Final Report:
SALES OF ORTHOPEDIC EQUIPMENT
The objective of this study is to find ways to increase sales of orthopedic material from our company to hospitals in the United States. I want each person to concentrate in a subset of 3000 hospitals chosen at random. Or areas(2500)Find those who have high consumption of such equipment but where our sales are low. Come up with a selected group where you think our efforts will be rewarded.
The following description of the dataset includes variable names and some summaries of variable.
A file with a shell SAS program that follows the analysis steps is provided in another link.
DATASET ORTHOPEDIC
VARIABLES:
ZIP : US POSTAL CODE
HID : HOSPITAL ID
CITY : CITY NAME
STATE : STATE NAME
BEDS : NUMBER OF HOSPITAL BEDS
RBEDS : NUMBER OF REHAB BEDS
OUT-V : NUMBER OF OUTPATIENT VISITS
ADM : ADMINISTRATIVE COST(In $1000’s per year)
SIR : REVENUE FROM INPATIENT
SALESY : SALES OF REHABILITATION EQUIPMENT SINCE JAN 1
SALES12
: SALES OF REHAB. EQUIP. FOR THE LAST 12 MO
HIP95 : NUMBER OF HIP OPERATIONS FOR 1995
KNEE95 : NUMBER OF KNEE OPERATIONS FOR 1995
TH : TEACHING HOSPITAL? 0, 1
TRAUMA : DO THEY HAVE A TRAUMA UNIT? 0, 1
REHAB : DO THEY HAVE A REHAB UNIT? 0, 1
HIP96 : NUMBER HIP OPERATIONS FOR 1996
KNEE96 : NUMBER KNEE OPERATIONS FOR 1996
FEMUR96
: NUMBER FEMUR OPERATIONS FOR 1996
SUMMARIES:
ZIP
CITY
STATE BEDS
Min.
: 612 Chicago :
45 CA : 458 Min.
: 0.0
1st
Qu.:28550 Houston :
41 TX : 342 1st Qu.: 69.0
Median
:49000 Philadelphia : 38
NY : 241 Median : 136.0
Mean
:50600 Los Angeles : 28
PA : 238 Mean : 191.2
3rd
Qu.:75240 New York :
24 FL : 228 3rd Qu.: 262.0
Max.
:99900 Dallas :
24 IL : 208 Max.
:1476.0
(Other) :4503 (Other):2988
RBEDS
OUTV
ADM SIR
Min.
: 0.000 Min. :
0 Min. : 0
Min. : 0
1st
Qu.: 0.000 1st Qu.: 7510 1st Qu.:
1932 1st Qu.: 1312
Median
: 0.000 Median : 20880 Median :
4508 Median : 3384
Mean
: 7.244 Mean : 47350 Mean
: 6689 Mean : 4849
3rd
Qu.: 0.000 3rd Qu.: 47700 3rd Qu.:
9402 3rd Qu.: 6832
Max.
:850.000 Max. :1987000 Max.
:66440 Max. :70300
SALESY
SALES12
HIP95
KNEE95
Min.
: 0.00 Min. : 0.00
Min. : 0.00 Min. : 0.00
1st
Qu.: 0.00 1st Qu.: 0.00 1st
Qu.: 7.00 1st Qu.: 1.00
Median
: 1.00 Median : 2.00 Median
: 28.00 Median : 18.00
Mean
: 25.91 Mean : 41.05
Mean : 51.27 Mean : 41.73
3rd
Qu.: 23.00 3rd Qu.: 33.00 3rd Qu.:
70.00 3rd Qu.: 52.50
Max.
:1209.00 Max. :2770.00 Max.
:1421.00 Max. :868.00
T-H
TRAUMA
REHAB HIP96
Min.
:0.0000 Min. :0.0000 Min.
