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Title: Software Gets Smarter


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Software Gets Smarter
  • Artificial Intelligence in the Enterprise
  • Dr Kaustubh Chokshi
  • CEO, Intelligent Business Systems

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  • Cutting-edge Artificial Intelligence techniques
    are ensuring that enterprise software today can
    dynamically adapt to rapidly changing business
    environments and provide realistic decision
    support and trend forecasting for enterprise
    managers to act on
  • AI-based software dynamically learns from
    experience and adapts to the environment, as it
    is equipped to acquire knowledge from the data
    generated within the organization, as well as
    from expert opinion and external data sources

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  • Artificial Neural Network
  • Bayesian Statistics
  • Genetic Algorithm
  • Artificial Immune System

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  • Artificial Neural Network (ANN)
  • Process info in a manner similar to biological
    nervous systems such as the human brain.
  • Large number of highly interconnected processing
    elements.
  • ANNs learn by example, much like humans.
  • An ANN is initially trained with large amounts
    of data and rules about data relationships.
  • Once trained, a neural network becomes an
    expert in its specific area of operation and
    can offer projections and trends based on past
    data and answer what if queries.

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  • Artificial Neural Network (cont.)
  • ANNs operate using several different techniques,
    including gradient-based training, fuzzy logic,
    genetic algorithms and Bayesian methods.
  • ANNs can derive meaning from complex or imprecise
    data, thus recognising patterns and determining
    trends that humans or other computer techniques
    would most likely fail to notice.
  • Neural networks can also learn temporal
    (time-sensitive) concepts and can thus be used in
    signal processing and time series analysis.

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  • Bayesian Statistics
  • Bayesian Statistics enables calculation of the
    probability of a new event on the basis of
    earlier probability estimates of an event or
    events in the past, derived from existing empiric
    data.
  • According to Bayesian logic, the only way to
    quantify a situation with an uncertain outcome is
    through determining its probability.
  • Thus, the knowledge of prior events is used to
    predict future events.

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  • Bayesian Statistics (cont.)
  • This is an iterative or learning process and is
    the preferred method for designing software that
    learns from experience.
  • Pattern recognition is based on Bayesian
    inference, and this forms the basis of varied
    applications such as spam detection, fraud
    detection, intelligent search, unstructured text
    mining, etc.

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  • Genetic Algorithm
  • A genetic algorithm (GA) is an algorithmic model
    that tests a set of results, each represented by
    a string, and selects the best fit among them.
  • In this methodology, of a number of possible
    programs or functions within a program, only the
    most effective survive and compete or cross-breed
    with other programs, with the intention of
    evolving into an ever-better solution to a
    particular problem.
  • Used to find approximate solutions to
    difficult-to-solve problems.

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  • Artificial Immune System (AIS)
  • Like other biologically inspired techniques, AIS
    tries to extract ideas from a natural system, in
    particular the vertebrate immune system, in order
    to develop computational tools for solving
    engineering problems.
  • Used for pattern recognition, data analysis, data
    clustering, function approximation and
    optimisation.

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  • Linear
  • "linear" in its scientific sense that is to say,
    as implying parallelism between the magnitude of
    a cause and the magnitude of its effect.

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  • One of the characteristics of todays business
    environment is that it is definitely non-linear.
  • Non-linear systems exhibit unpredictable but
    non-random cause-and-effect relationships.
  • Edward Lorenz' "butterfly effect" provided an
    illustration of this behaviour by postulating
    that a butterfly flapping its wings in Brazil
    might cause a tornado in Kansas.
  • In complex systems, even a very small change in
    initial conditions can rapidly lead to changes in
    the behaviour of the system that appear
    counter-intuitive in both nature and magnitude.

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  • Decision Management using AI is a systematic
    approach to automating and improving decisions
    across the enterprise.
  • Businesses using AI gain much greater control
    over the results from high-volume operational
    decisions.
  • AI-based Decision Support Systems aim to increase
    the precision, consistency and agility of these
    decisions while reducing the time taken to decide
    and the cost of the decision.

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  • These decisions are typically those that an
    organisation uses to manage its interactions with
    customers, employees and suppliers.
  • Computerisation has changed the way you approach
    decision-making by enabling decisions to be based
    on historical data, prior decisions and their
    outcomes, corporate policies and regulations.

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  • Operational business decisions - those taken in
    large volume, every day.
  • They are differentiated from "strategic"
    decisions such as where to open a new store or
    when to drop a product line that are rarely the
    same twice and that simply do not happen that
    often.
  • Clearly these are important, needs to be
    automated and make them in "real-time".
  • Many examples, such as approve/decline,
    next-best-offer to make a customer, authorisation
    of a sale, fraud detection in a claim, account
    application processing, etc.
  • These "tactical" decisions determine the way in
    which you will manage processes and customers
    such as decisions about which segments of a
    customer base will receive which precise offer.

