Problem Solving
Problem solving is a cognitive process that involves identifying obstacles, analysing situations, and
devising solutions to achieve a desired goal. It requires both analytical and creative thinking and is
integral to decision-making and addressing everyday challenges.
Key Terms Related to Problem Solving
1. Original or Initial State
    ●   Definition: The starting point in the problem-solving process, where the problem is
        recognized and defined.
    ●   Importance: Understanding the initial state is crucial for framing the problem correctly and
        planning a solution.
    ●   Example: Identifying that a software bug is causing an application crash serves as the initial
        state in solving the issue.
2. Goal or End State
    ●   Definition: The desired outcome or solution to the problem. It represents the resolution of the
        obstacle and achievement of the objective.
    ●   Importance: Defining a clear goal provides direction and helps evaluate the success of the
        solution.
    ●   Example: Fixing the software bug so the application runs smoothly is the goal state in the
        problem-solving process.
3. Person/Operator
    ●   Definition: The individual who actively engages in solving the problem. This person utilises
        skills, strategies, and logic to transition from the initial state to the goal state.
    ●   Role: The operator applies critical thinking, creativity, and relevant knowledge to identify and
        implement effective solutions.
    ●   Example: A software engineer diagnosing and resolving the bug in the application.
4. Problem Space
    ●   Definition: The conceptual framework encompassing the initial state, the goal state, and all
        possible actions or paths to transition from one to the other.
    ●   Components of Effective Problem Solving in Problem Space:
            ○ Coherence: Ensuring logical connections between all elements of the problem.
            ○ Correspondence: Accurately understanding the relationships between elements
                within the problem.
            ○ Matching: Ensuring all parts of the problem align and fit together cohesively.
    ●   Example: In a chess game, the problem space includes the arrangement of pieces on the
        board, the objective of checkmating the opponent, and the allowable moves of each piece.
5. Rules
    ●   Definition: The principles or guidelines that define constraints and permissible actions in the
        problem-solving process. Rules help narrow down the possible solutions by providing
        structure and clarity.
    ●   Importance: Rules ensure that solutions adhere to the constraints of the problem, leading to
        feasible and practical outcomes.
    ●   Example: In chess, each piece has specific movements (e.g., pawns move forward but attack
        diagonally), defining the rules that must be followed to achieve checkmate.
Types of Problems
Problems can be broadly classified into well-defined and ill-defined categories, depending on the
clarity of their initial states, goal states, and solution processes. Understanding these distinctions helps
in choosing the appropriate strategies for resolution.
1. Well-Defined Problems
    ●   Description: These problems have clearly specified initial and goal states, along with explicit
        rules or constraints for finding the solution. The steps to solve the problem are structured and
        measurable.
    ●   Examples:
            ○ Solving a maths equation where the goal is to find the value of a variable.
            ○ Assembling a jigsaw puzzle where the pieces fit into a predefined arrangement.
2. Ill-Defined Problems
    ●   Description: Ill-defined problems lack clarity in their initial or goal states and do not have
        straightforward solutions. They require creativity, judgement, and sometimes subjective
        interpretation.
    ●   Examples:
             ○ Designing a marketing campaign, where success depends on creativity and audience
                 response.
             ○ Resolving a diplomatic conflict, where the goal is influenced by politics, culture, and
                 negotiation dynamics.
Greeno’s Classification of Well-Defined Problems
Greeno proposed three subcategories of well-defined problems based on their unique characteristics
and the cognitive skills required to solve them.
1. Arrangement Problems
    ●   Description: These problems involve rearranging or recombining elements to satisfy specific
        criteria or achieve a meaningful configuration.
    ●   Examples:
             ○ Solving an anagram by rearranging letters to form a word (e.g., "TAC" → "CAT").
            ○ Completing a jigsaw puzzle by arranging pieces to form the intended image.
    ●   Skills Required:
            ○ Constructive Search: Evaluating multiple combinations to find the correct
                arrangement.
            ○ Perceptual Organisation: Recognizing patterns and relationships among elements.
2. Problems of Inducing Structure
    ●   Description: These problems require identifying and understanding relationships between
        elements to deduce rules or patterns.
    ●   Examples:
            ○ Solving analogies, such as "bird is to sky as fish is to water," by identifying the
                relationship between the pairs.
            ○ Completing numerical series like "2, 4, 6, 8, ?" by deducing the rule of addition.
    ●   Skills Required:
            ○ Attribute Discovery: Identifying relevant characteristics or relationships between
                elements.
            ○ Encoding: Representing elements mentally to understand their connections and roles.
3. Transformation Problems
    ●   Description: These problems require transforming the initial state into the goal state by
        following specific rules or performing sequential operations.
    ●   Examples:
            ○ The Tower of Hanoi problem involves moving a stack of disks between three rods
                while following rules about disk placement.
            ○ Solving a Rubik’s Cube requires turning its faces to achieve uniform colors on each
                side.
