The present invention relates to a migration tendency estimation device, a migration tendency estimation method, and a program, and more particularly, relates to a migration tendency estimation device, a migration tendency estimation method, and a program for estimating the probability of migration and the number of migrating persons from demographic information with high accuracy.
Conventionally, position information of persons obtained from GPS or the like has sometimes been provided as demographic information with which it is not possible to track individuals because of privacy issues. Demographic information is information on the number of persons present in respective areas at each time point (time step). An area is a geographic space partitioned in a grid form, for example.
There are demands for estimating the probability of migration and the number of migrating persons between areas between time steps from such demographic information.
A technique for estimating the probability of migration and the number of migrating persons between respective areas from demographic information under an assumption that persons migrate between adjacent areas only using a framework (Collective Graphical Model, NPL 1) that estimates individual probability models from collected data is known (NPL 2).
[NPL 1] D. R. Sheldon and T. G. Dietterich. Collective Graphical Models. In Proceedings of the 24th International Conference on Neural Information Processing Systems, 2011, pp. 1161-1169. [NPL 2] T. Iwata, H. Shimizu, F. Naya, and N. Ueda. Estimating People Flow from Spatiotemporal Population Data via Collective Graphical Mixture Models. ACM Transactions on Spatial Algorithms and Systems, Vol. 3, No. 1, May 2017, pp. 1-18.
In NPL 2, the candidates for a migration destination from a certain area i are limited to the area i and those areas adjacent to the area i.
Such a limitation is effective when the area is sufficiently large and the time step widths are small. This is because a person cannot migrate a long distance in a short time width, and the size of an area is large, a greater part of the migrations occur in the same area or the adjacent areas.
However, this assumption sometimes does not hold depending on the type of data and the size of an area. For example, when the area size is small and the time step interval is short and when data including many long-distance migrations is handled, since migrations to areas other than the adjacent areas increase, this assumption does not hold.
When the above-mentioned method is applied to such data, estimation accuracy decreases greatly. Therefore, it is necessary to take migrations to areas other than adjacent areas into consideration in order to realize high-accuracy estimation.
However, there are two problems when migrations to areas other than adjacent areas are taken into consideration.
A first problem is that, when migrations to areas other than adjacent areas are simply taken into consideration, the degree of freedom of models may become extremely high, a solution may not be narrowed down, and a solution far from the true value may be output.
A second problem is the increase in the amount of calculation. In order to estimate parameters and the number of migrating persons between areas, it is necessary to solve an iterative optimization problem. When migrations to areas other than adjustments are taken into consideration, since it is necessary to solve an optimization problem having a large size many times, the amount of calculation becomes extremely large.
With the foregoing in view, an object of the present invention is to provide a migration tendency estimation device, a migration tendency estimation method, and a program capable of estimating the probability of migration and the number of migrating persons with high accuracy and a small amount of calculation even when migrations to areas other than adjacent areas are taken into consideration.
A migration tendency estimation device according to the present invention is a migration tendency estimation device that estimates the number of migrating persons and a probability of migration from an area to another area at each time point for each of a plurality of areas from demographic information including population information at each time point of the area, the migration tendency estimation device including: a parameter estimation unit that estimates a first parameter indicating the likelihood of departure from the area to the other area and a second parameter indicating the likelihood of gathering of persons in the area for each of the plurality of areas, a third parameter indicating an influence on the probability of migration of a distance between the areas, and the number of migrating persons from the area to each of the other areas for each of the plurality of areas on the basis of the demographic information; and a migration probability calculation unit that calculates the probability of migration from the area to each of the other areas for each of the plurality of areas on the basis of the first parameter, the second parameter, and the third parameter.
