Altcoins slide deeper into fear: Only 3% stay above long-term support

ambcryptoPublished on 2025-12-23Last updated on 2025-12-23

Abstract

The altcoin market has experienced a severe downturn since early October, losing over $580 billion in value, with total market capitalization now at $1.19 trillion. Only 3% of altcoins on Binance are trading above their 200-day Simple Moving Average, indicating extreme weakness and limited long-term holder activity. The recent downturn was exacerbated by a liquidation event on October 10 that wiped out nearly $19 billion in leveraged positions. Despite the broad decline, a few assets like AI-related tokens Aurelia and Pippin, along with privacy coins such as Zcash, Dash, and Monero, have posted gains over the past three months, reflecting concentrated investor interest in narrative-driven assets rather than the broader market. Market sentiment remains fearful, with the Fear and Greed Index at 29. Technical indicators suggest a potential rebound may be near. The Bollinger Bands show compression near the lower band, historically a support level, while the Accumulation/Distribution indicator signals ongoing buying interest. However, any recovery may be brief, with altcoin market cap potentially rising to $1.21 trillion in the near term.

The outlook for altcoins has grown increasingly daunting, following a broader market decline that began in early October.

In dollar terms, altcoins have lost more than $580 billion in value since the sell-off spread across the market.

As of now, total altcoin market capitalization stands at $1.19 trillion, marking one of the steepest declines in recent times.

Amid worsening market sentiment, a few assets continue to show resilience, offering insight into the broader market dynamics.

October liquidations push altcoins lower

The downturn in altcoin performance intensified after the liquidation event on the 10th of October, which wiped out nearly $19 billion in leveraged positions across the market.

The impact remains visible. Despite ongoing pressure, CryptoQuant data shows that only 3% of altcoins listed on Binance currently trade above their 200-day Simple Moving Average (SMA).

In simple terms, this means only a small fraction of altcoins hold above their long-term average price, signaling relative strength.

Meanwhile, the broader altcoin market continues to weaken, suggesting that only a limited number of long-term holders remain active.

This trend also points to constrained liquidity across the market, which has continued to suppress prices.

At the same time, trading around the 20-day SMA, or below it, has historically signaled potential rebound zones, creating opportunities for investors to accumulate at lower levels.

The Altcoin Season Index has dropped to the 17% mark. Historically, similar levels have aligned with market rebounds, although the timing of any recovery remains uncertain.

Concentrated gains show

Looking at a shorter time frame, CoinMarketCap data shows that only 10 out of the top 99 altcoins have recorded gains over the past three months.

The leading performers include Aurelia [BEAT] and Pippin [PIPPIN], both tied to artificial intelligence narratives.

They are followed by Zcash [ZEC], Dash [DASH], and Monero [XMR], which occupy the next positions and focus on privacy-focused use cases.

This trend suggests that investors are gravitating toward specific market narratives rather than the broader altcoin market, reflecting concentrated capital allocation.

Interest in narrative-driven assets has strengthened as investors assess relative performance, and this trend may persist as market fear remains elevated.

The Fear and Greed Index supports this view, with the indicator currently at 29, signaling extreme fear.

Such conditions typically see investors favor stable assets or high-conviction positions aligned with dominant narratives.

However, sustained bearish pressure across the market could still erode the gains these assets have posted over the past 90 days, making a broader recovery essential.

Indicators point to potential rebound

Technical indicators suggest that a rebound remains possible for altcoins, based on the total market capitalization excluding Bitcoin and stablecoins.

First, the Bollinger Bands (BB) have compressed toward the lower band, marked in green, a level that has historically acted as support and often precedes volatility expansion.

Additionally, the Accumulation/Distribution (A/D) indicator shows ongoing accumulation activity, signaling continued buying interest despite recent weakness.

The A/D indicator currently reflects a positive trading volume of 136.57 trillion. Notably, this metric has remained in positive territory even as the broader market declined over several weeks.

However, based on the Bollinger Bands, any rebound may remain brief in the short term, with total altcoin market capitalization potentially recovering to $1.21 trillion—an increase of roughly $200 billion—over the coming trading sessions.

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Related Questions

QWhat percentage of altcoins listed on Binance are currently trading above their 200-day Simple Moving Average (SMA)?

AOnly 3% of altcoins listed on Binance are currently trading above their 200-day Simple Moving Average (SMA).

QHow much value in dollar terms have altcoins lost since the market sell-off began in early October?

AAltcoins have lost more than $580 billion in value since the sell-off spread across the market.

QWhat is the current reading of the Fear and Greed Index, and what market sentiment does it signal?

AThe Fear and Greed Index is currently at 29, which signals extreme fear in the market.

QAccording to the article, which two AI-narrative altcoins were among the top performers over the past three months?

AThe leading performers include Aurelia [BEAT] and Pippin [PIPPIN], both tied to artificial intelligence narratives.

QWhat does the positive reading of the Accumulation/Distribution (A/D) indicator suggest about market activity?

AThe positive Accumulation/Distribution (A/D) indicator, which shows a reading of 136.57 trillion, signals ongoing accumulation activity and continued buying interest despite recent market weakness.

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