1. Introduction
Chasing higher profits in stock markets is an important issue for investors, including institutional and individual investors, leading to many investors investing in stocks, bonds, index ETFs, etc., based on their experience (e.g., the January effect [
1,
2,
3], technical trading regulations [
4,
5,
6,
7], and investing strategies [
8,
9].
Regarding the January effect, it is a market phenomenon in which stock values typically rise in January. The main hypothesis proposes that this is caused by year-end tax-related selling [
10], investors harvesting losses for tax purposes [
11], year-end bonuses affecting investment decisions [
12], and portfolio rebalancing [
13].
Historically, this effect was evident, but changes in market dynamics have diminished its significance over time, as the stock market is more efficient for this effect [
14]. Concerning technical trading regulations, we state that technical trading rules may work in trading financial instruments (e.g., stocks, bonds, and futures) since many charts in terms of technical analysis are shown on many financial websites (e.g., Bloomberg, Reuters, Forbes, Wall Street Journal, and Investing); otherwise, these charts may not be displayed on these famous financial websites.
As such, the above phenomena motivate us to examine if investors employing these technical trading regulations would benefit and even make profits in stock market trading. After conducting the literature survey in the next section, we find that although investing strategies and trading regulations have been extensively researched in the stock markets, focusing on trading in a particular month following the occurrence of technical trading signals appears to be understudied in the relevant research. Consequently, this study may overcome the research gap because our investigated issue of whether trading in stock markets when trading signs triggered by technical trading regulations in different months would result in different subsequent performance (hereafter referred to as “monthly effects”) remains understudied in the existing literature.
We further state that our explored issue is of great originality since although the pursuit of higher profits in stock markets drives investors to explore various investment strategies and technical trading regulations, little research has focused on the impact of trading based on technical indicators in specific months (i.e., “monthly effects”). Additionally, trading range breakout (TRB) trading strategies have garnered traction among traders in diverse financial domains, such as stocks, currencies, and cryptocurrencies, since these strategies aim to capitalize on price momentum post-breakout by pinpointing breakout levels. Despite their popularity [
15], the suitability and efficacy of TRB regulations remain unexplored using the DJI 30 and NDX 100 indices, indicating the performance of two representative stock indices in the US.
Regarding the novelty of this study, we argue that gauging subsequent performance is closely related to investment concepts. Since investors make investment decisions now, they will not know if they can generate profits until later. As such, different from the January effect that has been extensively researched over several decades [
2,
16,
17], our explored issue is to examine that as oversold signals emitted by the contrarian regulations of SOIs and the RSI, investors purchases stocks in a particular month or few months would have better subsequent performances.
In this study, we purchase stocks as oversold signals instead of overbought signals because oversold phenomena often occur for stock indices when unexpected, adverse news happens suddenly, leading to the undervaluation of these stock indices.
However, we argue that our explored issue, closely related to investment notions, has been understudied in the previous research; therefore, the purpose of this study is to investigate whether as oversold signals emitted by the contrarian regulation of SOIs and the RSI in certain months instead of other months, investors purchasing stocks would result in better subsequent performance. Since investors can purchase stock index futures instead of index spots in investment practice, this study chooses the constituent stocks of the DJI 30 and NDX 100 as our investigated targets.
In other words, using big data to examine the constituent stocks of the DJI 30 and NDX 100 indices from 2003 to 2022 (i.e., two-decade data) from DataStream’s data sources (including extensive data on various financial markets), this study analyzes market behavior using big data, with a focus on profit maximization in the stock market [
18,
19]. It investigates the understudied field of “monthly effects” using technical trading regulations, exploring the influence of trading based on indications in various months. This innovative technique fills a gap in the literature by stressing the importance of timing and demonstrating the potential benefits of using contrarian strategies (i.e., SOIs and the RSI). Additionally, we argue that “monthly effects” likely result from investor sentiment (oversold trading signals would be related to investor sentiment) and abnormity (January effect and “monthly effect” might result from anomalies [
3], both of which may not support the theory of stock market efficiency [
20]. As a result, we state that the theory used and the factors affecting the January effect may be proper for the “monthly effect” studied in this research.
We document that this study may contribute to the existing literature as follows. First, this study shows that no matter the oversold trading signs generated by either SOI or RSI contrarian trading rules in March, the subsequent performance for the constituent stocks of the DJI 30 and NDX 100 is at least 6% (9%) of the average holding period return (AHPR) for holding 100 (250) trading days (i.e., ranging from 6% to 18% (9% to 27%)). We infer that the “monthly effects” proposed in this study may play a significant role in generating profit. Second, following the occurrence of oversold trading signals, this study shows that RSI trading regulation outperforms SOI trading regulation and NDX 100 constituent stocks outperform DJI 30 constituent stocks. Consequently, despite both the RSI and SOI trading regulations, investors can choose the appropriate trading regulation and the appropriate constituent stocks to capitalize on the high profit. Third, this study discovers that trading the constituent stocks of the NDX for holding 250 trading days (approximately 250 trading days in a year) results in over 40% AHPRs; nevertheless, such remarkable performance is not observed in other months. The disclosed results imply that oversold trading signals generated by the SOI and RSI trading regulations in different months do matter for their subsequent performance.
