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Graphic representation of dataJOEL M PAIS AND GROUPMBA – 2011ALOYSIUS INSTITUTE OF MANEGEMENT AND IFOAMTION TECHNOLOGY (AIMIT)
Graphic representation of data content Name of the person Meaning and significance Comparison between tabular and graphic representation of data General rules in constructing graphs Graphs of one variable and two variable Time series graphs, frequency distribution , range chart, band graph Box plots,pareto  chart, fish bone diagram merits/demerits/limitation of graphs. Kiran.s Kiran s Bineesh Bineesh Samsagar, joel  joel  bineesh
Graphic representation of data content name Difference between diagrams and graphs raghavendra
Meaning and significance of graphs                           presenter- kiran. s
INTRODUCTION  The word graph was originated in the year 1875- 80 Tabulation is one way of  Pictorial presentation of  data Another way of pictorial  Presentation is in the form  Of graphs and diagrams
MEANING OF GRAPHS In simple, it is pictorial presentation of data in the Form of lines, bars dots etc. They are commonly used for  Presentation of time series  and  Frequency distribution But in statistics it is defined as : A graph or diagrams representing a system of collection or interrelations among two or more things by a number of distinctive lines and bars is known as graphs.
Significance of graphs Graph gives an attractive and elegant presentation: graphs have greater attraction power ,when they are presented in the form of bar graphs, histogram etc.they have greater memorizing value. Graph gives a complete bird eye view:                                                       they give complete picture of                 Interpretation of data.
[object Object],   They provide comparison ,     When There are two or more      numbers. Graphs save time: when the data is presented in  the form of graphs rather than  Tabulation , it saves time.
[object Object],   Quantitative data: dot plot, histogram.    Qualitative data: bar graph. Pie chart
Graphic representation is helpful in interpreting: ,[object Object]
Median
meanmean $700 mode  $ 300median $500                                                                       median
Comparison between tabular and graphical representation of data                             presented by kiran Graphical representation tabular
Basis :qualitative data tabular Graphic representation Its uses the following methods: ,[object Object]
Relative frequency distributionIt uses the following methods Bar graph Pie chart
Basis: quantitative data tabular Graphic representation Frequency distribution Relative frequency distribution Cumulative frequency distribution Cumulative relative frequency distribution Dot plot Histogram ogive
Basis: accuracy tabular Graphic representation gives approx Gives accurate numbers                                                                            For example:
Basis: time saving Tabular  Graphic representation A tabular representation is more time consuming.  As they lead to better understanding , they save considerable time
Basis: attraction tabular Graphic representation Tabular representation doesn't attract a reader immediately Where as in graphic representation they attract the reader , because of the use of colours and pictures
Basis: substitutes tabular Graphic representation A table has the complete data that can be interpreted  Graphs cannot be the complete substitutes for tables, they are another way of pictorial representation of data.
Basis: too many numbers tabular Graphic representation In tables too many numbers can be interpreted  example: 334,444, 567, 765, 566, 66778,………………. These devices fail to represent when too many details are presented
Basis: arrangement tabular Graphic representation Data is arranged in rows and column in tables Data is interpreted in the form of bars , dots in graphs
Basis: simple tabular Graphic representation They are simple Graph devices are not always simple when RATIO graphs and multidimensional figures are used
General Rules of Graphs, One Variable Graph, Two Variable Graphs
General rules of Construction Graph Rules : ,[object Object]
Be self-explanatory and well labeled. Graphs should include a descriptive label   and a clear indication of the units displayed.
Include a legend or key if necessary.
Use scale proportion.
Acknowledge and credit an outside source.,[object Object]
Illustration Graphic presentation of the production of a factors between the months of January and June of a year, would be one variable graph Solution: Take the following steps: Indicate time period (in terms of months) on the X-axis, and production on the Y-axis. Mark different points on the Graph indicating values of productioncorresponding to different months. (iii) Join the points to get a graph showing the behavior of production         over time.
