimal Forecasting: Overconfidence in inaccurate forecasts can lead to either overestimating or underestimating demand, affecting inventory allocation and pricing strategies.
  • Inconsistent Strategies: Recency bias can cause revenue managers to change strategies too frequently, confusing both the market and internal stakeholders and potentially leading to lost revenue.
  • Reinforced Errors: Confirmation bias can entrench flawed strategies by ignoring critical data that might suggest a need for change, leading to persistent suboptimal performance.

Best Practices

  • Awareness Training: Educate revenue managers and their teams on common cognitive biases and their impact on decision-making. Awareness is the first step in mitigating the effects of these biases.
  • Data-Driven Decisions: Emphasize the importance of making decisions based on comprehensive data analysis rather than intuition or past experiences. Use data visualization tools to help managers understand trends and patterns.
  • Scenario Planning: Implement scenario analysis to explore different outcomes and consider various possibilities. This will help you understand the potential impact of different strategies and reduce your reliance on any single piece of information.
  • Regular Reviews: Review and audit decision-making processes to identify and address biases. Encourage a culture of questioning and peer review to ensure that decisions are thoroughly vetted.
  • Algorithmic Assistance: Utilize advanced revenue management systems that incorporate algorithms to aid decision-making. These systems can provide unbiased recommendations based on large datasets, helping to counteract human biases.
  • Diverse Perspectives: Encourage collaboration and input from different team members to provide a variety of viewpoints, reducing the risk of confirmation bias and other cognitive biases.
By addressing cognitive biases, revenue managers can make more objective and data-driven decisions, leading to more consistent and optimized revenue management strategies.

3. Knowledge and Skills Gaps

Revenue managers may lack the necessary skills or knowledge to effectively analyze data and implement revenue management strategies. This gap can stem from inadequate training, rapid technological advancements, or insufficient cross-functional understanding. Addressing the knowledge and skills gaps requires comprehensively exploring the root causes and their implications.

Understanding the Problem

  1. Inadequate Training:
    • Outdated Curriculum: Many training programs may not keep pace with industry developments and technological advancements. Revenue managers might be trained using obsolete tools and techniques.
    • Lack of Continuous Learning: Revenue management is a dynamic field requiring constant updates and learning. However, many professionals may not have access to ongoing training and development opportunities.
  2. Rapid Technological Advancements:
    • Complex Systems: Modern revenue management systems are sophisticated and require specialized knowledge to operate effectively. Revenue managers may struggle to keep up with the latest features and functionalities.
    • Integration Challenges: Understanding how to integrate various systems (PMS, RMS, benchmarking, rate shopping, meetings and events, POS, etc.) and leverage their combined data can be complex and require a high level of technical proficiency.
  3. Insufficient Cross-Functional Knowledge:
    • Siloed Departments: Revenue managers often work in isolation from other departments, such as marketing, sales, and operations. This siloed approach limits their understanding of how revenue management decisions impact other business areas.
    • Limited Business Acumen: A deep understanding of broader business strategies, financial principles, and customer behavior is essential for effective revenue management. Gaps in these areas can hinder strategic decision-making.

Impact

Knowledge and skills gaps can have a significant impact on revenue management performance:
  • Inefficient Use of Systems: Without proper knowledge and skills, revenue managers may not fully utilize advanced revenue management systems' capabilities, leading to missed optimization opportunities.
  • Misinterpretation of Data: Inadequate analytical skills can lead to data misinterpretation, which can lead to flawed insights and poor strategic decisions.
  • Poor Strategic Execution: A lack of understanding of broader business implications can lead to strategies misaligned with overall business goals, affecting profitability and competitive positioning.
  • Reduced Adaptability: In a rapidly changing market, revenue managers' inability to quickly learn and apply new techniques can make it difficult to adapt and respond to new challenges.

Best Practices

  • Continuous Training: Invest in ongoing training and development programs to update skills. These investments include formal education, workshops, webinars, and certifications on the latest revenue management tools and techniques.
  • Cross-Functional Teams: Foster collaboration between departments (sales, marketing, operations) to share knowledge and best practices. This holistic approach ensures that revenue managers understand the broader business context and its impact on revenue strategies.
  • Mentorship Programs: Pair less experienced revenue managers with seasoned professionals for guidance and support. Mentorship can accelerate learning and provide practical insights that formal training may not cover.
  • Advanced Analytics Training: Provide specialized training in data analytics, including using advanced tools and software. This training enhances the ability to interpret complex data sets and derive actionable insights.
  • Technology Integration Workshops: Conduct workshops on defining data needs and integrating and effectively using various systems (PMS, RMS, benchmarking, rate shopping, etc.). These workshops help revenue managers understand how to leverage technology to its fullest potential.
  • Knowledge Sharing Platforms: Create platforms for knowledge sharing within the organization, such as internal forums, regular meetings, and collaborative projects. Encouraging open communication and sharing of best practices can help bridge knowledge gaps.
By addressing knowledge and skills gaps, revenue managers can enhance their analytical capabilities, make more informed decisions, and better align their strategies with overall business goals, ultimately driving improved revenue performance.

