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    Energy Savings by Use of the Correct Spray Nozzle
    Rising production costs and fierce competition is resulting in manufacturing companies looking at all aspects of savings, especially energy savings.Spray nozzles of the right specification can lead to significant savings in both energy and raw materials.One of the overlooked areas is the use of the correct spray nozzle. Whilst frequently ignored in the manufacturing process, it is often this item of equipment that is the most important. Header tanks, pumps sophisticated controls, pipe work are all immaterial if the spray nozzle “at the sharp end” is not delivering the right amount of fluid (flow rate) at the correct spray angle and with the right spray pattern. This can lead to excessive wear on the pumps and ancillary equipment resulting in higher energy consumption and related costs.The phrase – it sprays, is often used, but how effectively is often not considered.In addition to these more obvious savings there are a many “hidden” savings to be made. Expensive down time and failed equipment could be contributed to poor nozzle performance. Production lines designed to
    e in order to impose structure on complexity. At the same time, it shouldn’t be too simple so that the image of reality becomes overly distorted.

    9. Get A Decent Model Fast, Rather Than A Great One Later

    In almost all business settings, it is far more important to get a reasonable model deployed quickly, instead of working to improve it. This is for three reasons:

    1. A working model is making money; a model under construction is not
    2. When a model is in place, you have a chance to “learn from experience”, the same holds for even a mild improvement – is it working as expected?
    3. The best way to manage models is by getting agile in updating. No better practice than doing it… :)

    10. Data Mining Models – What’s In It For Me?

    Who needs data mining models? As the world around us becomes ever more digitized, the number of possible applications abound. And as data mining software has come of age, you don’t need a PhD in statistics anymore to operate such applications.

    In almost every instance where data can be used to make intelligent decisions, there’s a fair chance that models could help. When 40 years ago underwriters were replaced by scorecards (a particular kind of data mining model), nobody could believe that such a simple set of decision rules could be effective. Fortunes have been made by early adopters since then.

    Further reading

    Some excellent books on Data Mining:

    Dorian Pyle (2003) Business Modeling and Data Mining. ISBN# 155860653-X

    Dorian Pyle (1999) Data Preparation for Data Mining. ISBN# 1558605290

    Michael Berry & Gordon Linoff (2000) Mastering Data Mining. ISBN# 04713

    High Risk Merchant Account FAQs
    So you want to start a website that will charge the visitors for membership through their credit cards? Such a site can not run unless you have a high risk merchant account. Here are some questions frequently asked by people who want to start accepting credit payments online.Q. What are high risk merchant accounts?A. High risk merchant account is a type of merchant account that is more inclined to encounter fraud. This is due to the fact that people who have such accounts run businesses that do not have any physical representation under the jurisdiction of the law.Most of the time, people who have high risk merchant accounts run their business online. And with the number of computer hackers lurking around the net, they are not safe from people who could get into their websites without having to pay. Due to this, account providers who accept such clients will charge you with high rates that could hinder the growth of your business. Examples of these accounts are adult websites, online casinos, and pharmaceutical merchants.Q. How do I get such an account?A. The proce
    What is a model? A model is a purposeful simplification of reality. Models can take on many forms. A built-to-scale look alike, a mathematical equation, a spreadsheet, or a person, a scene, and many other forms. In all cases, the model uses only part of reality, that’s why it’s a simplification. And in all cases, the way one reduces the complexity of real life, is chosen with a purpose. The purpose is to focus on particular characteristics, at the expense of losing extraneous detail.

    If you ask my son, Carmen Elektra is the ultimate model. She replaces an image of women in general, and embodies a particular attractive one at that. A model for a wind tunnel, may look like the real car, at least the outside, but doesn’t need an engine, brakes, real tires, etc. The purpose is to focus on aerodynamics, so this model only needs to have an identical outside shape.

    Data Mining models, reduce intricate relations in data. They’re a simplified representation of characteristic patterns in data. This can be for 2 reasons. Either to predict or describe mechanics, e.g. “what application form characteristics are indicative of a future default credit card applicant?”. Or secondly, to give insight in complex, high dimensional patterns. An example of the latter could be a customer segmentation. Based on clustering similar patterns of database attributes one defines groups like: high income/ high spending/ need for credit, low income/ need for credit, high income/ frugal/ no need for credit, etc.