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  • Alerts - alerting the user to a decision-making
    opportunity or challenge.
  • Problem recognition - identifying problems that
    need to be solved as part of the decision-making
    process.
  • Problem solving - providing and evaluating
    alternative and/or complementary solutions.
  • Facilitating/extending the processing of
    knowledge - overcoming some of the human
    limitations of the speed and volume of
    information that can be processed (e.g.
    acquisition, transformation, exploration).
  • Stimulation - stimulating the human perception,
    imagination, or creating insight.
  • Coordinating/facilitating interactions - in
    multi-participant decision making.
  • Various other stages and activities in the
    decision-making process.

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  • Is a concept developed by Richard Hackathorn.
  • Decision Latency is the time it takes to receive
    an alert, review the analysis, decide what action
    is required, if any, based on knowledge of the
    business, and take action.
  • Operational decisions require very low decision
    latency.
  • Overall Aim of a Decision Management System is to
    try and reduce Decision Latency.

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  • Precision. Increase revenues and improve risk
    management through greater segmentation, more
    relevant offers and better risk management.
    Benefits include
  • Higher revenue yield per customer interaction,
    through better targeting and segmentation and
    through more timely responses to customers
  • Lower losses from fraud and bad debt, through
    using analytics to improve risk management  
  • Lower costs through refined targeting, such as
    eliminating "off target" marketing messages or
    prospects that are unlikely to buy

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  • Consistency. Ensure that all decisions meet your
    rules, policies and regulations, by automating
    75 or more of your operational decisions.
    Benefits include
  • Lower costs of making decisions through
    automation, reducing the number of people and
    streamlining the processes needed to make or
    process a decision.
  • Lower costs of compliance, regulatory
    requirements, through centralised and easy to
    update business rules management.
  • Faster decisions that operate at the speed of the
    transaction, lowering hand-off costs between
    systems and between people.

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  • Agility. Meet new competitive and compliance
    demands by rapidly changing your business rules,
    and instantly executing new strategies. Benefits
    include
  • Improved strategic alignment, greater
    competitiveness through faster response to market
    changes and regulatory demands.
  • Greater return on new product market
    opportunities, through faster time to implement
    and change decision-based processes, change
    approaches to the market.

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  • Increase revenue and profitability by improving
    the consistency, relevance, speed and precision
    of customer decisions, getting more value from
    every customer interaction.
  • Improve customer relationships and retention
    through more targeted offers, faster response to
    service requests and more consistent treatment.
  • Minimise losses through the use of analytics for
    more accurate and consistent risk assessment and
    fraud detection.
  • Gain competitive advantage by being more nimble
    than the competition -- get new strategic
    initiatives, products, campaigns and pricing to
    market faster and with greater precision and
    consistency.
  • Ensure and demonstrate rigorous compliance with
    corporate and regulatory policies.

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  • Reduce the costs associated with decision-based
    processes, while improving decision consistency,
    speed and quality.
  • Leverage existing investments in data warehousing
    and CRMderive more value from all corporate and
    external data sources.
  • Reduce ongoing maintenance costs required to
    change / tune models, rules or strategies that
    are in production.

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  • AI can be applied to virtually any business area
    that involves high-volume, operational decisions,
    or the use of analytics and business rules to
    improve decision strategies.
  • Customer acquisition and retention
  • Matching prospects and customers with
    product/service offerings
  • Core customer decisions-underwriting, channel
    selection, credit, pricing, etc.
  • Forms and data management
  • Work process control
  • Fraud detection
  • Claims management
  • Guidance and employee support
  • Customer response and service
  • Debt collection and recovery
  • Agency management
  • Network integrity assurance
  • Online recommendations
  • Product configuration and design
  • Regulatory compliance

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  • The supply chain of an Enterprise includes the
    network of all suppliers and activities involved
    in the process of transforming the requisite raw
    materials into finished goods and delivering them
    to customers.
  • The objective of supply chain management (SCM) is
    the integration and optimisation of all the
    components and processes involved.

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  • The purpose of AI here is to evaluate the
    different options of transporting the different
    products to different terminals based on demand
    forecasts and forward prices so that the margins
    are maximised.
  • The economic optimisation is accomplished by
    using the Linear Programming technique. The
    margins calculated include sales revenues as well
    as the costs of purchase, production, inventory
    holding, transportation and materials handling.
  • AI plays a key role in Distribution Network by
    not only making the best use of capacities in the
    system (asset utilisation), but also ensures that
    all forecast demands are met (prioritises the
    distribution to make the most economic sense).