A migration tendency estimation method according to the present invention is a migration tendency estimation method for estimating the number of migrating persons and a probability of migration from an area to another area at each time point for each of a plurality of areas from demographic information including population information at each time point of the area, the migration tendency estimation method including: allowing a parameter estimation unit to estimate a first parameter indicating the likelihood of departure from the area to the other area and a second parameter indicating the likelihood of gathering of persons in the area for each of the plurality of areas, a third parameter indicating an influence on the probability of migration of a distance between the areas, and the number of migrating persons from the area to each of the other areas for each of the plurality of areas on the basis of the demographic information; and allowing a migration probability calculation unit to calculate the probability of migration from the area to each of the other areas for each of the plurality of areas on the basis of the first parameter, the second parameter, and the third parameter.
According to the migration tendency estimation device and the migration tendency estimation method according to the present invention, the parameter estimation unit estimates a first parameter indicating the likelihood of departure from the area to the other area and a second parameter indicating the likelihood of gathering of persons in the area for each of the plurality of areas, a third parameter indicating an influence on the probability of migration of a distance between the areas, and the number of migrating persons from the area to each of the other areas for each of the plurality of areas on the basis of the demographic information.
The migration probability calculation unit calculates the probability of migration from the area to each of the other areas for each of the plurality of areas on the basis of the first parameter, the second parameter, and the third parameter.
The first parameter indicating the likelihood of departure from an area to another area and the second parameter indicating the likelihood of gathering of persons to the area for each of a plurality of areas, and the third parameter indicating the influence on the probability of migration of the distance between areas, and the number of migrating persons from the area to each of the other areas for each of the plurality of areas are estimated on the basis of the demographic information, and the probability of migration from the area to each of the other areas is calculated for each of the plurality of areas on the basis of the first parameter, the second parameter, and the third parameter. Therefore, even when migration to an area other than adjacent areas is taken into consideration, it is possible to estimate the probability of migration and the number of migrating persons with high accuracy and a small amount of calculation.
Moreover, the parameter estimation unit of the migration tendency estimation device according to the present invention can estimate the first parameter, the second parameter, the third parameter, and the number of migrating persons so as to optimize an objective function indicating the likelihood of the number of migrating persons determined using the first parameter, the second parameter, the third parameter, and the demographic information.
A migration tendency estimation device according to the present invention is a migration tendency estimation device that estimates the number of migrating persons and a probability of migration from an area to another area at each time point for each of a plurality of areas from demographic information including population information at each time point of the area, the migration tendency estimation device including: a parameter estimation unit that estimates a first parameter indicating the likelihood of departure from the area to the other area and a second parameter indicating the likelihood of gathering of persons in the area for each of the plurality of areas, a third parameter indicating an influence on the probability of migration of a distance between the areas, and the total number of migrating persons obtained by summing the numbers of migrating persons for respective positional relationships between areas on the basis of the demographic information; a migration probability calculation unit that calculates the probability of migration from the area to each of the other areas for each of the plurality of areas on the basis of the first parameter, the second parameter, and the third parameter; and a number-of-migrating-persons estimating unit that estimates the number of migrating persons from the area to each of the other areas for each of the plurality of areas on the basis of the demographic information and the probability of migration calculated by the migration probability calculation unit.
A migration tendency estimation method according to the present invention is a migration tendency estimation method for estimating the number of migrating persons and a probability of migration from an area to another area at each time point for each of a plurality of areas from demographic information including population information at each time point of the area, the migration tendency estimation method including: allowing a parameter estimation unit to estimate a first parameter indicating the likelihood of departure from the area to the other area and a second parameter indicating the likelihood of gathering of persons in the area for each of the plurality of areas, a third parameter indicating an influence on the probability of migration of a distance between the areas, and the total number of migrating persons obtained by summing the numbers of migrating persons for respective positional relationships between areas on the basis of the demographic information; allowing a migration probability calculation unit to calculate the probability of migration from the area to each of the other areas for each of the plurality of areas on the basis of the first parameter, the second parameter, and the third parameter; and allowing a number-of-migrating-persons estimating unit to estimate the number of migrating persons from the area to each of the other areas for each of the plurality of areas on the basis of the demographic information and the probability of migration calculated by the migration probability calculation unit.
