Learning-based Software System
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A Learning-based Software System is a information-processing software system that implements learning algorithms to solve automated learning task (to improve system performance based on learning tasks).
- AKA: Learning System, Learning Program, Adaptive Software System, Learning Machine.
- Context:
- It can (typically) process Input Data.
- It can (typically) update System State.
- It can (often) generate Output Results.
- It can (often) measure Performance Metrics.
- It can (often) adapt Internal Models.
- It can (often) store Learning Experiences.
- It can (often) optimize System Behavior.
- ...
- It can range from being a Simple Learning-based Software System to being a Complex Learning-based Software System, depending on its learning capability and application domain.
- It can range from being a Biological Implementation-based Learning-based Software System to being a Software Implementation-based Learning-based Software System, depending on its implementation type.
- It can range from being an Inductive Learning-based Learning-based Software System to being a Deductive Learning-based Learning-based Software System, depending on its learning approach.
- It can range from being an Unsupervised Learning-based Learning-based Software System to being a Supervised Learning-based Learning-based Software System, depending on its learning paradigm.
- It can range from being a Narrow Domain-based Learning-based Software System to being a General Purpose-based Learning-based Software System, depending on its application scope.
- It can range from being a Single-domain Learning-based Software System to being a Multi-domain Learning-based Software System, depending on its knowledge transfer capability.
- It can range from being a Batch Learning-based Software System to being an Online Learning-based Software System, depending on its learning mode.
- It can range from being a Model-free Learning-based Software System to being a Model-based Learning-based Software System, depending on its knowledge representation.
- ...
- It can use Learning Subsystems.
- It can maintain Belief Systems.
- It can apply Learning Algorithms.
- It can improve Performance Metrics.
- ...
- Examples:
- Supervised Learning Systems, such as:
- Unsupervised Learning Systems, such as:
- Reinforcement Learning Systems, such as:
- Domain-Specific Systems, such as:
- Industrial Control Systems, which utilize learning algorithms for process optimization.
- Healthcare Diagnostic Systems, which learn from patient data to improve diagnostic accuracy.
- Financial Trading Platforms, which adapt trading strategies based on market patterns.
- Recommendation Engines, which learn from user behavior to personalize content delivery.
- Natural Language Processing Systems, which improve language understanding through continuous learning.
- Computer Vision Systems, which enhance image recognition through iterative training.
- Autonomous Vehicle Systems, which learn from driving experience to improve navigation capability.
- Security Analysis Systems, which detect threat patterns through behavioral learning.
- Energy Management Systems, which optimize resource usage through consumption pattern learning.
- Customer Service Bots, which improve response quality through interaction learning.
- ...
- Counter-Examples:
- Rule-based Systems without learning capability.
- Static Software Systems lacking adaptation mechanisms.
- Fixed Algorithm Systems without performance improvement.
- Heuristic-based Systems without experience utilization.
- See: Learning Algorithm, Learning Task, Machine Learning, Artificial Intelligence, Neural Network, Deep Learning, Reinforcement Learning, Supervised Learning, Unsupervised Learning, Adaptive System, Performance Optimization, System Architecture.
References
2024-11-22
- Perplexity.ai
- Question: What are Learning-based Software Systems and how do they function in modern computing?
- Answer: Learning-based software systems represent a significant evolution in computing, utilizing data and algorithms to adapt and improve their performance over time, unlike traditional static software systems.