Preview of one variable graph
These are the graphs in which values of two (or more than two) variables are simultaneously shown with respect to some period of time. Data on the production and sale of a factory in different months would make a Two-Variable Graph Following illustration should make this point clear. The following table gives data on  the production and sales of a factory (in thousand rupees) between January and June. Make a Two-Variable Arithmetic line Graph. Two or More than two Variable Graphs
Graphical Representation
Solution: These data will also be presented in the form of graph in the same manner as shown in the above graph. In graph, following data pertaining to both production and sales are shown on Y-axis. These are represented by two different graph lines in the same graph.
Preview of 3D two variable graph
TIME SERIES OR HISTORIGRAMS
Meaning Time series is a series of values of a variable recorded at successive intervals of time; e.g. figures of national income, sale, production, employment etc, at successive points of time.
UTILITY   OF TIME SERIES ANALYSIS It helps in understanding past behaviour It helps in planning future operations It helps in evaluating current accomplishments It facilitates comparison
Frequency Distribution Graph A frequency distribution can be presented in any of the following ways  Histogram Frequency polygon Frequency curve ogives
Histogram:  Histogram is a set of vertical bars whose areas are proportional to the frequencies represented. While constructing the histogram variable taken on X- axis and frequencies on the Y- axis if CI are of equal width. If CI are of unequal width rectangles are drawn with height proportional to frequency density.
60 55 50 45 40 35 30 25 20 15 0                     10                     20                     30                   40                      50                   60                     70                    80                      90
Frequency Polygon A frequency polygon is a graph with frequency density plotted against the values of the variable. Frequency polygon can be easily obtained easily from histogram.
Frequency curve Frequency curve is the most used graphical form of frequency distribution. Under the frequency curve the variable is taken along X- axis. Frequency curve can be obtained from histogram.
‘Ogives’ or Cumulative Frequency Curves Less- than ogive More- than ogive
Less than Ogive Cumulative class frequency are plotted against the respective upper class limits. Variable taken along X- axis and less than cumulative frequency is taken along Y- axis.     In the ‘less than’ method we start with the upper limits of the classes and go on adding the frequencies. When these frequencies are plotted we get a rising curve.
More than Ogive Cumulative class frequency are plotted against the respective lower class limits,these points are joined by a smooth curve and the resulting graph is more than ogive.                                   In the ‘more than’ method we start with the lower limits of the classes and from the frequencies we subtract the frequency of each class. When these frequencies are plotted we get a declining curve.
RANGE CHART A range chart type displays a set of data points that are each defined by multiple values for the same category. The plain range chart fills in the area between the top and bottom value for each data point. It is a very good method of showing the method of variation i.e. the minimum and maximum values of variable.
Band Diagram
   A band graph is used to arrange information in such a way that priorities for process improvement can be established. Definition:
Band Diagram
Pareto Diagram
 A bar graph used to arrange information in such a way that priorities for process improvement can be established. Definition:
To display the relative importance of data.  To direct efforts to the biggest improvement opportunity by highlighting the vital few in contrasts to the useful many. Purposes:
Fishbone diagram
When should a fishbone diagram be used? Need to study a problem/issue to determine the root cause? To study all the possible reasons why a process is beginning to have difficulties, problems, or breakdowns? Need to identify areas for data collection? Want to study why a process is not performing properly or producing the desired results?
To successfully build a cause and effect diagram: Be sure everyone agrees on the effect or problem statement before beginning. Be succinct. For each node, think what could be its causes. Add them to the tree. Pursue each line of causality back to its root cause. Consider grafting relatively empty branches onto others. Consider splitting up overcrowded branches. Consider which root causes are most likely to merit further investigation.
Merits and Demerits of Graphs
GraphsGraphs are pictorial representations of the relationships between two (or more) variables and are an important part of descriptive statistics.
When to use Graphs?     Graphs can be used any time one wants to visually summarize the relationships between variables, especially if the data set is large or unmanageable. They are routinely used in reports to underscore a particular statement about a data set and to enhance readability
Graphs can appeal to visual memory in ways that mere tallies, tables, or frequency distributions cannot. However, if not used carefully, graphs can misrepresent relationships between variables or encourage inaccurate conclusions.
