The drawings referenced herein form a part of the specification. Features shown in the drawing are meant as illustrative of only some embodiments of the invention, and not of all embodiments of the invention, unless otherwise explicitly indicated, and implications to the contrary are otherwise not to be made.
In the following detailed description of exemplary embodiments of the invention, reference is made to the accompanying drawings that form a part hereof, and in which is shown by way of illustration specific exemplary embodiments in which the invention may be practiced. These embodiments are described in sufficient detail to enable those skilled in the art to practice the invention. Other embodiments may be utilized, and logical, mechanical, and other changes may be made without departing from the spirit or scope of the present invention. The following detailed description is, therefore, not to be taken in a limiting sense, and the scope of the present invention is defined only by the appended claims.
The method 100 segments potential customers of a product or service into a number of clusters organized over a number of dimensions by one or more attributes of the potential customers (102). Thus, each potential customer has one or more attributes, such as age, gender, location, income, and so on. The product or service is new, such that no previous purchase data exists as to the product or service. That is, there is no previous history as to other customers having purchased the product or service. Importantly, then, the attributes of the potential customers do not include previous purchasing history of the product or service, or, in at least some embodiments, of other, similar products or services.
Each potential customer is segmented into just one cluster. The number of dimensions of the clusters can in one embodiment correspond to the number of attributes of the potential customers. Any predetermined clustering algorithm may be employed to cluster the potential customers in accordance with their attributes. As can be appreciated by those of ordinary skill within the art, clustering is a common technique for statistical data analysis. Clustering is the classification of similar objects (here, similar potential customers) into different groups (i.e., clusters), or more precisely, the partitioning of a data set into subsets (clusters), so that the data in each subset (ideally) share some common trait.
Referring back to
Thereafter, what is referred to as a success factor is determined for each initial cluster (106), or for each cluster that contains or encompasses a selected point. The success factor is determined in one embodiment by particularly employing a number of approaches for centering on or reaching a given cluster, and assessing which of these approaches, as compared to the total number of approaches tried, actually center on or reach the cluster in question, as the success factor. In another embodiment, empirical analysis may be performed, so that a representative sample of a given cluster are solicited with the new product or service, and the percentage of potential customers of the sample that purchase the product or service is the success factor of the cluster.
In the embodiment where a number of approaches are employed for centering on or reaching a given cluster, where the percentage of successful approaches for the cluster is the success factor of the cluster, these approaches may be statistical analysis approaches as known within the art. The approaches are preferably different approaches, so that there is diversity within the ways in which a given cluster yields a high probability that potential customers segmented thereinto most likely to purchase the product or service, to ensure that a given confidence in the resulting success factor. Such different approaches for centering on or reaching a given cluster can include randomly selecting the clusters, for instance, as well as other types of approaches, as can be appreciated by those of ordinary skill within the art.
The success factors of the clusters 206C, 206D, 206E, and 206F are denoted in
Thus, for the initial cluster 206C, zero out of ten approaches tried successfully centered on the cluster 206C. For the initial cluster 206D, one out of ten approaches tried successfully centered on the cluster 206D. For the initial cluster 206E, two out of ten approaches tried successfully centered on the cluster 206E. For the initial cluster 206F, five out of ten approaches tried successfully centered on the cluster 206F.
Referring back to the method 100 of
Therefore, the insight followed by at least some embodiments of the invention is that the success factors of clusters are themselves grouped or clustered together. As such, it is presumed that the cluster having the highest success factor will be located near the initial cluster that has the highest success factor among the initial clusters. Rather than determining the success factors of all the clusters, then, embodiments of the invention selectively locate which clusters are likely to have the highest success factors, and only actually determine the success factors for these clusters.
In particular, the clusters to the right, to the bottom, and to the bottom right diagonally of the initial cluster 206F are selected as the subsequent clusters in the example of
Therefore, because it is presumed that the success factors of the clusters 206 are themselves clustered or grouped together, these other neighbor clusters to the initial cluster 206F are presumed to have lower success factors than the success factor of the cluster 206F. That is, since these other neighbor clusters to the initial cluster 206F are located relatively close to the other initial clusters 206C, 206D, and 206E, then they are presumed to have success factors between the success factor of the initial cluster 206F and the success factors of the clusters 206C, 206D, and 206E. As such, they are presumed to not have higher success factors than the cluster 206F in the particular example of
The success factors of the selected subsequent clusters 206G, 206H, and 206N are denoted in
Referring back to the method 100 of
It is noted that if none of the subsequent clusters has a higher success factor of the initial cluster having the highest success factor, then the potential customers segmented into this initial cluster are solicited in part 112. In this case, this initial cluster is referred to herein as a subsequent cluster, insofar as it is ultimately the cluster having the highest success factor of any cluster for which success factors have been determined. Thus, ultimately the potential customers segmented into the cluster having the highest success factor of any cluster for which success factors have been determined are those that are solicited for the new product or service.
It is also noted that the method 100 as has been described in the embodiment of
However, in another embodiment, the method 100 may be performed even more iteratively. Thus, if a subsequent cluster has a higher success factor than the initial cluster, then this subsequent cluster is selected as the new initial cluster, and the method 100 is repeated by selecting new subsequent clusters to the new initial cluster, and so on. Ultimately, at some point, no subsequent cluster will be located that has a higher success factor than the current initial cluster, in which case the method 100 ends by soliciting the potential customers segmented into this current initial cluster.
Therefore,
As before, the potential customers are segmented into a number of clusters (102). In one embodiment, but not all embodiments, of the invention, initial clusters are then selected that are substantially equidistant to one another (104). The success factor of each initial cluster is determined (106), and the initial cluster with the highest success factor is selected or denoted as what is referred to as the standard cluster (302).
Thereafter, what are referred to as candidate clusters, comparable to the subsequent clusters described before, are selected (108), as located near the standard cluster. The candidate clusters may be one or more neighboring clusters to the standard cluster, for instance. The success factor of each such candidate cluster is determined (110), as has been described in relation to the subsequent clusters and the initial cluster in the method 100 of
If the success factor of a candidate cluster is greater than the success factor of the standard cluster (304), then this candidate cluster is selected as the new standard cluster (306), and the method 100 of
The computer-readable medium 402 is a tangible computer-readable medium, such as a recordable data storage medium, and stores the potential customers 202 and the clusters 206 that have been described. The selection logic 404 performs nearly all of the parts of the method 100 of
It is noted that, although specific embodiments have been illustrated and described herein, it will be appreciated by those of ordinary skill in the art that any arrangement calculated to achieve the same purpose may be substituted for the specific embodiments shown. This application is thus intended to cover any adaptations or variations of embodiments of the present invention. Therefore, it is manifestly intended that this invention be limited only by the claims and equivalents thereof.