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17546564. RISK ADAPTIVE ASSET MANAGEMENT simplified abstract (INTERNATIONAL BUSINESS MACHINES CORPORATION)

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RISK ADAPTIVE ASSET MANAGEMENT

Organization Name

INTERNATIONAL BUSINESS MACHINES CORPORATION

Inventor(s)

Tetsuro Morimura of Shinagawa-ku (JP)

RISK ADAPTIVE ASSET MANAGEMENT - A simplified explanation of the abstract

This abstract first appeared for US patent application 17546564 titled 'RISK ADAPTIVE ASSET MANAGEMENT

Simplified Explanation

The abstract describes a computer-implemented method for supply chain management. Here are the key points:

  • The method uses a feature vector to analyze supply chain delivery trends, a given portfolio of items, and the current investment amount.
  • It determines whether the current supply chain delivery situation is normal or abnormal based on the feature vector.
  • If the situation is abnormal, a risk-avoidance action is performed to reduce the investment amount and avoid potential delivery losses.
  • If the situation is normal, a risk adaptive action is performed to increase the investment amount and potentially gain from supply chain deliveries using a distributional reinforcement learning process.

Potential Applications

This technology can be applied in various industries and sectors that rely on supply chain management, including:

  • Manufacturing: Optimizing inventory levels and investment decisions based on supply chain delivery trends.
  • Retail: Managing stock levels and investment strategies to minimize losses and maximize gains.
  • Logistics: Improving decision-making for transportation and distribution based on supply chain data.
  • E-commerce: Enhancing order fulfillment and inventory management processes for online retailers.

Problems Solved

The technology addresses several challenges in supply chain management, such as:

  • Uncertainty: By analyzing supply chain delivery trends, it helps identify abnormal situations and take appropriate actions to mitigate potential losses.
  • Risk management: The risk-avoidance and risk adaptive actions help balance investment decisions and optimize outcomes based on the current supply chain situation.
  • Decision-making: The use of a feature vector and reinforcement learning process provides a data-driven approach to make informed decisions in supply chain management.

Benefits

Implementing this technology offers several benefits for supply chain management:

  • Improved efficiency: By analyzing supply chain delivery trends, it enables proactive decision-making and reduces the likelihood of disruptions or losses.
  • Cost savings: The risk-avoidance action helps minimize potential losses, while the risk adaptive action allows for capitalizing on favorable supply chain situations, leading to overall cost savings.
  • Enhanced decision-making: The use of data-driven analysis and reinforcement learning improves the accuracy and effectiveness of investment decisions in supply chain management.


Original Abstract Submitted

A computer-implemented method is provided for determining an action with respect to a given portfolio of items for supply chain management. The method includes acquiring, by a hardware processor, a feature vector for supply chain delivery trends, the given portfolio, and a current investment amount. The method further includes determining, by the hardware processor, whether a current supply chain delivery situation is normal or abnormal based on the feature vector. The method also includes performing a risk-avoidance action to reduce the current investment amount and avoid potential supply chain delivery losses, responsive to a determination that the current supply chain delivery situation is abnormal. The method additionally includes performing a risk adaptive action to increase the current investment amount and incur potential supply chain delivery gains by using a distributional reinforcement learning process, responsive to a determination that the current supply chain delivery situation is normal.

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