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Sort articles by: Volume | Date | Most Rates | Most Views | Reviews | Alphabet
1.

Estimating the Value-at-Risk (VaR) in stock investment of insurance companies: An application of the extreme value theory Pages 749-758 Right click to download the paper Download PDF

Authors: Riaman Riaman, Amarulla Octavian, Sudradjat Supian, Sukono Sukono, Jumadil Saputra

DOI: 10.5267/j.dsl.2023.7.001

Keywords: Risk, Investment, Insurance, Extreme Value Theory

Abstract:
As a capital market investment, stocks have risks that must be managed. Therefore, investors should consider the returns and risks of investment products. This study aims to estimate the risk of insurance companies' loss when investing. The method used to estimate the level of risk is Value at Risk (VaR) based on Extreme Value Theory (EVT). The data used is secondary data in the form of daily stock closing prices from two insurance companies, AXA General Insurance and BRI Insurance, from January 2016 to January 2022. The data were used to estimate the risk value according to the EVT principle. As a result, Insurance AXA General Insurance, with 5.91% liquidity, has the lowest VaR value with a 99% confidence level, while BRI Insurance has 5.04%. We concluded from these results that AXA General Insurance has a lower investment risk. It means that each company has a different risk value. Therefore, investors should know these risk factors when choosing a company.
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Journal: DSL | Year: 2023 | Volume: 12 | Issue: 4 | Views: 1037 | Reviews: 0

 
2.

Modeling of citizen science cluster in making decision for readiness towards bogor smart village: An application of fuzzy c-means algorithm Pages 617-628 Right click to download the paper Download PDF

Authors: Eneng Tita Tosida, Riko Setiawan, Irma Anggraeni, Roni Jayawinangun, Sukono Sukono, Jumadil Saputra

DOI: 10.5267/j.dsl.2023.4.003

Keywords: Fuzzy C-means, Information Gain, Citizen Science, Clustering, Smart Village

Abstract:
The construction of smart villages has begun in many Indonesian villages, along with the advancement of technology and local economic growth. Villagers must participate in constructing the smart economy-smart village by becoming familiar with the characteristics of the village's inhabitants using the citizen science model. This study intends to categorize villagers so that researchers can assess and decide their level of readiness for a smart economy in an ecosystem based on a smart village. Clustering is required to find communities of residents who are ready based on their traits. Using fuzzy C-Means with a Davied Bouldin Index value of 0.129, the data were divided into 4 clusters. The most important variables were chosen using information from the test's 300 responders, and the Kaiser Mayer Olkin assumption of 0.975 was used to validate the results. Our paper provides new information on how smart village readiness is assessed by the citizen science cluster. It was decided to divide residents into four groups: those who are less prepared (24.33%), those who are somewhat prepared (29.33%), those who are ready ( 25.67%) %), those who are ready (level of participatory knowledge), and those who are very ready for the smart economy (20.67%) based on the cluster model.
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Journal: DSL | Year: 2023 | Volume: 12 | Issue: 3 | Views: 1015 | Reviews: 0

 
3.

Estimating flood catastrophe bond prices using approximation method of the loss aggregate distribution: Evidence from Indonesia Pages 179-190 Right click to download the paper Download PDF

Authors: Riza Andrian Ibrahim, Sukono Sukono, Herlina Napitupulu, Rose Irnawaty Ibrahim, Muhamad Deni Johansyah, Jumadil Saputra

DOI: 10.5267/j.dsl.2023.3.001

Keywords: Catastrophe bond, Flood, estimation, Pricing, Indonesia, Approximation method, Aggregate loss distribution

Abstract:
Losses experienced by the Indonesian government due to floods are predicted. It is because of the significance of population growth, closure of water catchment areas, and climate change in many regions in Indonesia. The government has tried to reduce the risk but faces insufficient funds. Therefore, new innovative funding sources are essential to overcome these limitations. One way to obtain it is through issuing Flood Catastrophe Bonds (FCB). Unfortunately, Indonesia has had no FCB price estimate until now. On the basis of this problem, this study aims to estimate the FCB price in Indonesia. The primary method used is the approximation method of the aggregate loss distribution. This method can compute the aggregate flood loss cumulative distribution function value faster. The FCB fair price estimation results are cheap because the risk of the instrument is significant. This significant risk is also proportional to the large return. Finally, further analysis shows that in Indonesia, the attachment point of the FCB has a relationship that is in line with the price, while the term of FCB does not. This research is expected to assist the Indonesian government in determining the fair price of FCB in Indonesia. This research can assist the investors in choosing FCB based on expected return, attachment point, and the term they want.
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Journal: DSL | Year: 2023 | Volume: 12 | Issue: 2 | Views: 1320 | Reviews: 0

 
4.