    1. A Predictive Model Relies On The Future Being Like The Past

    As Yogi Berra said: “Predicting is hard, especially when it’s about the future”. The same holds for data mining. What is commonly referred to as “predictive modeling”, is in essence a classification task.

    Based on the (big) assumption that the future will resemble the past, we classify future occurrences for their similarity with past cases. Then we ‘predict’ they will behave like past look-alikes.

    2. Even A ‘Purely’ Predictive Model Should Always (Be) Explain(ed)

    Predictive models are generally used to provide scores (likelihood to churn) or decisions (accept yes/no). Regardless, they should always be accompanied by explanations that give insight in the model. This is for two reasons:

    1. buy-in from business stakeholders to act on predictions is of eminent importance, and gains from understanding
    2. peculiarities in data do sometimes arise, and may become obvious from the model’s explanation

    3. It’s Not About The Model, But The Results It Generates

    Models are developed for a purpose. All too often, data miners fall in love with their own methodology (or algorithms). Nobody cares. Clients (not customers) who should benefit from using a model are interested in only one thing: “What’s in it for me?”

    Therefore, the single most important thing on a data miner’s mind should be: “How do I communicate the benefits of using this model to my client?” This calls for patience, persistence, and the ability to explain in business terms how using the model will affect the company’s bottom line. Practice explaining this to your grandmother, and you will come a long way towards becoming effective.

    4. How Do You Measure The ‘Success’ Of A Model?

    There are really two answers to this question. An important and simple one, and an academic and wildly complex one. What counts the most is the result in business terms. This can range from percentage of response to a direct marketing campaign, number of fraudulent claims intercepted, average sale per lead, likelihood of churn, etc.

    The academic issue is how to determine the improvement a model gives over the best alternative course of business action. This turns out to be an intriguing, ill understood question. This is a frontier of future scientific study, and mathematical theory. Bias-Variance Decomposition is one of those mathematical frontiers.

    5. A Model Predicts Only As Good As The Data That Go In To It

    The old “Garbage In, Garbage Out” (GiGo), is hackneyed but true (unfortunately). But there is more to this topic. Across a broad range of industries, channels, products, and settings we have found a common pattern. Input (predictive) variables can be ordered from transactional to demographic. From transient and volatile to stable.

    In general, transactional variables that relate to (recent) activity hold the most predictive power. Less dynamic variables, like demographics, tend to be weaker predictors. The downside is that model performance (predictive “power”) on the basis of transactional and behavioral variables usually degrades faster over time. Therefore such models need to be updated or rebuilt more often.

    6. Models Need To Be Monitored For Performance Degradence

    It is adamant to always, always follow up model deployment by reviewing its effectiveness. Failing to do so, should be likened to driving a car with blinders on. Reckless.

    To monitor how a model keeps performing over time, you check whether the prediction as generated by the model, matches the patterns of response when deployed in real life. Although no rocket science, this can be tricky to accomplish in practice.

    7. Classification Accuracy Is Not A Sufficient Indicator Of Model Quality

    Contrary to common belief, even among data miners, no single number of classification accuracy (R2, Gini-coefficient, lift, etc.) is valid to quantify model quality. The reason behind this has nothing to do with the model itself, but rather with the fact that a model derives its quality from being applied.

    The quality of model predictions calls for at least two numbers: one number to indicate accuracy of prediction (these are commonly the only numbers supplied), and another number to reflect its generalizability. The latter indicates resilience to changing multi-variate distributions, the degree to which the model will hold up as reality changes very slowly. Hence, it’s measured by the multi-variate representativeness of the input variables in the final model.

    8. Exploratory Models Are As Good As the Insight They Give

    There are many reasons why you want to give insight in the relations found in the data. In all cases, the purpose is to make a large amount of data and exponential number of relations palatable. You knowingly ignore detail and point to “interesting” and potentially actionable highlights.

    The key here is, as Einstein pointed out already, to have a model that is as simple as possible, but not too simple. It should be as simple as possible in order to impose structure on complexity. At the same time, it shouldn’t be too simple so that the image of reality becomes overly distorted.

    9. Get A Decent Model Fast, Rather Than A Great One Later

    In almost all business settings, it is far more important to get a reasonable model deployed quickly, instead of working to improve it. This is for three reasons:

    1. A working model is making money; a model under construction is not
    2. When a model is in place, you have a chance to “learn from experience”, the same holds for even a mild improvement – is it working as expected?
    3. The best way to manage models is by getting agile in updating. No better practice than doing it… :)

    10. Data Mining Models – What’s In It For Me?

    Who needs data mining models? As the world around us becomes ever more digitized, the number of possible applications abound. And as data mining software has come of age, you don’t need a PhD in statistics anymore to operate such applications.