    ●   Skills Required:
            ○ Means-End Analysis: Breaking the problem into manageable sub-problems and
                addressing them step by step.
            ○ Planning: Strategically sequencing operations to achieve the desired outcome.
Problem-Solving Cycle (Stages)
Problem solving is a systematic process involving distinct stages. Understanding and following these
stages ensures a structured approach to achieving effective solutions.
1. Problem Identification
    ●   Description: The first step is recognizing that a problem exists. Without identifying the issue,
        no solution can be formulated.
    ●   Key Question: "Do we actually have a problem?"
    ●   Example: A team notices a consistent drop in sales figures, identifying it as a potential
        problem.
2. Problem Definition and Representation
    ●   Description: This stage involves clearly defining the problem and representing it in a
        manageable way, such as through diagrams, models, or outlines. Proper representation helps
        in understanding the scope and constraints.
    ●   Key Question: "What exactly is the problem?"
    ●   Example: Defining the sales drop as an issue related to customer engagement and product
        visibility.
3. Strategy Formulation
    ●   Description: Developing possible solutions by brainstorming ideas and narrowing them down
        to the most viable ones. Two key approaches are used:
             ○ Divergent Thinking: Generating multiple creative ideas.
             ○ Convergent Thinking: Evaluating and selecting the best solution.
    ●   Example: Considering strategies like social media marketing, discounts, and customer
        surveys to boost sales.
4. Organization of Information
    ●   Description: Structuring and categorising data to identify patterns, relationships, and critical
        insights.
    ●   Example: Analysing customer feedback and sales data to determine which demographics are
        contributing to the decline.
5. Resource Allocation
    ●   Description: Determining how much time, effort, and resources (financial or human) should
        be allocated to solve the problem.
    ●   Example: Assigning a budget for marketing and delegating tasks to team members.
6. Monitoring
    ●   Description: Continuously assessing progress to ensure the solution is moving towards the
        goal. Adjustments are made if necessary.
    ●   Example: Tracking the effectiveness of a social media campaign in real time and tweaking
        the strategy if engagement remains low.
7. Evaluation
    ●   Description: Assessing whether the implemented solution effectively resolves the problem.
        This involves reflecting on successes and areas for improvement.
    ●   Key Question: "Did I solve the problem correctly?"
    ●   Example: Analysing sales data post-campaign to confirm if the chosen strategy increased
        revenue.
Factors Affecting Problem Solving
Several factors can influence the efficiency and effectiveness of problem solving, either aiding or
hindering the process.
1. Nature of the Problem
    ●   Description: The complexity, familiarity, and difficulty level of a problem determine the
        effort required. Simple problems may need straightforward solutions, while complex ones
        demand deeper analysis and creativity.
    ●   Example: Troubleshooting a computer issue is more straightforward if the problem is
        familiar, like a common software glitch.
2. Mental Set
    ●   Description: A fixed mindset based on previous experiences can either streamline or restrict
        problem-solving. While familiar strategies may work for similar problems, they can also limit
        creativity.
    ●   Example: Persisting with an outdated sales approach despite evidence that a digital strategy is
        more effective.
3. Functional Fixedness
    ●   Description: This is the tendency to see objects or tools only in their traditional roles, limiting
        creative use.
    ●   Overcoming Functional Fixedness: Encourage alternative uses through brainstorming and
        lateral thinking.
    ●   Example: Using a screwdriver as a lever when no other tool is available.
4. Transfer of Skills
    ●   Description: Previous knowledge can influence current problem-solving efforts:
            ○ Positive Transfer: Successfully applying knowledge from one context to another.
            ○ Negative Transfer: Misapplying past experiences, leading to confusion.
    ●   Example: Using spreadsheet skills learned in one job to streamline data entry in a new role
        (positive transfer) versus trying to apply an unrelated programming method to a marketing
        challenge (negative transfer).
5. Incubation
    ●   Description: Taking a break from active problem-solving allows the subconscious mind to
        process information, often leading to sudden insights.
    ●   Example: A scientist stepping away from an experiment and later realizing a solution during
        a casual conversation.
Strategies for Problem Solving
Problem-solving strategies are systematic approaches used to identify solutions effectively. These
strategies range from precise and reliable methods to more flexible and creative techniques.
1. Algorithms
    ●   Definition: Algorithms are step-by-step procedures or formulas that guarantee a solution to a
        problem. They follow a defined path, ensuring accuracy but often requiring significant time
        and effort.
    ●   Strengths: Reliable and precise, suitable for well-defined problems.
    ●   Weaknesses: Time-consuming and impractical for complex or ill-defined problems.
    ●   Example: Solving an anagram by systematically testing all possible letter combinations until
        the correct word is found (e.g., "TCA" → "ACT").
2. Heuristics
    ●   Definition: Heuristics are mental shortcuts or "rules of thumb" that simplify problem solving.
