Toward a Chatbot for Financial Sustainability
Abstract
:1. Introduction
2. Background
2.1. Financial Chatbot Service
2.2. Telemarketing and Technical Elements of Alternative Systems
2.3. Intention to Accept New Technology and Its Spread
2.4. Profitability Indicators
3. Methods
3.1. Samples and Data Collection
3.2. Operational Definition and Preprocessing
3.3. Descriptive Analysis
3.4. Hypotheses
4. Results
4.1. Statistical Hypothesis Testing
4.2. Cube Model Interpretation
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Type | Financial Institution | Chatbot Name | Service Platform | Starting from |
---|---|---|---|---|
Banking Corps. | Shinhan | Aurora | Shinhan Sol | 2018. 02 |
Kookmin | Smartly (TalkTalk) | Liiv TalkTalk | 2017. 07 | |
NH | Consultation Talk | NH banking | 2018. 11 | |
Hana | HAI | Hana Members | 2017. 09 | |
Woori | Wibee-bot | WibeeTalk | 2018. 09 | |
Credit Card Company | Shinhan | FANi | Shinhan Paypal | 2017. 06 |
Samsung | Sam | Chatbot Sam | 2019. 03 | |
Hyundai | Henry & Fiona | Buddy | 2017. 08 | |
Lotte | LOCA | The Loca Lab | 2018. 04 | |
Others (Securities, Insurance, and Third Bank Sector) | Daishin (Sec.) | Benjamin | Kakao Talk | 2017. 09 |
Samsung (Ins.) | Tabot | TABOT | 2017. 06 | |
Welcome (3rd S.) | Welcomebot | Kakao Talk | 2017. 09 | |
OK (3rd S.) | Oktok | Kakao Talk | 2017. 08 | |
JT (3rd S.) | JT Mobile Chatbot | Kakao Talk | 2018. 05 |
Process | Design Element | Interface Example |
---|---|---|
Access Screen | Functional Design | Chatbot location |
Value Design | Chatbot icon and name by function | |
Start Screen | Visual Design | Background color and overall layout |
Functional Design | Help on key features | |
Answer Screen | Functional Design | Speech bubble space utilization and option selection function |
Value Design | Character and profile image | |
Information Screen | Visual Design | Graphic information |
Division | Component | |
---|---|---|
Interactive interface | Speech recognition, multimodal, context recognition | |
Semantic reasoning | Intelligence level | Assistant chatbot, intelligent assistant, cognitive assistant |
Conversation process | Goal-oriented conversation processing, question and answer skills | |
Knowledge | Semantic Web, ontology-based technical data | |
Other services | Modeling, big data analysis, web service |
Financial Goods | Customer Service | Chatbot | Total | % |
---|---|---|---|---|
Fund subscription | 28,435 | 2531 | 30,996 | 8.8 |
Housing-subscription savings | 49,937 | 4365 | 54,302 | 15.4 |
Loan interest payment | 54,833 | 6350 | 61,183 | 17.4 |
Utility bill | 187,233 | 18,843 | 206,076 | 58.5 |
Total | 320,438 | 32,089 | 352,527 | 100.0 |
Variable | Preprocessing | Remarks |
---|---|---|
Customer Number | Assign a unique number after masking | Excluding the first 2 digits |
Age | Age of subscribers | |
Age Group * | Age category of subscribers | 0 = under and equal 45, 1 = over 45 |
Purchase Date * | Date of first contact | |
Approval Date | Subscription savings, loan payment, and utility bills are processed in real time (same with Purchase Date) | Fund needs to adjust date according to conditions |
Amount1 | Subscription amount of Funds | |
Amount2 | Amount of housing-subscription savings | |
Amount3 | Amount of loan interest payment | |
Amount4 | Amount of utility bills payment | Includes national tax, local tax, and other utility expenses |
Purchase Channel | - Customer service: employee #- Chatbot: HQ unique code (CB0-#) | |
Channel Classification * | Customer service and chatbot channel classification | 0 = customer service, 1 = chatbot |
Net profit1 * | Revenue from Funds—Expenses | -Exp1: Counselor salary -Exp2: Chatbot cost (develop and maintenance)/average IT infra depreciation period (daily-base) |
Net profit2 * | Revenue from housing-subscription savings—Expenses | |
Net profit3 * | Revenue from loan interest—Expenses | |
Net profit4 * | Revenue from utility bills—Expenses |
Channel | Goods | Age Groups | Total (%) | ||||
---|---|---|---|---|---|---|---|
Junior (%) | Senior (%) | ||||||
Customer Service | Fund | 15,665 | (46.9) | 17,770 | (53.1) | 33,435 | (10.5) |
H.S.S. | 23,469 | (42.7) | 31,468 | (57.3) | 54,937 | (17.3) | |