Integration of factor analysis and Tsukamoto’s fuzzy logic method for quality control of credit provisions in rural banks Pages 267-278 Right click to download the paper Download PDF

Authors: Yuyun Hidayat, Sukono Sukono, Predy Hartanto, Titi Purwandari, Riza Andrian Ibrahim, Moch Panji Agung Saputra, Jumadil Saputra

DOI: 10.5267/j.dsl.2023.1.008

Keywords: Credit risk, Credit risk rate, Factor analysism Tsukamoto’s fuzzy logic method

Abstract:
Giving credit to debtors can pose a default risk. This risk arises because of an error in analyzing the credit risk rate of the debtor. Therefore, this study aims to design a framework for analyzing the credit risk rate of debtors so that the default risk can be reduced. This framework is created using the integration of factor analysis and Tsukamoto’s fuzzy logic method. This integration method can group many credit assessment variables into several decisive factors. In addition, the integration method can estimate credit risk rate firmly based on the α-predicate of each basic rule. This analytical framework is simulated on credit application data at a Rural Bank, in Indonesia. The simulation results show that there are three factors and one variable to measure the credit risk rate, namely: factor 1 represents repayment capacity, business length, working capital, and liquidity value; factor 2 represents the age and the difference between the granted and the proposed loan amount; factor 3 represents the stay length, character, and credit history; and one variable represents a dependent number. This research is expected to help credit institutions measure the credit risk rate in making credit decisions for prospective debtors.
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Journal: DSL | Year: 2023 | Volume: 12 | Issue: 2 | Views: 1068 | Reviews: 0

 
5.

Investigating the collective value at risk model (CVaR) and its application on real data for life insurance Pages 399-406 Right click to download the paper Download PDF

Authors: Muhammad Iqbal Al-Banna l Ismail, Abdul Talib Bon, Sukono Sukono, Adhitya Ronnie Effendie, Jumadil Saputra

DOI: 10.5267/j.dsl.2022.12.004

Keywords: Insurance, Risk, Claim, Collective Risk, Collective Value-at-Risk

Abstract:
Life insurance is designed to reduce the risk of financial loss due to unforeseen consequences related to the insured's death. In life insurance, the insurer provides death benefits as a claim when the insured suffers death. The claim is the compensation for a risk loss. Individual claim in one-period insurance is called aggregation claim, while aggregation claim is a collective risk. Collective risk is usually measured using a variance. However, the variance risk measure cannot often accommodate any event risk because there is a risk of claims beyond the amount of variance. Using the proposed method CVaR and confidence level are taken from α = 0.25% until 4%. This study found that the proposed method CVaR scored more fairly than Collective Risk. In conclusion, this study indicated that the collective risk model is just included using mean and variance without any confidence level. Therefore, only one result for the Collective Risk model, which automatically shows the model using mean, variance and standard deviation, could not accommodate all risk events.
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Journal: DSL | Year: 2024 | Volume: 12 | Issue: 2 | Views: 1036 | Reviews: 0

 
6.

Analyzing the community decision making to purchase pet insurance: Case study of animal lovers in Indonesia Pages 29-40 Right click to download the paper Download PDF

Authors: Sukono Sukono, Dwi Susanti, Fadhilla Ridwan, Riaman Riaman, Elis Hertini, Jumadil Saputra

DOI: 10.5267/j.dsl.2022.10.008

Keywords: Buying decision making, Stated Preference, Dichotomous Choice, Contingent Valuation Method, Pet Insurance