    In almost every instance where data can be used to make intelligent decisions, there’s a fair chance that models could help. When 40 years ago underwriters were replaced by scorecards (a particular kind of data mining model), nobody could believe that such a simple set of decision rules could be effective. Fortunes have been made by early adopters since then.

    Further reading

    Some excellent books on Data Mining:

    Dorian Pyle (2003) Business Modeling and Data Mining. ISBN# 155860653-X

    Dorian Pyle (1999) Data Preparation for Data Mining. ISBN# 1558605290

    Michael Berry & Gordon Linoff (2000) Mastering Data Mining. ISBN# 047133

    How To Get Booked On Your First TV Show!
    Want to be a national TV expert and build credibility across the nation? Do you want land big book deals and major consulting contracts? It all begins with getting booked on your first TV show in your local market!Why? The national media will always want to see a "demo" tape of you in action on a TV show in order to book you. Local TV usually does NOT require previous media experience presenting you with an excellent opportunity to land a segment and obtain the demo video Why does the BIG MEDIA need to see you on the air? They want to be sure you have great energy and the ability to handle the lights, camera and action that takes place on a major TV set.Do speaking engagements count as a demo? No, because being a great TV guest requires a different skill set than being a great speaker. Sound bites make the difference that is, being able to make strong points in just a few sentences whereas in speaking you are allowed a lot more time to make your points.What are the benefits to my business of appearing on local TV? Lots of credibility. You can build expert status within
    out the future”. The same holds for data mining. What is commonly referred to as “predictive modeling”, is in essence a classification task.

    Based on the (big) assumption that the future will resemble the past, we classify future occurrences for their similarity with past cases. Then we ‘predict’ they will behave like past look-alikes.

    2. Even A ‘Purely’ Predictive Model Should Always (Be) Explain(ed)

    Predictive models are generally used to provide scores (likelihood to churn) or decisions (accept yes/no). Regardless, they should always be accompanied by explanations that give insight in the model. This is for two reasons:

    1. buy-in from business stakeholders to act on predictions is of eminent importance, and gains from understanding
    2. peculiarities in data do sometimes arise, and may become obvious from the model’s explanation

    3. It’s Not About The Model, But The Results It Generates

    Models are developed for a purpose. All too often, data miners fall in love with their own methodology (or algorithms). Nobody cares. Clients (not customers) who should benefit from using a model are interested in only one thing: “What’s in it for me?”

    Therefore, the single most important thing on a data miner’s mind should be: “How do I communicate the benefits of using this model to my client?” This calls for patience, persistence, and the ability to explain in business terms how using the model will affect the company’s bottom line. Practice explaining this to your grandmother, and you will come a long way towards becoming effective.

    4. How Do You Measure The ‘Success’ Of A Model?

    There are really two answers to this question. An important and simple one, and an academic and wildly complex one. What counts the most is the result in business terms. This can range from percentage of response to a direct marketing campaign, number of fraudulent claims intercepted, average sale per lead, likelihood of churn, etc.

    The academic issue is how to determine the improvement a model gives over the best alternative course of business action. This turns out to be an intriguing, ill understood question. This is a frontier of future scientific study, and mathematical theory. Bias-Variance Decomposition is one of those mathematical frontiers.

    5. A Model Predicts Only As Good As The Data That Go In To It

    The old “Garbage In, Garbage Out” (GiGo), is hackneyed but true (unfortunately). But there is more to this topic. Across a broad range of industries, channels, products, and settings we have found a common pattern. Input (predictive) variables can be ordered from transactional to demographic. From transient and volatile to stable.

    In general, transactional variables that relate to (recent) activity hold the most predictive power. Less dynamic variables, like demographics, tend to be weaker predictors. The downside is that model performance (predictive “power”) on the basis of transactional and behavioral variables usually degrades faster over time. Therefore such models need to be updated or rebuilt more often.

    6. Models Need To Be Monitored For Performance Degradence

    It is adamant to always, always follow up model deployment by reviewing its effectiveness. Failing to do so, should be likened to driving a car with blinders on. Reckless.