According to the migration tendency estimation device and the migration tendency estimation method according to the present invention, the parameter estimation unit estimates a first parameter indicating the likelihood of departure from the area to the other area and a second parameter indicating the likelihood of gathering of persons in the area for each of the plurality of areas, a third parameter indicating an influence on the probability of migration of a distance between the areas, and the total number of migrating persons obtained by summing the numbers of migrating persons for respective positional relationships between areas on the basis of the demographic information.
The migration probability calculation unit calculates the probability of migration from the area to each of the other areas for each of the plurality of areas on the basis of the first parameter, the second parameter, and the third parameter; and the number-of-migrating-persons estimating unit estimates the number of migrating persons from the area to each of the other areas for each of the plurality of areas on the basis of the demographic information and the probability of migration calculated by the migration probability calculation unit.
As described above, the first parameter indicating the likelihood of departure from the area to another area and the second parameter indicating the likelihood of gathering of persons in the area for each of the plurality of areas, the third parameter indicating the influence on the probability of migration of the distance between areas, and the total number of migrating persons obtained by summing the numbers of migrating persons for respective positional relationships between areas are estimated on the basis of the demographic information, the probability of migration from the area to each of the other areas is calculated on the basis of the first parameter, the second parameter, and the third parameter, and the number of migrating persons from the area to each of the other areas is estimated for each of the plurality of areas on the basis of the demographic information and the probability of migration. In this way, even when migration to areas other than adjacent areas is taken into consideration, it is possible to estimate the probability of migration and the number of migrating persons with high accuracy and a small amount of calculation.
Moreover, the parameter estimation unit of the migration tendency estimation device according to the present invention can estimate the first parameter, the second parameter, the third parameter, and the total number of migrating persons so as to optimize an objective function indicating the likelihood of the total number of migrating persons determined using the first parameter, the second parameter, the third parameter, and the demographic information.
A program according to the present invention is a program for causing a computer to function as each unit of the migration tendency estimation device.
According to a migration tendency estimation device, a migration tendency estimation method, and a program of the present invention, it is possible to estimate the probability of migration and the number of migrating persons with high accuracy and a small amount of calculation even when migrations to areas other than adjacent areas are taken into consideration.
Hereinafter, embodiments of the present invention will be described with reference to the drawings.
First, an overview of an embodiment of the present invention will be described.
In the present embodiment, a model in which the tendency of migration is determined by three factors: the likelihood of departure from each area, the likelihood of gathering of persons in each area, and the influence of distance on the probability of migration is assumed.
By setting such an assumption, it is possible to lower the degree of freedom of a model to narrow down and output the number of migrating persons with the likelihood of migration of persons as a group taken into consideration and to perform estimation with high accuracy.
Moreover, during estimation of parameters, by maintaining the values obtained by summing the number of migrating persons rather than estimating the number of migrating persons for each pair of the starting and ending points of migration, it is possible to reduce the size of an optimization problem to be solved repeatedly. As a result, it is possible to quickly estimate the probability of migration and the number of migrating persons.
Referring to
The migration tendency estimation device 10 is configured as a computer including a CPU, a RAM, and a ROM storing a program for executing a migration tendency estimation process routine to be described later, and is functionally configured as below.
As illustrated in
The operating unit 100 receives an operation related to demographic information.
Specifically, the operating unit 100 receives various operations on the demographic information storage unit 110. Various operations include, for example, an operation of inputting and registering demographic information to the demographic information storage unit 110 and an operation of correcting and deleting demographic information stored in the demographic information storage unit 110.
Here, demographic information is population information of each area at each time point (time step).
An area is a predetermined region on a map, and for example, a geographic space partitioned into 5-km square grids can be adopted. At time point t, a population of area i is represented by Nti.
The demographic information storage unit 110 stores demographic information.
