Meme coins are now becoming the pillar of the crypto world, moving in tandem with overall market sentiment.The combined view highlights the volatility of these coins with sharp rallies and pullbacks.When Dogecoin continues to dominate, Shiba Inu in second place, other coins such as Pepe BONK show sharper growth.Meme coins are now becoming the pillar of the crypto world, moving in tandem with overall market sentiment.The combined view highlights the volatility of these coins with sharp rallies and pullbacks.When Dogecoin continues to dominate, Shiba Inu in second place, other coins such as Pepe BONK show sharper growth.

2025’s Top Earning Meme Coins: What’s Creating the Buzz?

2025/10/03 02:00
MemeCoin
  • Meme coins are gradually becoming the key factor that strengthens the crypto world, moving in tandem with overall market sentiment.
  • The combined view highlights the volatility of these coins with sharp rallies and pullbacks.
  • Dogecoin continues to dominate with its first position, followed by Shiba Inu, Pepe, and BONK, showing its sharper growth.

Memecoins spark debates on the current market and are now becoming a pillar of the crypto world. While they are termed as Memecoins in general, each of them is different in its own way, with distinct features. In this article, let’s see the top-earning meme coins and their reasons.

Top 4 Meme Coins Drive The Market Sentiment

The chart from CoinGecko provides the list of the most influential coins in detail. All coins are driven by different factors.

Dogecoin(DOGE) grows with its legacy and unending visibility. The first memecoin, which still has the largest market cap. This is backed by Elon Musk’s care.

The second Memecoin is Shiba Inu(SHIB), which is driven by its strong community sentiment. Now SHIB is expanding its ecosystem through its layer-2 blockchain, Shibarium. It strengthens transactions and new applications.

The Pepe coin(PEPE) has has the third place in meme coins. it has a viral success story reflecting how internet culture can create billions in a market capitalization very fast.

Bonk (BONK) is the next coin that can be called the new challenger. Bonk is Solana’s native memecoin. It benefits from blockchain’s resurgence and gets adoption within the Solana ecosystem.

memecoin Source: Coingecko

The chart describes the leading memecoins. It shows price action, trading volume, and market caps of leading meme coins. this provides quick access to the coin’s past performance for one week.

Also Read: Top Crypto to Buy Now: Why Pepeto Leads the Best Memecoins for the Bull Run

Meme Coin Momentum: DOGE vs Shina Inu

Dogecoin and Shiba Inu are the most recognized meme coins. Dogecoin leads the market cap, having its position as the “Original memecoin”. While Shiba Inu continuously expands its ecosystem through Shibarium. An interesting fact is that these two coins move simultaneously. When Doge rallies, SHIB normally follows, highlighting how market sentiment affects one Doge coin to another.

The recent by the X user named LUICE who is the core member of SHIB team shares Shiba Inu and Dogecoin fights resembles the ongoing fight for power in the meme coin space.

Pepe With virality In Its Play

Pepe(PEPE) dominates the market entirely by internet virality and strong community support. Apart from DOGE and SHIB, its rapid growth is backed by short-term trading waves and meme culture. But Pepe always deals with a higher risk; it is most likely to fall into sudden drops. The coin’s specialty to trend across the internet and social media keeps it as the most liquid memcoin in the crypto world.

Chain -Backed Meme Coin: Solan’s Role in Bonk

The memecoin BONK has come into play only recently. Bonk is quite outstanding with its tie to the Solana ecosystem. Bonk benefits from its underlying blockchain success when DOGE and SHIB depend on its brand recognition.

When Solana gets traction in DeFi and NFTs, BONK always rallies alongside. The coin acts as a “meme proxy ” for Solana’s development. Rather, fully backed by the community, BONK’s identity is connected with its chain-linked mechanism with Solana.

Comparison Of The Leading Memecoins

Each coin has its own legacy and uniqueness; things become more understandable when we analyse its performance together. The chart from TradingView highlights how Dogecoin, Shiba Inu, Pepe, and Bonk have performed. It shows the shifts in strength and the volatility in the market.

memecoinSource: TradingView

As displayed in the chart, the green line indicates Dogecoin’s performance. Red line Shiba Inu, Purple line PEPE, and Blue line BONK. These top memecoins are put in the same chart for a smooth and better understanding. The chart shows a comparison of how much each coin rises and drops in percentages from the same baseline.

The chart provides a combined dataset of divergence among the meme coins in 2025. Analysing the chart, the most stable coin is Doge, holding steady with slight gains. In the case of Shiba Inu, there is not much excellent performance visible. In contrast, Pepe delivered the sharpest rallies in the middle of the year. The amount of risk and the high-reward nature are highlighted. BONK always keeps a stronger momentum than SHIB, which has made the coin a rising contender in the meme coin space.

The aspects that drive the momentum and growth of the meme coin sector make it different from others. DOGE and SHIB rely on legacy and ecosystem building. Pepe coin works through raw virality and BONK with its blockchain adoption.

As it is evident from the analysis, different factors can contribute to each coin in different ways. These coins are the top-earning meme coins for 2025. Investing in these coins might be profitable as they continue the history and momentum.

Also Read: Best Memecoin to Buy: Ripple (XRP) Forecasts $7–$13 Within Months as Pepeto (PEPETO) Targets 10,000% Growth in 2025

Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact [email protected] for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.
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Medium2025/09/18 14:40
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