    To monitor how a model keeps performing over time, you check whether the prediction as generated by the model, matches the patterns of response when deployed in real life. Although no rocket science, this can be tricky to accomplish in practice.

    7. Classification Accuracy Is Not A Sufficient Indicator Of Model Quality

    Contrary to common belief, even among data miners, no single number of classification accuracy (R2, Gini-coefficient, lift, etc.) is valid to quantify model quality. The reason behind this has nothing to do with the model itself, but rather with the fact that a model derives its quality from being applied.

    The quality of model predictions calls for at least two numbers: one number to indicate accuracy of prediction (these are commonly the only numbers supplied), and another number to reflect its generalizability. The latter indicates resilience to changing multi-variate distributions, the degree to which the model will hold up as reality changes very slowly. Hence, it’s measured by the multi-variate representativeness of the input variables in the final model.

    8. Exploratory Models Are As Good As the Insight They Give

    There are many reasons why you want to give insight in the relations found in the data. In all cases, the purpose is to make a large amount of data and exponential number of relations palatable. You knowingly ignore detail and point to “interesting” and potentially actionable highlights.

    The key here is, as Einstein pointed out already, to have a model that is as simple as possible, but not too simple. It should be as simple as possible in order to impose structure on complexity. At the same time, it shouldn’t be too simple so that the image of reality becomes overly distorted.

    9. Get A Decent Model Fast, Rather Than A Great One Later

    In almost all business settings, it is far more important to get a reasonable model deployed quickly, instead of working to improve it. This is for three reasons:

    1. A working model is making money; a model under construction is not
    2. When a model is in place, you have a chance to “learn from experience”, the same holds for even a mild improvement – is it working as expected?
    3. The best way to manage models is by getting agile in updating. No better practice than doing it… :)

    10. Data Mining Models – What’s In It For Me?

    Who needs data mining models? As the world around us becomes ever more digitized, the number of possible applications abound. And as data mining software has come of age, you don’t need a PhD in statistics anymore to operate such applications.

    In almost every instance where data can be used to make intelligent decisions, there’s a fair chance that models could help. When 40 years ago underwriters were replaced by scorecards (a particular kind of data mining model), nobody could believe that such a simple set of decision rules could be effective. Fortunes have been made by early adopters since then.

    Further reading

    Some excellent books on Data Mining:

    Dorian Pyle (2003) Business Modeling and Data Mining. ISBN# 155860653-X

    Dorian Pyle (1999) Data Preparation for Data Mining. ISBN# 1558605290

    Michael Berry & Gordon Linoff (2000) Mastering Data Mining. ISBN# 04713

    How To Choose The Right Product To Begin Internet Home Business
    Every company needs a product to sell. It is also the same with internet home business. You need a product to start up a home based business and start to work from home. I categorized three different type of product.1. Digital Product. It is very easy to build and very popular among the Internet. We don’t have to keep product stock. We only have to create or pay someone else to create our product. Some product that we can describe in computer related product are e-book, software, picture, movie, song, audio, and web related product (web hosting, script, domain name, etc).2. Hard product. Hard product means that we can touch and see. In hard product we involve with a real product, and if we want to sell the product, we must prepare the product and send our product to our customer. This type of product needs an extra effort. You must start thinking about the warehouse, and the shipment. And also don’t forget about broken or bad product. Product examples are book, CD, table, TV, Perfume, Computer, Notebook, etc.3. Service. Service means that we give some kind of service to our cus
    strong>

    There are really two answers to this question. An important and simple one, and an academic and wildly complex one. What counts the most is the result in business terms. This can range from percentage of response to a direct marketing campaign, number of fraudulent claims intercepted, average sale per lead, likelihood of churn, etc.

    The academic issue is how to determine the improvement a model gives over the best alternative course of business action. This turns out to be an intriguing, ill understood question. This is a frontier of future scientific study, and mathematical theory. Bias-Variance Decomposition is one of those mathematical frontiers.

    5. A Model Predicts Only As Good As The Data That Go In To It

    The old “Garbage In, Garbage Out” (GiGo), is hackneyed but true (unfortunately). But there is more to this topic. Across a broad range of industries, channels, products, and settings we have found a common pattern. Input (predictive) variables can be ordered from transactional to demographic. From transient and volatile to stable.