4. Black-Box Systems

Many revenue management systems operate as "black boxes," providing outputs without transparency into the underlying algorithms or decision-making processes. This lack of transparency can lead to mistrust and difficulty in refining strategies. Addressing the challenges of black-box systems requires a deep dive into their nature and the resulting implications for revenue management.

Understanding the Problem

  1. Lack of Transparency:
    • Opaque Algorithms: Black-box systems use complex algorithms to generate recommendations, but these algorithms are often not transparent. Revenue managers may not understand how systems make decisions or what data systems prioritize.
    • Limited Insight: Without insight into the system's logic, managers cannot validate or challenge the recommendations, leading to blind reliance on the system's outputs or overriding the recommendations.
  2. Trust Issues:
    • Skepticism: The opacity of black-box systems can breed skepticism among revenue managers and other stakeholders. This mistrust can result in a reluctance to fully embrace and implement system recommendations.
    • Resistance to Change: A lack of understanding of the system's workings can lead to resistance to adopting new technologies or methodologies, especially when outcomes are unexpected or counterintuitive.
  3. Difficulty in Troubleshooting and Refining Strategies:
    • Problem Identification: When issues arise, it is challenging to identify the root cause without understanding the system's internal processes. Not knowing the root causes can delay corrective actions and hinder performance improvements.
    • Strategy Adjustment: Revenue managers may struggle to refine or customize strategies because they cannot pinpoint how different inputs affect the system's outputs.

Impact

The use of black-box systems can significantly impact revenue management effectiveness:
  • Reduced Decision-Making Confidence: A lack of transparency can undermine confidence in the system's recommendations, leading to hesitancy in decision-making.
  • Suboptimal Performance: Inability to understand and refine system recommendations can result in poorly optimized strategies, affecting revenue and profitability.
  • Increased Risk: Blind reliance on opaque systems can lead to unanticipated risks, as managers may not fully grasp the potential consequences of system-driven decisions.
  • Stakeholder Frustration: Other stakeholders (e.g., marketing, sales, operations) may become frustrated with decisions based on systems they do not understand, leading to misalignment and conflict.

Best Practices

  • Transparent Systems: Choose revenue management systems that offer transparency in their algorithms and decision logic. Systems that clearly explain how recommendations are derived can build trust and confidence among users.
  • Customizable Solutions: Implement solutions allowing customization and adjustments based on specific business needs. Customizable systems enable revenue managers to tweak inputs and see how changes impact outputs, fostering a deeper understanding.
  • User Training: Ensure that revenue managers are well-trained in the functionalities and limitations of their systems. Comprehensive training helps managers understand the system's logic and how to use it effectively.
  • Regular Audits: Conduct regular audits of the system's recommendations and performance. Audits can help identify inconsistencies and areas for improvement, ensuring that the system remains aligned with business goals.
  • Collaborative Approach: Foster collaboration between revenue managers and technology providers. A collaborative approach can lead to better system customization, troubleshooting, and continuous improvement.
  • Feedback Loops: Establish feedback loops where revenue managers can report issues, suggest improvements, and share insights with system developers. Continuous feedback ensures the system evolves to meet user needs and market conditions.
By addressing black-box systems' challenges, revenue managers can enhance their understanding and trust in technology. Understanding how systems work will lead to more confident and effective decision-making, improved strategy refinement, and better revenue performance.

Conclusion

Navigating the complexities of revenue management requires a keen understanding of the various pitfalls that can undermine effective decision-making. By recognizing and addressing these common challenges, revenue managers can significantly enhance their performance and drive better hotel financial outcomes.
  • Lack of Data: Insufficient data can lead to inaccurate forecasting and suboptimal decision-making. Implementing robust data collection and integration practices, ensuring data quality, and leveraging advanced analytics can mitigate these issues and provide a solid foundation for informed decisions.
  • Biases in Decision Making: Cognitive biases such as anchoring, overconfidence, recency effect, and confirmation bias can distort judgment. Raising awareness of these biases, fostering data-driven decisions, implementing scenario planning, conducting regular reviews, utilizing algorithmic assistance, and encouraging diverse perspectives can help revenue managers make more objective and effective decisions.
  • Knowledge and Skills Gaps: Inadequate training, rapid technological advancements, and insufficient cross-functional knowledge can hinder revenue managers' effectiveness. Continuous training, fostering cross-functional collaboration, mentorship programs, advanced analytics training, technology integration workshops, and knowledge-sharing platforms can bridge these gaps and empower revenue managers with the necessary skills and knowledge.
  • Black-Box Systems: Lack of transparency in revenue management systems can lead to mistrust and difficulty refining strategies. Opting for transparent systems, ensuring customizable solutions, providing user training, conducting regular audits, fostering a collaborative approach, and establishing feedback loops can build trust and enhance the effectiveness of revenue management systems.
By understanding and addressing these pitfalls, revenue managers can optimize their strategies, improve accuracy, and drive profitability.
Revenue managers have struggled with these pitfalls in their daily work for many years. I wanted to address these pitfalls many years ago, so I founded Demand Calendar. I think it is appropriate in this blog post to explore how Demand Calendar specifically addresses these challenges, providing tools and solutions that make life easier for revenue managers.