MERITS OF GRAPHS 1. Production of graphs           Production of graphs is an art which can be acquired through practice. There are number of simple rules, adoption of which leads to the effectiveness of the graphs. We can make use of graph papers to do graphs. 2. Rules for graphs         There is no hard and fast rule can be laid down about the ratio of the scale on the abscissa (point) and on the ordinate because much would depend upon the given data and size of the paper   3. Data Analysis  Excellent, for data, comparison from various sources to derive conclusions
4. Simplicity          Graphs are most widely used in practice. They are the simplest to understand, easiest to make and most adoptable to many uses. 5. Least technical skill           Graphs are required the least technical skill and at the same time enable one to present more information of a complex nature in a perfectly understandable form than any other kind of chart. 6. Comparison between variables    Many variables can be shown on the same graph they should be distinguished by the use of thick, thin, dotted lines, etc or different colors be used and a comparison will be done between different variables. 7. Better visual communication     It gives bird’s eye- view of the entire data. The impressions created by graphs are long lasting. Graphs are useful for better understanding of theories and statistics results
DEMERITS OF GRAPH 1. Graphs is not an alternative            Although graphs are a powerful and effective media for presenting statistical data, they are not under all circumstances and for all purposes complete substitute for tabular and other forms of presentation.   2. They can present only approximate values             Graphs can give rough values or statistical data. The values given in graphs are not exact in all the times. It may give wrong values. 3. They can approximately present only limited amount of information              In Graphs we can represent limited number of information. We can not impose much information in one graph. If we show more information in one graph it may create confusion about the data.    
5. Create wrong impression            They can be easily misinterpreted and, therefore can be used for grinding one’s axe during advertisement, propaganda and electioneering. As such graphs should never be accepted without a close inspection of confides because things are very often not what they appear to be. 6. Wrong conclusion          Interpretation of graphs needs highly specialized knowledge in the absence of which one may draw entirely wrong confusion. This factor alone restricts the scope of mass popularity of such a useful device. 7. Many variables           When number of variables is very large (say, exceeding five or six) and they are all shown on the same graph, the graph becomes quit confusing because different lines may cut each other and make it difficult to understand the behavior of the variables
LIMITATIONS OF GRAPHS “Graphic statistics has a role to play of its own: it is not the servant of numerical statistics, but it cannot pretend, on the other hand, to precede or displace the latter”.      by UNKNOWN
They can present only approximate values: The graphs can present only approximate numbers and it does not contain anything beyond the given numbers. If anyone wants to have or want to put some more data to the given data it is not possible for him to add it because it changes the whole graph and it is difficult to explain the data collected and the graph prepared.  They can approximately represent only limited amount of information: One of the major drawback of the graph is only the limited amount of data can be included. If the data collected are the larger one it’s not possible to show in the graphical method.
They are intended mostly to explain quantitative facts to the general public: From the point of view of the statistician, they are not of much helpful in analyzing the data. In graphs the qualitative data cannot be included means the data which cannot be expressed in terms of numbers and only the data which can be able to expressed in terms of the numbers can be included.  They can be easily misinterpreted: The data which collected can be easily misinterpreted by the user and can prepare the graphs.
Significance of diagrams Diagrammatic presentation has good visual impact Diagrams have the merit of rendering any idea readily. The impression created by a diagram is likely to last longer in the minds of people than the effect treated In figures. Thus diagrams have greater memorizing value than figures.   Diagrams facilitate comparison: With the help of diagrams, comparisons of groups and series of figures can be made easily. While comparing absolute figures, the significance is not clear but when these are presented by diagrams, the comparison is easy. The technique of diagrammatic representation should not be used when comparison is either not possible or is not necessary.   Diagrams save time: Diagrams present the set of data in such a way that their significance is known without loss of much time. Moreover, diagrams save time and effort which are otherwise needed in drawing inferences from a set of figures.  