    In general, transactional variables that relate to (recent) activity hold the most predictive power. Less dynamic variables, like demographics, tend to be weaker predictors. The downside is that model performance (predictive “power”) on the basis of transactional and behavioral variables usually degrades faster over time. Therefore such models need to be updated or rebuilt more often.

    6. Models Need To Be Monitored For Performance Degradence

    It is adamant to always, always follow up model deployment by reviewing its effectiveness. Failing to do so, should be likened to driving a car with blinders on. Reckless.

    To monitor how a model keeps performing over time, you check whether the prediction as generated by the model, matches the patterns of response when deployed in real life. Although no rocket science, this can be tricky to accomplish in practice.

    7. Classification Accuracy Is Not A Sufficient Indicator Of Model Quality

    Contrary to common belief, even among data miners, no single number of classification accuracy (R2, Gini-coefficient, lift, etc.) is valid to quantify model quality. The reason behind this has nothing to do with the model itself, but rather with the fact that a model derives its quality from being applied.

    The quality of model predictions calls for at least two numbers: one number to indicate accuracy of prediction (these are commonly the only numbers supplied), and another number to reflect its generalizability. The latter indicates resilience to changing multi-variate distributions, the degree to which the model will hold up as reality changes very slowly. Hence, it’s measured by the multi-variate representativeness of the input variables in the final model.

    8. Exploratory Models Are As Good As the Insight They Give

    There are many reasons why you want to give insight in the relations found in the data. In all cases, the purpose is to make a large amount of data and exponential number of relations palatable. You knowingly ignore detail and point to “interesting” and potentially actionable highlights.

    The key here is, as Einstein pointed out already, to have a model that is as simple as possible, but not too simple. It should be as simple as possible in order to impose structure on complexity. At the same time, it shouldn’t be too simple so that the image of reality becomes overly distorted.

    9. Get A Decent Model Fast, Rather Than A Great One Later

    In almost all business settings, it is far more important to get a reasonable model deployed quickly, instead of working to improve it. This is for three reasons:

    1. A working model is making money; a model under construction is not
    2. When a model is in place, you have a chance to “learn from experience”, the same holds for even a mild improvement – is it working as expected?
    3. The best way to manage models is by getting agile in updating. No better practice than doing it… :)

    10. Data Mining Models – What’s In It For Me?

    Who needs data mining models? As the world around us becomes ever more digitized, the number of possible applications abound. And as data mining software has come of age, you don’t need a PhD in statistics anymore to operate such applications.

    In almost every instance where data can be used to make intelligent decisions, there’s a fair chance that models could help. When 40 years ago underwriters were replaced by scorecards (a particular kind of data mining model), nobody could believe that such a simple set of decision rules could be effective. Fortunes have been made by early adopters since then.

    Further reading

    Some excellent books on Data Mining:

    Dorian Pyle (2003) Business Modeling and Data Mining. ISBN# 155860653-X

    Dorian Pyle (1999) Data Preparation for Data Mining. ISBN# 1558605290

    Michael Berry & Gordon Linoff (2000) Mastering Data Mining. ISBN# 04713

    Corporate Parties Can Be Fun Too
    Planning the corporate party may be a job that is no one's idea of a good assignment but the party itself can be fun. Striking the delicate balance between light socializing and appropriate corporate conduct is the tricky part.Most corporate functions are of the meet and greet or annual meeting variety but there are also corporate retirement or holiday parties. The mood should one which encourages less formal yet business priority fun. Most corporate affairs strongly discourage the sort of conduct that is depicted in movies and T.V. as the office party.In reality most corporate parties are friendly but often vehicles in which business concerns are discussed. For example, a corporate party may be the place where the boss gives a sort of state of the company address and hands out bonuses. There might be prime rib and excellent side dishes but the point is usually business.Appropriate business conduct is normally practiced at the corporate party but light banter and conversation that aren't allowed during the business day are appropriate here. Things are not as nose to the grindsto
    iving a car with blinders on. Reckless.

    To monitor how a model keeps performing over time, you check whether the prediction as generated by the model, matches the patterns of response when deployed in real life. Although no rocket science, this can be tricky to accomplish in practice.

    7. Classification Accuracy Is Not A Sufficient Indicator Of Model Quality

    Contrary to common belief, even among data miners, no single number of classification accuracy (R2, Gini-coefficient, lift, etc.) is valid to quantify model quality. The reason behind this has nothing to do with the model itself, but rather with the fact that a model derives its quality from being applied.