Abstract:
This study aims to measure people's decision-making to buy their pet insurance and compare it with the amount of insurance premium rates offered. It is important due to the increase in people's income which has triggered the birth of a community of pet lovers as part of the middle-class people’s lifestyle in Indonesia. The survey data was conducted using the Stated Preference (SP) format through questionnaires and interviews to determine the public response to pet insurance premiums. The collected data were analyzed using descriptive methods, decision-making analysis was on the basis of the choice of the dichotomous Contingent Valuation Method (CVM), and logistic regression analysis. Based on the calculation analysis using the logit method shows that the ability of the public to pay pet insurance premiums is IDR289,454.54. Analysis of calculations using the Turnbull method was obtained at IDR365,000.00. The results of the WTP amount, both using the logit method and using the Turnbull method, are greater than the minimum premium amount offered which is IDR190,000.00. The results of this study indicate that the premium rates for pet insurance offered are still within reasonable limits, compared to the size of the decision-making by the animal lover community in Indonesia. This provides a very good prospect for insurance companies that have insurance products for pets in Indonesia. This study was conducted to provide empirical evidence that the decision-making of the animal lover community is greater than the premium rate for pet insurance that has been offered. Thus, this research strongly supports the development of pet insurance companies in Indonesia, which can provide pet protection to stay healthy and well looked after.
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Journal: DSL | Year: 2023 | Volume: 12 | Issue: 1 | Views: 2565 | Reviews: 0

 
7.

Decision-making in formation of mean-VaR optimal portfolio by selecting stocks using K-means and average linkage clustering Pages 431-442 Right click to download the paper Download PDF

Authors: Ahmad Fawaid Ridwan, Herlina Napitupulu, Sukono Sukono

DOI: 10.5267/j.dsl.2022.7.002

Keywords: Average Linkage, K-Means, Clustering, Investment Portfolio, Mean-variance portfolio choice

Abstract:
Stock is one of the investment assets that has its charm for investors. It is very liquid and has a high rate of return, but it has a high risk. The strategy commonly used to minimize investment risk is to diversify through portfolio formation. A good allocation of funds must be determined in forming an optimal portfolio. In addition, the method of stock selection needs to be considered so the stocks are well diversified and the portfolio developed has good performance. This study aims to compare stock selection between K-Means and Average Linkage clustering approaches in forming an investment portfolio. Clustering analysis is used to group IDX80 stocks based on their attributes. In forming a portfolio with the Mean-VaR model, the stock selection decision criteria used are by selecting stocks with the highest positive returns from each cluster. As a result, the two clustering techniques show the superiority of the Silhouette score for a certain number of clusters, but there are still more advantages in Average Linkage. The portfolio approached by Average Linkage resulted in a better performance than the portfolio approached by K-Means. Therefore, Average Linkage clustering can be used as a better recommendation in decision-making to select stocks so as to produce optimal portfolio performance.
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Journal: DSL | Year: 2022 | Volume: 11 | Issue: 4 | Views: 1006 | Reviews: 0

 
8.

Determining the urban economic resilience planning through ratio of original local government revenue Pages 509-520 Right click to download the paper Download PDF

Authors: Titi Purwandari, Sukono Sukono, Yuyun Hidayat, Wan Muhamad Amir W Ahmad

DOI: 10.5267/j.dsl.2022.5.005

Keywords: Economic resilience variable, Original local government revenue, Piecewise linear regression, Disturbance and control variable, Decisions science

Abstract:
Today, the economic resilience in Indonesia measures using the index approach, but it does not consider the effect of the disturbance and causes meaningless. The index is essentially an average, and the average is not a model that captures the relationship between variables. This research differs significantly from earlier studies that used the index to measure economic resilience. The crucial step in assessing the economic resilience of a city is to determine the economic resilience decision variable itself. If a variable significantly correlates with the disturbance factors in each relationship pattern, it is considered suitable as an economic resilience variable. This study evaluates variable Z as an economic resilience variable with a significant relationship to its disturbance variable. The evaluation method is conducted in-depth by studying Indonesia's cities over five years (2015-2019). Z, the ratio of Original Local Government Revenue (PAD) to the number of poor people in a city as a cost centre, will be evaluated as a prospective decision variable for economic resilience. The statistical relationship between Z and 9 disturbance variables is examined using piecewise linear regression analysis. All 514 cities in Indonesia were observed extensively for identification during a five-year observation period. Rosenbrock pattern search estimation was used to estimate the model parameters. The following results were obtained by analysing the data with the STATISTICA software. As determined by parsimonious analysis, the price of Pertalite fuel and the US dollar foreign exchange are two disturbance factors that are crucial to the fall in the resilience variable Z. The joint effect of these two variables on the decline in the resilience measure Z is 73.63 percent. The study concludes that Z is a city-level economic resilience decision variable that applies to all 514 cities in Indonesia and is measured as the ratio of PAD to the number of poor people. This study's novel contribution to Indonesian policymakers is Z as a new economic resilience decision variable that can be used to assess cities' relative economic resilience.
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Journal: DSL | Year: 2022 | Volume: 11 | Issue: 4 | Views: 1280 | Reviews: 0

 
9.