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Qt graphical representation of data

  • 1. Graphic representation of dataJOEL M PAIS AND GROUPMBA – 2011ALOYSIUS INSTITUTE OF MANEGEMENT AND IFOAMTION TECHNOLOGY (AIMIT)
  • 2. Graphic representation of data content Name of the person Meaning and significance Comparison between tabular and graphic representation of data General rules in constructing graphs Graphs of one variable and two variable Time series graphs, frequency distribution , range chart, band graph Box plots,pareto chart, fish bone diagram merits/demerits/limitation of graphs. Kiran.s Kiran s Bineesh Bineesh Samsagar, joel joel bineesh
  • 3. Graphic representation of data content name Difference between diagrams and graphs raghavendra
  • 4. Meaning and significance of graphs presenter- kiran. s
  • 5. INTRODUCTION The word graph was originated in the year 1875- 80 Tabulation is one way of Pictorial presentation of data Another way of pictorial Presentation is in the form Of graphs and diagrams
  • 6. MEANING OF GRAPHS In simple, it is pictorial presentation of data in the Form of lines, bars dots etc. They are commonly used for Presentation of time series and Frequency distribution But in statistics it is defined as : A graph or diagrams representing a system of collection or interrelations among two or more things by a number of distinctive lines and bars is known as graphs.
  • 7. Significance of graphs Graph gives an attractive and elegant presentation: graphs have greater attraction power ,when they are presented in the form of bar graphs, histogram etc.they have greater memorizing value. Graph gives a complete bird eye view: they give complete picture of Interpretation of data.
  • 8.
  • 9.
  • 10.
  • 12. meanmean $700 mode $ 300median $500 median
  • 13. Comparison between tabular and graphical representation of data presented by kiran Graphical representation tabular
  • 14.
  • 15. Relative frequency distributionIt uses the following methods Bar graph Pie chart
  • 16. Basis: quantitative data tabular Graphic representation Frequency distribution Relative frequency distribution Cumulative frequency distribution Cumulative relative frequency distribution Dot plot Histogram ogive
  • 17. Basis: accuracy tabular Graphic representation gives approx Gives accurate numbers For example:
  • 18. Basis: time saving Tabular Graphic representation A tabular representation is more time consuming. As they lead to better understanding , they save considerable time
  • 19. Basis: attraction tabular Graphic representation Tabular representation doesn't attract a reader immediately Where as in graphic representation they attract the reader , because of the use of colours and pictures
  • 20. Basis: substitutes tabular Graphic representation A table has the complete data that can be interpreted Graphs cannot be the complete substitutes for tables, they are another way of pictorial representation of data.
  • 21. Basis: too many numbers tabular Graphic representation In tables too many numbers can be interpreted example: 334,444, 567, 765, 566, 66778,………………. These devices fail to represent when too many details are presented
  • 22. Basis: arrangement tabular Graphic representation Data is arranged in rows and column in tables Data is interpreted in the form of bars , dots in graphs
  • 23. Basis: simple tabular Graphic representation They are simple Graph devices are not always simple when RATIO graphs and multidimensional figures are used
  • 24. General Rules of Graphs, One Variable Graph, Two Variable Graphs
  • 25.
  • 26. Be self-explanatory and well labeled. Graphs should include a descriptive label and a clear indication of the units displayed.
  • 27. Include a legend or key if necessary.
  • 29.
  • 30. Illustration Graphic presentation of the production of a factors between the months of January and June of a year, would be one variable graph Solution: Take the following steps: Indicate time period (in terms of months) on the X-axis, and production on the Y-axis. Mark different points on the Graph indicating values of productioncorresponding to different months. (iii) Join the points to get a graph showing the behavior of production over time.
  • 31. Preview of one variable graph
  • 32. These are the graphs in which values of two (or more than two) variables are simultaneously shown with respect to some period of time. Data on the production and sale of a factory in different months would make a Two-Variable Graph Following illustration should make this point clear. The following table gives data on the production and sales of a factory (in thousand rupees) between January and June. Make a Two-Variable Arithmetic line Graph. Two or More than two Variable Graphs
  • 34. Solution: These data will also be presented in the form of graph in the same manner as shown in the above graph. In graph, following data pertaining to both production and sales are shown on Y-axis. These are represented by two different graph lines in the same graph.
  • 35. Preview of 3D two variable graph
  • 36. TIME SERIES OR HISTORIGRAMS
  • 37. Meaning Time series is a series of values of a variable recorded at successive intervals of time; e.g. figures of national income, sale, production, employment etc, at successive points of time.