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  • Product Customer Fit which means marketing a
    product to a customer who most desires/needs/uses
    it.
  • Demographics Profiling Information such as age,
    gender, household size and parental status offer
    the most basic understanding of who the customer
    is.
  • Geo-Demographic Profiling Location and type of
    area in which people live.
  • Psychographic Profiling Attitudes, Values,
    Motivations and Aspirations.
  • Customer Loyalty Value, Frequency and recurrence
    of purchases.
  • Behaviour Profiling Profiling based on Consumer
    Behaviour focuses on issues key to anyone seeking
    to sell or market products what do your users
    buy? What are they in-market for? How much do
    they spend, and where do they spend it?

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  • AI can help find answers to key questions
  • How can we know which specific marketing actions
    to take, based on purchase behaviour and personal
    profile information, to maximise value?
  • How can we mine the data to derive actionable
    insights into customer segments and response
    patterns?
  • How can we spend our marketing efforts more
    effectively, and minimise waste?
  • How can we create the messages and offers that
    are most likely to elicit a favourable response
    without doing expensive in-market testing?
  • How can we establish an ongoing dialogue and a
    deeper level of intimacy with our best customers?
  • How can we measure the sales and profit resulting
    from our investments in data-driven marketing
    programs?
  • How can we integrate customer data from all
    databases, channels and touch points to create a
    360-degree view of our customer relationships?
  • How can we determine which customers account for
    the vast majority of our profits (and future
    profit potential) and how can we map their
    genetic makeup so that we can then market to
    others just like them?

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  • Behaviour based profiling, behaviour, and for
    anybody concerned about what their customers are
    doing
  • What AI provides is the ability to market your
    products to the right customer depending on his
    buying patterns.
  • AI-based system can also encode expert opinion,
    for instance, what kind of red wine will go with
    what kind of blue cheese.
  • This helps to promote other lines of needed
    products to relevant customers. Also, the system
    has the ability to learn from data about
    customers preferences with respect to wine and
    blue cheese.
  • Profiling using AI can then bring objective
    information to the marketing department. This can
    be used to reduce the cost of the campaigns by
    selecting only the prospects that have a high
    probability to reply positively, or they can be
    exploited for fraud detection.
  • In a nutshell, AI-based customer profiling and
    advertising integrates AI/CI platforms needed to
    perform behaviour analysis, context-sensitive
    acquisition, cross-selling and retention
    programs, enabling multi-product, multi-channel
    companies to drive more efficient and profitable
    customer interactions.

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  • Detect every single event fraud as it occurs.
  • Detect fraud trends more quickly.
  • Minimise the cost of manual labour.
  • Convert more valid orders easily.
  • Minimise the cost of customer service inquiry
    resulting from valid order rejection.
  • Control fraud risk tolerance.
  • Detect known and unknown ways of frauds.

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  • AIs analytical power answers "What next?
  • AI explores and uses data patterns to make
    forward-looking predictions, or to make complex
    statements about customers by evaluating multiple
    data patterns.
  • AI uses the patterns those represent in the
    enterprise, in order to "formalise" the
    relationships and predict future behavior
    consistently.
  • Data Mining explores
  • Data mining applies sophisticated mathematics
    and/or AI to data in order to search for useful
    patterns in large data sets.
  • Data mining is often one stage in developing an
    AI-based system.

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  • BI delivers insight, predictive analytics
    delivers action
  • Traditional business intelligence (BI) tools
    extract relevant data in a structured way,
    aggregate it and present it in formats such as
    dashboards and reports.
  • BI helps businesses understand business
    performance and trends.
  • BI focuses on past performance, predictive
    analytics forecasts behaviours and results in
    order to guide specific decisions.
  • BI suites now include some analytics.
  • However, BI analytics almost always aggregates
    past customer data in a collective sense - for
    example, how many of my customers are in a
    particular set so I can forecast product sales by
    quarter?

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  • BI tools are more exploratory than
    action-oriented.
  • Exploration is more likely driven by a business
    user than an analyst.
  • AI can help BI to focus on
  • past performance
  • predictive analytics
  • forecasting behaviour
  • Results/scenarios in order to guide specific
    decisions.
  • If BI tells you whats happened, AI tells you
    what to do.
  • AI in BI is important in order to make better
    business decisions.

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And finally
  • About Intelligent Business Systems
  • Intelligent Business Systems (IBS) provides
    innovative business solutions incorporating
    cutting-edge Artificial Intelligence (AI)
    engines. The companys core competence lies in
    Artificial Intelligence, with a significant focus
    on Business Intelligence. IBS also has expertise
    in Robotics and Bioinformatics.
  • IBS has a very strong research focus in
    everything it does
  • Established in the UK in 2003, IBS has just
    expanded into India in a very big way
  • Check out the interactive presentation on the CD
    to learn more!
  • www.intelligentsystems.biz

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Thank You!
  • Dr Kaustubh Chokshi
  • kaustubh.chokshi_at_intelligentsystems.biz

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