        They are faster and more intuitive than algorithms but do not guarantee correct solutions.
    ●   Strengths: Efficient and flexible for complex or ill-defined problems.
    ●   Weaknesses: Prone to errors and biases.
    ●   Types of Heuristics:
            1. Means-Ends Analysis:
                    ■ Breaking the problem into smaller, manageable steps and addressing each
                         step to reduce the gap between the current state and the goal state.
                    ■ Example: Solving a maze by identifying intermediate points that lead closer
                         to the exit.
            2. Working Backward:
                    ■ Starting from the goal state and deducing steps required to reach the initial
                         state.
                    ■ Example: Planning a trip by determining the arrival time and working
                         backward to schedule departure and preparation tasks.
            3. Analogies:
                    ■ Applying solutions from similar past problems to the current issue.
                    ■ Example: Using a successful marketing strategy from a previous campaign to
                         address a new product launch.
            4. Generate and Test:
                    ■ Experimenting with possible solutions and evaluating their effectiveness.
                    ■ Example: Troubleshooting a technical issue by testing different
                         configurations until the problem is resolved.
Neuroscience of Problem Solving
The neuroscience of problem solving provides insights into how the brain processes, plans, and
executes solutions. Key areas and processes involved include:
1. Prefrontal Cortex
    ●   Role: The prefrontal cortex is essential for higher-order cognitive functions, including
        planning, decision-making, and adjusting strategies. It allows individuals to evaluate potential
        solutions, anticipate outcomes, and adapt to changing circumstances.
    ●   Example: A chess player using the prefrontal cortex to plan several moves ahead while
        considering the opponent’s potential responses.
2. Error Correction
    ●   Process: When errors are detected during problem-solving, the prefrontal cortex activates to
        adjust strategies and improve performance. This process ensures flexibility and adaptability in
        achieving the goal.
    ●   Example: Revising an approach to a failed experiment by identifying and correcting
        procedural mistakes.
3. Traumatic Brain Injury (TBI)
    ●   Impact: Damage to the prefrontal cortex due to TBI can impair problem-solving abilities,
        particularly in planning, decision-making, and adapting to new strategies. This highlights the
        critical role of this brain region in complex cognitive tasks.
    ●   Example: A person with prefrontal damage may struggle to complete multi-step tasks or
        adapt when initial solutions fail.
Insight in Problem Solving
Insight in problem solving refers to sudden realisations or "aha moments" where the solution to a
problem becomes instantly clear. This type of problem solving is often intuitive and occurs without
explicit, incremental steps, making it distinct from systematic approaches like algorithms or
heuristics.
Insight Problem Solving
    ●   Definition: Insight involves a sudden cognitive shift or reorganisation of information,
        allowing individuals to perceive a problem in a new light and arrive at an immediate solution.
    ●   Characteristics:
            ○ Non-linear: Does not follow a step-by-step progression.
            ○ Instantaneous: The solution emerges abruptly, often after a period of incubation.
            ○ Transformative: Requires a new way of viewing the problem or its elements.
    ●   Example: A person trying to retrieve an object from a high shelf suddenly realises they can
        use a broom handle to knock it down, a solution that seemed elusive moments earlier.
Factors Influencing Insight
Several factors affect the likelihood and effectiveness of insight during problem solving:
    1. Knowledge:
          ○ Prior knowledge and familiarity with the problem domain enhance the chances of
             insight by providing a broader base of experiences and analogies to draw from.
           ○ Example: A mechanic familiar with engine systems may quickly realise a simple fix
             for a car issue that eludes an untrained observer.
   2. Experience:
         ○ Past experiences contribute to insight by enabling individuals to recognize patterns or
             apply previously successful solutions to new problems.
         ○ Example: A chess player drawing on years of experience might suddenly see a
             winning move in a complex position.
   3. Problem Framing:
         ○ How a problem is presented influences the mental approach and likelihood of
             achieving insight. Problems framed in novel or less restrictive ways often stimulate
             creative thinking.
         ○ Example: Rephrasing "How can I fit this item into my bag?" to "How can I carry this
             item?" may lead to insights like using a strap or creating a makeshift handle.
Köhler’s Experiment
Wolfgang Köhler's studies with chimpanzees in the early 20th century provided foundational evidence
for insight-based problem solving:
   1. Experiment Setup:
         ○ Köhler placed a banana outside a chimpanzee's reach and provided tools like sticks or
            boxes inside the enclosure.
         ○ The chimpanzees initially attempted to grab the banana directly but eventually paused
            and observed the environment.
   2. Demonstration of Insight:
         ○ After a period of apparent inactivity (incubation), the chimpanzees suddenly used the
            available tools creatively to retrieve the banana.
         ○ Example: A chimp stacked boxes to reach the banana or joined sticks to extend their
            reach.
   3. Key Takeaway:
         ○ Insight problem solving is not exclusive to humans and involves reinterpreting
            available resources or reframing the problem to achieve a solution.