The parameter estimation unit 120 estimates a first parameter πi indicating the likelihood of departure from the area i to another area and a second parameter si indicating the likelihood of gathering of persons in the area i for each of a plurality of areas, a third parameter β indicating the influence on a probability of migration θij, of the distance between the areas, and the number of migrating persons Mtij from the area i to another area j on the basis of the demographic information so as to optimize an objective function indicating the likelihood of the number of migrating persons Mtij determined using π, si, β, and the demographic information.
Specifically, first, the parameter estimation unit 120 assumes that, when the probability of migration from the area i to the area j is θij, the number of persons
M
ti
={M
tij
|j∈v}
migrating from the area i at time point t is generated with a probability represented by Formula (1) below using the probability of migration
θi={θij|j∈Γi}
from the area i.
Here, V is a set of all areas and an undirected graph indicating an adjacency between areas is G=(V:E). Moreover, Γi is a set of migration candidate areas from the area i.
Therefore, when the followings are given,
N={N
ti
|t=0, . . . ,T−1,i∈V}
and
θ={θi|i∈V},
the likelihood function of the following is represented by Formula (2) below.
Here, T is a largest value of a time step. That is, the time step is t=0, . . . , and T−1. Moreover, the following is a population in the area i at time point t.
N
ti(t=0, . . . ,T−1,i∈V)
Moreover, the following is the number of persons having migrated from the area i to the area j from time point t to time point t+1.
M
tij(t=0,1, . . . ,T−2,i,j∈V)
When the logarithm of Formula (2) is taken, Formula (3) below is obtained.
In this case, the following Stirling's approximation is used as intermediate deformation.
log n!≈n log n−n
Moreover, parts that do not depend on variables to be estimated are omitted by regarding the same as constants.
Moreover, Formulas (4) and (5) below which are constraints indicating the law of conservation of the number of persons are satisfied.
Here, it is assumed that the probability of migration θij can be approximated from the three factors including the likelihood of departure from each area, the likelihood of gathering of persons in each area, and the influence on the probability of migration θij of distance. For example, it is assumed that the probability of migration θij can be written in the form of Formula (6) below.
However, Formula (7) below is satisfied.
π={πi|i∈V} [Formula 6]
s={s
i
|i∈V} (7)
Here, πi is a value indicating the likelihood of departure from the area i and satisfies the following relation.
0≤πi≤1
Moreover, si is a score indicating the likelihood of gathering of persons in the area i and satisfies the following relation.
s
i≥0
si has a degree of freedom with respect to a constant multiple.
Moreover, β is a parameter indicating the influence on the probability of migration θij of distance and satisfies the following relation.
β≥0
Moreover, d(i, j) is the distance between the area i and the area j.
When Formula (6) is substituted into Formula (3) representing a logarithmic likelihood, the following logarithmic likelihood function is obtained.
Using this logarithmic likelihood function,
That is, an optimization problem to be solved is represented by Formulas (8a) to (8d) below.
However, objective functions are set as Formulas (9) and (10) as below.
Here, by taking noise present in observation into consideration, an objective function is set as (11) below, and solving an optimization problem of Formula (12) below will be considered.
Here, λ is a parameter for controlling how strong constraints are to be kept.
Subsequently, the parameter estimation unit 120 optimizes
Since an objective function
is concave with respect to
Subsequently, the parameter estimation unit 120 optimizes
However, parts that do not depend on
Subsequently, the parameter estimation unit 120 optimizes
However, as in the following Formula, parts that do not depend on
For simplicity, the right side of Formula (14) is set as
Here, the MM algorithm is a method of generating a group of candidate points of a solution by sequentially solving a maximization problem of an approximation function that becomes a lower bound of a function when it is difficult to directly maximize the function.
A specific application method of the MM algorithm will be described. Formula (15) below is satisfied for x, y>0.
Here, as Formula (16) below, Formula (15) is applied to
Here, Formula (18) below is set.
