This article was first published on The Bit Journal. Bitcoin slipped to a two-week low late Sunday amid renewed market volatility, with the latest Bitcoin dip shakingThis article was first published on The Bit Journal. Bitcoin slipped to a two-week low late Sunday amid renewed market volatility, with the latest Bitcoin dip shaking

Bitcoin Dip Deepens as Saylor Signals Another Major Buy

2025/12/16 01:00

This article was first published on The Bit Journal. Bitcoin slipped to a two-week low late Sunday amid renewed market volatility, with the latest Bitcoin dip shaking investor confidence even as Strategy chair Michael Saylor hinted that his firm may be preparing for another large Bitcoin acquisition.

Bitcoin dropped to approximately $87,600 on Coinbase in late trading, according to TradingView figures, continuing a trend of excessive drop-offs on Sundays that have been observed over the last few weeks. This Bitcoin dip was the lowest point of the asset since it was recovering on Dec. 2, after dropping to reach around $84,000. At the time of writing, prices have since bounced back to over $89,000.

Saylor Signals Fresh Buying Amid Bitcoin Dip

These weekly pullbacks have become the standard pattern of the Bitcoin dip, especially when macroeconomic uncertainty is elevated.

Saylor seemed to indicate a new wave of purchases as markets fell. In a post on X on Sunday, he said “Back to More Orange Dots” with a portfolio chart generally understood as a comment on Strategy and its long-term strategy of buying Bitcoin during weak periods, such as the current Bitcoin dip.

The last purchase that strategy made was on Dec. 12 when the company purchased 10,624 BTC the largest purchase since late July as per SaylorTracker data. The company currently has an approximation of 660,624 BTC, worth an estimated 58.5 billion at present. Strategy is profitable even after the recent Bitcoin dip because of an average price of purchasing a coin of $74,696.

Bank of Japan Stokes Bitcoin Uncertainty

To market observers, the recent Bitcoin dip has been associated with increasing macroeconomic issues, specifically the anticipation of an interest rate announcement by the Bank of Japan. Other commentators believe that increasing Japanese rates may lead to more extensive risk -off in the global markets leading to further stressing on cryptocurrencies.

On Sunday, a social media post by an analyst known as “NoLimit” warned that people were grossly underestimating what Japan is about to do to Bitcoin, citing past instances where Japanese rate increases were followed by sudden falls in Bitcoin. Japan has the greatest amount of U.S. government debt in the world, so any change in its monetary policy can be particularly impactful at such a time as during the current Bitcoin dip.

Japan Rate Expectations Pressure Bitcoin Sentiment

The prediction market Polymarket data now indicate that there are 98% chances that the Bank of Japan will increase interest rates by 0.25% on Friday.

Justin d Anethan who led research at private market advisory firm Arctic Digital indicated that the recent Bitcoin drop has dragged down sentiment although prices are still well up compared to their November lows. He said, a reversion to $88,000, feels like a loss. He explained:

All analysts do not agree that the decision taken in Japan will have a long term effect. Sykodelic, an analyst, claimed that the possible increase of the rate is already highly expected and thus reflected in the market. Markets are prospective. They do not move when something happens, but in anticipation of happening, which implies that the Bitcoin dip can be a temporary event.

Going forward, d’Anethan believes that Bitcoin will be range-bound. Prices will remain in the $80,000 to $100,000 range, he said, because traders are tracking macro trends and are waiting to see a catalyst that would tell whether the current Bitcoin decline becomes a deeper correction or another run-up.

Conclusion

As Bitcoin navigates renewed volatility, investors remain split between short-term macro risks and long-term accumulation strategies. While Japan’s rate outlook continues to cloud sentiment, analysts largely expect prices to stay range-bound, with institutional buyers like Strategy signaling confidence during periods of market weakness.

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Summary

  • Bitcoin fell to $87,600 with concerns of rate hikes in Japan.
  • Michael Saylor hinted at another Strategy Bitcoin purchase.
  • Analysts expect Bitcoin to remain range-bound at $80K–$100K.
  • The volatility is fuelled by macro fears, but there is institutional confidence.

Glossary of Key Terms

Michael Saylor
Chair of Strategy and a leading corporate advocate of Bitcoin adoption.

Strategy
A company that uses Bitcoin as a treasury asset and buys during market pullbacks.

Bitcoin Pullback
A temporary price decline within a broader market trend.

Sunday Sell-Off
A pattern of Bitcoin price drops during low-liquidity weekend trading.

Bank of Japan (BoJ)
Japan’s central bank whose rate decisions affect global markets.

Interest Rate Hike
An increase in borrowing costs set by a central bank.

Carry Trade Unwind
The closing of leveraged positions, often pressuring risk assets.

Frequently Asked Questions About Bitcoin Dip

1. What did Michael Saylor hint at?

Saylor signaled another potential Bitcoin purchase with his “Back to More Orange Dots” post on X.

2. How much Bitcoin does Strategy hold?

Strategy currently holds about 660,624 BTC, valued near $58.5 billion at current prices.

3. Will Japan’s rate decision impact Bitcoin?

Analysts are split, with some expecting pressure on prices and others saying the move is already priced in.

Reference

Tradingview

Saylortracker

Polymarket

Twitter

Twitter

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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