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Types of Data

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Types of Data This module was developed by Business Process Improvement. For more modules, please contact us at 281-304-9504 or visit our website www.spcforexcel.com – PowerPoint PPT presentation

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Title: Types of Data


1
Types of Data
This module was developed by Business Process
Improvement. For more modules, please contact us
at 281-304-9504 or visit our website
www.spcforexcel.com
2
Introduction
  • Control charts give us a picture of our process
    over time. This picture tells us when to leave
    our process alone (i.e., the process is in
    control) or when to look for a problem (i.e., an
    assignable cause is present).
  • There are many different types of control charts.
    However, you can group control charts into two
    major categories. The type of data being charted
    distinguishes these two categories. There are
    two types of data you can have attributes data
    and variables data.
  • Both these types of data are introduced in this
    module. With attributes data, there is a need to
    develop specific descriptions. These
    descriptions, which are called operational
    definitions, are also introduced in this module.
  • For variables data, the standard deviation is an
    important measurement as well as the average.
    Both of these terms are explored in more detail
    below.

3
Objectives
  • In this module you will learn
  • What attributes data are.
  • What an operational definition is.
  • What variables data are.
  • What the average and standard deviation are.
  • It is important to know what type of data you
    will collect so you can determine what type of
    control chart to construct. Different charts
    will give different information. Attributes
    charts include p, np, c and u charts. Variables
    charts include Xbar-R charts, Xbar-s charts,
    individuals charts and moving average and moving
    range charts.

4
Attributes Data
  • Attributes control charts are based on attributes
    data. These types of data are often referred to
    as discrete data. There are two kinds of
    attributes data yes/no type of data and
    counting data. p and np control charts are used
    with yes/no type data c and u charts are used
    with counting type data. The two types of
    attributes data are described below.

Yes/No Data
Counting Data
5
Yes/No Data
  • For one item, there are only two possible
    outcomes either it passes or it fails some
    preset specification. Each item inspected is
    either defective (i.e., it does not meet the
    specifications) or is not defective (i.e., it
    meets specifications). Examples of the yes/no
    attributes data are
  • mail delivery is it on time or not on time?
  • phone answered is it answered or not answered?
  • invoice correct is it correct or not correct?
  • stock item is it in stock or not in stock?
  • cycle count is it correct or not correct?
  • product in-spec or out of spec?
  • supplier material received on-time or not
    on-time?

6
Counting Data
  • With counting data, you count the number of
    defects. A defect occurs when something does not
    meet a preset specification. It does not mean
    that the item itself is defective. For example,
    a television set can have a scratched cabinet (a
    defect) but still work properly. When looking at
    counting data, you end up with whole numbers such
    as 0, 1, 2, 3 you can't have half of a defect.
  • To be considered counting data, the opportunity
    for defects to occur must be large the actual
    number that occurs must be small. For example,
    the opportunity for customer complaints to occur
    is large. However, the number that actually
    occurs is small. Thus, the number of customer
    complaints is an example of counting type data.
    Other examples are
  • number of mistakes in picking
  • number of items shipped incorrectly
  • number of accidents for delivery trucks

7
Exercise
  • For your organization, what are some examples of
    yes/no type data and counting type data. List
    your responses below.
  • Yes/No
  • Counting

8
Operational Definitions
  • When working with attributes data, you have to
    have a clear understanding of whether the item
    you are looking at is defective or not (yes/no
    type data) or whether it should be counted as a
    defect (counting type data). In order to know
    whether a shipment was on time or to count the
    number of on-time shipments, you have to have a
    definition of what "on time" means. Is "on time"
    anywhere from 155 p.m. to 205 p.m., anytime
    before 200 p.m., or anytime between 200 p.m.
    and 215 p.m.? This clear understanding of a
    quality expectation is called an operational
    definition.

9
Operational Definition
  • According to Dr. W. Edwards Deming, an
    operational definition includes
  • a written statement (and/or a series of examples)
    of criteria or guidelines to be applied to an
    object or to a group.
  • a test of the object or group for conformance
    with the guidelines that includes specifics such
    as how to sample, how to test, and how to
    measure.
  • a decision yes, the object or the group did
    meet the guidelines no, the object or group
    did not meet the guidelines or the number of
    times the object or group did not meet the
    guidelines.

10
Operational Definitions
  • Using an invoice error example, the written
    statement may read "An invoice error is an
    incorrect shipping amount or a wrong price." The
    test could be to
  • compare every invoice to the packing list to
    check for incorrect shipping amounts and,
  • compare every invoice to a price schedule to
    check for wrong prices.
  • Based on these guidelines and a test for
    conformance with these guidelines, you could make
    a decision as to whether an invoice is defective
    or how many defects an invoice contains.

11
Exercise
  • Select one of the variables below. Develop an
    operational definition for the variable.
  • On-Time Delivery
  • Rework in a Department
  • Injury at Work
  • Customer Complaint
  • Invoice Error

12
Variables Data
  • Variables control charts are based on variables
    data. Variables data consist of observations
    made from a continuum.
  • That is, the observation can be measured to any
    decimal place you want if your measurement system
    allows it.
  • Some examples of variables data are contact time
    with a customer, sales dollars, amount of time to
    make a delivery, height, weight, and costs.

13
Exercise  
  • For your organization, what are some examples of
    variables data? Record your answers below.

14
Average and Standard Deviation
  • In dealing with variables data, the average and
    standard deviation are very important parameters.
    One must understand what is meant by these
    terms.  
  • The average (also called the mean) is probably
    well understood by most. It represents a
    "typical" value. For example, the average
    temperature for the day based on the past is
    often given on weather reports. It represents a
    typical temperature for the time of year.
  • The average is calculated by adding up the
    results you have and dividing by the number of
    results. For example, suppose the last five
    customer complaints took 5, 6, 2, 3, and 8 days
    to close. The average is determined by adding up
    these five numbers and dividing by 5. The
    average is denoted by and in this case is

15
Average and Standard Deviation
  • While the average is understood by most, few
    understand the standard deviation, denoted by the
    letter s.
  • The standard deviation can be thought of as an
    average distance (the standard) that each
    individual point is away from the mean.
  • The equation for the standard deviation is given
    below.
  • We will be using control charts to estimate what
    our process average is and what the process
    standard deviation is. For these two numbers to
    have any meaning, the process must be in
    statistical control.

Standard Deviation
16
Summary
  • Control charts can be divided into two major
    categories attribute control charts and
    variable control charts.
  • Attribute control charts are based on attribute
    data. There are two types of attributes data
    yes/no type and counting data. Yes/no type
    attributes data have only two possible outcomes
    either the item is defective or it is not
    defective. With counting type attributes data,
    the number of defects is counted. With
    attributes data, there is the need for
    operational definitions. Operational definitions
    are used to determine what constitutes a
    defective item or a defect.
  • Variable control charts are based on variables
    data. Variables data are data from a continuum.
    The basic probability distribution underlying the
    calculation of control limits for variables data
    is the normal distribution.
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