L.I. | 22,845 | (44.1) | 28,988 | (55.9) | 51,833 | (16.3) | |
Bills | 81,729 | (46.1) | 95,504 | (53.9) | 177,233 | (55.8) | |
Total | 143,708 | (45.3) | 173,730 | (54.7) | 317,438 | ||
Chatbot | Fund | 2,023 | (79.9) | 508 | (20.1) | 2,531 | (7.4) |
H.S.S. | 2,798 | (64.1) | 1,567 | (35.9) | 4,365 | (12.8) | |
L.I. | 3,787 | (59.6) | 2,563 | (40.4) | 6,350 | (18.6) | |
Bills | 13,105 | (62.7) | 7,738 | (37.1) | 20,843 | (61.1) | |
Total | 21,713 | (63.7) | 12,376 | (36.3) | 34,089 | ||
Total | Fund | 17,688 | (49.2) | 18,278 | (50.8) | 35,966 | (10.2) |
H.S.S. | 26,267 | (44.3) | 33,035 | (55.7) | 59,302 | (16.9) | |
L.I. | 26,632 | (45.8) | 31,551 | (54.2) | 58,183 | (16.6) | |
Bills | 94,834 | (47.9) | 103,242 | (52.1) | 198,076 | (56.3) | |
Total | 165,421 | (47.1) | 186,106 | (52.9) | 351,527 |
Combination | Channel | Col. Ratio | Row Ratio | |||
---|---|---|---|---|---|---|
Customer Service | Chatbot | Total | ||||
Junior | New Products Sales | 39,134 | 4821 | 43,955 | 8.1 | 26.6 |
Provision of Existing Services | 104,574 | 16,892 | 121,466 | 6.2 | 73.4 | |
Total | 143,708 | 21,713 | 165,421 | 6.6 | ||
Senior | New Products Sales | 49,238 | 2075 | 51,313 | 23.7 | 27.6 |
Provision of Existing Services | 124,492 | 10,301 | 134,793 | 12.1 | 72.4 | |
Total | 173,730 | 12,376 | 186,106 | 14.0 | ||
Total | 317,438 | 34,089 | 351,527 | 9.3 |
DF | SS | MS | F-Value | p-Value | |
---|---|---|---|---|---|
Model | 2 | 145.3548 | 72.6774 | 18.8893 | <0.0001 |
Error | 357,435 | 1,375,248.4582 | 3.8475 | ||
Total | 357,437 | 1,375,393.8130 | |||
Parameter | DF | Estimate | S.E. | T for H0 | p-value |
Intercept | 1 | −1.4275 | 0.05251 | −2.719 | 0.0014 |
T | 1 | 0.0215 | 0.1457 | 0.148 | <0.0001 |
NT | 1 | 0.0378 | 0.2437 | 0.155 | <0.0001 |
DF | SS | MS | F-Value | p-Value | |
---|---|---|---|---|---|
Model | 2 | 645.3548 | 322.6774 | 70.1013 | <0.0001 |
Error | 357,435 | 1,645,278.4582 | 4.6030 | ||
Total | 357,437 | 1,645,923.8130 | |||
Parameter | DF | Estimate | S.E. | T for H0 | p-value |
Intercept | 1 | 3.4572 | 0.4251 | 8.133 | 0.073 |
T | 1 | 0.0035 | 0.0024 | 1.458 | <0.0001 |
NT | 1 | 0.0081 | 0.0075 | 1.080 | <0.0001 |
Variance | DF | t-Value | p-Value | |
---|---|---|---|---|
Pooled | Equal | 43,953 | 1.4352 | 0.312 |
Satterthwaite | Unequal | 43,864.245 | 1.4345 | 0.416 |
Equality of Variance | Num DF | Den DF | F-value | p-value |
Folded F | 39,134 | 4821 | 8.12 | 0.357 |
Variance | DF | t-Value | p-Value | |
---|---|---|---|---|
Pooled | Equal | 121,464 | 18.2142 | 0.012 |
Satterthwaite | Unequal | 121,435.328 | 14.2146 | 0.011 |
Equality of Variance | Num DF | Den DF | F-value | p-value |
Folded F | 104,574 | 16,892 | 6.19 | 0.452 |
Variance | DF | t-Value | p-Value | |
---|---|---|---|---|
Pooled | Equal | 51,311 | 21.0113 | <0.0001 |
Satterthwaite | Unequal | 51,304.525 | 34.1223 | <0.0001 |
Equality of Variance | Num DF | Den DF | F-value | p-value |
Folded F | 49,238 | 2075 | 23.73 | <0.0001 |
Variance | DF | t-Value | p-Value | |
---|---|---|---|---|
Pooled | Equal | 134,791 | −13.1452 | 0.026 |
Satterthwaite | Unequal | 134,731.583 | −12.1025 | 0.025 |
Equality of Variance | Num DF | Den DF | F-value | p-value |
Folded F | 124,492 | 10,301 | 12.09 | <0.034 |
New Products (Y1) | X1–Y1 (H3a) Not significant | X2–Y1 (H3c) Positive in net profit from Customer Service |
Existing Service (Y2) | X1–Y2 (H3b) Negative in net profit from Chatbot | X2–Y2 (H3d) Negative in net profit from Customer Service |
Junior Group (X1) | Senior Group (X2) |
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Hwang, S.; Kim, J. Toward a Chatbot for Financial Sustainability. Sustainability 2021, 13, 3173. https://doi.org/10.3390/su13063173
Hwang S, Kim J. Toward a Chatbot for Financial Sustainability. Sustainability. 2021; 13(6):3173. https://doi.org/10.3390/su13063173
Chicago/Turabian StyleHwang, Sewoong, and Jonghyuk Kim. 2021. "Toward a Chatbot for Financial Sustainability" Sustainability 13, no. 6: 3173. https://doi.org/10.3390/su13063173
APA StyleHwang, S., & Kim, J. (2021). Toward a Chatbot for Financial Sustainability. Sustainability, 13(6), 3173. https://doi.org/10.3390/su13063173