:0.0000 Min. : 0.0
1st
Qu.:0.0000 1st Qu.:0.0000 1st Qu.:0.0000
1st Qu.: 8.0
Median
:0.0000 Median :0.0000 Median :0.0000
Median : 29.0
Mean
:0.2737 Mean :0.1225 Mean
:0.1839 Mean : 52.6
3rd
Qu.:1.0000 3rd Qu.:0.0000 3rd Qu.:0.0000
3rd Qu.: 71.0
Max.
:1.0000 Max. :1.0000 Max.
:1.0000 Max. :1373.0
KNEE96 FEMUR96
Min.
: 0.00 Min. : 0.00
1st
Qu.: 0.00 1st Qu.: 11.00
Median
: 18.00 Median : 34.00
Mean
: 41.91 Mean : 49.39
3rd
Qu.: 56.00 3rd Qu.: 74.00
Max.
:1081.00 Max. :489.00
Overview of the Analysis
Part 1. Select your market segment-s.
1. Select cases for your dataset:
Select a group of states for the study (It can be all of them, but it is enough to start with about 3000 hospitals). Set the zero values on SALES to missing values.
Response: SALES = SALES12 +SALESY, IF SALES=0 => SALES=NA
2. Transformations:
Look at each individual variables and decide “if and which” transformation is appropriate.
3. Dimension reduction.
i) Separate the variables into the following groups:
Response: SALES
Demographics: BEDS, RBEDS, OUTV, ADM, SIR, TH, TRAUMA, REHAB
Operation numbers: HIP95, KNEE95, HIP96, KNEE96, FEMUR96
ii) Use the factor method to summarize the demographic variables and the operation variables and come out with a final reduced list of factor variables (perhaps 3 or 4). Use the rotated factors in order to find a good interpretation of the factors and try to make a good story.
4. Market segmentations.
i) Independent
variables are used to divide the list of hospitals (all possible clients = the
market) into subsets which we call market segments.
Use cluster analysis to find the market segments or clusters. Since we are
summarizing the variables with factors then use the factors.
iii) Once the clusters are chosen we must study the summary statistics for each cluster and try to describe their content. Interpretation is very important at this stage.
v) Finally we select the cluster or clusters that agree with our objectives. In this study you are looking for segments with over all high sales but where there are hospitals were the company’s sales are low. Some segments will have mostly low numbers for sales. This means that those hospitals have few patients who would need our products so we are not interested in them.
Part 2. Estimating potential gain in sales. Potential gain in sales is the difference between current sales and the average of sales to similar hospitals. If you are analyzing a very small cluster (N <20) then we might assume that the sales are homogeneous and the “average sales to similar hospitals” is just the average sale to that cluster. But if the cluster is larger we will need to obtain a regression estimate. This is the procedure:
i) Do a regression for each of the t selected segments. Notice that since the segments are very homogeneous you may expect that the R-square may not be very high SO DO NOT BE CONCERNED WITH LOW R-SQUARES.
ii) The hospitals with large negative residuals are the ones that have low sales but their characteristics suggest that they are below their potential sales (use predicted values as potential sales). Make a list of the hospitals in your segment were sales can be improved.
iii) Give your estimate of the potential gains.
Part 3: All these parts are required to be performed using SAS. In addition you could compare the results from SAS with alternative robust analysis using R. The R analysis would apply the methods for robust clustering (pam) and for classification and regression trees (rpart).
PAM: compare the clusters given by PAM with those from SAS, are they similar?
RPART: The idea here is to take the sales variable and make it into a categorical 1:0-median 2:median-80% 3:80%-100%. Run the tree method and select one good node that have very high sales and find hospitals on that group that have SALES=NA and estimate a potential sale gain.
- Transformation data variable square root log 1+cx (if data is crazy, can’t find cluster)
- Dimension reduction factor analysis component analysis how many factors can I get. Some factors that can make Interpretation (size of the hospital, number of bed)
- Cluster also has some interpretation (big hospital with few beds)
- Compare the sales of cluster define cluster(some have high sales)(maybe some from potential customers or some you don’t know about)
- Estimate the potential gain or potential sales (ex: 10 cluster, mean 3 standard error 1. Calculate y hat=X bar square +SE square
- Cluster estimate make table