When the right side of Formula (17) is set as
[Formula 20]
ƒ(s(u),β(u))=ƒ(u)(s(u),β(u)) (19)
ƒ(s,β)≥ƒ(u)(s,β)(∀s,β) (20)
Using these notations,
Here, in Algorithm 1, the objective function
Here, in Algorithm 1, update formulas of
First, Formula (21) below is satisfied for the following formula:
can be obtained in a closed form.
Next, the following formula will be considered.
It can be ascertained by calculation that the following relation is satisfied for
That is, f(u) is a concave function for β.
Therefore, when β(u+1) is to be calculated, a maximization problem of a concave function with one variable related to β may be solved and can be efficiently calculated by the golden section search, the Newton's method, and the like.
These operations are repeated until it settles whereby
The parameter estimation unit 120 estimates the values obtained by optimization as
The distance coefficient storage unit 130 stores the third parameter β indicating the influence on the probability of migration θij of the distance between the area i and the other area i optimized by the parameter estimation unit 120 (
The gathering likelihood storage unit 140 stores the second parameter si indicating the likelihood of gathering of persons in the area i optimized by the parameter estimation unit 120 (
The departure likelihood storage unit 150 stores the first parameter πi indicating the likelihood of departure from the area i to the other area optimized by the parameter estimation unit 120 (
The number-of-migrating-persons storage unit 160 stores the number of migrating persons Mtij from the area i to the other area j optimized by the parameter estimation unit 120 (
The migration probability calculation unit 170 calculates the probability of migration θij from the area i to each of the other areas j for each of a plurality of areas on the basis of πi stored in the departure likelihood storage unit 150, si stored in the gathering likelihood storage unit 140, and β stored in the distance coefficient storage unit 130.
Specifically, the migration probability calculation unit 170 calculates the probability of migration θij by Formula (22) below.
The migration probability calculation unit 170 stores the calculated probability of migration θij in the migration probability storage unit 180.
The migration probability storage unit 180 stores the probability of migration θij calculated by the migration probability calculation unit 170 (
The output unit 190 reads and outputs the number of migrating persons Mtij from the area i to the other area j in a plurality of areas at each time step stored in the number-of-migrating-persons storage unit 160 and the probability of migration θij from the area i to the other area j stored in the migration probability storage unit 180.
When a migration tendency estimation process is executed, a migration tendency estimation process routine illustrated in
First, in step S100, the parameter estimation unit 120 acquires demographic information from the demographic information storage unit 110.
In step S110, the parameter estimation unit 120 estimates a first parameter πi indicating the likelihood of departure from the area i to another area and a second parameter si indicating the likelihood of gathering of persons in the area i for each of a plurality of areas, a third parameter β indicating the influence on a probability of migration θij, of the distance between the areas, and the number of migrating persons Mtij from the area i to another area j on the basis of the demographic information so as to optimize an objective function indicating the likelihood of the number of migrating persons Mtij determined using π, si, β, and the demographic information.
In step S120, the parameter estimation unit 120 stores β,
In step S130, the parameter estimation unit 120 stores
In step S140, the migration probability calculation unit 170 calculates the probability of migration θij from the area i to each of the other areas j for each of a plurality of areas on the basis of πi stored in the departure likelihood storage unit 150, si stored in the gathering likelihood storage unit 140, and β stored in the distance coefficient storage unit 130.
In step S150, the migration probability calculation unit 170 stores the probability of migration θij calculated in step S140 in the migration probability storage unit 180.
In step S160, the output unit 190 outputs the number of migrating persons Mtij and the probability of migration θij.