Determination of the natural disaster insurance premiums by considering the mitigation fund reserve decisions: An application of collective risk model Pages 211-222 Right click to download the paper Download PDF

Authors: Sukono Sukono, Kalfin Kalfin, Riaman Riaman, Sudradjat Supian, Yuyun Hidayat, Jumadil Saputra, Mustafa Mamat

DOI: 10.5267/j.dsl.2022.4.002

Keywords: Natural disasters, Mitigation Fund Reserve Decisions, Collective Risk Model, Insurance premium

Abstract:
In Indonesia, natural disasters cases have significantly increased from time to time and have the largest impact on economic losses. To avoid losses in the future due to natural disasters, the insurance company needs to estimate the risk and determine the rate of premium that would be charged to the policyholder. In conjunction with the present issue, this study seeks to determine the premium rate and estimate the size claim of insurance by considering the mitigation fund reserve decisions using The Collective Risk Model (CRM). The data was analyzed using the Poisson process with Weibull distribution to determine the natural disaster frequency and losses. The distribution of losses is estimated using Maximum Likelihood Estimation (MLE), and the magnitude of losses was estimated using the CRM. Also, the mean and variance estimators of the aggregate risk were used to estimate the premium charged. The results indicated that expectation and variance of the frequency of incident claims have the same value, i.e., 2562. Also, the loss claims follow the Weibull distribution with the expected value and variance of 5.81309×1010 and 2.5301×1022, respectively. The mean and variance of the aggregate (collective) claims are 148,931,365,800,000 and 7.35×1025, respectively. In conclusion, this study has successfully determined the efficient pure premium model through the Standard Deviation Principle (SDP). SDP provides a much cheaper premium than the Expected Value Principle with the same loading factor. In addition, SDP considers the standard deviation of the collective risk of natural disasters. The implications of the results of the premium determination are expected to be the basis for decision-making for insurance companies and the government in determining insurance policies for natural disaster mitigation.
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Journal: DSL | Year: 2022 | Volume: 11 | Issue: 3 | Views: 1591 | Reviews: 0

 
10.

An investment decision-making model to predict the risk and return in stock market: An Application of ARIMA-GJR-GARCH Pages 235-246 Right click to download the paper Download PDF

Authors: Rizki Apriva Hidayana, Herlina Napitupulu, Sukono Sukono

DOI: 10.5267/j.dsl.2022.3.003

Keywords: Stocks return and risk, ARIMA-GJR-GARCH, VaR, Investment decisions

Abstract:
In deciding to invest in stocks traded in the capital market, investors need to predict which stocks provide the prospect of return and the risks to be faced. This paper aims to predict the return and risk of stock asymmetry using a time series model approach. Predicting stock returns and risk is based on the Autoregressive Integrated Moving Average-Glosten Jagannatan Runkle-Generalized Autoregressive Conditional Heteroscedasticity (ARIMA-GJR-GARCH) model. In contrast, the largest risk potential measurement is performed using the Value-at-Risk (VaR) model. The data analyzed are the best ten stocks according to the criteria that apply on the IDX, the period between 17 December 2018 to 14 December 2021, which includes the names of stock BBCA, BBNI, BBRI, BMRI, ASII, ICBP, PGAS, PTBA, TLKM, and UNVR. The analysis results show that of the best ten stocks, based on the ratio between the predicted values of the average return and Value-at-Risk, those with relatively better performance are PTBA, TLKM, UNVR and BBCA stocks. Based on the results of this analysis, it can be used as a reference in making investment decisions for investors, specifically investing in the ten stocks analyzed.
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Journal: DSL | Year: 2022 | Volume: 11 | Issue: 3 | Views: 1985 | Reviews: 0

 
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