- Core System Components and System Functioning:
- Model Architecture:
- Neural networks form the foundation of many learning-based systems, consisting of input layers, hidden layers, and output layers
- Each node connects to others with specific weights and thresholds, activating only when output exceeds specified values
- Learning Methods:
- Three primary approaches characterize learning-based systems:
- Supervised Learning:
- Uses labeled datasets to train algorithms for classification and prediction tasks
- Common implementations include neural networks, naïve bayes, and support vector machines
- Unsupervised Learning:
- Analyzes unlabeled datasets to discover hidden patterns and groupings without human intervention
- Makes it ideal for data exploration and pattern recognition
- Reinforcement Learning:
- Learns optimal behaviors through trial-and-error interactions with an environment
- Receives rewards or penalties for actions taken
- Supervised Learning:
- Three primary approaches characterize learning-based systems:
- Model Architecture:
- Training Approaches:
- Static vs Dynamic Training:
- Static Training:
- One-time training with fixed model deployment
- Simpler to develop and test
- May become stale over time
- Dynamic Training:
- Continuous or frequent training updates
- More adaptable to changing relationships
- Requires ongoing maintenance
- Static Training:
- Static vs Dynamic Training:
- Real-world Applications:
- Industrial Automation:
- Learning-based systems have revolutionized industrial processes
- Particularly in data center management achieving 40% reduction in energy consumption through intelligent cooling optimization
- Healthcare Applications:
- Systems excel in healthcare by determining optimal treatment policies using dynamic treatment regimes
- Can make time-dependent decisions and factor in delayed treatment effects for improved patient outcomes
- Financial Trading:
- Learning-based platforms automate trading decisions by analyzing market data
- Determine optimal actions (buy, hold, or sell), bringing consistency to financial transactions
- Industrial Automation:
- System Advantages for Complex Problems:
- Learning-based systems excel in handling complex scenarios because they:
- Process vast amounts of unstructured data in its raw form
- Automatically determine distinguishing features between data categories
- Scale effectively with increasing data volumes
- Adapt to changing patterns and relationships in data
- Learning-based systems excel in handling complex scenarios because they:
- Key System Characteristics:
- Dynamic Adaptation:
- Unlike traditional static software, learning-based systems can continuously evolve their internal models based on new data and experiences
- Makes them effective for complex, large-scale, and highly dynamic systems where traditional rule-based approaches fall short
- Performance Measurement:
- Systems incorporate sophisticated evaluation mechanisms to ensure optimal performance
- Use techniques like cross-validation to prevent overfitting or underfitting in supervised learning scenarios
- Dynamic Adaptation:
- Citations:
[1] https://www.ibm.com/topics/machine-learning [2] https://neptune.ai/blog/reinforcement-learning-applications [3] https://developers.google.com/machine-learning/crash-course/production-ml-systems/static-vs-dynamic-training [4] https://isssr24.techconf.org/download/webpub2024/pdfs/ISSSR2024-nUvOe97IMk8vkEMcN0CJn/629300a478/629300a478.pdf [5] https://www.mdpi.com/2076-3417/12/17/8700
2008
- (Wilson, 2008a) ⇒ Bill Wilson. (2008). “The Machine Learning Dictionary for COMP9414." University of New South Wales, Australia.
- learning program: Normal programs P produce the same output y each time they receive a particular input x. Learning programs are capable of improving their performance so that they may produce different (better) results on second or later times that they receive the same input x. They achieve this by being able to alter their internal state, q. In effect, they are computing a function of two arguments, P(x | q) = y. When the program is in learning mode, the program computes a new state q' as well as the output y, as it executes. In the case of supervised learning, in order to construct q', one needs a set of inputs [math]\displaystyle{ x_i }[/math] and corresponding target outputs zi (i.e. you want P(xi | q) = zi when learning is complete). The new state function L is computed as: L(P, q, ((x1,z1), ..., (xn, zn))) = q'. See also unsupervised learning, observation language, and hypothesis language.
machine learning: Machine learning is said to occur in a program that can modify some aspect of itself, often referred to as its state, so that on a subsequent execution with the same input, a different (hopefully better) output is produced. See unsupervised learning and supervised learning, and also function approximation algorithms and symbolic learning algorithms.
- learning program: Normal programs P produce the same output y each time they receive a particular input x. Learning programs are capable of improving their performance so that they may produce different (better) results on second or later times that they receive the same input x. They achieve this by being able to alter their internal state, q. In effect, they are computing a function of two arguments, P(x | q) = y. When the program is in learning mode, the program computes a new state q' as well as the output y, as it executes. In the case of supervised learning, in order to construct q', one needs a set of inputs [math]\displaystyle{ x_i }[/math] and corresponding target outputs zi (i.e. you want P(xi | q) = zi when learning is complete). The new state function L is computed as: L(P, q, ((x1,z1), ..., (xn, zn))) = q'. See also unsupervised learning, observation language, and hypothesis language.