Introduction to Demand Calendar

Making informed decisions is crucial for driving revenue, enhancing operational efficiency, and ensuring sustainable profitability. Demand Calendar is designed to transform hotel data into actionable insights, empowering hotel groups to achieve these goals. Demand Calendar provides comprehensive data integration, mitigates cognitive biases, bridges knowledge gaps, and offers transparent, customizable systems by addressing the core challenges that revenue managers face. With Demand Calendar, revenue managers can perform their duties faster and more accurately, ultimately driving better hotel revenue outcomes. Moreover, by alleviating these common pitfalls, Demand Calendar enhances the capabilities of revenue managers, giving them more time to use their judgment and make better decisions.

How Demand Calendar Addresses Revenue Management Pitfalls

Revenue managers face numerous challenges daily, from data insufficiencies to biases and black-box systems. Demand Calendar alleviates these issues, helping revenue managers perform their duties more effectively and accurately. Here's how Demand Calendar can solve or mitigate the common pitfalls discussed.

1. Lack of Data

Root Causes Addressed

  • Fragmented Systems: Demand Calendar integrates data from various sources such as PMS, CRM, and booking engines into a centralized platform. This consolidation provides a comprehensive view of the hotel's performance and customer/guest behavior.
  • Incomplete Data Capture: Demand Calendar captures raw data, including all details in reservations, forecasts, benchmarks, etc., to roll up and drill down any variables for a hotel group, such as occupancy rates, booking lead times, guest preferences, and cancellation patterns. Extracting all data into one system ensures revenue managers can access detailed and complete datasets.
  • Outdated Technology: Demand Calendar leverages modern cloud-based technology to support real-time data processing and advanced analytics, ensuring revenue managers can make timely and informed decisions.

Impact

By providing a unified and detailed dataset, Demand Calendar enables more accurate forecasting, better customer segmentation, and optimized pricing strategies, reducing the risks associated with insufficient data.

2. Biases in Decision Making

Root Causes Addressed

  • Anchoring Bias: Demand Calendar provides data-driven insights that help revenue managers move beyond initial information and historical data. The system's analytics capabilities ensure that decisions are based on current and comprehensive data.
  • Overconfidence Bias: Demand Calendar uses advanced data visualization to help revenue managers validate their forecasts and strategies, reducing their reliance on intuition.
  • Recency Effect: The platform's historical data analysis and trend identification tools allow managers to consider long-term patterns, not just recent trends.
  • Confirmation Bias: Demand Calendar offers transparent and objective data analysis, encouraging revenue managers to consider all relevant data rather than just information that confirms their preexisting beliefs.

Impact

By mitigating cognitive biases, Demand Calendar ensures that revenue managers make more objective, data-driven decisions, leading to more consistent and optimized revenue management strategies.

3. Knowledge and Skills Gaps

Root Causes Addressed

  • Inadequate Training: Demand Calendar is intuitive and exceptionally user-friendly, making it easier for revenue managers to learn and use the system effectively.
  • Rapid Technological Advancements: Demand Calendar continuously updates the latest features and capabilities based on customer input, ensuring revenue managers can access cutting-edge tools without extensive technical expertise.
  • Insufficient Cross-Functional Knowledge: Demand Calendar fosters collaboration by integrating data and insights from various departments (sales, marketing, operations), helping revenue managers understand the broader business context.

Impact

Demand Calendar empowers revenue managers to fully utilize the system's capabilities, make accurate data interpretations, and align their strategies with overall business goals by addressing knowledge and skills gaps.

4. Black-Box Systems

Root Causes Addressed

  • Lack of Transparency: Demand Calendar offers straightforward information, enabling revenue managers to comprehend the data, which fosters trust and confidence in the system. Demand Calendar increases transparency by visualizing data from other systems, such as the hotel RMS.
  • Trust Issues: With clear explanations and detailed data insights, Demand Calendar reduces skepticism and encourages full adoption of its recommendations.
  • Difficulty in Troubleshooting and Refining Strategies: The detailed drill-down capabilities allow revenue managers to fully understand the data, facilitating strategy refinement and problem-solving.

Impact

Demand Calendar enhances revenue managers' understanding and trust in the system by offering transparency and easy access to detailed analysis. This leads to more confident and effective decision-making and improved revenue performance.

Conclusion

Navigating the complexities of revenue management requires a keen understanding of the various pitfalls that can undermine effective decision-making. Demand Calendar recognizes and addresses these common challenges to help revenue managers significantly enhance their performance and drive better hotel financial outcomes. By mitigating the pitfalls, Demand Calendar allows revenue managers to spend more time using their judgment to make better decisions, ultimately driving better hotel revenue outcomes.