    The quality of model predictions calls for at least two numbers: one number to indicate accuracy of prediction (these are commonly the only numbers supplied), and another number to reflect its generalizability. The latter indicates resilience to changing multi-variate distributions, the degree to which the model will hold up as reality changes very slowly. Hence, it’s measured by the multi-variate representativeness of the input variables in the final model.

    8. Exploratory Models Are As Good As the Insight They Give

    There are many reasons why you want to give insight in the relations found in the data. In all cases, the purpose is to make a large amount of data and exponential number of relations palatable. You knowingly ignore detail and point to “interesting” and potentially actionable highlights.

    The key here is, as Einstein pointed out already, to have a model that is as simple as possible, but not too simple. It should be as simple as possible in order to impose structure on complexity. At the same time, it shouldn’t be too simple so that the image of reality becomes overly distorted.

    9. Get A Decent Model Fast, Rather Than A Great One Later

    In almost all business settings, it is far more important to get a reasonable model deployed quickly, instead of working to improve it. This is for three reasons:

    1. A working model is making money; a model under construction is not
    2. When a model is in place, you have a chance to “learn from experience”, the same holds for even a mild improvement – is it working as expected?
    3. The best way to manage models is by getting agile in updating. No better practice than doing it… :)

    10. Data Mining Models – What’s In It For Me?

    Who needs data mining models? As the world around us becomes ever more digitized, the number of possible applications abound. And as data mining software has come of age, you don’t need a PhD in statistics anymore to operate such applications.

    In almost every instance where data can be used to make intelligent decisions, there’s a fair chance that models could help. When 40 years ago underwriters were replaced by scorecards (a particular kind of data mining model), nobody could believe that such a simple set of decision rules could be effective. Fortunes have been made by early adopters since then.

    Further reading

    Some excellent books on Data Mining:

    Dorian Pyle (2003) Business Modeling and Data Mining. ISBN# 155860653-X

    Dorian Pyle (1999) Data Preparation for Data Mining. ISBN# 1558605290

    Michael Berry & Gordon Linoff (2000) Mastering Data Mining. ISBN# 04713

    Casting Molding Machining
    Casting is a process by which a melted fluid is introduced into a mold, and then allowed to cool in the shape of the mold. The rough pattern is then turned out to make a fabricated part or casing. However four main elements are used in the process of casting such as pattern, mold, cores, and the part. The pattern, from which the mold is made, creates a corresponding hollow space in the casting material. Whereas cores are used to produce tunnels or creating holes in the finished mold and the part is the final output of the process.Moreover the casting process is mainly subdivided in two distinct categories: the expendable mold casting and nonexpendable mold casting. Expendable mold casting involves, the common process of molding such as sand, plastic, shell and investment moldings. All these molding techniques use temporary and not reusable molds, and even require gravity to help force the molten fluid into casting hollow spaces. In the expendable molding process, molds can only be used once.However, preparation of the sand mold requires less time, and just needs a pattern, which can st
    e in order to impose structure on complexity. At the same time, it shouldn’t be too simple so that the image of reality becomes overly distorted.

    9. Get A Decent Model Fast, Rather Than A Great One Later

    In almost all business settings, it is far more important to get a reasonable model deployed quickly, instead of working to improve it. This is for three reasons:

    1. A working model is making money; a model under construction is not
    2. When a model is in place, you have a chance to “learn from experience”, the same holds for even a mild improvement – is it working as expected?
    3. The best way to manage models is by getting agile in updating. No better practice than doing it… :)

    10. Data Mining Models – What’s In It For Me?

    Who needs data mining models? As the world around us becomes ever more digitized, the number of possible applications abound. And as data mining software has come of age, you don’t need a PhD in statistics anymore to operate such applications.

    In almost every instance where data can be used to make intelligent decisions, there’s a fair chance that models could help. When 40 years ago underwriters were replaced by scorecards (a particular kind of data mining model), nobody could believe that such a simple set of decision rules could be effective. Fortunes have been made by early adopters since then.

    Further reading

    Some excellent books on Data Mining:

    Dorian Pyle (2003) Business Modeling and Data Mining. ISBN# 155860653-X

    Dorian Pyle (1999) Data Preparation for Data Mining. ISBN# 1558605290

    Michael Berry & Gordon Linoff (2000) Mastering Data Mining. ISBN# 0471331236

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