5. Discussion
In this study, we present hypotheses in
Section 2, and we determine whether these hypotheses will be accepted or rejected based on our results disclosed in
Section 4. Concerning H1, we show that when trading signals (i.e., K ≤ 20 and RSI ≤ 30) are issued for the constituent stocks of the DJI 30 and NDX 100, these stocks would have better subsequent performance as compared with the benchmarks of either the risk-free interest rate (10-year treasury bond rate proxied for risk-free interest rate; ranging from below 1% to up to 8% for recent 30 years (
https://www.macrotrends.net/2016/10-year-treasury-bond-rate-yield-chart (accessed on 15 October 2023))) or stock market performance (the average returns of the S&P index proxied for stock market performance; close to 10% over the long term (
https://www.fool.com/investing/how-to-invest/index-funds/average-return/ (accessed on 15 October 2023))), as it is shown that the 250-day AHPRs in
Table 2 and
Table 6 are greater than the above benchmarks. Additionally, while comparing the subsequent performance of both contrarian trading rules, we show that the results using the RSI trading rules are better than those using the SOI trading rules. As such, H1 is accepted. Although our findings may contradict previous research that technical trading rules do not outperform the market in stock markets [
92,
93,
94], they may be consistent with relevant studies that apply contrarian technical trading rules would result in considerable returns in stock markets. Thus, we infer that the efficacy of trading rules may be related to the investment horizon and investment instruments [
5,
95,
96].
Regarding H2 of “utilize contrarian strategies as contrarian trading signals emitted in specific months, as opposed to other months, would achieve much better subsequent performance”, we disclose that in addition to purchasing and holding constituent stocks of these two stock indices (DJI 30 and NDX 100 indices) for over 100 trading day would derive positive profits no matter the trading signals emitted in any months, investors would exploit much higher profit for holding 250 trading days (approximately one year) as trading signals emitted in some months (e.g., March and December) rather than other months, and especially impressive performance is shown for trading signals emitted by contrarian trading rules (i.e., SOI and RSI trading rules) in March, thereby accepting H2. As such, we argue that our findings may indicate that the trading timing would matter for enhancing profitability in the stock markets [
32,
97]. However, we would point out that the trading timing emitted in this study would be different from that trading performance that would be better in January [
2,
3].
Moreover, while comparing the January effect widely disclosed in the relevant studies, we would point out that the meaning of the “monthly effect” employed in this study is different from the trading timing employed in the relevant studies in several aspects. First, the trading timing is oversold trading signals emitted by contrarian SOI and RSI trading regulations, which would be different from trading stocks as the occurrence of various events (e.g., merger, acquisition, etc.). Second, the trading timing would be appropriately measured by the subsequent performance (AHPRs) following trading signals issued by contrarian trading rules, because market participants purchasing stocks now (i.e., at time t) may not know their investment performance until later (i.e., at time t + i). As a result, we believe that this study will cast light on the trading timing of trading signals emitted at specific times (e.g., a particular month, such as March) rather than trading at any time, as well as measuring subsequent performance rather than disclosing better performance in a specific month (January effect), both of which appear to be understudied in the existing literature.
6. Concluding Remarks
6.1. Conclusions
The insightful and significant findings of this study shed light on previously overlooked aspects of research, thereby adding to the existing body of knowledge. As a result, we contend that our study draws major conclusions, fills significant information gaps, and comprehends “monthly effects” that may not be examined in relevant studies. In sum, we find that using contrarian strategies with specific trading signals yields better subsequent performance compared to benchmarks (e.g., risk-free interest rates or stock index returns), RSI trading rules outperform SOI trading rules, and employing contrarian strategies in specific months leads to higher profits. This study differentiates its concept of trading timing from the widely studied January effect and highlights the significance of measuring subsequent performance after trading signals are emitted in special months (i.e., “monthly effects”), providing novel insights into trading strategies and timing considerations, all of which are illustrated below.
