STRATEGIC PORTFOLIO REBALANCING: INTEGRATING PREDICTIVE MODELS AND ADAPTIVE OPTIMIZATION OBJECTIVES IN DYNAMIC MARKET

Outperforming the stock market is challenging because of its uncertainty, which requires different strategies to manage the stock portfolio depending on market conditions. This study proposes a novel portfolio management strategy using appropriate optimization objectives for different stock market t...

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Main Author: Clarissa, Adeline
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/84349
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:84349
spelling id-itb.:843492024-08-15T10:52:44ZSTRATEGIC PORTFOLIO REBALANCING: INTEGRATING PREDICTIVE MODELS AND ADAPTIVE OPTIMIZATION OBJECTIVES IN DYNAMIC MARKET Clarissa, Adeline Indonesia Theses stock market trend, portfolio management, return prediction, Indonesia INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/84349 Outperforming the stock market is challenging because of its uncertainty, which requires different strategies to manage the stock portfolio depending on market conditions. This study proposes a novel portfolio management strategy using appropriate optimization objectives for different stock market trends while also incorporating market trends and stock return predictions. The optimization objectives that will be evaluated for different market trends are maximizing the Sharpe ratio, minimizing risk, and minimizing expected shortfall. The results show that, in an upward market trend, the strategy is to choose stocks with positive returns, and the objective is to maximize the Sharpe ratio. The portfolio that follows this strategy during upward market trends has greater returns than both the Indonesian Composite Index and LQ45, which serve as stock market benchmarks, with 90% certainty. Meanwhile, during the downward market trend, the strategy is to choose stocks with a negative correlation with the Indonesian Composite Index, and the proper optimization objective is to minimize risk. A portfolio that follows this strategy during downward market trends has greater returns than stock market benchmarks with 95% certainty. Across the evaluation period from 2018 to 2023, the portfolio using the proposed strategy outperforms both stock market benchmarks, with a higher quarterly Sharpe ratio of 0.3047 and cumulative return of 107.90%. The proposed portfolio has a higher quarterly return than the stock market benchmark with 99% certainty. Therefore, the proposed strategy shows a favorable performance and can outperform the market. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Outperforming the stock market is challenging because of its uncertainty, which requires different strategies to manage the stock portfolio depending on market conditions. This study proposes a novel portfolio management strategy using appropriate optimization objectives for different stock market trends while also incorporating market trends and stock return predictions. The optimization objectives that will be evaluated for different market trends are maximizing the Sharpe ratio, minimizing risk, and minimizing expected shortfall. The results show that, in an upward market trend, the strategy is to choose stocks with positive returns, and the objective is to maximize the Sharpe ratio. The portfolio that follows this strategy during upward market trends has greater returns than both the Indonesian Composite Index and LQ45, which serve as stock market benchmarks, with 90% certainty. Meanwhile, during the downward market trend, the strategy is to choose stocks with a negative correlation with the Indonesian Composite Index, and the proper optimization objective is to minimize risk. A portfolio that follows this strategy during downward market trends has greater returns than stock market benchmarks with 95% certainty. Across the evaluation period from 2018 to 2023, the portfolio using the proposed strategy outperforms both stock market benchmarks, with a higher quarterly Sharpe ratio of 0.3047 and cumulative return of 107.90%. The proposed portfolio has a higher quarterly return than the stock market benchmark with 99% certainty. Therefore, the proposed strategy shows a favorable performance and can outperform the market.
format Theses
author Clarissa, Adeline
spellingShingle Clarissa, Adeline
STRATEGIC PORTFOLIO REBALANCING: INTEGRATING PREDICTIVE MODELS AND ADAPTIVE OPTIMIZATION OBJECTIVES IN DYNAMIC MARKET
author_facet Clarissa, Adeline
author_sort Clarissa, Adeline
title STRATEGIC PORTFOLIO REBALANCING: INTEGRATING PREDICTIVE MODELS AND ADAPTIVE OPTIMIZATION OBJECTIVES IN DYNAMIC MARKET
title_short STRATEGIC PORTFOLIO REBALANCING: INTEGRATING PREDICTIVE MODELS AND ADAPTIVE OPTIMIZATION OBJECTIVES IN DYNAMIC MARKET
title_full STRATEGIC PORTFOLIO REBALANCING: INTEGRATING PREDICTIVE MODELS AND ADAPTIVE OPTIMIZATION OBJECTIVES IN DYNAMIC MARKET
title_fullStr STRATEGIC PORTFOLIO REBALANCING: INTEGRATING PREDICTIVE MODELS AND ADAPTIVE OPTIMIZATION OBJECTIVES IN DYNAMIC MARKET
title_full_unstemmed STRATEGIC PORTFOLIO REBALANCING: INTEGRATING PREDICTIVE MODELS AND ADAPTIVE OPTIMIZATION OBJECTIVES IN DYNAMIC MARKET
title_sort strategic portfolio rebalancing: integrating predictive models and adaptive optimization objectives in dynamic market
url https://digilib.itb.ac.id/gdl/view/84349
_version_ 1822010350138032128