  • 38. UTILITY OF TIME SERIES ANALYSIS It helps in understanding past behaviour It helps in planning future operations It helps in evaluating current accomplishments It facilitates comparison
  • 39. Frequency Distribution Graph A frequency distribution can be presented in any of the following ways Histogram Frequency polygon Frequency curve ogives
  • 40. Histogram: Histogram is a set of vertical bars whose areas are proportional to the frequencies represented. While constructing the histogram variable taken on X- axis and frequencies on the Y- axis if CI are of equal width. If CI are of unequal width rectangles are drawn with height proportional to frequency density.
  • 41. 60 55 50 45 40 35 30 25 20 15 0 10 20 30 40 50 60 70 80 90
  • 42. Frequency Polygon A frequency polygon is a graph with frequency density plotted against the values of the variable. Frequency polygon can be easily obtained easily from histogram.
  • 43. Frequency curve Frequency curve is the most used graphical form of frequency distribution. Under the frequency curve the variable is taken along X- axis. Frequency curve can be obtained from histogram.
  • 44. ‘Ogives’ or Cumulative Frequency Curves Less- than ogive More- than ogive
  • 45. Less than Ogive Cumulative class frequency are plotted against the respective upper class limits. Variable taken along X- axis and less than cumulative frequency is taken along Y- axis. In the ‘less than’ method we start with the upper limits of the classes and go on adding the frequencies. When these frequencies are plotted we get a rising curve.
  • 46. More than Ogive Cumulative class frequency are plotted against the respective lower class limits,these points are joined by a smooth curve and the resulting graph is more than ogive. In the ‘more than’ method we start with the lower limits of the classes and from the frequencies we subtract the frequency of each class. When these frequencies are plotted we get a declining curve.
  • 47. RANGE CHART A range chart type displays a set of data points that are each defined by multiple values for the same category. The plain range chart fills in the area between the top and bottom value for each data point. It is a very good method of showing the method of variation i.e. the minimum and maximum values of variable.
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  • 50. A band graph is used to arrange information in such a way that priorities for process improvement can be established. Definition:
  • 53.  A bar graph used to arrange information in such a way that priorities for process improvement can be established. Definition:
  • 54. To display the relative importance of data.  To direct efforts to the biggest improvement opportunity by highlighting the vital few in contrasts to the useful many. Purposes:
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  • 58. When should a fishbone diagram be used? Need to study a problem/issue to determine the root cause? To study all the possible reasons why a process is beginning to have difficulties, problems, or breakdowns? Need to identify areas for data collection? Want to study why a process is not performing properly or producing the desired results?
  • 59. To successfully build a cause and effect diagram: Be sure everyone agrees on the effect or problem statement before beginning. Be succinct. For each node, think what could be its causes. Add them to the tree. Pursue each line of causality back to its root cause. Consider grafting relatively empty branches onto others. Consider splitting up overcrowded branches. Consider which root causes are most likely to merit further investigation.
  • 60. Merits and Demerits of Graphs
  • 61. GraphsGraphs are pictorial representations of the relationships between two (or more) variables and are an important part of descriptive statistics.
  • 62. When to use Graphs? Graphs can be used any time one wants to visually summarize the relationships between variables, especially if the data set is large or unmanageable. They are routinely used in reports to underscore a particular statement about a data set and to enhance readability
  • 63. Graphs can appeal to visual memory in ways that mere tallies, tables, or frequency distributions cannot. However, if not used carefully, graphs can misrepresent relationships between variables or encourage inaccurate conclusions.