First, the results of this study reveal that regardless of whether oversold trading signs are generated by either SOI or RSI contrarian trading rules in March, the constituent stocks of the DJI 30 and NDX 100 consistently demonstrate an average holding period return (AHPR) of at least 12% when held for 100 trading days, with returns ranging from 12% to 20% and no exceptions. Our findings suggest that “monthly effects” could be considered for increasing profits, which is similar to previous studies on contrarian strategies and market inefficiencies [
98,
99]. However, before implementing the “monthly effects” disclosed in this study, investors also should consider potential risks and changing market conditions.
Second, this study finds that when subsequent performance is measured as the occurrence of oversold signals, the RSI trading rules outperform the SOI trading rules, and the NDX 100 constituent stocks outperform the DJI 30 constituent stocks, indicating the significance of using proper oversold trading rules and stock selection. Previous research has disclosed that the RSI would be a useful technical indicator in trading stock markets [
100] and the importance of stock selection in investment performance [
101,
102]. Thus, investors may adopt contrarian strategies to improve trading results. However, it is still imperative to incorporate comprehensive risk management and market risks into investment strategies [
103].
Third, this study shows significant performance differences in the NDX constituent stocks across 250 trading days (almost a year) based on oversold trading signals produced in different months. Unlike in previous months, March’s oversold trading signals increased the average holding period return (AHPR) to 40%. Oversold trading signals resulting from the SOI and RSI trading regulations appear to have a significant effect on performance. As previously shown, the market timing affects the investment outcomes [
104,
105]. This study underlines the significance of timing in trading strategies. Thus, investors can trade these constituent stocks as oversold signals from a given month [
106,
107].
6.2. Research Implications
To begin, unlike the January effect, this study incorporates the “monthly effect” in stock market trading, which investigates how technical trading signals generated in different months affect performance. This research has the potential to provide insights into the importance of timing in trading strategies. In addition to enhancing knowledge of market anomalies [
2,
3,
4,
5], it contributes to a fundamental investment principle concerning the practice of investing at present without knowing the potential profit or loss until a later time.
Regarding practical implications, this study suggests investors use contrarian methods based on oversold SOI and RSI trading regulations. Trading the constituent stocks of representative stock indexes (e.g., DJ 30 and NDX 100 indices) can improve performance when oversold signals are generated, offering a practical way to increase profitability [
9,
108]. In addition, similar to the January effect, “monthly effects” can influence investor behavior by actively timing purchases to capitalize on potential gains. Fund managers may modify portfolio allocations to capitalize on this phenomenon. When developing economic policies, policymakers may analyze market dynamics and their implications for market efficiency and investor sentiment. As such, we argue that recognizing and navigating the “monthly effect” might have an impact on investment strategies and decision-making across the financial landscape. Even so, in today’s financial markets, the relevance of “monthly effects” or the January effect is called into question by the efficient market theory, which suggests that any past patterns can be quickly absorbed into asset prices, likely limiting their predictive value for investors.
6.3. Limitations and Future Research
Although this study sheds light on the importance of oversold trading signals and suggests that the “monthly effect” is critical for increasing returns, several research limitations may remain. This study ignores external macroeconomic factors, market sentiment, and company-specific news that could dramatically affect stock prices, which could invalidate the conclusions. Historical data are used in this study, and past patterns may repeat. Future performance may not be predicted by past performance since market dynamics can change. Studying the “monthly effect” or January effect may have potential survivorship bias, reducing the data accuracy and generalizability in understanding market phenomena. The possible biases in the chosen data sources could be caused by insufficient market representation or the omission of transactional data. This research solely covers oversold trading signals and the SOI and RSI technical trading regulations. Other trading strategies and indicators that could help to a deeper comprehension of market behavior have yet to be investigated.
In addition, the findings provide a nuanced understanding of the potential profitability associated with oversold signals generated in special months (e.g., March), emphasizing the importance of timing in trading strategies. However, caution is warranted, considering the potential risks and changing market conditions. As such, we propose that the following concerns be raised for future research. First, continued research is imperative to build on the valuable insights uncovered in this study. Future research may explore risk management in technical trading strategies, assess adaptability to varying market conditions, and examine the impact of behavioral biases on the effectiveness of such strategies, providing a comprehensive understanding of market dynamics and refining trading approaches. Second, we may examine the risk associated with employing technical trading strategies and explore ways to manage and mitigate potential downside risks. Third, this study may not only focus on the adaptability of technical trading regulations in diverse market conditions (e.g., bull markets, bear markets, and high volatility periods) but also investigate the risk associated with employing technical trading strategies, including finding ways to manage downside risks and assessing the performance of these strategies during various market phases as mentioned above. Fourth, we may further examine the influence of behavioral biases, such as herding behavior, overconfidence, and loss aversion, on the effectiveness of technical trading strategies, providing a more comprehensive understanding of market dynamics. These insights will pave the way for future avenues that may contribute to refining trading strategies and addressing identified flaws in the existing literature.