As described above, according to the migration tendency estimation device 10 according to the present embodiment, the first parameter indicating the likelihood of departure from an area to another area and the second parameter indicating the likelihood of gathering of persons to the area for each of a plurality of areas, and the third parameter indicating the influence on the probability of migration of the distance between areas, and the number of migrating persons from the area to each of the other areas for each of the plurality of areas are estimated on the basis of the demographic information, and the probability of migration from the area to each of the other areas is calculated for each of the plurality of areas on the basis of the first parameter, the second parameter, and the third parameter. Therefore, even when migration to an area other than adjacent areas is taken into consideration, it is possible to estimate the probability of migration and the number of migrating persons with high accuracy and a small amount of calculation.
In a second embodiment of the present invention, during estimation of parameters, by maintaining the values obtained by summing the number of migrating persons rather than estimating the number of migrating persons for each pair of the starting and ending points of migration, it is possible to reduce the size of an optimization problem to be solved repeatedly.
In the present embodiment, a first parameter πi indicating the likelihood of departure from the area i to another area and a second parameter si indicating the likelihood of gathering of persons in the area i for each of a plurality of areas, a third parameter β indicating the influence on a probability of migration θij, of the distance between the areas, and the total number of migrating persons obtained by summing the numbers of migrating persons for respective positional relationships between areas are estimated on the basis of the demographic information so as to optimize an objective function indicating the likelihood of the total number of migrating persons determined using π, si, β, and the demographic information.
A set of all areas Γi
δiδ:={j|j∈Γi,d(i,j)=δ}
Moreover, a set of all possible values for the distance between two areas is defined as below.
Δ:={r∈|∃(i,j)∈E,d(i,j)=r}
Moreover, a set in which 0 is excluded from A is defined as below.
Δ−:=Δ\{0}
The sum of the numbers of migrating persons for respective positional relationships between areas is defined as a total number of migrating persons and is set as Formulas (23) to (26) below.
In this case, the relationships of Formulas (27) to (30) below are satisfied.
Since Formula (31) below is satisfied, Formula (13) can be replaced with Formula (32) below.
Since Formula (31) is satisfied, Formula (14) can be replaced with Formula (33) below.
From Formulas (32) and (33), it can be understood that Mtij(t=0, 1, . . . , T−2,(i,j)∈E) is not necessarily required, but Ati
are sufficient for updating
By utilizing this nature to solve an optimization problem related to Ati
For example, areas obtained by partitioning a square geological space in a grid form are formed and the following distance is used as the distance between grids.
O(T·|V|2).
However, with Ati
O(T·|V|3/2).
Here, an objective function and the constraints of the optimization parts of Ati
First, independency of Ati
Like Formula (23), the followings are set.
A
tiδ:=Σj∈Γ
M
tji
˜Bin(Ntj,θji)
Here, Bin(Ntj, θji) is approximated by a Poisson distribution Po (Ntj·θji). In this case, it can be thought that due to the reproducibility of the Poisson distribution, Ati
Po(Σj∈Γ
In this case, when the following is set, Formula (34) below is obtained.
Similarly, for Bti and Mtii, Formulas (35) and (36) below are obtained.
Therefore, the likelihood function becomes Formula (37) below.
When the logarithm of Formula (37) is taken, Formulas (38) to (41) below are obtained.
This is solved under Formulas (42) and (43) below which are constraints indicating the law of conservation of the number of persons.
As a result, the objective function is set as Formulas (44) to (46) below, and Formula (47) below may be solved for t=0, 1, . . . , and T−2.
This optimization problem can be solved by the L-BFGS-B method or the like by adding equality constraints to the objective function as a penalty.
As a whole, a process of solving the optimization problem (Formula (47)) to update Ati
As a result, it is possible to quickly estimate the probability of migration and the number of migrating persons.
A configuration of the migration tendency estimation device 20 according to the second embodiment of the present invention will be described. The same components as those of the migration tendency estimation device 10 according to the first embodiment will be denoted by the same reference numerals and the detailed description thereof will be omitted.