  • 64. MERITS OF GRAPHS 1. Production of graphs Production of graphs is an art which can be acquired through practice. There are number of simple rules, adoption of which leads to the effectiveness of the graphs. We can make use of graph papers to do graphs. 2. Rules for graphs There is no hard and fast rule can be laid down about the ratio of the scale on the abscissa (point) and on the ordinate because much would depend upon the given data and size of the paper   3. Data Analysis Excellent, for data, comparison from various sources to derive conclusions
  • 65. 4. Simplicity Graphs are most widely used in practice. They are the simplest to understand, easiest to make and most adoptable to many uses. 5. Least technical skill Graphs are required the least technical skill and at the same time enable one to present more information of a complex nature in a perfectly understandable form than any other kind of chart. 6. Comparison between variables Many variables can be shown on the same graph they should be distinguished by the use of thick, thin, dotted lines, etc or different colors be used and a comparison will be done between different variables. 7. Better visual communication It gives bird’s eye- view of the entire data. The impressions created by graphs are long lasting. Graphs are useful for better understanding of theories and statistics results
  • 66. DEMERITS OF GRAPH 1. Graphs is not an alternative Although graphs are a powerful and effective media for presenting statistical data, they are not under all circumstances and for all purposes complete substitute for tabular and other forms of presentation.   2. They can present only approximate values Graphs can give rough values or statistical data. The values given in graphs are not exact in all the times. It may give wrong values. 3. They can approximately present only limited amount of information In Graphs we can represent limited number of information. We can not impose much information in one graph. If we show more information in one graph it may create confusion about the data.    
  • 67. 5. Create wrong impression They can be easily misinterpreted and, therefore can be used for grinding one’s axe during advertisement, propaganda and electioneering. As such graphs should never be accepted without a close inspection of confides because things are very often not what they appear to be. 6. Wrong conclusion Interpretation of graphs needs highly specialized knowledge in the absence of which one may draw entirely wrong confusion. This factor alone restricts the scope of mass popularity of such a useful device. 7. Many variables When number of variables is very large (say, exceeding five or six) and they are all shown on the same graph, the graph becomes quit confusing because different lines may cut each other and make it difficult to understand the behavior of the variables
  • 68. LIMITATIONS OF GRAPHS “Graphic statistics has a role to play of its own: it is not the servant of numerical statistics, but it cannot pretend, on the other hand, to precede or displace the latter”. by UNKNOWN
  • 69. They can present only approximate values: The graphs can present only approximate numbers and it does not contain anything beyond the given numbers. If anyone wants to have or want to put some more data to the given data it is not possible for him to add it because it changes the whole graph and it is difficult to explain the data collected and the graph prepared. They can approximately represent only limited amount of information: One of the major drawback of the graph is only the limited amount of data can be included. If the data collected are the larger one it’s not possible to show in the graphical method.
  • 70. They are intended mostly to explain quantitative facts to the general public: From the point of view of the statistician, they are not of much helpful in analyzing the data. In graphs the qualitative data cannot be included means the data which cannot be expressed in terms of numbers and only the data which can be able to expressed in terms of the numbers can be included. They can be easily misinterpreted: The data which collected can be easily misinterpreted by the user and can prepare the graphs.
  • 71. Significance of diagrams Diagrammatic presentation has good visual impact Diagrams have the merit of rendering any idea readily. The impression created by a diagram is likely to last longer in the minds of people than the effect treated In figures. Thus diagrams have greater memorizing value than figures.   Diagrams facilitate comparison: With the help of diagrams, comparisons of groups and series of figures can be made easily. While comparing absolute figures, the significance is not clear but when these are presented by diagrams, the comparison is easy. The technique of diagrammatic representation should not be used when comparison is either not possible or is not necessary.   Diagrams save time: Diagrams present the set of data in such a way that their significance is known without loss of much time. Moreover, diagrams save time and effort which are otherwise needed in drawing inferences from a set of figures.  
  • 72. Diagrams give a bird’s eye of the entire data. This means that the entire data can be put in a diagrammatic form and be presented and the diagram will give you the overall analysis of the data. Diagrams give an attractiveand elegant presentation: Diagrams have greater attraction and effective impression. People, in general. avoid figures, bin are always impressed by diagrams. Since people set: pictures carefully, their effect on the mind is more stable. thus. diagrams give delight to the eve and add the spark of interest. Diagram simplify complexity and depict the characteristics of the data : Diagrams, beside being attractive and interesting, also highlight the characteristics of the data. Large data can easily be represented by diagrams and thus, without straining one’s mind, the basic features of the data can l>e understood and inferences can be drawn in a very short time.
  • 73.
  • 74. highlight the most important facts.
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  • 79.