As illustrated in
The parameter estimation unit 200 estimates a first parameter πi indicating the likelihood of departure from the area i to another area and a second parameter si indicating the likelihood of gathering of persons in the area i for each of a plurality of areas, a third parameter β indicating the influence on a probability of migration θij, of the distance between the areas, and the total number of migrating persons obtained by summing the numbers of migrating persons for respective positional relationships between areas on the basis of the demographic information so as to optimize an objective function indicating the likelihood of the total number of migrating persons determined using π, si, β, and the demographic information.
Specifically, the parameter estimation unit 200 repeats a process of solving the optimization problem (Formula (47)) to update Ati
The parameter estimation unit 200 estimates the values obtained by optimization as Ati
The total-number-of-migrating-persons storage unit 210 stores the total number of migrating persons Ati
The number-of-migrating-persons estimating unit 220 estimates the number of migrating persons Mtij from the area i to each of the other areas j for each of a plurality of areas on the basis of the demographic information and the probability of migration θij calculated by the migration probability calculation unit 170.
For example, since the probability of migration
The number-of-migrating-persons estimating unit 220 can estimate the number of migrating persons Mtij from the area i to the other area j for each of the plurality of areas on the basis of the demographic information, the total number of migrating persons estimated by the parameter estimation unit 200, and the probability of migration θij calculated by the migration probability calculation unit 170.
Specifically, the number-of-migrating-persons estimating unit 220 can perform faster estimation using the total number of migrating persons transmitted from the total-number-of-migrating-persons storage unit 210 as an initial value.
The number-of-migrating-persons estimating unit 220 stores the estimated number of migrating persons Mtij in the number-of-migrating-persons storage unit 230.
The number-of-migrating-persons storage unit 230 stores the number of migrating persons Mtij from the area i to the other area j optimized by the parameter estimation unit 120 (
In step S210, the parameter estimation unit 200 estimates the first parameter πi indicating the likelihood of departure from the area i to another area and the second parameter si indicating the likelihood of gathering of persons in the area i for each of a plurality of areas, the third parameter β indicating the influence on the probability of migration θij, of the distance between the areas, and the total number of migrating persons obtained by summing the numbers of migrating persons for respective positional relationships between areas on the basis of the demographic information so as to optimize an objective function indicating the likelihood of the total number of migrating persons determined using π, si, β, and the demographic information.
In step S230, the parameter estimation unit 200 stores the estimated Ati
In step S252, the number-of-migrating-persons estimating unit 220 estimates the number of migrating persons Mtij from the area i to each of the other areas j for each of a plurality of areas on the basis of the demographic information and the probability of migration θij calculated by the migration probability calculation unit 170.
In step S254, the number-of-migrating-persons estimating unit 220 stores the number of migrating persons Mtij estimated in step S252 in the number-of-migrating-persons storage unit 230.
As described above, according to the migration tendency estimation device according to the present embodiment, the first parameter indicating the likelihood of departure from the area to another area and the second parameter indicating the likelihood of gathering of persons in the area for each of the plurality of areas, the third parameter indicating the influence on the probability of migration of the distance between areas, and the total number of migrating persons obtained by summing the numbers of migrating persons for respective positional relationships between areas are estimated on the basis of the demographic information, the probability of migration from the area to each of the other areas is calculated on the basis of the first parameter, the second parameter, and the third parameter, and the number of migrating persons from the area to each of the other areas is estimated for each of the plurality of areas on the basis of the demographic information and the probability of migration. In this way, even when migration to areas other than adjacent areas is taken into consideration, it is possible to estimate the probability of migration and the number of migrating persons with high accuracy and a small amount of calculation.
The present invention is not limited to the above-described embodiments, and various modifications and applications can be made without departing from the spirit of the present invention.
In the present specification, although an embodiment in which a program is installed in advance has been described, the program may be provided in a state of being stored in a computer-readable recording medium.
Number | Date | Country | Kind |
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2018-024435 | Feb 2018 | JP | national |
Filing Document | Filing Date | Country | Kind |
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PCT/JP2019/005373 | 2/14/2019 | WO | 00 |